83 results on '"Peña-Chilet M"'
Search Results
2. Breast Cancer in Very Young Patients in a Spanish Cohort: Age as an Independent Bad Prognostic Indicator
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Martinez M, Oltra S, Peña-Chilet M, Alonso E, Hernando C, Burgues O, Chirivella I, Bermejo B, Lluch A, and Ribas G
- Abstract
PURPOSE: Breast cancer (BC) in very young women (BCVY) is more aggressive than in older women. The purpose of this study was to evaluate the relevance of a range of clinico-pathological factors in the prognosis of BCVY patients. METHODS: We retrospectively analyzed 258 patients diagnosed with BCVY at our hospital from 1998 to 2014; the control group comprised 101 older patients with BC. We correlated clinicopathological factors, treatments, relapse and exitus with age and with previously published miRNA expression data. RESULTS: We identified some significant differences in risk factors between BCVY and older patients. The age at menarche, number of pregnancies, and age at first pregnancy were lower in the BCVY group and had a greater probability of recurrence and death in all cases. Lymph node-positive patients in the BCVY group are associated with a worse prognosis (P = .02), an immunohistochemical HER2+ subtype, and disease relapse (P =.03). Moreover, there was a shorter time between diagnosis and first relapse in BCVY patients compared with controls, and they were more likely to die from the disease (P = .002). Finally, from our panel of miRNAs deregulated in BC, reduced miR-30c expression was associated with more aggressive BC in very young patients, lower overall survival, and with axillary lymph node metastases. CONCLUSIONS: Patient age and axillary lymph node status post-surgery are independent and significant predictors of distant disease-free survival, local recurrence-free survival, and overall survival. The HER2+ subtype and lower miR-30c expression are related to poor prognosis in lymph node-positive young BC patients.
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- 2019
3. PO-373 Methylation deregulation of miRNAs promoters in breast cancer in very young women
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Sanchis, S. Oltra, primary, Peña-Chilet, M., additional, Vidal-Tomas, V., additional, Flower, K., additional, Martinez, M.T., additional, Alonso, E., additional, Burgues, O., additional, Lluch, A., additional, Flanagan, J.M., additional, and Ribas, G., additional
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- 2018
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4. PO-157 Estimation of functional effector genes reveals disease mechanisms in breast cancer in very young women
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Peña-Chilet, M., primary, Oltra, S.S., additional, Falco, M.M., additional, Dopazo, J., additional, and Ribas, G., additional
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- 2018
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5. Genetic 3'UTR variation is associated with human pigmentation characteristics and sensitivity to sunlight
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Hernando B, Peña-Chilet M, Ibarrola-Villava M, Martin-Gonzalez M, Gomez-Fernandez C, Ribas G, and Martinez-Cadenas C
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- 2017
6. Younger age as a prognostic indicator in breast cancer: Correlation between clinical-pathologic factors and miRNAs and long-term follow-up
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Martinez, M.T.M., primary, PeÑa-Chilet, M., additional, Oltra, S.S., additional, Perez-Fidalgo, J.A., additional, Alonso, E., additional, Burgues, O., additional, Gonzalez, I. Chirivella, additional, Bermejo, B., additional, Lluch-Hernandez, A., additional, and Ribas, G., additional
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- 2016
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7. Pathway deregulation networks in breast cancer young patients: Own data with METABRIC and TCGA databases
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Peña-Chilet, M., primary, Oltra, S.S., additional, Martinez, M.T., additional, Fores, J., additional, Ayala, G., additional, and Ribas, G., additional
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- 2016
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8. MicroRNA profile in very young women with breast cancer
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Peña-Chilet M, Martínez MT, Pérez-Fidalgo JA, Peiró-Chova L, Oltra SS, Tormo E, Alonso-Yuste E, Martinez-Delgado B, Eroles P, Climent J, Burgués O, Ferrer-Lozano J, Bosch A, Lluch A, and Ribas G
- Abstract
Breast cancer is rarely diagnosed in very young women (35 years old or younger), and it often presents with distinct clinical-pathological features related to a more aggressive phenotype and worse prognosis when diagnosed at this early age. A pending question is whether breast cancer in very young women arises from the deregulation of different underlying mechanisms, something that will make this disease an entity differentiated from breast cancer diagnosed in older patients.
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- 2014
9. Long telomere length and a TERT-CLPTM1 locus polymorphism association with melanoma risk
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Llorca-Cardeñosa MJ, Peña-Chilet M, Mayor M, Gomez-Fernandez C, Casado B, Martin-Gonzalez M, Carretero G, Lluch A, Martinez-Cadenas C, Ibarrola-Villava M, and Ribas G
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Case–control study, Cutaneous melanoma, Susceptibility, TERT-CLPTM1 locus, Telomere length ,Telomere length ,Susceptibility ,Case-control study ,TERT-CLPTM1 locus ,Cutaneous melanoma - Abstract
Telomere length has been associated with the development of cancer. Studies have shown that shorter telomere length may be related to a decreased risk of cutaneous melanoma. Furthermore, deregulation of the telomere-maintaining gene complexes, has been related to this oncogenic process. Some variants in these genes seem to be correlated with a change in telomerase expression. We examined the effect of 10 single nucleotide polymorphisms (SNPs) in the TERT gene (encoding telomerase), one SNP in the related TERT-CLPTM1L locus and one SNP in the TRF1 gene with telomere length, and its influence on melanoma risk in 970 Spanish cases and 733 Spanish controls. Genotypes were determined using KASP technology, and telomere length was measured by quantitative polymerase chain reaction (PCR) on DNA extracted from peripheral blood leucocytes. Our results demonstrate that shorter telomere length is associated with a decreased risk of melanoma in our population (global p-value, 2.69 x 10(-11)), which may be caused by a diminution of proliferative potential of nevi (melanoma precursor cells). We also obtained significant results when we tested the association between rs401681 variant (TERT-CLPTM1L locus) with melanoma risk (Odds ratio, OR; 95% confidence interval, CI = 1.24 (1.08-1.43); p-value, 3 x 10(-3)). This is the largest telomere-related study undertaken in a Spanish population to date. Furthermore, this study represents a comprehensive analysis of some of the most relevant telomere pathway genes in relation to cutaneous melanoma susceptibility. (C) 2014 Elsevier Ltd. All rights reserved.
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- 2014
10. Modeling MC1R rare variants: a structural evaluation of variants detected in a Mediterranean case-control study
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Ibarrola-Villava M, Peña-Chilet M, Llorca-Cardeñosa MJ, Oltra S, Cadenas CM, Bravo J, and Ribas G
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- 2014
11. Gender and eye colour prediction discrepancies: A reply to criticisms
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Martinez-Cadenas C, Peña-Chilet M, Llorca-Cardeñosa MJ, Cervera R, Ibarrola-Villava M, and Ribas G
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- 2014
12. 146 Molecular characterization of breast cancer cell lines from young women
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Oltra, S.S., primary, Peña-Chilet, M., additional, Martínez, M.T., additional, Llorca-Cardeñosa, M.J., additional, Tormo, E., additional, Eroles, P., additional, Lluch, A., additional, and Ribas, G., additional
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- 2015
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13. Differential microRNA expression in breast cancer patients aged 35 years or younger
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Ribas, G., primary, Peña-Chilet, M., additional, Oltra, S.S., additional, Martinez, M.T., additional, Lluch-Hernandez, A., additional, and Ayala, G., additional
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- 2015
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14. 185P - Younger age as a prognostic indicator in breast cancer: Correlation between clinical-pathologic factors and miRNAs and long-term follow-up
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Martinez, M.T.M., PeÑa-Chilet, M., Oltra, S.S., Perez-Fidalgo, J.A., Alonso, E., Burgues, O., Gonzalez, I. Chirivella, Bermejo, B., Lluch-Hernandez, A., and Ribas, G.
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- 2016
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15. 764 - Pathway deregulation networks in breast cancer young patients: Own data with METABRIC and TCGA databases
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Peña-Chilet, M., Oltra, S.S., Martinez, M.T., Fores, J., Ayala, G., and Ribas, G.
