23 results on '"Bizzarri, Daniele"'
Search Results
2. NMR metabolomics-guided DNA methylation mortality predictors
- Author
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Geleijnse, J.M., Boersma, E., van Spil, W.E., van Greevenbroek, M.M.J., Stehouwer, C.D.A., van der Kallen, C.J.H., Arts, I.C.W., Rutters, F., Beulens, J.W.J., Muilwijk, M., Elders, P.J.M., 't Hart, L.M., Ghanbari, M., Ikram, M.A., Netea, M.G., Kloppenburg, M., Ramos, Y.F.M., Bomer, N., Meulenbelt, I., Stronks, K., Snijder, M.B., Zwinderman, A.H., Heijmans, B.T., Lumey, L.H., Wijmenga, C., Fu, J., Zhernakova, A., Deelen, J., Mooijaart, S.P., Beekman, M., Slagboom, P.E., Onderwater, G.L.J., van den Maagdenberg, A.M.J.M., Terwindt, G.M., Thesing, C., Bot, M., Penninx, B.W.J.H., Trompet, S., Jukema, J.W., Sattar, N., van der Horst, I.C.C., van der Harst, P., So-Osman, C., van Hilten, J.A., Nelissen, R.G.H.H., Höfer, I.E., Asselbergs, F.W., Scheltens, P., Teunissen, C.E., van der Flier, W.M., van Dongen, J., Pool, R., Willemsen, A.H.M., Boomsma, D.I., Suchiman, H.E.D., Barkey Wolf, J.J.H., Cats, D., Mei, H., Slofstra, M., Swertz, M., Reinders, M.J.T., van den Akker, E.B., Bizzarri, Daniele, Reinders, Marcel J.T., Kuiper, Lieke, Beekman, Marian, Deelen, Joris, van Meurs, Joyce B.J., van Dongen, Jenny, Pool, René, Boomsma, Dorret I., Ghanbari, Mohsen, Franke, Lude, Slagboom, Pieternella E., and van den Akker, Erik B.
- Published
- 2024
- Full Text
- View/download PDF
3. Metabolomic profiles predict individual multidisease outcomes
- Author
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Buergel, Thore, Steinfeldt, Jakob, Ruyoga, Greg, Pietzner, Maik, Bizzarri, Daniele, Vojinovic, Dina, Upmeier zu Belzen, Julius, Loock, Lukas, Kittner, Paul, Christmann, Lara, Hollmann, Noah, Strangalies, Henrik, Braunger, Jana M., Wild, Benjamin, Chiesa, Scott T., Spranger, Joachim, Klostermann, Fabian, van den Akker, Erik B., Trompet, Stella, Mooijaart, Simon P., Sattar, Naveed, Jukema, J. Wouter, Lavrijssen, Birgit, Kavousi, Maryam, Ghanbari, Mohsen, Ikram, Mohammad A., Slagboom, Eline, Kivimaki, Mika, Langenberg, Claudia, Deanfield, John, Eils, Roland, and Landmesser, Ulf
- Published
- 2022
- Full Text
- View/download PDF
4. Metabolomic predictors of phenotypic traits can replace and complement measured clinical variables in population-scale expression profiling studies
- Author
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Niehues, Anna, Bizzarri, Daniele, Reinders, Marcel J.T., Slagboom, P. Eline, van Gool, Alain J., van den Akker, Erik B., and ’t Hoen, Peter A.C.
