111 results on '"Hulsen T"'
Search Results
2. Clinical characterization and outcomes of prostate cancer patients undergoing immediate vs. conservative management: A PIONEER study
- Author
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Gandaglia, G., primary, Omar, M.I., additional, Maresca, G., additional, Golozar, A., additional, Remmers, S., additional, Roobol, M.J., additional, Steinbeisser, C., additional, Hulsen, T., additional, Van Bochove, K., additional, Katharina, B., additional, Van Hemelrijck, M., additional, Willemse, P-P.M., additional, Oja, M., additional, Tamm, S., additional, Reisberg, S., additional, Gomez Rivas, J., additional, Van Den Bergh, R., additional, Kinnaird, A., additional, Asiimwe, A., additional, Bjartell, A., additional, Smith, E.J., additional, and N'Dow, J., additional
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- 2022
- Full Text
- View/download PDF
3. The PIONEER watchful waiting for prostate cancer apps - a first practical application of using big data for prostate cancer
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Hulsen, T., primary, Moinat, M., additional, Van Bochove, K., additional, Gorbachev, A., additional, Kaduk, D., additional, Argyriou, G., additional, Cossin, S., additional, Herrera, R., additional, Golozar, A., additional, Prinsen, P., additional, Beyer, K., additional, Van Hemelrijck, M., additional, Oja, M., additional, Axelsson, S., additional, Steinbeisser, C., additional, and De Meulder, B., additional
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- 2022
- Full Text
- View/download PDF
4. Aplicaciones del metaverso en medicina y atención sanitaria
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Hulsen Tim
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metaverso ,telemedicina ,gemelo digital ,blockchain ,medicina ,sanidad ,Medical technology ,R855-855.5 - Abstract
El metaverso es un mundo virtual, aún en proceso de desarrollo, que permite a las personas interactuar entre ellas, así como con objetos digitales de una forma más inmersiva. Esta innovadora herramienta aúna las tres principales tendencias tecnológicas: la telepresencia, el gemelo digital y la cadena de bloques. La telepresencia permite a las personas “reunirse” de manera virtual, aunque se encuentren en distintos lugares. El gemelo digital es el equivalente virtual y digital de un paciente, dispositivo médico o incluso de un hospital. Por último, la cadena de bloques puede ser utilizada por los pacientes para almacenar sus informes médicos personales de forma segura. En medicina, el metaverso podría tener distintas aplicaciones: (1) consultas médicas virtuales; (2) educación y formación médica; (3) educación del paciente; (4) investigación médica; (5) desarrollo de medicamentos; (6) terapia y apoyo; (7) medicina de laboratorio. El metaverso permitiría una atención sanitaria más personalizada, eficiente y accesible, mejorando así los resultados clínicos y reduciendo los costes de atención médica. No obstante, la implementación del metaverso en medicina y atención sanitaria requerirá una cuidadosa evaluación de los aspectos éticos y de privacidad, así como técnicos, sociales y jurídicos. En términos generales, el futuro del metaverso en el campo de la medicina parece prometedor, aunque es necesario desarrollar nuevas leyes que regulen específicamente el metaverso, con el fin de superar sus posibles inconvenientes.
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- 2024
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5. Applications of the metaverse in medicine and healthcare
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Hulsen Tim
- Subjects
metaverse ,telemedicine ,digital twin ,blockchain ,medicine ,healthcare ,Medical technology ,R855-855.5 - Abstract
The metaverse is a virtual world that is being developed to allow people to interact with each other and with digital objects in a more immersive way. It involves the convergence of three major technological trends: telepresence, the digital twin, and blockchain. Telepresence is the ability of people to “be together” in a virtual way while not being close to each other. The digital twin is a virtual, digital equivalent of a patient, a medical device or even a hospital. Blockchain can be used by patients to keep their personal medical records secure. In medicine and healthcare, the metaverse could be used in several ways: (1) virtual medical consultations; (2) medical education and training; (3) patient education; (4) medical research; (5) drug development; (6) therapy and support; (7) laboratory medicine. The metaverse has the potential to enable more personalized, efficient, and accessible healthcare, improving patient outcomes and reducing healthcare costs. However, the implementation of the metaverse in medicine and healthcare will require careful consideration of ethical and privacy concerns, as well as social, technical and regulatory challenges. Overall, the future of the metaverse in healthcare looks bright, but new metaverse-specific laws should be created to help overcome any potential downsides.
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- 2023
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6. Predicting Biopsy Outcomes During Active Surveillance for Prostate Cancer: External Validation of the Canary Prostate Active Surveillance Study Risk Calculators in Five Large Active Surveillance Cohorts
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Drost, FJH, Nieboer, D, Morgan, TM, Carroll, PR, Roobol, MJ, Trock, B, Ehdaie, B, Carroll, P, Filson, C, Kim, J, Logothetis, C, Morgan, T, Klotz, L, Pickles, T, Hyndman, E, Moore, CM, Gnanapragasam, V, Van Hemelrijck, M, Dasgupta, P, Bangma, C, Roobol, M, Villers, A, Rannikko, A, Valdagni, R, Perry, A, Hugosson, J, Rubio-Briones, J, Bjartell, A, Hefermehl, L, Shiong, LL, Frydenberg, M, Kakehi, Y, Chung, BH, van der Kwast, T, van der Linden, W, Hulsen, T, de Jonge, C, Kattan, M, Xinge, J, Muir, K, Lophatananon, A, Fahey, M, Steyerberg, E, Zhang, L, Beckmann, K, Denton, B, Hayen, A, Boutros, P, Guo, W, Benfante, N, Cowan, J, Patil, D, Tolosa, E, Kim, TK, Mamedov, A, Lapointe, V, Crump, T, Kimberly-Duffell, J, Santaolalla, A, Olivier, J, Rancati, T, Ahlgren, H, Mascarós, J, Löfgren, A, Lin, CH, Hirama, H, Lee, KS, Jenster, G, Auvinen, A, Haider, M, van Bochove, K, Carter, B, Gledhill, S, Buzza, M, Bruinsma, S, and Helleman, J
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Urology & Nephrology - Abstract
© 2019 European Association of Urology Two active surveillance risk calculators to predict disease reclassification on prostate biopsy are externally validated by the Movember Foundation's Global Action Plan (GAP3) consortium. They proved to be clinically useful and could reduce unnecessary biopsies, but need recalibration to local settings.
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- 2019
7. Consistent Biopsy Quality and Gleason Grading Within the Global Active Surveillance Global Action Plan 3 Initiative: A Prerequisite for Future Studies.
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Rannikko A., Moore C.M., Gnanapragasam V., Van Hemelrijck M., Dasgupta P., Bangma C., Villers A., Valdagni R., Perry A., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Shiong L.L., Frydenberg M., Kakehi Y., Chung B.H., Obbink H., van der Linden W., Hulsen T., de Jonge C., Kattan M., Xinge J., Muir K., Lophatananon A., Fahey M., Steyerberg E., Zhang L., Guo W., Benfante N., Cowan J., Patil D., Tolosa E., Kim T.-K., Mamedov A., Lapointe V., Crump T., Kimberly-Duffell J., Santaolalla A., Olivier J., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lehmann K., Lin C.H., Hirama H., Lee K.S., Jenster G., Auvinen A., Haider M., van Bochove K., Carter B., Gledhill S., Buzza M., van der Kwast T.H., Helleman J., Nieboer D., Bruinsma S.M., Roobol M.J., Trock B., Ehdaie B., Carroll P., Filson C., Kim J., Logothetis C., Morgan T., Klotz L., Pickles T., Hyndman E., Rannikko A., Moore C.M., Gnanapragasam V., Van Hemelrijck M., Dasgupta P., Bangma C., Villers A., Valdagni R., Perry A., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Shiong L.L., Frydenberg M., Kakehi Y., Chung B.H., Obbink H., van der Linden W., Hulsen T., de Jonge C., Kattan M., Xinge J., Muir K., Lophatananon A., Fahey M., Steyerberg E., Zhang L., Guo W., Benfante N., Cowan J., Patil D., Tolosa E., Kim T.-K., Mamedov A., Lapointe V., Crump T., Kimberly-Duffell J., Santaolalla A., Olivier J., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lehmann K., Lin C.H., Hirama H., Lee K.S., Jenster G., Auvinen A., Haider M., van Bochove K., Carter B., Gledhill S., Buzza M., van der Kwast T.H., Helleman J., Nieboer D., Bruinsma S.M., Roobol M.J., Trock B., Ehdaie B., Carroll P., Filson C., Kim J., Logothetis C., Morgan T., Klotz L., Pickles T., and Hyndman E.
- Abstract
Within the Movember Foundation's Global Action Plan Prostate Cancer Active Surveillance (GAP3) initiative, 25 centers across the globe collaborate to standardize active surveillance (AS) protocols for men with low-risk prostate cancer (PCa). A centralized PCa AS database, comprising data of more than 15 000 patients worldwide, was created. Comparability of the histopathology between the different cohorts was assessed by a centralized pathology review of 445 biopsies from 15 GAP3 centers. Grade group 1 (Gleason score 6) in 85% and grade group >=2 (Gleason score >=7) in 15% showed 89% concordance at review with moderate agreement (kappa = 0.56). Average biopsy core length was similar among the analyzed cohorts. Recently established highly adverse pathologies, including cribriform and/or intraductal carcinoma, were observed in 3.6% of the reviewed biopsies. In conclusion, the centralized pathology review of 445 biopsies revealed comparable histopathology among the 15 GAP3 centers with a low frequency of high-risk features. This enables further data analyses-without correction-toward uniform global AS guidelines for men with low-risk PCa. Patient Summary: Movember Foundation's Global Action Plan Prostate Cancer Active Surveillance (GAP3) initiative combines data from 15 000 men with low-risk prostate cancer (PCa) across the globe to standardize active surveillance protocols. Histopathology review confirmed that the histopathology was consistent with low-risk PCa in most men and comparable between different centers. A centralized pathological review showed consistent biopsy quality and Gleason grading within the global active surveillance Global Action Plan 3 initiative, a prerequisite for future studies toward uniform global guidelines for active surveillance of men with low-risk prostate cancer.Copyright © 2018
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- 2019
8. Reasons for Discontinuing Active Surveillance: Assessment of 21 Centres in 12 Countries in the Movember GAP3 Consortium.