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- 2016
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16. Abstract P5-13-14: Breast cancer in very young patient is a more aggressive entity independent from breast cancer subtype
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Martínez, MT, primary, Peña-Chilet, M, additional, Perez-Fidalgo, JA, additional, Bosch, A, additional, Alonso, E, additional, Ferrer, J, additional, Burgues, O, additional, Bermejo, B, additional, Lluch, A, additional, and Ribas, G, additional
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- 2013
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17. Abstract P4-07-04: A distinctive miRNA profile highlights breast cancer in very young women (BCVY) as a new molecular subgroup
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Peña-Chilet, M, primary, Martinez, MT, additional, Perez-Fidalgo, JA, additional, Peiro-Chova, L, additional, Bermejo, B, additional, Ferrer, J, additional, Alonso, E, additional, Burgues, O, additional, Bosch, A, additional, Lluch, A, additional, and Ribas, G, additional
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- 2013
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18. 1151 SNP Rs3219090 in the DNA Repair PARP1 Gene Reinforces the Protective Role to Melanoma Susceptibility in Spanish Population
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Blanquer-Maceiras, M., primary, Peña-Chilet, M., additional, Ibarrola-Villava, M., additional, Martin-Gonzalez, M., additional, Gomez-Fernandez, C., additional, Casado, B., additional, Mayor, M., additional, Carretero, G., additional, Nagore, E., additional, and Ribas, G., additional
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- 2012
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19. 30P - Differential microRNA expression in breast cancer patients aged 35 years or younger
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Ribas, G., Peña-Chilet, M., Oltra, S.S., Martinez, M.T., Lluch-Hernandez, A., and Ayala, G.
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- 2015
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20. 58 Human DNArepair genes and genetic susceptibility to melanoma: a candidate gene approach using sequenom platform
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Ibarrola-Villava, M., primary, Peña-Chilet, M., additional, Avilés, J.A., additional, Feito, M., additional, Mayor, M., additional, Pizarro, A., additional, Martin-Gonzalez, M., additional, Lazaro, P., additional, and Ribas, G., additional
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- 2010
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21. HMGA1 regulates trabectedin sensitivity in advanced soft-tissue sarcoma (STS): A Spanish Group for Research on Sarcomas (GEIS) study.
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Moura DS, Mondaza-Hernandez JL, Sanchez-Bustos P, Peña-Chilet M, Cordero-Varela JA, Lopez-Alvarez M, Carrillo-Garcia J, Martin-Ruiz M, Romero-Gonzalez P, Renshaw-Calderon M, Ramos R, Marcilla D, Alvarez-Alegret R, Agra-Pujol C, Izquierdo F, Ortega-Medina L, Martin-Davila F, Hernandez-Leon CN, Romagosa C, Salgado MAV, Lavernia J, Bagué S, Mayodormo-Aranda E, Alvarez R, Valverde C, Martinez-Trufero J, Castilla-Ramirez C, Gutierrez A, Dopazo J, Hindi N, Garcia-Foncillas J, and Martin-Broto J
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- Humans, Animals, Cell Line, Tumor, Mice, Antineoplastic Agents, Alkylating pharmacology, Antineoplastic Agents, Alkylating therapeutic use, Drug Resistance, Neoplasm genetics, Drug Resistance, Neoplasm drug effects, TOR Serine-Threonine Kinases metabolism, Gene Expression Regulation, Neoplastic drug effects, Signal Transduction drug effects, Prognosis, Female, Leiomyosarcoma drug therapy, Leiomyosarcoma pathology, Leiomyosarcoma genetics, Leiomyosarcoma metabolism, Xenograft Model Antitumor Assays, Trabectedin pharmacology, Sarcoma drug therapy, Sarcoma pathology, Sarcoma genetics, Sarcoma metabolism, HMGA1a Protein metabolism, HMGA1a Protein genetics
- Abstract
HMGA1 is a structural epigenetic chromatin factor that has been associated with tumor progression and drug resistance. Here, we reported the prognostic/predictive value of HMGA1 for trabectedin in advanced soft-tissue sarcoma (STS) and the effect of inhibiting HMGA1 or the mTOR downstream pathway in trabectedin activity. The prognostic/predictive value of HMGA1 expression was assessed in a cohort of 301 STS patients at mRNA (n = 133) and protein level (n = 272), by HTG EdgeSeq transcriptomics and immunohistochemistry, respectively. The effect of HMGA1 silencing on trabectedin activity and gene expression profiling was measured in leiomyosarcoma cells. The effect of combining mTOR inhibitors with trabectedin was assessed on cell viability in vitro studies, whereas in vivo studies tested the activity of this combination. HMGA1 mRNA and protein expression were significantly associated with worse progression-free survival of trabectedin and worse overall survival in STS. HMGA1 silencing sensitized leiomyosarcoma cells for trabectedin treatment, reducing the spheroid area and increasing cell death. The downregulation of HGMA1 significantly decreased the enrichment of some specific gene sets, including the PI3K/AKT/mTOR pathway. The inhibition of mTOR, sensitized leiomyosarcoma cultures for trabectedin treatment, increasing cell death. In in vivo studies, the combination of rapamycin with trabectedin downregulated HMGA1 expression and stabilized tumor growth of 3-methylcholantrene-induced sarcoma-like models. HMGA1 is an adverse prognostic factor for trabectedin treatment in advanced STS. HMGA1 silencing increases trabectedin efficacy, in part by modulating the mTOR signaling pathway. Trabectedin plus mTOR inhibitors are active in preclinical models of sarcoma, downregulating HMGA1 expression levels and stabilizing tumor growth., (© 2024. The Author(s).)
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- 2024
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22. Characterization of the Common Genetic Variation in the Spanish Population of Navarre.
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Maillo A, Huergo E, Apellániz-Ruiz M, Urrutia-Lafuente E, Miranda M, Salgado J, Pasalodos-Sanchez S, Delgado-Mora L, Teijido Ó, Goicoechea I, Carmona R, Perez-Florido J, Aquino V, Lopez-Lopez D, Peña-Chilet M, Beltran S, Dopazo J, Lasa I, Beloqui JJ, Nagen-Scheme, Alonso Á, and Gomez-Cabrero D
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- Humans, Spain, Whole Genome Sequencing, Male, Female, Genetics, Population, Genetic Variation, Genome, Human, Exome genetics, Cohort Studies, Gene Frequency, Polymorphism, Single Nucleotide genetics
- Abstract
Large-scale genomic studies have significantly increased our knowledge of genetic variability across populations. Regional genetic profiling is essential for distinguishing common benign variants from disease-causing ones. To this end, we conducted a comprehensive characterization of exonic variants in the population of Navarre (Spain), utilizing whole genome sequencing data from 358 unrelated individuals of Spanish origin. Our analysis revealed 61,410 biallelic single nucleotide variants (SNV) within the Navarrese cohort, with 35% classified as common (MAF > 1%). By comparing allele frequency data from 1000 Genome Project (excluding the Iberian cohort of Spain, IBS), Genome Aggregation Database, and a Spanish cohort (including IBS individuals and data from Medical Genome Project), we identified 1069 SNVs common in Navarre but rare (MAF ≤ 1%) in all other populations. We further corroborated this observation with a second regional cohort of 239 unrelated exomes, which confirmed 676 of the 1069 SNVs as common in Navarre. In conclusion, this study highlights the importance of population-specific characterization of genetic variation to improve allele frequency filtering in sequencing data analysis to identify disease-causing variants.
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- 2024
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23. drexml: A command line tool and Python package for drug repurposing.
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Esteban-Medina M, de la Oliva Roque VM, Herráiz-Gil S, Peña-Chilet M, Dopazo J, and Loucera C
- Abstract
We introduce drexml, a command line tool and Python package for rational data-driven drug repurposing. The package employs machine learning and mechanistic signal transduction modeling to identify drug targets capable of regulating a particular disease. In addition, it employs explainability tools to contextualize potential drug targets within the functional landscape of the disease. The methodology is validated in Fanconi Anemia and Familial Melanoma, two distinct rare diseases where there is a pressing need for solutions. In the Fanconi Anemia case, the model successfully predicts previously validated repurposed drugs, while in the Familial Melanoma case, it identifies a promising set of drugs for further investigation., Competing Interests: The authors declare no conflicts of interest., (© 2024 The Author(s).)
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- 2024
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24. Drug-target identification in COVID-19 disease mechanisms using computational systems biology approaches.