- Published
- 2022
- Full Text
- View/download PDF
5. Heterogeneous metabolomic aging across the same age and prediction of health outcome
- Author
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Jia, Xueqing, primary, Fan, Jiayao, additional, Wu, Xucheng, additional, Cao, Xingqi, additional, Ma, Lina, additional, Abdelrahman, Zeinab, additional, Bizzarri, Daniele, additional, van den Akker, Erik B, additional, Slagboom, P Eline, additional, Deelen, Joris, additional, Zhou, Dan, additional, and Liu, Zuyun, additional
- Published
- 2024
- Full Text
- View/download PDF
6. NMR metabolomics-guided DNA methylation mortality predictors
- Author
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Bizzarri, Daniele, Reinders, Marcel J.T., Kuiper, Lieke, Beekman, Marian, Deelen, Joris, van Meurs, Joyce B.J., van Dongen, Jenny, Pool, René, Boomsma, D. I., Ghanbari, M., Franke, Lude, Geleijnse, J. M., Boersma, E., van Spil, W. E., van Greevenbroek, M. M.J., Stehouwer, C. D.A., van der Kallen, C. J.H., Arts, I. C.W., Rutters, F., Beulens, J. W.J., Muilwijk, M., Elders, P. J.M., 't Hart, L. M., Ikram, M. A., Netea, M. G., Kloppenburg, M., Ramos, Y. F.M., Bomer, N., Meulenbelt, I., Stronks, K., Snijder, M. B., Zwinderman, A. H., Heijmans, B. T., Lumey, L. H., Fu, J., Deelen, J., Mooijaart, S. P., Beekman, M., Bot, M., Trompet, S., van der Horst, I. C.C., So-Osman, C., Nelissen, R. G.H.H., Teunissen, C. E., van Dongen, J., Willemsen, A. H.M., Mei, H., Reinders, M. J.T., van den Akker, E. B., Bizzarri, Daniele, Reinders, Marcel J.T., Kuiper, Lieke, Beekman, Marian, Deelen, Joris, van Meurs, Joyce B.J., van Dongen, Jenny, Pool, René, Boomsma, D. I., Ghanbari, M., Franke, Lude, Geleijnse, J. M., Boersma, E., van Spil, W. E., van Greevenbroek, M. M.J., Stehouwer, C. D.A., van der Kallen, C. J.H., Arts, I. C.W., Rutters, F., Beulens, J. W.J., Muilwijk, M., Elders, P. J.M., 't Hart, L. M., Ikram, M. A., Netea, M. G., Kloppenburg, M., Ramos, Y. F.M., Bomer, N., Meulenbelt, I., Stronks, K., Snijder, M. B., Zwinderman, A. H., Heijmans, B. T., Lumey, L. H., Fu, J., Deelen, J., Mooijaart, S. P., Beekman, M., Bot, M., Trompet, S., van der Horst, I. C.C., So-Osman, C., Nelissen, R. G.H.H., Teunissen, C. E., van Dongen, J., Willemsen, A. H.M., Mei, H., Reinders, M. J.T., and van den Akker, E. B.
- Abstract
Background: 1H-NMR metabolomics and DNA methylation in blood are widely known biomarkers predicting age-related physiological decline and mortality yet exert mutually independent mortality and frailty signals. Methods: Leveraging multi-omics data in four Dutch population studies (N = 5238, ∼40% of which male) we investigated whether the mortality signal captured by 1H-NMR metabolomics could guide the construction of DNA methylation-based mortality predictors. Findings: We trained DNA methylation-based surrogates for 64 metabolomic analytes and found that analytes marking inflammation, fluid balance, or HDL/VLDL metabolism could be accurately reconstructed using DNA-methylation assays. Interestingly, a previously reported multi-analyte score indicating mortality risk (MetaboHealth) could also be accurately reconstructed. Sixteen of our derived surrogates, including the MetaboHealth surrogate, showed significant associations with mortality, independent of relevant covariates. Interpretation: The addition of our metabolic analyte-derived surrogates to the well-established epigenetic clock GrimAge demonstrates that our surrogates potentially represent valuable mortality signal. Funding: BBMRI-NL, X-omics, VOILA, Medical Delta, NWO, ERC.
- Published
- 2024
7. Epigenetic and Metabolomic Biomarkers for Biological Age: A Comparative Analysis of Mortality and Frailty Risk
- Author
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Kuiper, Lieke M, primary, Polinder-Bos, Harmke A, additional, Bizzarri, Daniele, additional, Vojinovic, Dina, additional, Vallerga, Costanza L, additional, Beekman, Marian, additional, Dollé, Martijn E T, additional, Ghanbari, Mohsen, additional, Voortman, Trudy, additional, Reinders, Marcel J T, additional, Verschuren, W M Monique, additional, Slagboom, P Eline, additional, van den Akker, Erik B, additional, and van Meurs, Joyce B J, additional
- Published
- 2023
- Full Text
- View/download PDF
8. Technical Report: A Comprehensive Comparison between Different Quantification Versions of Nightingale Health's 1 H-NMR Metabolomics Platform.
- Author
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Bizzarri, Daniele, Reinders, Marcel J. T., Beekman, Marian, Slagboom, P. Eline, and van den Akker, Erik B.