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Perry A., Gledhill S., Morgan T., Klotz L., Pickles T., Hyndman E., Moore C.M., Dasgupta P., Villers A., Valdagni R., Carter B., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Lui Shiong L., Kakehi Y., Ha Chung B., van der Kwast T., Obbink H., Hulsen T., de Jonge C., Xinge J., Muir K., Lophatananon A., Steyerberg E., Zhang L., Santa Olalla A., Beckmann K., Denton B., Hayen A., Boutros P., Guo W., Benfante N., Cowan J., Patil D., Tolosa E., Kim T.-K., Mamedov A., La Pointe V., Crump T., Kimberly-Duffell J., Santaolalla A., Olivier J., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lehmann K., Han Lin C., Hirama H., Suk Lee K., Jenster G., Auvinen A., Haider M., van Bochove K., Buzza M., Bangma C., Bruinsma S., Fahey M., Van Hemelrijck M., Ji X., Kattan M.W., Helleman J., Roobol M.J., Nieboer D., Bangma C.H., van der Linden W., Frydenberg M., Rannikko A., Lee L.S., Gnanapragasam V.J., Trock B., Ehdaie B., Carroll P., Filson C., Kim J., Logothetis C., Perry A., Gledhill S., Morgan T., Klotz L., Pickles T., Hyndman E., Moore C.M., Dasgupta P., Villers A., Valdagni R., Carter B., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Lui Shiong L., Kakehi Y., Ha Chung B., van der Kwast T., Obbink H., Hulsen T., de Jonge C., Xinge J., Muir K., Lophatananon A., Steyerberg E., Zhang L., Santa Olalla A., Beckmann K., Denton B., Hayen A., Boutros P., Guo W., Benfante N., Cowan J., Patil D., Tolosa E., Kim T.-K., Mamedov A., La Pointe V., Crump T., Kimberly-Duffell J., Santaolalla A., Olivier J., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lehmann K., Han Lin C., Hirama H., Suk Lee K., Jenster G., Auvinen A., Haider M., van Bochove K., Buzza M., Bangma C., Bruinsma S., Fahey M., Van Hemelrijck M., Ji X., Kattan M.W., Helleman J., Roobol M.J., Nieboer D., Bangma C.H., van der Linden W., Frydenberg M., Rannikko A., Lee L.S., Gnanapragasam V.J., Trock B., Ehdaie B., Carroll P., Filson C., Kim J., and Logothetis C.
- Abstract
Background: Careful assessment of the reasons for discontinuation of active surveillance (AS) is required for men with prostate cancer (PCa). Objective(s): Using Movember's Global Action Plan Prostate Cancer Active Surveillance initiative (GAP3) database, we report on reasons for AS discontinuation. Design, setting, and participants: We compared data from 10 296 men on AS from 21 centres across 12 countries. Outcome measurements and statistical analysis: Cumulative incidence methods were used to estimate the cumulative incidence rates of AS discontinuation. Results and limitations: During 5-yr follow-up, 27.5% (95% confidence interval [CI]: 26.4-28.6%) men showed signs of disease progression, 12.8% (95% CI: 12.0-13.6%) converted to active treatment without evidence of progression, 1.7% (95% CI: 1.5-2.0%) continued to watchful waiting, and 1.7% (95% CI: 1.4-2.1%) died from other causes. Of the 7049 men who remained on AS, 2339 had follow-up for >5 yr, 4561 had follow-up for <5 yr, and 149 were lost to follow-up. Cumulative incidence of progression was 27.5% (95% CI: 26.4-28.6%) at 5 yr and 38.2% (95% CI: 36.7-39.9%) at 10 yr. A limitation is that not all centres were included due to limited information on the reason for discontinuation and limited follow-up. Conclusion(s): Our descriptive analyses of current AS practices worldwide showed that 43.6% of men drop out of AS during 5-yr follow-up, mainly due to signs of disease progression. Improvements in selection tools for AS are thus needed to correctly allocate men with PCa to AS, which will also reduce discontinuation due to conversion to active treatment without evidence of disease progression. Patient Summary: Our assessment of a worldwide database of men with prostate cancer (PCa) on active surveillance (AS) shows that 43.6% drop out of AS within 5 yr, mainly due to signs of disease progression. Better tools are needed to select and monitor men with PCa as part of AS. After about 5 yr, about 56% of men were still
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- 2019
9. Predicting Biopsy Outcomes During Active Surveillance for Prostate Cancer: External Validation of the Canary Prostate Active Surveillance Study Risk Calculators in Five Large Active Surveillance Cohorts.
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Santaolalla A., Gnanapragasam V., Van Hemelrijck M., Dasgupta P., Auvinen A., Haider M., van Bochove K., Carter B., Gledhill S., Buzza M., Bruinsma S., Helleman J., Drost F.-J.H., Nieboer D., Morgan T.M., Carroll P.R., Roobol M.J., Trock B., Ehdaie B., Carroll P., Filson C., Kim J., Logothetis C., Morgan T., Klotz L., Pickles T., Hyndman E., Bangma C., Roobol M., Villers A., Rannikko A., Valdagni R., Perry A., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Shiong L.L., Frydenberg M., Kakehi Y., Chung B.H., van der Kwast T., van der Linden W., Hulsen T., de Jonge C., Kattan M., Xinge J., Muir K., Lophatananon A., Fahey M., Steyerberg E., Zhang L., Beckmann K., Denton B., Hayen A., Boutros P., Guo W., Benfante N., Cowan J., Patil D., Tolosa E., Kim T.-K., Mamedov A., Lapointe V., Crump T., Kimberly-Duffell J., Olivier J., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lin C.H., Hirama H., Lee K.S., Moore C.M., Jenster G., Santaolalla A., Gnanapragasam V., Van Hemelrijck M., Dasgupta P., Auvinen A., Haider M., van Bochove K., Carter B., Gledhill S., Buzza M., Bruinsma S., Helleman J., Drost F.-J.H., Nieboer D., Morgan T.M., Carroll P.R., Roobol M.J., Trock B., Ehdaie B., Carroll P., Filson C., Kim J., Logothetis C., Morgan T., Klotz L., Pickles T., Hyndman E., Bangma C., Roobol M., Villers A., Rannikko A., Valdagni R., Perry A., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Shiong L.L., Frydenberg M., Kakehi Y., Chung B.H., van der Kwast T., van der Linden W., Hulsen T., de Jonge C., Kattan M., Xinge J., Muir K., Lophatananon A., Fahey M., Steyerberg E., Zhang L., Beckmann K., Denton B., Hayen A., Boutros P., Guo W., Benfante N., Cowan J., Patil D., Tolosa E., Kim T.-K., Mamedov A., Lapointe V., Crump T., Kimberly-Duffell J., Olivier J., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lin C.H., Hirama H., Lee K.S., Moore C.M., and Jenster G.
- Abstract
Two active surveillance risk calculators to predict disease reclassification on prostate biopsy are externally validated by the Movember Foundation's Global Action Plan (GAP3) consortium. They proved to be clinically useful and could reduce unnecessary biopsies, but need recalibration to local settings. Background: Men with prostate cancer (PCa) on active surveillance (AS) are followed through regular prostate biopsies, a burdensome and often unnecessary intervention, not without risks. Identifying men with at a low risk of disease reclassification may help reduce the number of biopsies. Objective(s): To assess the external validity of two Canary Prostate Active Surveillance Study Risk Calculators (PASS-RCs), which estimate the probability of reclassification (Gleason grade >=7 with or without >34% of biopsy cores positive for PCa) on a surveillance biopsy, using a mix of months since last biopsy, age, body mass index, prostate-specific antigen, prostate volume, number of prior negative biopsies, and percentage (or ratio) of positive cores on last biopsy. Design, setting, and participants: We used data up to November 2017 from the Movember Foundation's Global Action Plan (GAP3) consortium, a global collaboration between AS studies. Outcome measurements and statistical analysis: External validity of the PASS-RCs for estimating reclassification on biopsy was assessed by calibration, discrimination, and decision curve analyses. Results and limitations: Five validation cohorts (Prostate Cancer Research International: Active Surveillance, Johns Hopkins, Toronto, Memorial Sloan Kettering Cancer Center, and University of California San Francisco), comprising 5105 men on AS, were eligible for analysis. The individual cohorts comprised 429-2416 men, with a median follow-up between 36 and 84 mo, in both community and academic practices mainly from western countries. Abilities of the PASS-RCs to discriminate between men with and without reclassification on biopsy were reasonab
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- 2019
10. A1055 - The PIONEER watchful waiting for prostate cancer apps - a first practical application of using big data for prostate cancer
- Author
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Hulsen, T., Moinat, M., Van Bochove, K., Gorbachev, A., Kaduk, D., Argyriou, G., Cossin, S., Herrera, R., Golozar, A., Prinsen, P., Beyer, K., Van Hemelrijck, M., Oja, M., Axelsson, S., Steinbeisser, C., and De Meulder, B.
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- 2022
- Full Text
- View/download PDF
11. A1051 - Clinical characterization and outcomes of prostate cancer patients undergoing immediate vs. conservative management: A PIONEER study
- Author
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Gandaglia, G., Omar, M.I., Maresca, G., Golozar, A., Remmers, S., Roobol, M.J., Steinbeisser, C., Hulsen, T., Van Bochove, K., Katharina, B., Van Hemelrijck, M., Willemse, P-P.M., Oja, M., Tamm, S., Reisberg, S., Gomez Rivas, J., Van Den Bergh, R., Kinnaird, A., Asiimwe, A., Bjartell, A., Smith, E.J., and N'Dow, J.