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Niarakis A, Ostaszewski M, Mazein A, Kuperstein I, Kutmon M, Gillespie ME, Funahashi A, Acencio ML, Hemedan A, Aichem M, Klein K, Czauderna T, Burtscher F, Yamada TG, Hiki Y, Hiroi NF, Hu F, Pham N, Ehrhart F, Willighagen EL, Valdeolivas A, Dugourd A, Messina F, Esteban-Medina M, Peña-Chilet M, Rian K, Soliman S, Aghamiri SS, Puniya BL, Naldi A, Helikar T, Singh V, Fernández MF, Bermudez V, Tsirvouli E, Montagud A, Noël V, Ponce-de-Leon M, Maier D, Bauch A, Gyori BM, Bachman JA, Luna A, Piñero J, Furlong LI, Balaur I, Rougny A, Jarosz Y, Overall RW, Phair R, Perfetto L, Matthews L, Rex DAB, Orlic-Milacic M, Gomez LCM, De Meulder B, Ravel JM, Jassal B, Satagopam V, Wu G, Golebiewski M, Gawron P, Calzone L, Beckmann JS, Evelo CT, D'Eustachio P, Schreiber F, Saez-Rodriguez J, Dopazo J, Kuiper M, Valencia A, Wolkenhauer O, Kitano H, Barillot E, Auffray C, Balling R, and Schneider R
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- Humans, SARS-CoV-2, Drug Repositioning, Systems Biology, Computer Simulation, COVID-19
- Abstract
Introduction: The COVID-19 Disease Map project is a large-scale community effort uniting 277 scientists from 130 Institutions around the globe. We use high-quality, mechanistic content describing SARS-CoV-2-host interactions and develop interoperable bioinformatic pipelines for novel target identification and drug repurposing., Methods: Extensive community work allowed an impressive step forward in building interfaces between Systems Biology tools and platforms. Our framework can link biomolecules from omics data analysis and computational modelling to dysregulated pathways in a cell-, tissue- or patient-specific manner. Drug repurposing using text mining and AI-assisted analysis identified potential drugs, chemicals and microRNAs that could target the identified key factors., Results: Results revealed drugs already tested for anti-COVID-19 efficacy, providing a mechanistic context for their mode of action, and drugs already in clinical trials for treating other diseases, never tested against COVID-19., Discussion: The key advance is that the proposed framework is versatile and expandable, offering a significant upgrade in the arsenal for virus-host interactions and other complex pathologies., Competing Interests: AN collaborates with SANOFI-AVENTIS R&D via a public–private partnership grant CIFRE contract, n° 2020/0766. DM and AB are employed at Labvantage-Biomax GmbH and will be affected by any effect of this publication on the commercial version of the AILANI software. JB and BG received consulting fees from Two Six Labs, LLC. TH has served as a shareholder and has consulted for Discovery Collective, Inc. RB and RS are founders and shareholders of MEGENO SA and ITTM SA. JS-R reports funding from GSK, Pfizer and Sanofi and fees/honoraria from Travere Therapeutics, Stadapharm, Astex, Owkin, Pfizer and Grunenthal. JP and LF are employees and shareholders of MedBioinformatics Solutions SL. The remaining authors declare that the research was conducted in the absence of any commercial or financial relationships that could be constructed as a potential conflict of interest. The author(s) declared that they were an editorial board member of Frontiers, at the time of submission. This had no impact on the peer review process and the final decision., (Copyright © 2024 Niarakis, Ostaszewski, Mazein, Kuperstein, Kutmon, Gillespie, Funahashi, Acencio, Hemedan, Aichem, Klein, Czauderna, Burtscher, Yamada, Hiki, Hiroi, Hu, Pham, Ehrhart, Willighagen, Valdeolivas, Dugourd, Messina, Esteban-Medina, Peña-Chilet, Rian, Soliman, Aghamiri, Puniya, Naldi, Helikar, Singh, Fernández, Bermudez, Tsirvouli, Montagud, Noël, Ponce-de-Leon, Maier, Bauch, Gyori, Bachman, Luna, Piñero, Furlong, Balaur, Rougny, Jarosz, Overall, Phair, Perfetto, Matthews, Rex, Orlic-Milacic, Gomez, De Meulder, Ravel, Jassal, Satagopam, Wu, Golebiewski, Gawron, Calzone, Beckmann, Evelo, D’Eustachio, Schreiber, Saez-Rodriguez, Dopazo, Kuiper, Valencia, Wolkenhauer, Kitano, Barillot, Auffray, Balling, Schneider and the COVID-19 Disease Map Community.)
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- 2024
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25. The mechanistic functional landscape of retinitis pigmentosa: a machine learning-driven approach to therapeutic target discovery.
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Esteban-Medina M, Loucera C, Rian K, Velasco S, Olivares-González L, Rodrigo R, Dopazo J, and Peña-Chilet M
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- Mice, Animals, Signal Transduction, Retinitis Pigmentosa drug therapy, Retinitis Pigmentosa genetics, Retinitis Pigmentosa metabolism
- Abstract
Background: Retinitis pigmentosa is the prevailing genetic cause of blindness in developed nations with no effective treatments. In the pursuit of unraveling the intricate dynamics underlying this complex disease, mechanistic models emerge as a tool of proven efficiency rooted in systems biology, to elucidate the interplay between RP genes and their mechanisms. The integration of mechanistic models and drug-target interactions under the umbrella of machine learning methodologies provides a multifaceted approach that can boost the discovery of novel therapeutic targets, facilitating further drug repurposing in RP., Methods: By mapping Retinitis Pigmentosa-related genes (obtained from Orphanet, OMIM and HPO databases) onto KEGG signaling pathways, a collection of signaling functional circuits encompassing Retinitis Pigmentosa molecular mechanisms was defined. Next, a mechanistic model of the so-defined disease map, where the effects of interventions can be simulated, was built. Then, an explainable multi-output random forest regressor was trained using normal tissue transcriptomic data to learn causal connections between targets of approved drugs from DrugBank and the functional circuits of the mechanistic disease map. Selected target genes involvement were validated on rd10 mice, a murine model of Retinitis Pigmentosa., Results: A mechanistic functional map of Retinitis Pigmentosa was constructed resulting in 226 functional circuits belonging to 40 KEGG signaling pathways. The method predicted 109 targets of approved drugs in use with a potential effect over circuits corresponding to nine hallmarks identified. Five of those targets were selected and experimentally validated in rd10 mice: Gabre, Gabra1 (GABARα1 protein), Slc12a5 (KCC2 protein), Grin1 (NR1 protein) and Glr2a. As a result, we provide a resource to evaluate the potential impact of drug target genes in Retinitis Pigmentosa., Conclusions: The possibility of building actionable disease models in combination with machine learning algorithms to learn causal drug-disease interactions opens new avenues for boosting drug discovery. Such mechanistically-based hypotheses can guide and accelerate the experimental validations prioritizing drug target candidates. In this work, a mechanistic model describing the functional disease map of Retinitis Pigmentosa was developed, identifying five promising therapeutic candidates targeted by approved drug. Further experimental validation will demonstrate the efficiency of this approach for a systematic application to other rare diseases., (© 2024. The Author(s).)
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- 2024
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26. microRNAs-mediated regulation of insulin signaling in white adipose tissue during aging: Role of caloric restriction.
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Corrales P, Martin-Taboada M, Vivas-García Y, Torres L, Ramirez-Jimenez L, Lopez Y, Horrillo D, Vila-Bedmar R, Barber-Cano E, Izquierdo-Lahuerta A, Peña-Chilet M, Martínez C, Dopazo J, Ros M, and Medina-Gomez G
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- Animals, Male, Insulin metabolism, Caloric Restriction, Adipose Tissue, White metabolism, Adipose Tissue metabolism, Aging metabolism, Insulin Resistance genetics, MicroRNAs genetics, MicroRNAs metabolism
- Abstract
Caloric restriction is a non-pharmacological intervention known to ameliorate the metabolic defects associated with aging, including insulin resistance. The levels of miRNA expression may represent a predictive tool for aging-related alterations. In order to investigate the role of miRNAs underlying insulin resistance in adipose tissue during the early stages of aging, 3- and 12-month-old male animals fed ad libitum, and 12-month-old male animals fed with a 20% caloric restricted diet were used. In this work we demonstrate that specific miRNAs may contribute to the impaired insulin-stimulated glucose metabolism specifically in the subcutaneous white adipose tissue, through the regulation of target genes implicated in the insulin signaling cascade. Moreover, the expression of these miRNAs is modified by caloric restriction in middle-aged animals, in accordance with the improvement of the metabolic state. Overall, our work demonstrates that alterations in posttranscriptional gene expression because of miRNAs dysregulation might represent an endogenous mechanism by which insulin response in the subcutaneous fat depot is already affected at middle age. Importantly, caloric restriction could prevent this modulation, demonstrating that certain miRNAs could constitute potential biomarkers of age-related metabolic alterations., (© 2023 The Authors. Aging Cell published by Anatomical Society and John Wiley & Sons Ltd.)
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- 2023
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27. Real-world evidence with a retrospective cohort of 15,968 COVID-19 hospitalized patients suggests 21 new effective treatments.
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Loucera C, Carmona R, Esteban-Medina M, Bostelmann G, Muñoyerro-Muñiz D, Villegas R, Peña-Chilet M, and Dopazo J
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- Humans, Retrospective Studies, Treatment Outcome, Databases, Factual, Furosemide, COVID-19 epidemiology
- Abstract
Purpose: Despite the extensive vaccination campaigns in many countries, COVID-19 is still a major worldwide health problem because of its associated morbidity and mortality. Therefore, finding efficient treatments as fast as possible is a pressing need. Drug repurposing constitutes a convenient alternative when the need for new drugs in an unexpected medical scenario is urgent, as is the case with COVID-19., Methods: Using data from a central registry of electronic health records (the Andalusian Population Health Database), the effect of prior consumption of drugs for other indications previous to the hospitalization with respect to patient outcomes, including survival and lymphocyte progression, was studied on a retrospective cohort of 15,968 individuals, comprising all COVID-19 patients hospitalized in Andalusia between January and November 2020., Results: Covariate-adjusted hazard ratios and analysis of lymphocyte progression curves support a significant association between consumption of 21 different drugs and better patient survival. Contrarily, one drug, furosemide, displayed a significant increase in patient mortality., Conclusions: In this study we have taken advantage of the availability of a regional clinical database to study the effect of drugs, which patients were taking for other indications, on their survival. The large size of the database allowed us to control covariates effectively., (© 2023. BioMed Central Ltd., part of Springer Nature.)