- Subjects
TECHNICAL reports ,METABOLOMICS ,NIGHTINGALE ,RANK correlation (Statistics) ,FATTY acids - Abstract
1 H-NMR metabolomics data is increasingly used to track health and disease. Nightingale Health, a major supplier of1 H-NMR metabolomics, has recently updated the quantification strategy to further align with clinical standards. Such updates, however, might influence backward replicability, particularly affecting studies with repeated measures. Using data from BBMRI-NL consortium (~28,000 samples from 28 cohorts), we compared Nightingale data, originally released in 2014 and 2016, with a re-quantified version released in 2020, of which both versions were based on the same NMR spectra. Apart from two discontinued and twenty-three new analytes, we generally observe a high concordance between quantification versions with 73 out of 222 (33%) analytes showing a mean ρ > 0.9 across all cohorts. Conversely, five analytes consistently showed lower Spearman's correlations ( ρ < 0.7) between versions, namely acetoacetate, LDL-L, saturated fatty acids, S-HDL-C, and sphingomyelins. Furthermore, previously trained multi-analyte scores, such as MetaboAge or MetaboHealth, might be particularly sensitive to platform changes. Whereas MetaboHealth replicated well, the MetaboAge score had to be retrained due to use of discontinued analytes. Notably, both scores in the re-quantified data recapitulated mortality associations observed previously. Concluding, we urge caution in utilizing different platform versions to avoid mixing analytes, having different units, or simply being discontinued. [ABSTRACT FROM AUTHOR]- Published
- 2023
- Full Text
- View/download PDF
9. Epigenetic and Metabolomic Biomarkers for Biological Age: A Comparative Analysis of Mortality and Frailty Risk
- Author
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Kuiper, Lieke M, Polinder-Bos, Harmke A, Bizzarri, Daniele, Vojinovic, Dina, Vallerga, Costanza L, Beekman, Marian, Dollé, Martijn E T, Ghanbari, Mohsen, Voortman, Trudy, Reinders, Marcel J T, Verschuren, W M Monique, Slagboom, P Eline, van den Akker, Erik B, and van Meurs, Joyce B J
- Subjects
DNA methylation ,frailty ,mortality - Published
- 2023
10. Epigenetic and Metabolomic Biomarkers for Biological Age: A Comparative Analysis of Mortality and Frailty Risk
- Author
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Kuiper, Lieke, Polinder-Bos, Harmke, Bizzarri, Daniele, Vojinovic, Dina, Vallerga, Costanza, Beekman, Marian, Dollé, E.T., Ghanbari, Mohsen, Voortman, Trudy, Reinders, Marcel, Verschuren, Monique, Slagboom, Eline, van den Akker, Erik, van Meurs, Joyce, Kuiper, Lieke, Polinder-Bos, Harmke, Bizzarri, Daniele, Vojinovic, Dina, Vallerga, Costanza, Beekman, Marian, Dollé, E.T., Ghanbari, Mohsen, Voortman, Trudy, Reinders, Marcel, Verschuren, Monique, Slagboom, Eline, van den Akker, Erik, and van Meurs, Joyce
- Abstract
Biological age captures a person’s age-related risk of unfavorable outcomes using biophysiological information. Multivariate biological age measures include frailty scores and molecular biomarkers. These measures are often studied in isolation, but here we present a large-scale study comparing them. In 2 prospective cohorts (n = 3 222), we compared epigenetic (DNAm Horvath, DNAm Hannum, DNAm Lin, DNAm epiTOC, DNAm PhenoAge, DNAm DunedinPoAm, DNAm GrimAge, and DNAm Zhang) and metabolomic-based (MetaboAge and MetaboHealth) biomarkers in reflection of biological age, as represented by 5 frailty measures and overall mortality. Biomarkers trained on outcomes with biophysiological and/or mortality information outperformed age-trained biomarkers in frailty reflection and mortality prediction. DNAm GrimAge and MetaboHealth, trained on mortality, showed the strongest association with these outcomes. The associations of DNAm GrimAge and MetaboHealth with frailty and mortality were independent of each other and of the frailty score mimicking clinical geriatric assessment. Epigenetic, metabolomic, and clinical biological age markers seem to capture different aspects of aging. These findings suggest that mortality-trained molecular markers may provide novel phenotype reflecting biological age and strengthen current clinical geriatric health and well-being assessment.