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- 2022
- Full Text
- View/download PDF
12. Developing a future-proof database for the European Randomized study of Screening for Prostate Cancer (ERSPC)
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Hulsen, T., primary, Van Der Linden, W., additional, De Jonge, C., additional, Hugosson, J., additional, Auvinen, A., additional, and Roobol, M., additional
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- 2019
- Full Text
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13. The Movember Foundation's GAP3 cohort
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Bruinsma, S.M. (Sophie), Zhang, L. (Liying), Roobol-Bouts, M.J. (Monique), Bangma, C.H. (Chris), Steyerberg, E.W. (Ewout), Nieboer, D. (Daan), Van Hemelrijck, M. (Mieke), Trock, B.J. (Bruce), Ehdaie, B. (Behfar), Carroll, P.R. (Peter), Filson, C. (Christopher), Kim, J. (Jeri), Morgan, T. (Todd), Klotz, L. (Laurence), Pickles, T. (Tom), Hyndman, E. (Eric), Moore, C.M. (Caroline), Gnanapragasam, V. (Vincent), Dasgupta, P. (Prokar), Villers, A. (Arnoud), Rannikko, A.S. (Antti), Valdagni, R. (Riccardo), Perry, A. (Antoinette), Hugosson, J. (Jonas), Rubio-Briones, J. (Jose), Bjartell, A. (Anders), Hefermehl, L. (Lukas), Lui Shiong, L. (Lee), Frydenberg, M. (Mark), Kakehi, Y. (Yoshiyuki), Ha Chung, B. (Byung), Kwast, Th.H. (Theo) van der, Obbink, H. (Henk), van der Linden, W. (Wim), Hulsen, T. (Tim), de Jonge, C. (Cees), Kattan, M.W. (Michael), Xinge, J. (Ji), Muir, K. (Kenneth), Lophatananon, A. (Artitaya), Fahey, M. (Michael), Guo, W. (Wei), Milan, T. (Tanya), Benfante, N. (Nicole), Cowan, J. (Janet), Patil, D. (Dattatraya), Sanford, R. (Rachel), Kim, T.-K. (Tae-Kyung), Mamedov, A. (Alexandre), LaPointe, V. (Vincent), Crump, T. (Trafford), Hamoudi, R. (Rifat), Kimberly-Duffell, J. (Jenna), Santaolalla, A. (Aida), Olivier, J. (Jonathan), Janetti, E.B. (Emanuele Bianchi), Rancati, T. (Tiziana), Ahlgren, H. (Helén), Mascarós, J. (Juanma), Löfgren, A. (Annica), Lehmann, K. (Kurt), Han Lin, C. (Catherine), Hirama, H. (Hiromi), Jenster, G.W. (Guido), Auvinen, A. (Anssi), Haider, M. (Masoom), van Bochove, K. (Kees), Carter, B. (Ballentine), Kirk-Burnnand, R. (Rachelle), Gledhill, S. (Sam), Buzza, M. (Mark), Bruinsma, S.M. (Sophie), Zhang, L. (Liying), Roobol-Bouts, M.J. (Monique), Bangma, C.H. (Chris), Steyerberg, E.W. (Ewout), Nieboer, D. (Daan), Van Hemelrijck, M. (Mieke), Trock, B.J. (Bruce), Ehdaie, B. (Behfar), Carroll, P.R. (Peter), Filson, C. (Christopher), Kim, J. (Jeri), Morgan, T. (Todd), Klotz, L. (Laurence), Pickles, T. (Tom), Hyndman, E. (Eric), Moore, C.M. (Caroline), Gnanapragasam, V. (Vincent), Dasgupta, P. (Prokar), Villers, A. (Arnoud), Rannikko, A.S. (Antti), Valdagni, R. (Riccardo), Perry, A. (Antoinette), Hugosson, J. (Jonas), Rubio-Briones, J. (Jose), Bjartell, A. (Anders), Hefermehl, L. (Lukas), Lui Shiong, L. (Lee), Frydenberg, M. (Mark), Kakehi, Y. (Yoshiyuki), Ha Chung, B. (Byung), Kwast, Th.H. (Theo) van der, Obbink, H. (Henk), van der Linden, W. (Wim), Hulsen, T. (Tim), de Jonge, C. (Cees), Kattan, M.W. (Michael), Xinge, J. (Ji), Muir, K. (Kenneth), Lophatananon, A. (Artitaya), Fahey, M. (Michael), Guo, W. (Wei), Milan, T. (Tanya), Benfante, N. (Nicole), Cowan, J. (Janet), Patil, D. (Dattatraya), Sanford, R. (Rachel), Kim, T.-K. (Tae-Kyung), Mamedov, A. (Alexandre), LaPointe, V. (Vincent), Crump, T. (Trafford), Hamoudi, R. (Rifat), Kimberly-Duffell, J. (Jenna), Santaolalla, A. (Aida), Olivier, J. (Jonathan), Janetti, E.B. (Emanuele Bianchi), Rancati, T. (Tiziana), Ahlgren, H. (Helén), Mascarós, J. (Juanma), Löfgren, A. (Annica), Lehmann, K. (Kurt), Han Lin, C. (Catherine), Hirama, H. (Hiromi), Jenster, G.W. (Guido), Auvinen, A. (Anssi), Haider, M. (Masoom), van Bochove, K. (Kees), Carter, B. (Ballentine), Kirk-Burnnand, R. (Rachelle), Gledhill, S. (Sam), and Buzza, M. (Mark)
- Abstract
Objectives: The Movember Foundation launched the Global Action Plan Prostate Cancer Active Surveillance (GAP3) initiative to create a global consensus on the selection and monitoring of men with low-risk prostate cancer (PCa) on active surveillance (AS). The aim of this study is to present data on inclusion and follow-up for AS in this unique global AS database. Patients and Methods: Between 2014 and 2016, the database was created by combining patient data from 25 established AS cohorts worldwide (USA, Canada, Australasia, UK and Europe). Data on a total of 15 101 patients were included. Descriptive statistics were used to report patients' clinical and demographic characteristics at the time of PCa diagnosis, clinical follow-up, discontinuation of AS and subsequent treatment. Cumulative incidence curves were used to report discontinuation rates over time. Results: At diagnosis, the median (interquartile range [IQR]) patient age was 65 (60–70) years and the median prostate-specific antigen level was 5.4 (4.0–7.3) ng/mL. Most patients had clinical stage T1 disease (71.8%), a biopsy Gleason score of 6 (88.8%) and one tumour-positive biopsy core (60.3%). Patients on AS had a median follow-up time of 2.2 (1.0–5.0) years. After 5, 10 and 15 years of follow-up, respectively, 58%, 39% and 23% of patients were still on AS. The current version of GAP3 has limited data on magnetic resonance imaging (MRI), quality of life and genomic testing. Conclusions: GAP3 is the largest worldwide collaboration integrating patient data from men with PCa on AS. The results will allow individual patients and clinicians to have greater confidence in the personalized decision to either delay or proceed with active treatment. Longer follow-up and the evaluation of MRI, new genomic markers and patient-related outcomes will result in even more valuable data and eventually in better patient outcomes.
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- 2018
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14. Expert consensus document: Semantics in active surveillance for men with localized prostate cancer-results of a modified Delphi consensus procedure.
- Author
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van der Linden W., Bruinsma S.M., Roobol M.J., Carroll P.R., Klotz L., Pickles T., Moore C.M., Gnanapragasam V.J., Villers A., Rannikko A., Valdagni R., Frydenberg M., Kakehi Y., Filson C.P., Bangma C.H., Trock B., Ehdaie B., Kim J., Morgan T., Hyndman E., Van Hemelrijck M., Dasgupta P., Perry A., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Lui Shiong L., Ha Chung B., Suk Lee K., van der Kwast T., Obbink H., Hulsen T., de Jonge C., Kattan M., Xinge J., Muir K., Lophatananon A., Fahey M., Steyerberg E., Nieboer D., Zhang L., Guo W., Milan T., Benfante N., Cowan J., Patil D., Sanford R., Kim T.K., Mamedov A., LaPointe V., Crump T., Hamoudi R., Kimberly-Duffell J., Santaolalla A., Olivier J., Janetti E.B., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lehmann K., Han Lin C., Hirama H., Jenster G., Auvinen A., Haider M., van Bochove K., Carter B., Kirk-Burnnand R., Gledhill S., Buzza M., van der Linden W., Bruinsma S.M., Roobol M.J., Carroll P.R., Klotz L., Pickles T., Moore C.M., Gnanapragasam V.J., Villers A., Rannikko A., Valdagni R., Frydenberg M., Kakehi Y., Filson C.P., Bangma C.H., Trock B., Ehdaie B., Kim J., Morgan T., Hyndman E., Van Hemelrijck M., Dasgupta P., Perry A., Hugosson J., Rubio-Briones J., Bjartell A., Hefermehl L., Lui Shiong L., Ha Chung B., Suk Lee K., van der Kwast T., Obbink H., Hulsen T., de Jonge C., Kattan M., Xinge J., Muir K., Lophatananon A., Fahey M., Steyerberg E., Nieboer D., Zhang L., Guo W., Milan T., Benfante N., Cowan J., Patil D., Sanford R., Kim T.K., Mamedov A., LaPointe V., Crump T., Hamoudi R., Kimberly-Duffell J., Santaolalla A., Olivier J., Janetti E.B., Rancati T., Ahlgren H., Mascaros J., Lofgren A., Lehmann K., Han Lin C., Hirama H., Jenster G., Auvinen A., Haider M., van Bochove K., Carter B., Kirk-Burnnand R., Gledhill S., and Buzza M.
- Abstract
Active surveillance (AS) is broadly described as a management option for men with low-risk prostate cancer, but semantic heterogeneity exists in both the literature and in guidelines. To address this issue, a panel of leading prostate cancer specialists in the field of AS participated in a consensus-forming project using a modified Delphi method to reach international consensus on definitions of terms related to this management option. An iterative three-round sequence of online questionnaires designed to address 61 individual items was completed by each panel member. Consensus was considered to be reached if >=70% of the experts agreed on a definition. To facilitate a common understanding among all experts involved and resolve potential ambiguities, a face-to-face consensus meeting was held between Delphi survey rounds two and three. Convenience sampling was used to construct the panel of experts. In total, 12 experts from Australia, France, Finland, Italy, the Netherlands, Japan, the UK, Canada and the USA participated. By the end of the Delphi process, formal consensus was achieved for 100% (n = 61) of the terms and a glossary was then developed. Agreement between international experts has been reached on relevant terms and subsequent definitions regarding AS for patients with localized prostate cancer. This standard terminology could support multidisciplinary communication, reduce the extent of variations in clinical practice and optimize clinical decision making.Copyright © 2017 Macmillan Publishers Limited, part of Springer Nature. All rights reserved.
- Published
- 2017
15. PT073 - Developing a future-proof database for the European Randomized study of Screening for Prostate Cancer (ERSPC)
- Author
-
Hulsen, T., Van Der Linden, W., De Jonge, C., Hugosson, J., Auvinen, A., and Roobol, M.
- Published
- 2019
- Full Text
- View/download PDF
16. 958 Integrating large datasets for the Movember Global Action Plan on active surveillance for low risk prostate cancer
- Author
-
Hulsen, T., primary, Obbink, H., additional, Van Der Linden, W., additional, De Jonge, C., additional, Nieboer, D., additional, Bruinsma, S., additional, Roobol, M., additional, and Bangma, C., additional
- Published
- 2016
- Full Text
- View/download PDF
17. Identification of new biomarker candidates for glucocorticoid induced insulin resistance using literature mining
- Author
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Fleuren, W.W.M., Toonen, E.J.M., Verhoeven, S., Frijters, R.J.J.M., Hulsen, T., Rullmann, T., Schaik, R. van, Vlieg, J. de, Alkema, W., Fleuren, W.W.M., Toonen, E.J.M., Verhoeven, S., Frijters, R.J.J.M., Hulsen, T., Rullmann, T., Schaik, R. van, Vlieg, J. de, and Alkema, W.