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- 2023
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28. Functional Profiling of Soft Tissue Sarcoma Using Mechanistic Models.
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Payá-Milans M, Peña-Chilet M, Loucera C, Esteban-Medina M, and Dopazo J
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- Humans, RNA-Seq, Gene Expression Profiling, Tumor Microenvironment genetics, Sarcoma pathology, Soft Tissue Neoplasms
- Abstract
Soft tissue sarcoma is an umbrella term for a group of rare cancers that are difficult to treat. In addition to surgery, neoadjuvant chemotherapy has shown the potential to downstage tumors and prevent micrometastases. However, finding effective therapeutic targets remains a research challenge. Here, a previously developed computational approach called mechanistic models of signaling pathways has been employed to unravel the impact of observed changes at the gene expression level on the ultimate functional behavior of cells. In the context of such a mechanistic model, RNA-Seq counts sourced from the Recount3 resource, from The Cancer Genome Atlas (TCGA) Sarcoma project, and non-diseased sarcomagenic tissues from the Genotype-Tissue Expression (GTEx) project were utilized to investigate signal transduction activity through signaling pathways. This approach provides a precise view of the relationship between sarcoma patient survival and the signaling landscape in tumors and their environment. Despite the distinct regulatory alterations observed in each sarcoma subtype, this study identified 13 signaling circuits, or elementary sub-pathways triggering specific cell functions, present across all subtypes, belonging to eight signaling pathways, which served as predictors for patient survival. Additionally, nine signaling circuits from five signaling pathways that highlighted the modifications tumor samples underwent in comparison to normal tissues were found. These results describe the protective role of the immune system, suggesting an anti-tumorigenic effect in the tumor microenvironment, in the process of tumor cell detachment and migration, or the dysregulation of ion homeostasis. Also, the analysis of signaling circuit intermediary proteins suggests multiple strategies for therapy.
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- 2023
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29. Visualization of automatically combined disease maps and pathway diagrams for rare diseases.
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Gawron P, Hoksza D, Piñero J, Peña-Chilet M, Esteban-Medina M, Fernandez-Rueda JL, Colonna V, Smula E, Heirendt L, Ancien F, Groues V, Satagopam VP, Schneider R, Dopazo J, Furlong LI, and Ostaszewski M
- Abstract
Introduction: Investigation of molecular mechanisms of human disorders, especially rare diseases, require exploration of various knowledge repositories for building precise hypotheses and complex data interpretation. Recently, increasingly more resources offer diagrammatic representation of such mechanisms, including disease-dedicated schematics in pathway databases and disease maps. However, collection of knowledge across them is challenging, especially for research projects with limited manpower. Methods: In this article we present an automated workflow for construction of maps of molecular mechanisms for rare diseases. The workflow requires a standardized definition of a disease using Orphanet or HPO identifiers to collect relevant genes and variants, and to assemble a functional, visual repository of related mechanisms, including data overlays. The diagrams composing the final map are unified to a common systems biology format from CellDesigner SBML, GPML and SBML+layout+render. The constructed resource contains disease-relevant genes and variants as data overlays for immediate visual exploration, including embedded genetic variant browser and protein structure viewer. Results: We demonstrate the functionality of our workflow on two examples of rare diseases: Kawasaki disease and retinitis pigmentosa. Two maps are constructed based on their corresponding identifiers. Moreover, for the retinitis pigmentosa use-case, we include a list of differentially expressed genes to demonstrate how to tailor the workflow using omics datasets. Discussion: In summary, our work allows for an ad-hoc construction of molecular diagrams combined from different sources, preserving their layout and graphical style, but integrating them into a single resource. This allows to reduce time consuming tasks of prototyping of a molecular disease map, enabling visual exploration, hypothesis building, data visualization and further refinement. The code of the workflow is open and accessible at https://gitlab.lcsb.uni.lu/minerva/automap/., Competing Interests: JP and LF are employed by MedBioinformatics Solutions SL. 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 © 2023 Gawron, Hoksza, Piñero, Peña-Chilet, Esteban-Medina, Fernandez-Rueda, Colonna, Smula, Heirendt, Ancien, Groues, Satagopam, Schneider, Dopazo, Furlong and Ostaszewski.)
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- 2023
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30. A Comprehensive Analysis of 21 Actionable Pharmacogenes in the Spanish Population: From Genetic Characterisation to Clinical Impact.
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Nunez-Torres R, Pita G, Peña-Chilet M, López-López D, Zamora J, Roldán G, Herráez B, Álvarez N, Alonso MR, Dopazo J, and Gonzalez-Neira A
- Abstract
The implementation of pharmacogenetics (PGx) is a main milestones of precision medicine nowadays in order to achieve safer and more effective therapies. Nevertheless, the implementation of PGx diagnostics is extremely slow and unequal worldwide, in part due to a lack of ethnic PGx information. We analysed genetic data from 3006 Spanish individuals obtained by different high-throughput (HT) techniques. Allele frequencies were determined in our population for the main 21 actionable PGx genes associated with therapeutical changes. We found that 98% of the Spanish population harbours at least one allele associated with a therapeutical change and, thus, there would be a need for a therapeutical change in a mean of 3.31 of the 64 associated drugs. We also identified 326 putative deleterious variants that were not previously related with PGx in 18 out of the 21 main PGx genes evaluated and a total of 7122 putative deleterious variants for the 1045 PGx genes described. Additionally, we performed a comparison of the main HT diagnostic techniques, revealing that after whole genome sequencing, genotyping with the PGx HT array is the most suitable solution for PGx diagnostics. Finally, all this information was integrated in the Collaborative Spanish Variant Server to be available to and updated by the scientific community.
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- 2023
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31. Crosstalk between Metabolite Production and Signaling Activity in Breast Cancer.
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Çubuk C, Loucera C, Peña-Chilet M, and Dopazo J
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- Humans, Female, Signal Transduction, Machine Learning, Metabolic Networks and Pathways, Breast Neoplasms metabolism
- Abstract
The reprogramming of metabolism is a recognized cancer hallmark. It is well known that different signaling pathways regulate and orchestrate this reprogramming that contributes to cancer initiation and development. However, recent evidence is accumulating, suggesting that several metabolites could play a relevant role in regulating signaling pathways. To assess the potential role of metabolites in the regulation of signaling pathways, both metabolic and signaling pathway activities of Breast invasive Carcinoma (BRCA) have been modeled using mechanistic models. Gaussian Processes, powerful machine learning methods, were used in combination with SHapley Additive exPlanations (SHAP), a recent methodology that conveys causality, to obtain potential causal relationships between the production of metabolites and the regulation of signaling pathways. A total of 317 metabolites were found to have a strong impact on signaling circuits. The results presented here point to the existence of a complex crosstalk between signaling and metabolic pathways more complex than previously was thought.
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- 2023
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32. A crowdsourcing database for the copy-number variation of the Spanish population.
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López-López D, Roldán G, Fernández-Rueda JL, Bostelmann G, Carmona R, Aquino V, Perez-Florido J, Ortuño F, Pita G, Núñez-Torres R, González-Neira A, Peña-Chilet M, and Dopazo J
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- Genomics, Phenotype, Databases, Factual, DNA Copy Number Variations genetics, Crowdsourcing
- Abstract
Background: Despite being a very common type of genetic variation, the distribution of copy-number variations (CNVs) in the population is still poorly understood. The knowledge of the genetic variability, especially at the level of the local population, is a critical factor for distinguishing pathogenic from non-pathogenic variation in the discovery of new disease variants., Results: Here, we present the SPAnish Copy Number Alterations Collaborative Server (SPACNACS), which currently contains copy number variation profiles obtained from more than 400 genomes and exomes of unrelated Spanish individuals. By means of a collaborative crowdsourcing effort whole genome and whole exome sequencing data, produced by local genomic projects and for other purposes, is continuously collected. Once checked both, the Spanish ancestry and the lack of kinship with other individuals in the SPACNACS, the CNVs are inferred for these sequences and they are used to populate the database. A web interface allows querying the database with different filters that include ICD10 upper categories. This allows discarding samples from the disease under study and obtaining pseudo-control CNV profiles from the local population. We also show here additional studies on the local impact of CNVs in some phenotypes and on pharmacogenomic variants. SPACNACS can be accessed at: http://csvs.clinbioinfosspa.es/spacnacs/ ., Conclusion: SPACNACS facilitates disease gene discovery by providing detailed information of the local variability of the population and exemplifies how to reuse genomic data produced for other purposes to build a local reference database., (© 2023. The Author(s).)