- Published
- 2023
11. Epigenetic and Metabolomic Biomarkers for Biological Age:A Comparative Analysis of Mortality and Frailty Risk
- Author
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Kuiper, Lieke M., Polinder-Bos, Harmke A., Bizzarri, Daniele, Vojinovic, Dina, Vallerga, Costanza L., Beekman, Marian, Dollé, E. T., Ghanbari, Mohsen, Voortman, Trudy, Reinders, Marcel J.T., Verschuren, W. M.Monique, Slagboom, P. Eline, van den Akker, Erik B., van Meurs, Joyce B.J., Kuiper, Lieke M., Polinder-Bos, Harmke A., Bizzarri, Daniele, Vojinovic, Dina, Vallerga, Costanza L., Beekman, Marian, Dollé, E. T., Ghanbari, Mohsen, Voortman, Trudy, Reinders, Marcel J.T., Verschuren, W. M.Monique, Slagboom, P. Eline, van den Akker, Erik B., and van Meurs, Joyce B.J.
- Abstract
Biological age captures a person's age-related risk of unfavorable outcomes using biophysiological information. Multivariate biological age measures include frailty scores and molecular biomarkers. These measures are often studied in isolation, but here we present a large-scale study comparing them. In 2 prospective cohorts (n = 3 222), we compared epigenetic (DNAm Horvath, DNAm Hannum, DNAm Lin, DNAm epiTOC, DNAm PhenoAge, DNAm DunedinPoAm, DNAm GrimAge, and DNAm Zhang) and metabolomic-based (MetaboAge and MetaboHealth) biomarkers in reflection of biological age, as represented by 5 frailty measures and overall mortality. Biomarkers trained on outcomes with biophysiological and/or mortality information outperformed age-trained biomarkers in frailty reflection and mortality prediction. DNAm GrimAge and MetaboHealth, trained on mortality, showed the strongest association with these outcomes. The associations of DNAm GrimAge and MetaboHealth with frailty and mortality were independent of each other and of the frailty score mimicking clinical geriatric assessment. Epigenetic, metabolomic, and clinical biological age markers seem to capture different aspects of aging. These findings suggest that mortality-trained molecular markers may provide novel phenotype reflecting biological age and strengthen current clinical geriatric health and well-being assessment.
- Published
- 2023
12. Epigenetic and Metabolomic Biomarkers for Biological Age: A Comparative Analysis of Mortality and Frailty Risk
- Author
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Cardiometabolic Health, Circulatory Health, JC onderzoeksprogramma Cardiovasculaire Epidemiologie, Kuiper, Lieke M, Polinder-Bos, Harmke A, Bizzarri, Daniele, Vojinovic, Dina, Vallerga, Costanza L, Beekman, Marian, Dollé, E T, Ghanbari, Mohsen, Voortman, Trudy, Reinders, Marcel J T, Verschuren, W M Monique, Slagboom, P Eline, van den Akker, Erik B, van Meurs, Joyce B J, Cardiometabolic Health, Circulatory Health, JC onderzoeksprogramma Cardiovasculaire Epidemiologie, Kuiper, Lieke M, Polinder-Bos, Harmke A, Bizzarri, Daniele, Vojinovic, Dina, Vallerga, Costanza L, Beekman, Marian, Dollé, E T, Ghanbari, Mohsen, Voortman, Trudy, Reinders, Marcel J T, Verschuren, W M Monique, Slagboom, P Eline, van den Akker, Erik B, and van Meurs, Joyce B J
- Published
- 2023
13. Evaluation of epigenetic and metabolomic biomarkers indicating biological age
- Author
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Kuiper, Lieke M., primary, Polinder-Bos, Harmke A., additional, Bizzarri, Daniele, additional, Vojinovic, Dina, additional, Vallerga, Costanza L., additional, Beekman, Marian, additional, Dollé, Martijn E.T., additional, Ghanbari, Mohsen, additional, Voortman, Trudy, additional, Reinders, Marcel J.T., additional, Verschuren, W.M. Monique, additional, Slagboom, P. Eline, additional, van den Akker, Erik B., additional, and van Meurs, Joyce B.J., additional
- Published
- 2022
- Full Text
- View/download PDF
14. GlycA, a Biomarker of Low-Grade Inflammation, Is Increased in Male Night Shift Workers
- Author
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Bizzarri, Daniele, primary, Dollé, Martijn E. T., additional, Loef, Bette, additional, van den Akker, Erik B., additional, and van Kerkhof, Linda W. M., additional
- Published
- 2022
- Full Text
- View/download PDF
15. Metabolomic predictors of phenotypic traits can replace and complement measured clinical variables in population-scale expression profiling studies
- Author
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Niehues, Anna (author), Bizzarri, Daniele (author), Reinders, M.J.T. (author), Slagboom, P. Eline (author), van Gool, Alain J. (author), van den Akker, E.B. (author), 't Hoen, Peter A.C. (author), Niehues, Anna (author), Bizzarri, Daniele (author), Reinders, M.J.T. (author), Slagboom, P. Eline (author), van Gool, Alain J. (author), van den Akker, E.B. (author), and 't Hoen, Peter A.C. (author)