- Abstract
Contains fulltext : 111355.pdf (publisher's version ) (Open Access), BACKGROUND: Glucocorticoids are potent anti-inflammatory agents used for the treatment of diseases such as rheumatoid arthritis, asthma, inflammatory bowel disease and psoriasis. Unfortunately, usage is limited because of metabolic side-effects, e.g. insulin resistance, glucose intolerance and diabetes. To gain more insight into the mechanisms behind glucocorticoid induced insulin resistance, it is important to understand which genes play a role in the development of insulin resistance and which genes are affected by glucocorticoids.Medline abstracts contain many studies about insulin resistance and the molecular effects of glucocorticoids and thus are a good resource to study these effects. RESULTS: We developed CoPubGene a method to automatically identify gene-disease associations in Medline abstracts. We used this method to create a literature network of genes related to insulin resistance and to evaluate the importance of the genes in this network for glucocorticoid induced metabolic side effects and anti-inflammatory processes.With this approach we found several genes that already are considered markers of GC induced IR, such as phosphoenolpyruvate carboxykinase (PCK) and glucose-6-phosphatase, catalytic subunit (G6PC). In addition, we found genes involved in steroid synthesis that have not yet been recognized as mediators of GC induced IR. CONCLUSIONS: With this approach we are able to construct a robust informative literature network of insulin resistance related genes that gave new insights to better understand the mechanisms behind GC induced IR. The method has been set up in a generic way so it can be applied to a wide variety of disease networks.
- Published
- 2013
18. PhyloPat: an updated version of the phylogenetic pattern database contains gene neighborhood.
- Author
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Hulsen, T., Groenen, P.M.A., Vlieg, J. de, Alkema, W., Hulsen, T., Groenen, P.M.A., Vlieg, J. de, and Alkema, W.
- Abstract
Contains fulltext : 75994.pdf (publisher's version ) (Open Access), Phylogenetic patterns show the presence or absence of certain genes in a set of full genomes derived from different species. They can also be used to determine sets of genes that occur only in certain evolutionary branches. Previously, we presented a database named PhyloPat which allows the complete Ensembl gene database to be queried using phylogenetic patterns. Here, we describe an updated version of PhyloPat which can be queried by an improved web server. We used a single linkage clustering algorithm to create 241,697 phylogenetic lineages, using all the orthologies provided by Ensembl v49. PhyloPat offers the possibility of querying with binary phylogenetic patterns or regular expressions, or through a phylogenetic tree of the 39 included species. Users can also input a list of Ensembl, EMBL, EntrezGene or HGNC IDs to check which phylogenetic lineage any gene belongs to. A link to the FatiGO web interface has been incorporated in the HTML output. For each gene, the surrounding genes on the chromosome, color coded according to their phylogenetic lineage can be viewed, as well as FASTA files of the peptide sequences of each lineage. Furthermore, lists of omnipresent, polypresent, oligopresent and anticorrelating genes have been included. PhyloPat is freely available at http://www.cmbi.ru.nl/phylopat.
- Published
- 2009
19. Evolution of closely linked gene pairs in vertebrate genomes.
- Author
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Franck, E., Hulsen, T., Huynen, M.A., Jong, W.W.W. de, Lubsen, N.H., Madsen, O., Franck, E., Hulsen, T., Huynen, M.A., Jong, W.W.W. de, Lubsen, N.H., and Madsen, O.
- Abstract
Contains fulltext : 70352.pdf (publisher's version ) (Closed access), The orientation of closely linked genes in mammalian genomes is not random: there are more head-to-head (h2h) gene pairs than expected. To understand the origin of this enrichment in h2h gene pairs, we have analyzed the phylogenetic distribution of gene pairs separated by less than 600 bp of intergenic DNA (gene duos). We show here that a lack of head-to-tail (h2t) gene duos is an even more distinctive characteristic of mammalian genomes, with the platypus genome as the only exception. In nonmammalian vertebrate and in nonvertebrate genomes, the frequency of h2h, h2t, and tail-to-tail (t2t) gene duos is close to random. In tetrapod genomes, the h2t and t2t gene duos are more likely to be part of a larger gene cluster of closely spaced genes than h2h gene duos; in fish and urochordate genomes, the reverse is seen. In human and mouse tissues, the expression profiles of gene duos were skewed toward positive coexpression, irrespective of orientation. The organization of orthologs of both members of about 40% of the human gene duos could be traced in other species, enabling a prediction of the organization at the branch points of gnathostomes, tetrapods, amniotes, and euarchontoglires. The accumulation of h2h gene duos started in tetrapods, whereas that of h2t and t2t gene duos only started in amniotes. The apparent lack of evolutionary conservation of h2t and t2t gene duos relative to that of h2h gene duos is thus a result of their relatively late origin in the lineage leading to mammals; we show that once they are formed h2t and t2t gene duos are as stable as h2h gene duos.
- Published
- 2008
20. BioVenn - a web application for the comparison and visualization of biological lists using area-proportional Venn diagrams.
- Author
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Hulsen, T., Vlieg, J. de, Alkema, W., Hulsen, T., Vlieg, J. de, and Alkema, W.
- Abstract
Contains fulltext : 70137.pdf ( ) (Open Access), BACKGROUND: In many genomics projects, numerous lists containing biological identifiers are produced. Often it is useful to see the overlap between different lists, enabling researchers to quickly observe similarities and differences between the data sets they are analyzing. One of the most popular methods to visualize the overlap and differences between data sets is the Venn diagram: a diagram consisting of two or more circles in which each circle corresponds to a data set, and the overlap between the circles corresponds to the overlap between the data sets. Venn diagrams are especially useful when they are 'area-proportional' i.e. the sizes of the circles and the overlaps correspond to the sizes of the data sets. Currently there are no programs available that can create area-proportional Venn diagrams connected to a wide range of biological databases. RESULTS: We designed a web application named BioVenn to summarize the overlap between two or three lists of identifiers, using area-proportional Venn diagrams. The user only needs to input these lists of identifiers in the textboxes and push the submit button. Parameters like colors and text size can be adjusted easily through the web interface. The position of the text can be adjusted by 'drag-and-drop' principle. The output Venn diagram can be shown as an SVG or PNG image embedded in the web application, or as a standalone SVG or PNG image. The latter option is useful for batch queries. Besides the Venn diagram, BioVenn outputs lists of identifiers for each of the resulting subsets. If an identifier is recognized as belonging to one of the supported biological databases, the output is linked to that database. Finally, BioVenn can map Affymetrix and EntrezGene identifiers to Ensembl genes. CONCLUSION: BioVenn is an easy-to-use web application to generate area-proportional Venn diagrams from lists of biological identifiers. It supports a wide range of identifiers from the most used biological databases currently avai
- Published
- 2008
21. Pharmacophylogenomics: Explaining interspecies differences in drug discovery
- Author
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Vlieg, J. de, Groenen, P.M.A., Hulsen, T., Vlieg, J. de, Groenen, P.M.A., and Hulsen, T.
- Abstract
RU Radboud Universiteit Nijmegen, 14 september 2007, Promotor : Vlieg, J. de Co-promotor : Groenen, P.M.A., Contains fulltext : 30197.pdf (publisher's version ) (Open Access)
- Published
- 2007
22. Identification of novel functional TBP-binding sites and general factor repertoires
- Author
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Denissov, S., Driel, M.A. van, Voit, R., Hekkelman, M.L., Hulsen, T., Hernandez, N., Grummt, I., Wehrens, Ron, Stunnenberg, H.G., Denissov, S., Driel, M.A. van, Voit, R., Hekkelman, M.L., Hulsen, T., Hernandez, N., Grummt, I., Wehrens, Ron, and Stunnenberg, H.G.
- Abstract
Item does not contain fulltext, Our current knowledge of the general factor requirement in transcription by the three mammalian RNA polymerases is based on a small number of model promoters. Here, we present a comprehensive chromatin immunoprecipitation (ChIP)-on-chip analysis for 28 transcription factors on a large set of known and novel TATA-binding protein (TBP)-binding sites experimentally identified via ChIP cloning. A large fraction of identified TBP-binding sites is located in introns or lacks a gene/mRNA annotation and is found to direct transcription. Integrated analysis of the ChIP-on-chip data and functional studies revealed that TAF12 hitherto regarded as RNA polymerase II (RNAP II)-specific was found to be also involved in RNAP I transcription. Distinct profiles for general transcription factors and TAF-containing complexes were uncovered for RNAP II promoters located in CpG and non-CpG islands suggesting distinct transcription initiation pathways. Our study broadens the spectrum of general transcription factor function and uncovers a plethora of novel, functional TBP-binding sites in the human genome.
- Published
- 2007
23. Pharmacophylogenomics: Explaining interspecies differences in drug discovery.
- Author
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Hulsen, T. and Hulsen, T.
- Subjects
- Bioinformatics.
- Published
- 2007
24. Benchmarking ortholog identification methods using functional genomics data.
- Author
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Hulsen, T., Huynen, M.A., Vlieg, J. de, Groenen, P.M., Hulsen, T., Huynen, M.A., Vlieg, J. de, and Groenen, P.M.
- Abstract
Contains fulltext : 36066.pdf ( ) (Open Access), BACKGROUND: The transfer of functional annotations from model organism proteins to human proteins is one of the main applications of comparative genomics. Various methods are used to analyze cross-species orthologous relationships according to an operational definition of orthology. Often the definition of orthology is incorrectly interpreted as a prediction of proteins that are functionally equivalent across species, while in fact it only defines the existence of a common ancestor for a gene in different species. However, it has been demonstrated that orthologs often reveal significant functional similarity. Therefore, the quality of the orthology prediction is an important factor in the transfer of functional annotations (and other related information). To identify protein pairs with the highest possible functional similarity, it is important to qualify ortholog identification methods. RESULTS: To measure the similarity in function of proteins from different species we used functional genomics data, such as expression data and protein interaction data. We tested several of the most popular ortholog identification methods. In general, we observed a sensitivity/selectivity trade-off: the functional similarity scores per orthologous pair of sequences become higher when the number of proteins included in the ortholog groups decreases. CONCLUSION: By combining the sensitivity and the selectivity into an overall score, we show that the InParanoid program is the best ortholog identification method in terms of identifying functionally equivalent proteins.