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- 2023
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33. An SPM-Enriched Marine Oil Supplement Shifted Microglia Polarization toward M2, Ameliorating Retinal Degeneration in rd10 Mice.
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Olivares-González L, Velasco S, Gallego I, Esteban-Medina M, Puras G, Loucera C, Martínez-Romero A, Peña-Chilet M, Pedraz JL, and Rodrigo R
- Abstract
Retinitis pigmentosa (RP) is the most common inherited retinal dystrophy causing progressive vision loss. It is accompanied by chronic and sustained inflammation, including M1 microglia activation. This study evaluated the effect of an essential fatty acid (EFA) supplement containing specialized pro-resolving mediators (SPMs), on retinal degeneration and microglia activation in rd10 mice, a model of RP, as well as on LPS-stimulated BV2 cells. The EFA supplement was orally administered to mice from postnatal day (P)9 to P18. At P18, the electrical activity of the retina was examined by electroretinography (ERG) and innate behavior in response to light were measured. Retinal degeneration was studied via histology including the TUNEL assay and microglia immunolabeling. Microglia polarization (M1/M2) was assessed by flow cytometry, qPCR, ELISA and histology. Redox status was analyzed by measuring antioxidant enzymes and markers of oxidative damage. Interestingly, the EFA supplement ameliorated retinal dysfunction and degeneration by improving ERG recording and sensitivity to light, and reducing photoreceptor cell loss. The EFA supplement reduced inflammation and microglia activation attenuating M1 markers as well as inducing a shift to the M2 phenotype in rd10 mouse retinas and LPS-stimulated BV2 cells. It also reduced oxidative stress markers of lipid peroxidation and carbonylation. These findings could open up new therapeutic opportunities based on resolving inflammation with oral supplementation with SPMs such as the EFA supplement.
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- 2022
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34. Discovering potential interactions between rare diseases and COVID-19 by combining mechanistic models of viral infection with statistical modeling.
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López-Sánchez M, Loucera C, Peña-Chilet M, and Dopazo J
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- Humans, Models, Statistical, Rare Diseases genetics, COVID-19 genetics, Virus Diseases
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Recent studies have demonstrated a relevant role of the host genetics in the coronavirus disease 2019 (COVID-19) prognosis. Most of the 7000 rare diseases described to date have a genetic component, typically highly penetrant. However, this vast spectrum of genetic variability remains yet unexplored with respect to possible interactions with COVID-19. Here, a mathematical mechanistic model of the COVID-19 molecular disease mechanism has been used to detect potential interactions between rare disease genes and the COVID-19 infection process and downstream consequences. Out of the 2518 disease genes analyzed, causative of 3854 rare diseases, a total of 254 genes have a direct effect on the COVID-19 molecular disease mechanism and 207 have an indirect effect revealed by a significant strong correlation. This remarkable potential of interaction occurs for >300 rare diseases. Mechanistic modeling of COVID-19 disease map has allowed a holistic systematic analysis of the potential interactions between the loss of function in known rare disease genes and the pathological consequences of COVID-19 infection. The results identify links between disease genes and COVID-19 hallmarks and demonstrate the usefulness of the proposed approach for future preventive measures in some rare diseases., (© The Author(s) 2022. Published by Oxford University Press.)
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- 2022
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35. Towards a metagenomics machine learning interpretable model for understanding the transition from adenoma to colorectal cancer.
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Casimiro-Soriguer CS, Loucera C, Peña-Chilet M, and Dopazo J
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- Humans, Adenoma microbiology, Colorectal Neoplasms microbiology, Gastrointestinal Microbiome, Machine Learning, Metagenomics methods
- Abstract
Gut microbiome is gaining interest because of its links with several diseases, including colorectal cancer (CRC), as well as the possibility of being used to obtain non-intrusive predictive disease biomarkers. Here we performed a meta-analysis of 1042 fecal metagenomic samples from seven publicly available studies. We used an interpretable machine learning approach based on functional profiles, instead of the conventional taxonomic profiles, to produce a highly accurate predictor of CRC with better precision than those of previous proposals. Moreover, this approach is also able to discriminate samples with adenoma, which makes this approach very promising for CRC prevention by detecting early stages in which intervention is easier and more effective. In addition, interpretable machine learning methods allow extracting features relevant for the classification, which reveals basic molecular mechanisms accounting for the changes undergone by the microbiome functional landscape in the transition from healthy gut to adenoma and CRC conditions. Functional profiles have demonstrated superior accuracy in predicting CRC and adenoma conditions than taxonomic profiles and additionally, in a context of explainable machine learning, provide useful hints on the molecular mechanisms operating in the microbiota behind these conditions., (© 2022. The Author(s).)
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- 2022
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36. Real world evidence of calcifediol or vitamin D prescription and mortality rate of COVID-19 in a retrospective cohort of hospitalized Andalusian patients.
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Loucera C, Peña-Chilet M, Esteban-Medina M, Muñoyerro-Muñiz D, Villegas R, Lopez-Miranda J, Rodriguez-Baño J, Túnez I, Bouillon R, Dopazo J, and Quesada Gomez JM
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- Female, Humans, Kaplan-Meier Estimate, Male, Retrospective Studies, Spain epidemiology, Survival Analysis, COVID-19 mortality, Calcifediol therapeutic use, Vitamin D therapeutic use
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COVID-19 is a major worldwide health problem because of acute respiratory distress syndrome, and mortality. Several lines of evidence have suggested a relationship between the vitamin D endocrine system and severity of COVID-19. We present a survival study on a retrospective cohort of 15,968 patients, comprising all COVID-19 patients hospitalized in Andalusia between January and November 2020. Based on a central registry of electronic health records (the Andalusian Population Health Database, BPS), prescription of vitamin D or its metabolites within 15-30 days before hospitalization were recorded. The effect of prescription of vitamin D (metabolites) for other indication previous to the hospitalization was studied with respect to patient survival. Kaplan-Meier survival curves and hazard ratios support an association between prescription of these metabolites and patient survival. Such association was stronger for calcifediol (Hazard Ratio, HR = 0.67, with 95% confidence interval, CI, of [0.50-0.91]) than for cholecalciferol (HR = 0.75, with 95% CI of [0.61-0.91]), when prescribed 15 days prior hospitalization. Although the relation is maintained, there is a general decrease of this effect when a longer period of 30 days prior hospitalization is considered (calcifediol HR = 0.73, with 95% CI [0.57-0.95] and cholecalciferol HR = 0.88, with 95% CI [0.75, 1.03]), suggesting that association was stronger when the prescription was closer to the hospitalization., (© 2021. The Author(s).)
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- 2021
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37. COVID-19 Disease Map, a computational knowledge repository of virus-host interaction mechanisms.
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Ostaszewski M, Niarakis A, Mazein A, Kuperstein I, Phair R, Orta-Resendiz A, Singh V, Aghamiri SS, Acencio ML, Glaab E, Ruepp A, Fobo G, Montrone C, Brauner B, Frishman G, Monraz Gómez LC, Somers J, Hoch M, Kumar Gupta S, Scheel J, Borlinghaus H, Czauderna T, Schreiber F, Montagud A, Ponce de Leon M, Funahashi A, Hiki Y, Hiroi N, Yamada TG, Dräger A, Renz A, Naveez M, Bocskei Z, Messina F, Börnigen D, Fergusson L, Conti M, Rameil M, Nakonecnij V, Vanhoefer J, Schmiester L, Wang M, Ackerman EE, Shoemaker JE, Zucker J, Oxford K, Teuton J, Kocakaya E, Summak GY, Hanspers K, Kutmon M, Coort S, Eijssen L, Ehrhart F, Rex DAB, Slenter D, Martens M, Pham N, Haw R, Jassal B, Matthews L, Orlic-Milacic M, Senff-Ribeiro A, Rothfels K, Shamovsky V, Stephan R, Sevilla C, Varusai T, Ravel JM, Fraser R, Ortseifen V, Marchesi S, Gawron P, Smula E, Heirendt L, Satagopam V, Wu G, Riutta A, Golebiewski M, Owen S, Goble C, Hu X, Overall RW, Maier D, Bauch A, Gyori BM, Bachman JA, Vega C, Grouès V, Vazquez M, Porras P, Licata L, Iannuccelli M, Sacco F, Nesterova A, Yuryev A, de Waard A, Turei D, Luna A, Babur O, Soliman S, Valdeolivas A, Esteban-Medina M, Peña-Chilet M, Rian K, Helikar T, Puniya BL, Modos D, Treveil A, Olbei M, De Meulder B, Ballereau S, Dugourd A, Naldi A, Noël V, Calzone L, Sander C, Demir E, Korcsmaros T, Freeman TC, Augé F, Beckmann JS, Hasenauer J, Wolkenhauer O, Willighagen EL, Pico AR, Evelo CT, Gillespie ME, Stein LD, Hermjakob H, D'Eustachio P, Saez-Rodriguez J, Dopazo J, Valencia A, Kitano H, Barillot E, Auffray C, Balling R, and Schneider R
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- 2021
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38. A DNA damage repair gene-associated signature predicts responses of patients with advanced soft-tissue sarcoma to treatment with trabectedin.