- Abstract
Population-scale expression profiling studies can provide valuable insights into biological and disease-underlying mechanisms. The availability of phenotypic traits is essential for studying clinical effects. Therefore, missing, incomplete, or inaccurate phenotypic information can make analyses challenging and prevent RNA-seq or other omics data to be reused. A possible solution are predictors that infer clinical or behavioral phenotypic traits from molecular data. While such predictors have been developed based on different omics data types and are being applied in various studies, metabolomics-based surrogates are less commonly used than predictors based on DNA methylation profiles.In this study, we inferred 17 traits, including diabetes status and exposure to lipid medication, using previously trained metabolomic predictors. We evaluated whether these metabolomic surrogates can be used as an alternative to reported information for studying the respective phenotypes using expression profiling data of four population cohorts. For the majority of the 17 traits, the metabolomic surrogates performed similarly to the reported phenotypes in terms of effect sizes, number of significant associations, replication rates, and significantly enriched pathways.The application of metabolomics-derived surrogate outcomes opens new possibilities for reuse of multi-omics data sets. In studies where availability of clinical metadata is limited, missing or incomplete information can be complemented by these surrogates, thereby increasing the size of available data sets. Additionally, the availability of such surrogates could be used to correct for potential biological confounding. In the future, it would be interesting to further investigate the use of molecular predictors across different omics types and cohorts., Pattern Recognition and Bioinformatics
- Published
- 2022
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16. Metabolomic predictors of phenotypic traits can replace and complement measured clinical variables in population-scale expression profiling studies
- Author
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Niehues, A., Bizzarri, Daniele, Reinders, Marcel J.T., Slagboom, P.E., Gool, A.J. van, Akker, Erik B. van den, Hoen, Peter A.C. 't, Niehues, A., Bizzarri, Daniele, Reinders, Marcel J.T., Slagboom, P.E., Gool, A.J. van, Akker, Erik B. van den, and Hoen, Peter A.C. 't
- Abstract
Contains fulltext : 253174.pdf (Publisher’s version ) (Open Access)
- Published
- 2022
17. Metabolomic profiles predict individual multidisease outcomes
- Author
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Buergel, Thore (author), Steinfeldt, Jakob (author), Ruyoga, Greg (author), Pietzner, Maik (author), Bizzarri, Daniele (author), Vojinovic, Dina (author), Upmeier zu Belzen, Julius (author), Loock, Lukas (author), van den Akker, E.B. (author), Buergel, Thore (author), Steinfeldt, Jakob (author), Ruyoga, Greg (author), Pietzner, Maik (author), Bizzarri, Daniele (author), Vojinovic, Dina (author), Upmeier zu Belzen, Julius (author), Loock, Lukas (author), and van den Akker, E.B. (author)
- Abstract
Risk stratification is critical for the early identification of high-risk individuals and disease prevention. Here we explored the potential of nuclear magnetic resonance (NMR) spectroscopy-derived metabolomic profiles to inform on multidisease risk beyond conventional clinical predictors for the onset of 24 common conditions, including metabolic, vascular, respiratory, musculoskeletal and neurological diseases and cancers. Specifically, we trained a neural network to learn disease-specific metabolomic states from 168 circulating metabolic markers measured in 117,981 participants with ~1.4 million person-years of follow-up from the UK Biobank and validated the model in four independent cohorts. We found metabolomic states to be associated with incident event rates in all the investigated conditions, except breast cancer. For 10-year outcome prediction for 15 endpoints, with and without established metabolic contribution, a combination of age and sex and the metabolomic state equaled or outperformed established predictors. Moreover, metabolomic state added predictive information over comprehensive clinical variables for eight common diseases, including type 2 diabetes, dementia and heart failure. Decision curve analyses showed that predictive improvements translated into clinical utility for a wide range of potential decision thresholds. Taken together, our study demonstrates both the potential and limitations of NMR-derived metabolomic profiles as a multidisease assay to inform on the risk of many common diseases simultaneously., Pattern Recognition and Bioinformatics