- Published
- 2006
25. PhyloPat: phylogenetic pattern analysis of eukaryotic genes
- Author
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Hulsen, T., Vlieg, J. de, Groenen, P.M., Hulsen, T., Vlieg, J. de, and Groenen, P.M.
- Abstract
Contains fulltext : 35569.pdf ( ) (Open Access), BACKGROUND: Phylogenetic patterns show the presence or absence of certain genes or proteins in a set of species. They can also be used to determine sets of genes or proteins that occur only in certain evolutionary branches. Phylogenetic patterns analysis has routinely been applied to protein databases such as COG and OrthoMCL, but not upon gene databases. Here we present a tool named PhyloPat which allows the complete Ensembl gene database to be queried using phylogenetic patterns. DESCRIPTION: PhyloPat is an easy-to-use webserver, which can be used to query the orthologies of all complete genomes within the EnsMart database using phylogenetic patterns. This enables the determination of sets of genes that occur only in certain evolutionary branches or even single species. We found in total 446,825 genes and 3,164,088 orthologous relationships within the EnsMart v40 database. We used a single linkage clustering algorithm to create 147,922 phylogenetic lineages, using every one of the orthologies provided by Ensembl. PhyloPat provides the possibility of querying with either binary phylogenetic patterns (created by checkboxes) or regular expressions. Specific branches of a phylogenetic tree of the 21 included species can be selected to create a branch-specific phylogenetic pattern. Users can also input a list of Ensembl or EMBL IDs to check which phylogenetic lineage any gene belongs to. The output can be saved in HTML, Excel or plain text format for further analysis. A link to the FatiGO web interface has been incorporated in the HTML output, creating easy access to functional information. Finally, lists of omnipresent, polypresent and oligopresent genes have been included. CONCLUSION: PhyloPat is the first tool to combine complete genome information with phylogenetic pattern querying. Since we used the orthologies generated by the accurate pipeline of Ensembl, the obtained phylogenetic lineages are reliable. The completeness and reliability of these phylogenetic line
- Published
- 2006
26. Testing statistical significance scores of sequence comparison methods with structure similarity
- Author
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Hulsen, T., Vlieg, J. de, Leunissen, J.A.M., Groenen, P.M., Hulsen, T., Vlieg, J. de, Leunissen, J.A.M., and Groenen, P.M.
- Abstract
Contains fulltext : 35345.pdf ( ) (Open Access), BACKGROUND: In the past years the Smith-Waterman sequence comparison algorithm has gained popularity due to improved implementations and rapidly increasing computing power. However, the quality and sensitivity of a database search is not only determined by the algorithm but also by the statistical significance testing for an alignment. The e-value is the most commonly used statistical validation method for sequence database searching. The CluSTr database and the Protein World database have been created using an alternative statistical significance test: a Z-score based on Monte-Carlo statistics. Several papers have described the superiority of the Z-score as compared to the e-value, using simulated data. We were interested if this could be validated when applied to existing, evolutionary related protein sequences. RESULTS: All experiments are performed on the ASTRAL SCOP database. The Smith-Waterman sequence comparison algorithm with both e-value and Z-score statistics is evaluated, using ROC, CVE and AP measures. The BLAST and FASTA algorithms are used as reference. We find that two out of three Smith-Waterman implementations with e-value are better at predicting structural similarities between proteins than the Smith-Waterman implementation with Z-score. SSEARCH especially has very high scores. CONCLUSION: The compute intensive Z-score does not have a clear advantage over the e-value. The Smith-Waterman implementations give generally better results than their heuristic counterparts. We recommend using the SSEARCH algorithm combined with e-values for pairwise sequence comparisons.
- Published
- 2006
27. Heavier-than-air flying machines are impossible
- Author
-
Oliveira, L., Hulsen, T., Hulsik, D.L., Paiva, A.C., Vriend, G., Oliveira, L., Hulsen, T., Hulsik, D.L., Paiva, A.C., and Vriend, G.
- Abstract
Contains fulltext : 58345.pdf (publisher's version ) (Closed access), Many G protein-coupled receptor (GPCR) models have been built over the years. The release of the structure of bovine rhodopsin in August 2000 enabled us to analyze models built before that period to learn more about the models we build today. We conclude that the GPCR modelling field is riddled with 'common knowledge' similar to Lord Kelvin's remark in 1895 that "heavier-than-air flying machines are impossible", and we summarize what we think are the (im)possibilities of modelling GPCRs using the coordinates of bovine rhodopsin as a template. Associated WWW pages: http://www.gpcr.org/ articles/2003_mod/. (C) 2004 Federation of European Biochemical Societies. Published by Elsevier B.V. All rights reserved.
- Published
- 2004
28. PhyloPat: an updated version of the phylogenetic pattern database contains gene neighborhood
- Author
-
Hulsen, T., primary, Groenen, P. M. A., additional, de Vlieg, J., additional, and Alkema, W., additional
- Published
- 2009
- Full Text
- View/download PDF
29. Evolution of Closely Linked Gene Pairs in Vertebrate Genomes
- Author
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Franck, E., primary, Hulsen, T., additional, Huynen, M. A., additional, de Jong, W. W., additional, Lubsen, N. H., additional, and Madsen, O., additional
- Published
- 2008
- Full Text
- View/download PDF
30. Heavier-than-air flying machines are impossible
- Author
-
Oliveira, L, primary, Hulsen, T, additional, Lutje Hulsik, D, additional, Paiva, A.C.M, additional, and Vriend, G, additional
- Published
- 2004
- Full Text
- View/download PDF
31. Identification of new biomarker candidates for glucocorticoid induced insulin resistance using literature mining
- Author
-
Fleuren Wilco WM, Toonen Erik JM, Verhoeven Stefan, Frijters Raoul, Hulsen Tim, Rullmann Ton, van Schaik René, de Vlieg Jacob, and Alkema Wynand
- Subjects
Literature mining ,Insulin resistance ,Glucocorticoids ,Gene networks ,Computer applications to medicine. Medical informatics ,R858-859.7 ,Analysis ,QA299.6-433 - Abstract
Abstract Background Glucocorticoids are potent anti-inflammatory agents used for the treatment of diseases such as rheumatoid arthritis, asthma, inflammatory bowel disease and psoriasis. Unfortunately, usage is limited because of metabolic side-effects, e.g. insulin resistance, glucose intolerance and diabetes. To gain more insight into the mechanisms behind glucocorticoid induced insulin resistance, it is important to understand which genes play a role in the development of insulin resistance and which genes are affected by glucocorticoids. Medline abstracts contain many studies about insulin resistance and the molecular effects of glucocorticoids and thus are a good resource to study these effects. Results We developed CoPubGene a method to automatically identify gene-disease associations in Medline abstracts. We used this method to create a literature network of genes related to insulin resistance and to evaluate the importance of the genes in this network for glucocorticoid induced metabolic side effects and anti-inflammatory processes. With this approach we found several genes that already are considered markers of GC induced IR, such as phosphoenolpyruvate carboxykinase (PCK) and glucose-6-phosphatase, catalytic subunit (G6PC). In addition, we found genes involved in steroid synthesis that have not yet been recognized as mediators of GC induced IR. Conclusions With this approach we are able to construct a robust informative literature network of insulin resistance related genes that gave new insights to better understand the mechanisms behind GC induced IR. The method has been set up in a generic way so it can be applied to a wide variety of disease networks.
- Published
- 2013
- Full Text
- View/download PDF
32. BioVenn – a web application for the comparison and visualization of biological lists using area-proportional Venn diagrams
- Author
-
de Vlieg Jacob, Hulsen Tim, and Alkema Wynand
- Subjects
Biotechnology ,TP248.13-248.65 ,Genetics ,QH426-470 - Abstract
Abstract Background In many genomics projects, numerous lists containing biological identifiers are produced. Often it is useful to see the overlap between different lists, enabling researchers to quickly observe similarities and differences between the data sets they are analyzing. One of the most popular methods to visualize the overlap and differences between data sets is the Venn diagram: a diagram consisting of two or more circles in which each circle corresponds to a data set, and the overlap between the circles corresponds to the overlap between the data sets. Venn diagrams are especially useful when they are 'area-proportional' i.e. the sizes of the circles and the overlaps correspond to the sizes of the data sets. Currently there are no programs available that can create area-proportional Venn diagrams connected to a wide range of biological databases. Results We designed a web application named BioVenn to summarize the overlap between two or three lists of identifiers, using area-proportional Venn diagrams. The user only needs to input these lists of identifiers in the textboxes and push the submit button. Parameters like colors and text size can be adjusted easily through the web interface. The position of the text can be adjusted by 'drag-and-drop' principle. The output Venn diagram can be shown as an SVG or PNG image embedded in the web application, or as a standalone SVG or PNG image. The latter option is useful for batch queries. Besides the Venn diagram, BioVenn outputs lists of identifiers for each of the resulting subsets. If an identifier is recognized as belonging to one of the supported biological databases, the output is linked to that database. Finally, BioVenn can map Affymetrix and EntrezGene identifiers to Ensembl genes. Conclusion BioVenn is an easy-to-use web application to generate area-proportional Venn diagrams from lists of biological identifiers. It supports a wide range of identifiers from the most used biological databases currently available. Its implementation on the World Wide Web makes it available for use on any computer with internet connection, independent of operating system and without the need to install programs locally. BioVenn is freely accessible at http://www.cmbi.ru.nl/cdd/biovenn/.
- Published
- 2008
- Full Text
- View/download PDF
33. Testing statistical significance scores of sequence comparison methods with structure similarity
- Author
-
Leunissen Jack AM, de Vlieg Jacob, Hulsen Tim, and Groenen Peter MA
- Subjects
Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background In the past years the Smith-Waterman sequence comparison algorithm has gained popularity due to improved implementations and rapidly increasing computing power. However, the quality and sensitivity of a database search is not only determined by the algorithm but also by the statistical significance testing for an alignment. The e-value is the most commonly used statistical validation method for sequence database searching. The CluSTr database and the Protein World database have been created using an alternative statistical significance test: a Z-score based on Monte-Carlo statistics. Several papers have described the superiority of the Z-score as compared to the e-value, using simulated data. We were interested if this could be validated when applied to existing, evolutionary related protein sequences. Results All experiments are performed on the ASTRAL SCOP database. The Smith-Waterman sequence comparison algorithm with both e-value and Z-score statistics is evaluated, using ROC, CVE and AP measures. The BLAST and FASTA algorithms are used as reference. We find that two out of three Smith-Waterman implementations with e-value are better at predicting structural similarities between proteins than the Smith-Waterman implementation with Z-score. SSEARCH especially has very high scores. Conclusion The compute intensive Z-score does not have a clear advantage over the e-value. The Smith-Waterman implementations give generally better results than their heuristic counterparts. We recommend using the SSEARCH algorithm combined with e-values for pairwise sequence comparisons.