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Moura DS, Peña-Chilet M, Cordero Varela JA, Alvarez-Alegret R, Agra-Pujol C, Izquierdo F, Ramos R, Ortega-Medina L, Martin-Davila F, Castilla-Ramirez C, Hernandez-Leon CN, Romagosa C, Vaz Salgado MA, Lavernia J, Bagué S, Mayodormo-Aranda E, Vicioso L, Hernández Barceló JE, Rubio-Casadevall J, de Juan A, Fiaño-Valverde MC, Hindi N, Lopez-Alvarez M, Lacerenza S, Dopazo J, Gutierrez A, Alvarez R, Valverde C, Martinez-Trufero J, and Martín-Broto J
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- Antineoplastic Agents, Alkylating pharmacology, Antineoplastic Agents, Alkylating therapeutic use, DNA Damage, DNA Repair genetics, Dioxoles adverse effects, Humans, Retrospective Studies, Trabectedin therapeutic use, Sarcoma drug therapy, Sarcoma genetics, Tetrahydroisoquinolines adverse effects
- Abstract
Predictive biomarkers of trabectedin represent an unmet need in advanced soft-tissue sarcomas (STS). DNA damage repair (DDR) genes, involved in homologous recombination or nucleotide excision repair, had been previously described as biomarkers of trabectedin resistance or sensitivity, respectively. The majority of these studies only focused on specific factors (ERCC1, ERCC5, and BRCA1) and did not evaluate several other DDR-related genes that could have a relevant role for trabectedin efficacy. In this retrospective translational study, 118 genes involved in DDR were evaluated to determine, by transcriptomics, a predictive gene signature of trabectedin efficacy. A six-gene predictive signature of trabectedin efficacy was built in a series of 139 tumor samples from patients with advanced STS. Patients in the high-risk gene signature group showed a significantly worse progression-free survival compared with patients in the low-risk group (2.1 vs 6.0 months, respectively). Differential gene expression analysis defined new potential predictive biomarkers of trabectedin sensitivity (PARP3 and CCNH) or resistance (DNAJB11 and PARP1). Our study identified a new gene signature that significantly predicts patients with higher probability to respond to treatment with trabectedin. Targeting some genes of this signature emerges as a potential strategy to enhance trabectedin efficacy., (© 2021 The Authors. Molecular Oncology published by John Wiley & Sons Ltd on behalf of Federation of European Biochemical Societies.)
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- 2021
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39. Mutational Characterization of Cutaneous Melanoma Supports Divergent Pathways Model for Melanoma Development.
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Millán-Esteban D, Peña-Chilet M, García-Casado Z, Manrique-Silva E, Requena C, Bañuls J, López-Guerrero JA, Rodríguez-Hernández A, Traves V, Dopazo J, Virós A, Kumar R, and Nagore E
- Abstract
According to the divergent pathway model, cutaneous melanoma comprises a nevogenic group with a propensity to melanocyte proliferation and another one associated with cumulative solar damage (CSD). While characterized clinically and epidemiologically, the differences in the molecular profiles between the groups have remained primarily uninvestigated. This study has used a custom gene panel and bioinformatics tools to investigate the potential molecular differences in a thoroughly characterized cohort of 119 melanoma patients belonging to nevogenic and CSD groups. We found that the nevogenic melanomas had a restricted set of mutations, with the prominently mutated gene being BRAF . The CSD melanomas, in contrast, showed mutations in a diverse group of genes that included NF1 , ROS1 , GNA11 , and RAC1 . We thus provide evidence that nevogenic and CSD melanomas constitute different biological entities and highlight the need to explore new targeted therapies.
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- 2021
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40. COVID19 Disease Map, a computational knowledge repository of virus-host interaction mechanisms.
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Ostaszewski M, Niarakis A, Mazein A, Kuperstein I, Phair R, Orta-Resendiz A, Singh V, Aghamiri SS, Acencio ML, Glaab E, Ruepp A, Fobo G, Montrone C, Brauner B, Frishman G, Monraz Gómez LC, Somers J, Hoch M, Kumar Gupta S, Scheel J, Borlinghaus H, Czauderna T, Schreiber F, Montagud A, Ponce de Leon M, Funahashi A, Hiki Y, Hiroi N, Yamada TG, Dräger A, Renz A, Naveez M, Bocskei Z, Messina F, Börnigen D, Fergusson L, Conti M, Rameil M, Nakonecnij V, Vanhoefer J, Schmiester L, Wang M, Ackerman EE, Shoemaker JE, Zucker J, Oxford K, Teuton J, Kocakaya E, Summak GY, Hanspers K, Kutmon M, Coort S, Eijssen L, Ehrhart F, Rex DAB, Slenter D, Martens M, Pham N, Haw R, Jassal B, Matthews L, Orlic-Milacic M, Senff Ribeiro A, Rothfels K, Shamovsky V, Stephan R, Sevilla C, Varusai T, Ravel JM, Fraser R, Ortseifen V, Marchesi S, Gawron P, Smula E, Heirendt L, Satagopam V, Wu G, Riutta A, Golebiewski M, Owen S, Goble C, Hu X, Overall RW, Maier D, Bauch A, Gyori BM, Bachman JA, Vega C, Grouès V, Vazquez M, Porras P, Licata L, Iannuccelli M, Sacco F, Nesterova A, Yuryev A, de Waard A, Turei D, Luna A, Babur O, Soliman S, Valdeolivas A, Esteban-Medina M, Peña-Chilet M, Rian K, Helikar T, Puniya BL, Modos D, Treveil A, Olbei M, De Meulder B, Ballereau S, Dugourd A, Naldi A, Noël V, Calzone L, Sander C, Demir E, Korcsmaros T, Freeman TC, Augé F, Beckmann JS, Hasenauer J, Wolkenhauer O, Wilighagen EL, Pico AR, Evelo CT, Gillespie ME, Stein LD, Hermjakob H, D'Eustachio P, Saez-Rodriguez J, Dopazo J, Valencia A, Kitano H, Barillot E, Auffray C, Balling R, and Schneider R
- Subjects
- Antiviral Agents therapeutic use, COVID-19 genetics, COVID-19 virology, Computer Graphics, Cytokines genetics, Cytokines immunology, Data Mining statistics & numerical data, Gene Expression Regulation, Host Microbial Interactions genetics, Host Microbial Interactions immunology, Humans, Immunity, Cellular drug effects, Immunity, Humoral drug effects, Immunity, Innate drug effects, Lymphocytes drug effects, Lymphocytes immunology, Lymphocytes virology, Metabolic Networks and Pathways genetics, Metabolic Networks and Pathways immunology, Myeloid Cells drug effects, Myeloid Cells immunology, Myeloid Cells virology, Protein Interaction Mapping, SARS-CoV-2 drug effects, SARS-CoV-2 genetics, SARS-CoV-2 pathogenicity, Signal Transduction, Transcription Factors genetics, Transcription Factors immunology, Viral Proteins genetics, Viral Proteins immunology, COVID-19 Drug Treatment, COVID-19 immunology, Computational Biology methods, Databases, Factual, SARS-CoV-2 immunology, Software
- Abstract
We need to effectively combine the knowledge from surging literature with complex datasets to propose mechanistic models of SARS-CoV-2 infection, improving data interpretation and predicting key targets of intervention. Here, we describe a large-scale community effort to build an open access, interoperable and computable repository of COVID-19 molecular mechanisms. The COVID-19 Disease Map (C19DMap) is a graphical, interactive representation of disease-relevant molecular mechanisms linking many knowledge sources. Notably, it is a computational resource for graph-based analyses and disease modelling. To this end, we established a framework of tools, platforms and guidelines necessary for a multifaceted community of biocurators, domain experts, bioinformaticians and computational biologists. The diagrams of the C19DMap, curated from the literature, are integrated with relevant interaction and text mining databases. We demonstrate the application of network analysis and modelling approaches by concrete examples to highlight new testable hypotheses. This framework helps to find signatures of SARS-CoV-2 predisposition, treatment response or prioritisation of drug candidates. Such an approach may help deal with new waves of COVID-19 or similar pandemics in the long-term perspective., (© 2021 The Authors. Published under the terms of the CC BY 4.0 license.)