- Published
- 2022
- Full Text
- View/download PDF
18. Metabolic predictors of phenotypic traits can replace and complement measured clinical variables in transcriptome-wide association studies
- Author
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Niehues, Anna, primary, Bizzarri, Daniele, additional, Reinders, Marcel J.T., additional, Slagboom, P. Eline, additional, van Gool, Alain J., additional, van den Akker, Erik B., additional, and Hoen, Peter-Bram 't, additional
- Published
- 2022
- Full Text
- View/download PDF
19. Connectivity Significance for Disease Gene Prioritization in an Expanding Universe
- Author
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Petti, Manuela, primary, Bizzarri, Daniele, additional, Verrienti, Antonella, additional, Falcone, Rosa, additional, and Farina, Lorenzo, additional
- Published
- 2020
- Full Text
- View/download PDF
20. A paradigm shift in medicine: A comprehensive review of network-based approaches
- Author
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Conte, Federica, primary, Fiscon, Giulia, additional, Licursi, Valerio, additional, Bizzarri, Daniele, additional, D'Antò, Tommaso, additional, Farina, Lorenzo, additional, and Paci, Paola, additional
- Published
- 2020
- Full Text
- View/download PDF
21. Metabolomic profiles predict individual multidisease outcomes
- Author
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Thore Buergel, Jakob Steinfeldt, Greg Ruyoga, Maik Pietzner, Daniele Bizzarri, Dina Vojinovic, Julius Upmeier zu Belzen, Lukas Loock, Paul Kittner, Lara Christmann, Noah Hollmann, Henrik Strangalies, Jana M. Braunger, Benjamin Wild, Scott T. Chiesa, Joachim Spranger, Fabian Klostermann, Erik B. van den Akker, Stella Trompet, Simon P. Mooijaart, Naveed Sattar, J. Wouter Jukema, Birgit Lavrijssen, Maryam Kavousi, Mohsen Ghanbari, Mohammad A. Ikram, Eline Slagboom, Mika Kivimaki, Claudia Langenberg, John Deanfield, Roland Eils, Ulf Landmesser, Department of Public Health, Clinicum, Buergel, Thore [0000-0003-1159-007X], Bizzarri, Daniele [0000-0002-6881-273X], Upmeier Zu Belzen, Julius [0000-0002-0966-4458], Hollmann, Noah [0000-0001-8556-518X], Wild, Benjamin [0000-0002-7492-8448], Chiesa, Scott T [0000-0003-4323-2189], Spranger, Joachim [0000-0002-8900-4467], van den Akker, Erik B [0000-0002-7693-0728], Trompet, Stella [0000-0001-5006-0528], Sattar, Naveed [0000-0002-1604-2593], Jukema, J Wouter [0000-0002-3246-8359], Ghanbari, Mohsen [0000-0002-9476-7143], Ikram, Mohammad A [0000-0003-0372-8585], Kivimaki, Mika [0000-0002-4699-5627], Eils, Roland [0000-0002-0034-4036], Landmesser, Ulf [0000-0002-0214-3203], Apollo - University of Cambridge Repository, Epidemiology, Surgery, and Radiology & Nuclear Medicine
- Subjects
Heart Failure ,Magnetic Resonance Spectroscopy ,Diabetes Mellitus, Type 2 ,SDG 3 - Good Health and Well-being ,3121 General medicine, internal medicine and other clinical medicine ,Humans ,Metabolomics ,Female ,Breast Neoplasms ,General Medicine ,General Biochemistry, Genetics and Molecular Biology - Abstract
Publisher Copyright: © 2022, The Author(s). Risk stratification is critical for the early identification of high-risk individuals and disease prevention. Here we explored the potential of nuclear magnetic resonance (NMR) spectroscopy-derived metabolomic profiles to inform on multidisease risk beyond conventional clinical predictors for the onset of 24 common conditions, including metabolic, vascular, respiratory, musculoskeletal and neurological diseases and cancers. Specifically, we trained a neural network to learn disease-specific metabolomic states from 168 circulating metabolic markers measured in 117,981 participants with ~1.4 million person-years of follow-up from the UK Biobank and validated the model in four independent cohorts. We found metabolomic states to be associated with incident event rates in all the investigated conditions, except breast cancer. For 10-year outcome prediction for 15 endpoints, with and without established metabolic contribution, a combination of age and sex and the metabolomic state equaled or outperformed established predictors. Moreover, metabolomic state added predictive information over comprehensive clinical variables for eight common diseases, including type 2 diabetes, dementia and heart failure. Decision curve analyses showed that predictive improvements translated into clinical utility for a wide range of potential decision thresholds. Taken together, our study demonstrates both the potential and limitations of NMR-derived metabolomic profiles as a multidisease assay to inform on the risk of many common diseases simultaneously.