- Published
- 2006
- Full Text
- View/download PDF
34. PhyloPat: phylogenetic pattern analysis of eukaryotic genes
- Author
-
de Vlieg Jacob, Hulsen Tim, and Groenen Peter MA
- Subjects
Computer applications to medicine. Medical informatics ,R858-859.7 ,Biology (General) ,QH301-705.5 - Abstract
Abstract Background Phylogenetic patterns show the presence or absence of certain genes or proteins in a set of species. They can also be used to determine sets of genes or proteins that occur only in certain evolutionary branches. Phylogenetic patterns analysis has routinely been applied to protein databases such as COG and OrthoMCL, but not upon gene databases. Here we present a tool named PhyloPat which allows the complete Ensembl gene database to be queried using phylogenetic patterns. Description PhyloPat is an easy-to-use webserver, which can be used to query the orthologies of all complete genomes within the EnsMart database using phylogenetic patterns. This enables the determination of sets of genes that occur only in certain evolutionary branches or even single species. We found in total 446,825 genes and 3,164,088 orthologous relationships within the EnsMart v40 database. We used a single linkage clustering algorithm to create 147,922 phylogenetic lineages, using every one of the orthologies provided by Ensembl. PhyloPat provides the possibility of querying with either binary phylogenetic patterns (created by checkboxes) or regular expressions. Specific branches of a phylogenetic tree of the 21 included species can be selected to create a branch-specific phylogenetic pattern. Users can also input a list of Ensembl or EMBL IDs to check which phylogenetic lineage any gene belongs to. The output can be saved in HTML, Excel or plain text format for further analysis. A link to the FatiGO web interface has been incorporated in the HTML output, creating easy access to functional information. Finally, lists of omnipresent, polypresent and oligopresent genes have been included. Conclusion PhyloPat is the first tool to combine complete genome information with phylogenetic pattern querying. Since we used the orthologies generated by the accurate pipeline of Ensembl, the obtained phylogenetic lineages are reliable. The completeness and reliability of these phylogenetic lineages will further increase with the addition of newly found orthologous relationships within each new Ensembl release.
- Published
- 2006
- Full Text
- View/download PDF
35. Can direct conversion of used nitrogen to new feed and protein help feed the world?
- Author
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Tim Hülsen, Silvio Matassa, Jerald L. Schnoor, Willy Verstraete, Damien J. Batstone, Matassa, S., Batstone, D. J., Hulsen, T., Schnoor, J., and Verstraete, W.
- Subjects
education.field_of_study ,Conservation of Natural Resources ,Waste management ,Reactive nitrogen ,Animal feed ,Nitrogen ,fungi ,Population ,food and beverages ,chemistry.chemical_element ,Agriculture ,General Chemistry ,Nitrogen Cycle ,Animal Feed ,Anaerobic digestion ,Waste treatment ,chemistry ,Environmental Chemistry ,Environmental science ,Sewage treatment ,Recycling ,Dietary Proteins ,education ,Resource recovery - Abstract
The increase in the world population, vulnerability of conventional crop production to climate change, and population shifts to megacities justify a re-examination of current methods of converting reactive nitrogen to dinitrogen gas in sewage and waste treatment plants. Indeed, by up-grading treatment plants to factories in which the incoming materials are first deconstructed to units such as ammonia, carbon dioxide and clean minerals, one can implement a highly intensive and efficient microbial resynthesis process in which the used nitrogen is harvested as microbial protein (at efficiencies close to 100%). This can be used for animal feed and food purposes. The technology for recovery of reactive nitrogen as microbial protein is available but a change of mindset needs to be achieved to make such recovery acceptable.
- Published
- 2015
36. PIONEER big data platform for prostate cancer: lessons for advancing future real-world evidence research.
- Author
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Lawlor A, Beyer K, Russell B, Steinbeisser C, Bjartell A, De Meulder B, Omar MI, Hulsen T, Butler J, N'Dow J, Rivas JG, Gandaglia G, Nicoletti R, Sakalis V, Smith EJ, Maass M, Zong J, Fullwood L, Abbott T, Tafreshiha A, Papineni K, Snijder R, Horgan D, Seager S, Evans-Axelsson S, Ribal MJ, Roobol MJ, and Van Hemelrijck M
- Abstract
Prostate Cancer Diagnosis and Treatment Enhancement through the Power of Big Data in Europe (PIONEER) is a European network of excellence for big data in prostate cancer. PIONEER brings together 34 private and public stakeholders from 9 countries in one multidisciplinary research consortium with the aim of positively transforming the field of prostate cancer clinical care by answering pressing questions related to prostate cancer screening, diagnosis and treatment. PIONEER has developed a unique state-of-the-art big data analytic platform by integrating existing data sources from patients with prostate cancer. PIONEER leveraged this platform to address prioritized research questions, filling knowledge gaps in the characterization, management and core outcomes of prostate cancer across the different disease stages. The network has benefited from sustained patient and stakeholder involvement and engagement, but many challenges remain when using real-world data for big data projects. To continue to advance prostate cancer care, data need to be available, suitable methodologies should be selected and mechanisms for knowledge sharing must be in place. Now acting as the prostate cancer arm of the European Association of Urology's new endeavour, UroEvidenceHub, PIONEER maintains its goal of maximizing the potential of big data to improve prostate cancer care., (© 2024. Springer Nature Limited.)
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- 2024
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37. Guest Editorial: Big data and artificial intelligence in healthcare.
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Hulsen T and Manni F
- Abstract
Competing Interests: The authors declare no conflict of interest.
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- 2024
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38. Clinical Characterization of Patients Diagnosed with Prostate Cancer and Undergoing Conservative Management: A PIONEER Analysis Based on Big Data.
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Gandaglia G, Pellegrino F, Golozar A, De Meulder B, Abbott T, Achtman A, Imran Omar M, Alshammari T, Areia C, Asiimwe A, Beyer K, Bjartell A, Campi R, Cornford P, Falconer T, Feng Q, Gong M, Herrera R, Hughes N, Hulsen T, Kinnaird A, Lai LYH, Maresca G, Mottet N, Oja M, Prinsen P, Reich C, Remmers S, Roobol MJ, Sakalis V, Seager S, Smith EJ, Snijder R, Steinbeisser C, Thurin NH, Hijazy A, van Bochove K, Van den Bergh RCN, Van Hemelrijck M, Willemse PP, Williams AE, Zounemat Kermani N, Evans-Axelsson S, Briganti A, and N'Dow J
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- Male, Adult, Humans, Big Data, Disease-Free Survival, Europe, Diabetes Mellitus, Type 2, Prostatic Neoplasms therapy, Prostatic Neoplasms diagnosis
- Abstract
Background: Conservative management is an option for prostate cancer (PCa) patients either with the objective of delaying or even avoiding curative therapy, or to wait until palliative treatment is needed. PIONEER, funded by the European Commission Innovative Medicines Initiative, aims at improving PCa care across Europe through the application of big data analytics., Objective: To describe the clinical characteristics and long-term outcomes of PCa patients on conservative management by using an international large network of real-world data., Design, Setting, and Participants: From an initial cohort of >100 000 000 adult individuals included in eight databases evaluated during a virtual study-a-thon hosted by PIONEER, we identified newly diagnosed PCa cases (n = 527 311). Among those, we selected patients who did not receive curative or palliative treatment within 6 mo from diagnosis (n = 123 146)., Outcome Measurements and Statistical Analysis: Patient and disease characteristics were reported. The number of patients who experienced the main study outcomes was quantified for each stratum and the overall cohort. Kaplan-Meier analyses were used to estimate the distribution of time to event data., Results and Limitations: The most common comorbidities were hypertension (35-73%), obesity (9.2-54%), and type 2 diabetes (11-28%). The rate of PCa-related symptomatic progression ranged between 2.6% and 6.2%. Hospitalization (12-25%) and emergency department visits (10-14%) were common events during the 1st year of follow-up. The probability of being free from both palliative and curative treatments decreased during follow-up. Limitations include a lack of information on patients and disease characteristics and on treatment intent., Conclusions: Our results allow us to better understand the current landscape of patients with PCa managed with conservative treatment. PIONEER offers a unique opportunity to characterize the baseline features and outcomes of PCa patients managed conservatively using real-world data., Patient Summary: Up to 25% of men with prostate cancer (PCa) managed conservatively experienced hospitalization and emergency department visits within the 1st year after diagnosis; 6% experienced PCa-related symptoms. The probability of receiving therapies for PCa decreased according to time elapsed after the diagnosis., (Copyright © 2023 The Author(s). Published by Elsevier B.V. All rights reserved.)
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- 2024
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39. Research Protocol for an Observational Health Data Analysis on the Adverse Events of Systemic Treatment in Patients with Metastatic Hormone-sensitive Prostate Cancer: Big Data Analytics Using the PIONEER Platform.
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Rajwa P, Borkowetz A, Abbott T, Alberti A, Bjartell A, Brash JT, Campi R, Chilelli A, Conover M, Constantinovici N, Davies E, De Meulder B, Eid S, Gacci M, Golozar A, Hafeez H, Haque S, Hijazy A, Hulsen T, Josefsson A, Khalid S, Kolde R, Kotik D, Kurki S, Lambrecht M, Leung CH, Moreno J, Nicoletti R, Nieboer D, Oja M, Palanisamy S, Prinsen P, Reich C, Raffaele Resta G, Ribal MJ, Gómez Rivas J, Smith E, Snijder R, Steinbeisser C, Vandenberghe F, Cornford P, Evans-Axelsson S, N'Dow J, and Willemse PM
- Abstract
Combination therapies in metastatic hormone-sensitive prostate cancer (mHSPC), which include the addition of an androgen receptor signaling inhibitor and/or docetaxel to androgen deprivation therapy, have been a game changer in the management of this disease stage. However, these therapies come with their fair share of toxicities and side effects. The goal of this observational study is to report drug-related adverse events (AEs), which are correlated with systemic combination therapies for mHSPC. Determining the optimal treatment option requires large cohorts to estimate the tolerability and AEs of these combination therapies in "real-life" patients with mHSPC, as provided in this study. We use a network of databases that includes population-based registries, electronic health records, and insurance claims, containing the overall target population and subgroups of patients defined by unique certain characteristics, demographics, and comorbidities, to compute the incidence of common AEs associated with systemic therapies in the setting of mHSPC. These data sources are standardised using the Observational Medical Outcomes Partnership Common Data Model. We perform the descriptive statistics as well as calculate the AE incidence rate separately for each treatment group, stratified by age groups and index year. The time until the first event is estimated using the Kaplan-Meier method within each age group. In the case of episodic events, the anticipated mean cumulative counts of events are calculated. Our study will allow clinicians to tailor optimal therapies for mHSPC patients, and they will serve as a basis for comparative method studies., (© 2024 The Authors.)