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- 2021
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41. A comprehensive database for integrated analysis of omics data in autoimmune diseases.
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Martorell-Marugán J, López-Domínguez R, García-Moreno A, Toro-Domínguez D, Villatoro-García JA, Barturen G, Martín-Gómez A, Troule K, Gómez-López G, Al-Shahrour F, González-Rumayor V, Peña-Chilet M, Dopazo J, Sáez-Rodríguez J, Alarcón-Riquelme ME, and Carmona-Sáez P
- Subjects
- Databases, Factual, Humans, Autoimmune Diseases epidemiology, Autoimmune Diseases genetics, Computational Biology
- Abstract
Background: Autoimmune diseases are heterogeneous pathologies with difficult diagnosis and few therapeutic options. In the last decade, several omics studies have provided significant insights into the molecular mechanisms of these diseases. Nevertheless, data from different cohorts and pathologies are stored independently in public repositories and a unified resource is imperative to assist researchers in this field., Results: Here, we present Autoimmune Diseases Explorer ( https://adex.genyo.es ), a database that integrates 82 curated transcriptomics and methylation studies covering 5609 samples for some of the most common autoimmune diseases. The database provides, in an easy-to-use environment, advanced data analysis and statistical methods for exploring omics datasets, including meta-analysis, differential expression or pathway analysis., Conclusions: This is the first omics database focused on autoimmune diseases. This resource incorporates homogeneously processed data to facilitate integrative analyses among studies.
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- 2021
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42. Genome-scale mechanistic modeling of signaling pathways made easy: A bioconductor/cytoscape/web server framework for the analysis of omic data.
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Rian K, Hidalgo MR, Çubuk C, Falco MM, Loucera C, Esteban-Medina M, Alamo-Alvarez I, Peña-Chilet M, and Dopazo J
- Abstract
Genome-scale mechanistic models of pathways are gaining importance for genomic data interpretation because they provide a natural link between genotype measurements (transcriptomics or genomics data) and the phenotype of the cell (its functional behavior). Moreover, mechanistic models can be used to predict the potential effect of interventions, including drug inhibitions. Here, we present the implementation of a mechanistic model of cell signaling for the interpretation of transcriptomic data as an R/Bioconductor package, a Cytoscape plugin and a web tool with enhanced functionality which includes building interpretable predictors, estimation of the effect of perturbations and assessment of the effect of mutations in complex scenarios., Competing Interests: The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (© 2021 The Author(s).)
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- 2021
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43. Immunotherapy in nonsmall-cell lung cancer: current status and future prospects for liquid biopsy.
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Brozos-Vázquez EM, Díaz-Peña R, García-González J, León-Mateos L, Mondelo-Macía P, Peña-Chilet M, and López-López R
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- Animals, Carcinoma, Non-Small-Cell Lung diagnosis, Carcinoma, Non-Small-Cell Lung therapy, Exosomes metabolism, Humans, Lung Neoplasms diagnosis, Lung Neoplasms therapy, Biomarkers, Tumor genetics, Carcinoma, Non-Small-Cell Lung immunology, Cell-Free Nucleic Acids genetics, Immunotherapy trends, Liquid Biopsy trends, Lung Neoplasms immunology
- Abstract
Immunotherapy has been one of the great advances in the recent years for the treatment of advanced tumors, with nonsmall-cell lung cancer (NSCLC) being one of the cancers that has benefited most from this approach. Currently, the only validated companion diagnostic test for first-line immunotherapy in metastatic NSCLC patients is testing for programmed death ligand 1 (PD-L1) expression in tumor tissues. However, not all patients experience an effective response with the established selection criteria and immune checkpoint inhibitors (ICIs). Liquid biopsy offers a noninvasive opportunity to monitor disease in patients with cancer and identify those who would benefit the most from immunotherapy. This review focuses on the use of liquid biopsy in immunotherapy treatment of NSCLC patients. Circulating tumor cells (CTCs), cell-free DNA (cfDNA) and exosomes are promising tools for developing new biomarkers. We discuss the current application and future implementation of these parameters to improve therapeutic decision-making and identify the patients who will benefit most from immunotherapy.
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- 2021
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44. A versatile workflow to integrate RNA-seq genomic and transcriptomic data into mechanistic models of signaling pathways.
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Garrido-Rodriguez M, Lopez-Lopez D, Ortuno FM, Peña-Chilet M, Muñoz E, Calzado MA, and Dopazo J
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- Algorithms, Cell Line, Tumor, Databases, Factual, Gene Expression Profiling methods, High-Throughput Nucleotide Sequencing methods, Humans, Models, Theoretical, Mutation, Software, Transcriptome, Exome Sequencing, Workflow, Computational Biology methods, Genomics, RNA-Seq, Signal Transduction
- Abstract
MIGNON is a workflow for the analysis of RNA-Seq experiments, which not only efficiently manages the estimation of gene expression levels from raw sequencing reads, but also calls genomic variants present in the transcripts analyzed. Moreover, this is the first workflow that provides a framework for the integration of transcriptomic and genomic data based on a mechanistic model of signaling pathway activities that allows a detailed biological interpretation of the results, including a comprehensive functional profiling of cell activity. MIGNON covers the whole process, from reads to signaling circuit activity estimations, using state-of-the-art tools, it is easy to use and it is deployable in different computational environments, allowing an optimized use of the resources available., Competing Interests: The authors have declared that no competing interests exist.
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- 2021
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45. Mechanistic modeling of the SARS-CoV-2 disease map.
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Rian K, Esteban-Medina M, Hidalgo MR, Çubuk C, Falco MM, Loucera C, Gunyel D, Ostaszewski M, Peña-Chilet M, and Dopazo J
- Abstract
Here we present a web interface that implements a comprehensive mechanistic model of the SARS-CoV-2 disease map. In this framework, the detailed activity of the human signaling circuits related to the viral infection, covering from the entry and replication mechanisms to the downstream consequences as inflammation and antigenic response, can be inferred from gene expression experiments. Moreover, the effect of potential interventions, such as knock-downs, or drug effects (currently the system models the effect of more than 8000 DrugBank drugs) can be studied. This freely available tool not only provides an unprecedentedly detailed view of the mechanisms of viral invasion and the consequences in the cell but has also the potential of becoming an invaluable asset in the search for efficient antiviral treatments.
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- 2021
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46. CSVS, a crowdsourcing database of the Spanish population genetic variability.
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Peña-Chilet M, Roldán G, Perez-Florido J, Ortuño FM, Carmona R, Aquino V, Lopez-Lopez D, Loucera C, Fernandez-Rueda JL, Gallego A, García-Garcia F, González-Neira A, Pita G, Núñez-Torres R, Santoyo-López J, Ayuso C, Minguez P, Avila-Fernandez A, Corton M, Moreno-Pelayo MÁ, Morin M, Gallego-Martinez A, Lopez-Escamez JA, Borrego S, Antiñolo G, Amigo J, Salgado-Garrido J, Pasalodos-Sanchez S, Morte B, Carracedo Á, Alonso Á, and Dopazo J
- Subjects
- Alleles, Chromosome Mapping, Exome, Gene Frequency, Genetic Variation, Genomics, Humans, Internet, Precision Medicine methods, Spain, Crowdsourcing, Databases, Genetic, Genetics, Population methods, Genome, Human, Software
- Abstract
The knowledge of the genetic variability of the local population is of utmost importance in personalized medicine and has been revealed as a critical factor for the discovery of new disease variants. Here, we present the Collaborative Spanish Variability Server (CSVS), which currently contains more than 2000 genomes and exomes of unrelated Spanish individuals. This database has been generated in a collaborative crowdsourcing effort collecting sequencing data produced by local genomic projects and for other purposes. Sequences have been grouped by ICD10 upper categories. A web interface allows querying the database removing one or more ICD10 categories. In this way, aggregated counts of allele frequencies of the pseudo-control Spanish population can be obtained for diseases belonging to the category removed. Interestingly, in addition to pseudo-control studies, some population studies can be made, as, for example, prevalence of pharmacogenomic variants, etc. In addition, this genomic data has been used to define the first Spanish Genome Reference Panel (SGRP1.0) for imputation. This is the first local repository of variability entirely produced by a crowdsourcing effort and constitutes an example for future initiatives to characterize local variability worldwide. CSVS is also part of the GA4GH Beacon network. CSVS can be accessed at: http://csvs.babelomics.org/., (© The Author(s) 2020. Published by Oxford University Press on behalf of Nucleic Acids Research.)
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- 2021
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47. Drug repurposing for COVID-19 using machine learning and mechanistic models of signal transduction circuits related to SARS-CoV-2 infection.