- Published
- 2022
22. A Novel Metabolomic Aging Clock Predicting Health Outcomes and Its Genetic and Modifiable Factors.
- Author
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Jia X, Fan J, Wu X, Cao X, Ma L, Abdelrahman Z, Zhao F, Zhu H, Bizzarri D, Akker EBVD, Slagboom PE, Deelen J, Zhou D, and Liu Z
- Subjects
- Humans, Male, Female, Middle Aged, Aged, Risk Factors, Adult, United Kingdom, Aged, 80 and over, Metabolomics methods, Aging genetics, Aging metabolism
- Abstract
Existing metabolomic clocks exhibit deficiencies in capturing the heterogeneous aging rates among individuals with the same chronological age. Yet, the modifiable and non-modifiable factors in metabolomic aging have not been systematically studied. Here, a new aging measure-MetaboAgeMort-is developed using metabolomic profiles from 239,291 UK Biobank participants for 10-year all-cause mortality prediction. The MetaboAgeMort showed significant associations with all-cause mortality, cause-specific mortality, and diverse incident diseases. Adding MetaboAgeMort to a conventional risk factors model improved the predictive ability of 10-year mortality. A total of 99 modifiable factors across seven categories are identified for MetaboAgeMort. Among these, 16 factors representing pulmonary function, body composition, socioeconomic status, dietary quality, smoking status, alcohol intake, and disease status showed quantitatively stronger associations. The genetic analyses revealed 99 genomic risk loci and 271 genes associated with MetaboAgeMort. The tissue-enrichment analysis showed significant enrichment in liver. While the external validation of the MetaboAgeMort is required, this study illuminates heterogeneous metabolomic aging across the same age, providing avenues for identifying high-risk individuals, developing anti-aging therapies, and personalizing interventions, thus promoting healthy aging and longevity., (© 2024 The Author(s). Advanced Science published by Wiley‐VCH GmbH.)
- Published
- 2024
- Full Text
- View/download PDF
23. NMR metabolomics-guided DNA methylation mortality predictors.
- Author
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Bizzarri D, Reinders MJT, Kuiper L, Beekman M, Deelen J, van Meurs JBJ, van Dongen J, Pool R, Boomsma DI, Ghanbari M, Franke L, Slagboom PE, and van den Akker EB
- Subjects
- Humans, Male, Female, Aged, Mortality, Metabolome, Middle Aged, Magnetic Resonance Spectroscopy methods, Aged, 80 and over, DNA Methylation, Metabolomics methods, Biomarkers
- Abstract
Background:
1 H-NMR metabolomics and DNA methylation in blood are widely known biomarkers predicting age-related physiological decline and mortality yet exert mutually independent mortality and frailty signals., Methods: Leveraging multi-omics data in four Dutch population studies (N = 5238, ∼40% of which male) we investigated whether the mortality signal captured by1 H-NMR metabolomics could guide the construction of DNA methylation-based mortality predictors., Findings: We trained DNA methylation-based surrogates for 64 metabolomic analytes and found that analytes marking inflammation, fluid balance, or HDL/VLDL metabolism could be accurately reconstructed using DNA-methylation assays. Interestingly, a previously reported multi-analyte score indicating mortality risk (MetaboHealth) could also be accurately reconstructed. Sixteen of our derived surrogates, including the MetaboHealth surrogate, showed significant associations with mortality, independent of relevant covariates., Interpretation: The addition of our metabolic analyte-derived surrogates to the well-established epigenetic clock GrimAge demonstrates that our surrogates potentially represent valuable mortality signal., Funding: BBMRI-NL, X-omics, VOILA, Medical Delta, NWO, ERC., Competing Interests: Declaration of interests Authors declare no competing interests., (Copyright © 2024 The Authors. Published by Elsevier B.V. All rights reserved.)- Published
- 2024
- Full Text
- View/download PDF
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