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- 2024
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40. Development and validation of a novel stemness-related prognostic model for neuroblastoma using integrated machine learning and bioinformatics analyses.
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Xia Y, Wang C, Li X, Gao M, Hogg HDJ, Tunthanathip T, Hulsen T, Tian X, and Zhao Q
- Abstract
Background: Neuroblastoma (NB) is a common solid tumor in children, with a dismal prognosis in high-risk cases. Despite advancements in NB treatment, the clinical need for precise prognostic models remains critical, particularly to address the heterogeneity of cancer stemness which plays a pivotal role in tumor aggressiveness and patient outcomes. By utilizing machine learning (ML) techniques, we aimed to explore the cancer stemness features in NB and identify stemness-related hub genes for future investigation and potential targeted therapy., Methods: The public dataset GSE49710 was employed as the training set for acquire gene expression data and NB sample information, including age, stage, and MYCN amplification status and survival. The messenger RNA (mRNA) expression-based stemness index (mRNAsi) was calculated and patients were grouped according to their mRNAsi value. Stemness-related hub genes were identified from the differentially expressed genes (DEGs) to construct a gene signature. This was followed by evaluating the relationship between cancer stemness and the NB immune microenvironment, and the development of a predictive nomogram. We assessed the prognostic outcomes including overall survival (OS) and event-free survival, employing machine learning methods to measure predictive accuracy through concordance indices and validation in an independent cohort E-MTAB-8248., Results: Based on mRNAsi, we categorized NB patients into two groups to explore the association between varying levels of stemness and their clinical outcomes. High mRNAsi was linked to the advanced International Neuroblastoma Staging System (INSS) stage, amplified MYCN, and elder age. High mRNAsi patients had a significantly poorer prognosis than low mRNAsi cases. According to the multivariate Cox analysis, the mRNAsi was an independent risk factor of prognosis in NB patients. After least absolute shrinkage and selection operator (LASSO) regression analysis, four key genes ( ERCC6L, DUXAP10, NCAN, DIRAS3 ) most related to mRNAsi scores were discovered and a risk model was built. Our model demonstrated a significant prognostic capacity with hazard ratios (HR) ranging from 18.96 to 41.20, P values below 0.0001, and area under the receiver operating characteristic curve (AUC) values of 0.918 in the training set, suggesting high predictive accuracy which was further confirmed by external verification. Individuals with a low four-gene signature score had a favorable outcome and better immune responses. Finally, a nomogram for clinical practice was constructed by integrating the four-gene signature and INSS stage., Conclusions: Our findings confirm the influence of CSC features in NB prognosis. The newly developed NB stemness-related four-gene signature prognostic signature could facilitate the prognostic prediction, and the identified hub genes may serve as promising targets for individualized treatments., Competing Interests: Conflicts of Interest: All authors have completed the ICMJE uniform disclosure form (available at https://tp.amegroups.com/article/view/10.21037/tp-23-582/coif). H.D.J.H. has been supported in reviewing this manuscript through the National Institute for Health Research (NIHR) doctoral fellowship award, which had no role in the design or delivery of this study. T.H. is an employee of Philips and an editor for several scientific journals, outside the submitted work. The other authors have no conflicts of interest to declare., (2024 Translational Pediatrics. All rights reserved.)
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- 2024
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41. From big data to better patient outcomes.
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Hulsen T, Friedecký D, Renz H, Melis E, Vermeersch P, and Fernandez-Calle P
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- Humans, Algorithms, Delivery of Health Care, Precision Medicine methods, Big Data, Artificial Intelligence
- Abstract
Among medical specialties, laboratory medicine is the largest producer of structured data and must play a crucial role for the efficient and safe implementation of big data and artificial intelligence in healthcare. The area of personalized therapies and precision medicine has now arrived, with huge data sets not only used for experimental and research approaches, but also in the " real world ". Analysis of real world data requires development of legal, procedural and technical infrastructure. The integration of all clinical data sets for any given patient is important and necessary in order to develop a patient-centered treatment approach. Data-driven research comes with its own challenges and solutions. The Findability, Accessibility, Interoperability, and Reusability (FAIR) Guiding Principles provide guidelines to make data findable, accessible, interoperable and reusable to the research community. Federated learning, standards and ontologies are useful to improve robustness of artificial intelligence algorithms working on big data and to increase trust in these algorithms. When dealing with big data, the univariate statistical approach changes to multivariate statistical methods significantly shifting the potential of big data. Combining multiple omics gives previously unsuspected information and provides understanding of scientific questions, an approach which is also called the systems biology approach. Big data and artificial intelligence also offer opportunities for laboratories and the In Vitro Diagnostic industry to optimize the productivity of the laboratory, the quality of laboratory results and ultimately patient outcomes, through tools such as predictive maintenance and "moving average" based on the aggregate of patient results., (© 2022 Walter de Gruyter GmbH, Berlin/Boston.)
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- 2022
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42. Literature analysis of artificial intelligence in biomedicine.
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Hulsen T
- Abstract
Artificial intelligence (AI) refers to the simulation of human intelligence in machines, using machine learning (ML), deep learning (DL) and neural networks (NNs). AI enables machines to learn from experience and perform human-like tasks. The field of AI research has been developing fast over the past five to ten years, due to the rise of 'big data' and increasing computing power. In the medical area, AI can be used to improve diagnosis, prognosis, treatment, surgery, drug discovery, or for other applications. Therefore, both academia and industry are investing a lot in AI. This review investigates the biomedical literature (in the PubMed and Embase databases) by looking at bibliographical data, observing trends over time and occurrences of keywords. Some observations are made: AI has been growing exponentially over the past few years; it is used mostly for diagnosis; COVID-19 is already in the top-3 of diseases studied using AI; China, the United States, South Korea, the United Kingdom and Canada are publishing the most articles in AI research; Stanford University is the world's leading university in AI research; and convolutional NNs are by far the most popular DL algorithms at this moment. These trends could be studied in more detail, by studying more literature databases or by including patent databases. More advanced analyses could be used to predict in which direction AI will develop over the coming years. The expectation is that AI will keep on growing, in spite of stricter privacy laws, more need for standardization, bias in the data, and the need for building trust., Competing Interests: Conflicts of Interest: The author has completed the ICMJE uniform disclosure form (available at https://atm.amegroups.com/article/view/10.21037/atm-2022-50/coif). The series “Big Data in Precision Medicine” was commissioned by the editorial office without any funding or sponsorship. The author is an employee of Philips Research; as an expert in the area of big data and precision medicine, the author writes publications, book chapters and patents, presents at conferences and serves as guest editor for scientific journals; and served as an unpaid Guest Editor of the series. The author has no other conflicts of interest to declare., (2022 Annals of Translational Medicine. All rights reserved.)
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- 2022
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43. Editorial: AI in Healthcare: From Data to Intelligence.
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Hulsen T, Petkovic M, Varga OE, and Jamuar SS
- Abstract
Competing Interests: TH and MP are employed by Philips. SJ is a co-founder of Global Gene Corp. The remaining author declares that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
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- 2022
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44. Data Science in Healthcare: COVID-19 and Beyond.
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Hulsen T
- Subjects
- Artificial Intelligence, Delivery of Health Care, Health Facilities, Humans, COVID-19 epidemiology, Data Science
- Abstract
Data science is an interdisciplinary field that applies numerous techniques, such as machine learning (ML), neural networks (NN) and artificial intelligence (AI), to create value, based on extracting knowledge and insights from available 'big' data [...].
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- 2022
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45. The ReIMAGINE Multimodal Warehouse: Using Artificial Intelligence for Accurate Risk Stratification of Prostate Cancer.
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Santaolalla A, Hulsen T, Davis J, Ahmed HU, Moore CM, Punwani S, Attard G, McCartan N, Emberton M, Coolen A, and Van Hemelrijck M
- Abstract
Introduction. Prostate cancer (PCa) is the most frequent cancer diagnosis in men worldwide. Our ability to identify those men whose cancer will decrease their lifespan and/or quality of life remains poor. The ReIMAGINE Consortium has been established to improve PCa diagnosis. Materials and methods. MRI will likely become the future cornerstone of the risk-stratification process for men at risk of early prostate cancer. We will, for the first time, be able to combine the underlying molecular changes in PCa with the state-of-the-art imaging. ReIMAGINE Screening invites men for MRI and PSA evaluation. ReIMAGINE Risk includes men at risk of prostate cancer based on MRI, and includes biomarker testing. Results. Baseline clinical information, genomics, blood, urine, fresh prostate tissue samples, digital pathology and radiomics data will be analysed. Data will be de-identified, stored with correlated mpMRI disease endotypes and linked with long term follow-up outcomes in an instance of the Philips Clinical Data Lake, consisting of cloud-based software. The ReIMAGINE platform includes application programming interfaces and a user interface that allows users to browse data, select cohorts, manage users and access rights, query data, and more. Connection to analytics tools such as Python allows statistical and stratification method pipelines to run profiling regression analyses. Discussion. The ReIMAGINE Multimodal Warehouse comprises a unique data source for PCa research, to improve risk stratification for PCa and inform clinical practice. The de-identified dataset characterized by clinical, imaging, genomics and digital pathology PCa patient phenotypes will be a valuable resource for the scientific and medical community., Competing Interests: TH is employed by Philips Research. JD is employed by Philips. HA research is supported by core funding from the United Kingdom’s National Institute of Health Research (NIHR) Imperial Biomedical Research Centre. He currently receives funding from the Wellcome Trust, Medical Research Council (UK), Cancer Research UK, Prostate Cancer UK, National Institute for Health Research (UK), The Urology Foundation, BMA Foundation, Imperial Health Charity, NIHR Imperial BRC, Sonacare Inc, Trod Medical and Sophiris Biocorp for trials in prostate cancer. He was a paid medical consultant for Sophiris Biocorp in the previous 3 years. He is a proctor for HIFU and cryotherapy and paid for training other surgeons in this procedure. CM is supported by the National Institute for Health Research, and has funding from Movember, Prostate Cancer UK, Cancer Research UK and The Urology Foundation. She has received speaker fees from Astellas and Janssen, and is paid for training surgeons in focal therapy procedures. ME serves as a consultant/educator/trainer for Sonacare, Exact Imaging, Angiodynamics, and Profound Medical; and receives research support from the NIHR UCLH/UCL Biomedical Research Centre. AC receives funding from Cancer Research UK and is director of Saddle Point Science. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest., (Copyright © 2021 Santaolalla, Hulsen, Davis, Ahmed, Moore, Punwani, Attard, McCartan, Emberton, Coolen and Van Hemelrijck.)