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Loucera C, Esteban-Medina M, Rian K, Falco MM, Dopazo J, and Peña-Chilet M
- Subjects
- COVID-19 pathology, COVID-19 virology, Computational Chemistry, Humans, Machine Learning, Molecular Docking Simulation, Molecular Targeted Therapy, Proteins chemistry, SARS-CoV-2 pathogenicity, Signal Transduction drug effects, Drug Repositioning, Proteins antagonists & inhibitors, SARS-CoV-2 drug effects, COVID-19 Drug Treatment
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- 2020
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48. miRNA Expression Analysis: Cell Lines HCC1500 and HCC1937 as Models for Breast Cancer in Young Women and the miR-23a as a Poor Prognostic Biomarker.
- Author
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Oltra SS, Peña-Chilet M, Martinez MT, Tormo E, Cejalvo JM, Climent J, Eroles P, Lluch A, and Ribas G
- Abstract
Purpose: The study of breast cancer nearly always involves patients close to menopause or older. Therefore, young patients are mostly underrepresented. Our aim in this study was to demonstrate biological differences in breast cancer of young people using as a model available cell lines derived from people with breast cancer younger than 35 years., Methods: Global miRNA expression was analyzed in breast cancer cells from young (HCC1500, HCC1937) and old patients (MCF-7, MDA-MB-231, HCC1806, and MDA-MB-468). In addition, it was compared with same type of results from patients., Results: We observed a differential profile for 155 miRNAs between young and older cell lines. We identified a set of 24 miRNA associated with aggressiveness that were regulating pluripotency of stem cell-related pathways. Combining the miRNA expression data from cell lines and breast cancer patients, 132 miRNAs were differently expressed between young and old samples, most of them previously found in cell lines. MiR-23a-downregulation was also associated with poor survival in young patients., Conclusions: Our results suggest that HCC1500 and HCC1937 cell lines could be suitable cellular models for breast cancer affecting young women. The miR-23a-downregulation could have a potential role as a poor prognosis biomarker in this age group., Competing Interests: Declaration of Conflicting Interests:The author(s) declared no potential conflicts of interest with respect to the research, authorship, and/or publication of this article., (© The Author(s) 2020.)
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- 2020
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49. Nivolumab and sunitinib combination in advanced soft tissue sarcomas: a multicenter, single-arm, phase Ib/II trial.
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Martin-Broto J, Hindi N, Grignani G, Martinez-Trufero J, Redondo A, Valverde C, Stacchiotti S, Lopez-Pousa A, D'Ambrosio L, Gutierrez A, Perez-Vega H, Encinas-Tobajas V, de Alava E, Collini P, Peña-Chilet M, Dopazo J, Carrasco-Garcia I, Lopez-Alvarez M, Moura DS, and Lopez-Martin JA
- Subjects
- Adult, Aged, Antineoplastic Agents, Immunological pharmacology, Female, Humans, Male, Middle Aged, Nivolumab pharmacology, Sunitinib pharmacology, Young Adult, Antineoplastic Agents, Immunological therapeutic use, Nivolumab therapeutic use, Sarcoma drug therapy, Sunitinib therapeutic use
- Abstract
Background: Sarcomas exhibit low expression of factors related to immune response, which could explain the modest activity of PD-1 inhibitors. A potential strategy to convert a cold into an inflamed microenvironment lies on a combination therapy. As tumor angiogenesis promotes immunosuppression, we designed a phase Ib/II trial to test the double inhibition of angiogenesis (sunitinib) and PD-1/PD-L1 axis (nivolumab)., Methods: This single-arm, phase Ib/II trial enrolled adult patients with selected subtypes of sarcoma. Phase Ib established two dose levels: level 0 with sunitinib 37.5 mg daily from day 1, plus nivolumab 3 mg/kg intravenously on day 15, and then every 2 weeks; and level -1 with sunitinib 37.5 mg on the first 14 days (induction) and then 25 mg per day plus nivolumab on the same schedule. The primary endpoint was to determine the recommended dose for phase II (phase I) and the 6-month progression-free survival rate, according to Response Evaluation Criteria in Solid Tumors 1.1 (phase II)., Results: From May 2017 to April 2019, 68 patients were enrolled: 16 in phase Ib and 52 in phase II. The recommended dose of sunitinib for phase II was 37.5 mg as induction and then 25 mg in combination with nivolumab. After a median follow-up of 17 months (4-26), the 6-month progression-free survival rate was 48% (95% CI 41% to 55%). The most common grade 3-4 adverse events included transaminitis (17.3%) and neutropenia (11.5%)., Conclusions: Sunitinib plus nivolumab is an active scheme with manageable toxicity in the treatment of selected patients with advanced soft tissue sarcoma, with almost half of patients free of progression at 6 months. Trial registration number NCT03277924., Competing Interests: Competing interests: JM-B reports research grants from PharmaMar, Eisai, Immix BioPharma and Novartis, outside the submitted work; honoraria for advisory board participation and expert testimony from PharmaMar, Eli Lilly and Company, Bayer and Eisai; and research funding for clinical studies (institutional) from PharmaMar, Eli Lilly and Company, AROG, Bayer, Eisai, Lixte, Karyopharm, Deciphera, GSK, Novartis, Blueprint, Nektar, Forma, Amgen and Daiichi Sankyo. NH reports grants, personal fees and non-financial support from PharmaMar, personal fees from Lilly, and grants from Eisai and Novartis, outside the submitted work, and research funding for clinical studies (institutional) from PharmaMar, Eli Lilly and Company, AROG, Bayer, Eisai, Lixte, Karyopharm, Deciphera, GSK, Novartis, Blueprint, Nektar, Forma, Amgen and Daiichi Sankyo. GG reports grants and personal fees from PharmaMar, grants from Novartis, and personal fees from Lilly, Pfizer, Bayer and Eisai, outside the submitted work. AR reports grants and personal fees from PharmaMar, personal fees from Lilly, Novartis, Amgen, AstraZeneca and Tesaro, grants and personal fees from Roche, and grants from Eisai, outside the submitted work. SS reports grants and personal fees from Bayer, Lilly and PharmaMar, and grants from GlaxoSmithKline, Novartis and Pfizer, outside the submitted work. EdA reports personal fees and non-financial support from Roche, BMS and PharmaMar, and personal fees from Bayer, outside the submitted work. ML-A declares institutional research grants from PharmaMar, Eisai, Immix BioPharma and Novartis, outside the submitted work. DSM reports institutional research grants from PharmaMar, Eisai, Immix BioPharma and Novartis, outside the submitted work, and travel support from PharmaMar, Eisai, Celgene, Bayer and Pfizer. JAL-M reports honoraria for advisory board participation and travel support from PharmaMar, Eli Lilly and Company, Bayer, Eisai, Novartis, BMS, MSD, Roche, Celgene, Pierre Fabre, Pfizer, GSK, Daiichi Sankyo, Amgen, and Chobani. All other authors declare no relevant relationship to disclose., (© Author(s) (or their employer(s)) 2020. Re-use permitted under CC BY-NC. No commercial re-use. See rights and permissions. Published by BMJ.)
- Published
- 2020
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50. Immune Cell Associations with Cancer Risk.
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Palomero L, Galván-Femenía I, de Cid R, Espín R, Barnes DR, Cimba, Blommaert E, Gil-Gil M, Falo C, Stradella A, Ouchi D, Roso-Llorach A, Violan C, Peña-Chilet M, Dopazo J, Extremera AI, García-Valero M, Herranz C, Mateo F, Mereu E, Beesley J, Chenevix-Trench G, Roux C, Mak T, Brunet J, Hakem R, Gorrini C, Antoniou AC, Lázaro C, and Pujana MA
- Abstract
Proper immune system function hinders cancer development, but little is known about whether genetic variants linked to cancer risk alter immune cells. Here, we report 57 cancer risk loci associated with differences in immune and/or stromal cell contents in the corresponding tissue. Predicted target genes show expression and regulatory associations with immune features. Polygenic risk scores also reveal associations with immune and/or stromal cell contents, and breast cancer scores show consistent results in normal and tumor tissue. SH2B3 links peripheral alterations of several immune cell types to the risk of this malignancy. Pleiotropic SH2B3 variants are associated with breast cancer risk in BRCA1/2 mutation carriers. A retrospective case-cohort study indicates a positive association between blood counts of basophils, leukocytes, and monocytes and age at breast cancer diagnosis. These findings broaden our knowledge of the role of the immune system in cancer and highlight promising prevention strategies for individuals at high risk., Competing Interests: Declaration of Interests M.A.P. is recipient of an unrestricted research grant from Roche Pharma for the development of the ProCURE ICO research program. C.F. received support from Pfizer unrelated to this study., (Copyright © 2020 The Author(s). Published by Elsevier Inc. All rights reserved.)
- Published
- 2020
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