- Published
- 2021
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46. Sharing Is Caring-Data Sharing Initiatives in Healthcare.
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Hulsen T
- Subjects
- Female, Hospitals, Humans, Male, Ownership, Publishing, Delivery of Health Care, Information Dissemination
- Abstract
In recent years, more and more health data are being generated. These data come not only from professional health systems, but also from wearable devices. All these 'big data' put together can be utilized to optimize treatments for each unique patient ('precision medicine'). For this to be possible, it is necessary that hospitals, academia and industry work together to bridge the 'valley of death' of translational medicine. However, hospitals and academia often are reluctant to share their data with other parties, even though the patient is actually the owner of his/her own health data. Academic hospitals usually invest a lot of time in setting up clinical trials and collecting data, and want to be the first ones to publish papers on this data. There are some publicly available datasets, but these are usually only shared after study (and publication) completion, which means a severe delay of months or even years before others can analyse the data. One solution is to incentivize the hospitals to share their data with (other) academic institutes and the industry. Here, we show an analysis of the current literature around data sharing, and we discuss five aspects of data sharing in the medical domain: publisher requirements, data ownership, growing support for data sharing, data sharing initiatives and how the use of federated data might be a solution. We also discuss some potential future developments around data sharing, such as medical crowdsourcing and data generalists.
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- 2020
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47. Consistent Biopsy Quality and Gleason Grading Within the Global Active Surveillance Global Action Plan 3 Initiative: A Prerequisite for Future Studies.
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van der Kwast TH, Helleman J, Nieboer D, Bruinsma SM, Roobol MJ, Trock B, Ehdaie B, Carroll P, Filson C, Kim J, Logothetis C, Morgan T, Klotz L, Pickles T, Hyndman E, Moore CM, Gnanapragasam V, Van Hemelrijck M, Dasgupta P, Bangma C, Roobol M, Villers A, Rannikko A, Valdagni R, Perry A, Hugosson J, Rubio-Briones J, Bjartell A, Hefermehl L, Shiong LL, Frydenberg M, Kakehi Y, Chung BH, van der Kwast T, Obbink H, van der Linden W, Hulsen T, de Jonge C, Kattan M, Xinge J, Muir K, Lophatananon A, Fahey M, Steyerberg E, Nieboer D, Zhang L, Guo W, Benfante N, Cowan J, Patil D, Tolosa E, Kim TK, Mamedov A, LaPointe V, Crump T, Kimberly-Duffell J, Santaolalla A, Nieboer D, Olivier JT, Rancati T, Ahlgren H, Mascarós J, Löfgren A, Lehmann K, Lin CH, Hirama H, Lee KS, Jenster G, Auvinen A, Bjartell A, Haider M, van Bochove K, Carter B, Gledhill S, Buzza M, Bangma C, Roobol M, Bruinsma S, and Helleman J
- Subjects
- Biopsy standards, Biopsy statistics & numerical data, Humans, Male, Neoplasm Grading, Quality of Health Care, Watchful Waiting organization & administration, Watchful Waiting statistics & numerical data, Prostatic Neoplasms pathology, Watchful Waiting standards
- Abstract
Within the Movember Foundation's Global Action Plan Prostate Cancer Active Surveillance (GAP3) initiative, 25 centers across the globe collaborate to standardize active surveillance (AS) protocols for men with low-risk prostate cancer (PCa). A centralized PCa AS database, comprising data of more than 15000 patients worldwide, was created. Comparability of the histopathology between the different cohorts was assessed by a centralized pathology review of 445 biopsies from 15 GAP3 centers. Grade group 1 (Gleason score 6) in 85% and grade group ≥2 (Gleason score ≥7) in 15% showed 89% concordance at review with moderate agreement (κ=0.56). Average biopsy core length was similar among the analyzed cohorts. Recently established highly adverse pathologies, including cribriform and/or intraductal carcinoma, were observed in 3.6% of the reviewed biopsies. In conclusion, the centralized pathology review of 445 biopsies revealed comparable histopathology among the 15 GAP3 centers with a low frequency of high-risk features. This enables further data analyses-without correction-toward uniform global AS guidelines for men with low-risk PCa. PATIENT SUMMARY: Movember Foundation's Global Action Plan Prostate Cancer Active Surveillance (GAP3) initiative combines data from 15000 men with low-risk prostate cancer (PCa) across the globe to standardize active surveillance protocols. Histopathology review confirmed that the histopathology was consistent with low-risk PCa in most men and comparable between different centers., (Crown Copyright © 2018. Published by Elsevier B.V. All rights reserved.)
- Published
- 2019
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48. From Big Data to Precision Medicine.
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Hulsen T, Jamuar SS, Moody AR, Karnes JH, Varga O, Hedensted S, Spreafico R, Hafler DA, and McKinney EF
- Abstract
For over a decade the term "Big data" has been used to describe the rapid increase in volume, variety and velocity of information available, not just in medical research but in almost every aspect of our lives. As scientists, we now have the capacity to rapidly generate, store and analyse data that, only a few years ago, would have taken many years to compile. However, "Big data" no longer means what it once did. The term has expanded and now refers not to just large data volume, but to our increasing ability to analyse and interpret those data. Tautologies such as "data analytics" and "data science" have emerged to describe approaches to the volume of available information as it grows ever larger. New methods dedicated to improving data collection, storage, cleaning, processing and interpretation continue to be developed, although not always by, or for, medical researchers. Exploiting new tools to extract meaning from large volume information has the potential to drive real change in clinical practice, from personalized therapy and intelligent drug design to population screening and electronic health record mining. As ever, where new technology promises "Big Advances," significant challenges remain. Here we discuss both the opportunities and challenges posed to biomedical research by our increasing ability to tackle large datasets. Important challenges include the need for standardization of data content, format, and clinical definitions, a heightened need for collaborative networks with sharing of both data and expertise and, perhaps most importantly, a need to reconsider how and when analytic methodology is taught to medical researchers. We also set "Big data" analytics in context: recent advances may appear to promise a revolution, sweeping away conventional approaches to medical science. However, their real promise lies in their synergy with, not replacement of, classical hypothesis-driven methods. The generation of novel, data-driven hypotheses based on interpretable models will always require stringent validation and experimental testing. Thus, hypothesis-generating research founded on large datasets adds to, rather than replaces, traditional hypothesis driven science. Each can benefit from the other and it is through using both that we can improve clinical practice.
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- 2019
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49. An overview of publicly available patient-centered prostate cancer datasets.
- Author
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Hulsen T
- Abstract
Prostate cancer (PCa) is the second most common cancer in men, and the second leading cause of death from cancer in men. Many studies on PCa have been carried out, each taking much time before the data is collected and ready to be analyzed. However, on the internet there is already a wide range of PCa datasets available, which could be used for data mining, predictive modelling or other purposes, reducing the need to setup new studies to collect data. In the current scientific climate, moving more and more to the analysis of "big data" and large, international, multi-site projects using a modern IT infrastructure, these datasets could be proven extremely valuable. This review presents an overview of publicly available patient-centered PCa datasets, divided into three categories (clinical, genomics and imaging) and an "overall" section to enable researchers to select a suitable dataset for analysis, without having to go through days of work to find the right data. To acquire a list of human PCa databases, scientific literature databases and academic social network sites were searched. We also used the information from other reviews. All databases in the combined list were then checked for public availability. Only databases that were either directly publicly available or available after signing a research data agreement or retrieving a free login were selected for inclusion in this review. Data should be available to commercial parties as well. This paper focuses on patient-centered data, so the genomics data section does not include gene-centered databases or pathway-centered databases. We identified 42 publicly available, patient-centered PCa datasets. Some of these consist of different smaller datasets. Some of them contain combinations of datasets from the three data domains: clinical data, imaging data and genomics data. Only one dataset contains information from all three domains. This review presents all datasets and their characteristics: number of subjects, clinical fields, imaging modalities, expression data, mutation data, biomarker measurements, etc. Despite all the attention that has been given to making this overview of publicly available databases as extensive as possible, it is very likely not complete, and will also be outdated soon. However, this review might help many PCa researchers to find suitable datasets to answer the research question with, without the need to start a new data collection project. In the coming era of big data analysis, overviews like this are becoming more and more useful., Competing Interests: Conflicts of Interest: Dr. Hulsen is employed by Philips Research. This manuscript assumes that the datasets listed here were collected in a GDPR compliant manner.
- Published
- 2019
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50. The construction of genome-based transcriptional units.
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van Hooff SR, Koster J, Hulsen T, van Schaik BD, Roos M, van Batenburg MF, Versteeg R, and van Kampen AH
- Subjects
- Cluster Analysis, Expressed Sequence Tags, Humans, RNA, Messenger genetics, Genome, Transcription, Genetic
- Abstract
Gene-oriented sequence clusters (transcriptional units) have found many applications in genomics research including the construction of transcriptome maps and identification of splice variants. We developed a new method to construct transcriptional that uses the genomic sequence as a template. We present and discuss our method in detail together with an evaluation of the transcriptional units for human. We constructed 33,007 and 27,792 transcriptional units for human and mouse, respectively. The sensitivity (81%) and specificity (90%) of our method compares favorably to other established methods. We evaluated the representation of experimentally validated and predicted intergenic spliced transcripts in humans and show that we correctly represent a large fraction of these cases by single transcriptional units. Our method performs well, but the evaluation of the final set of transcriptional units show that improvements to the algorithm are still possible. However, because the precise number and types of errors are difficult to track, it is not obvious how to significantly improve the algorithm. We believe that ongoing research efforts are necessary to further improve current methods. This should include detailed documentation, comparison, and evaluation of current methods.
- Published
- 2009
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