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Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling

OBJECTIVE: Characterizing specific metabolites in sub-clinical phases preceding the onset of type 2 diabetes to enable efficient preventive and personalized interventions. RESEARCH DESIGN AND METHODS: We developed predictive models of type 2 diabetes using two strategies. One strategy focused on the...

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Autores principales: Yengo, Loic, Arredouani, Abdelilah, Marre, Michel, Roussel, Ronan, Vaxillaire, Martine, Falchi, Mario, Haoudi, Abdelali, Tichet, Jean, Balkau, Beverley, Bonnefond, Amélie, Froguel, Philippe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5034686/
https://www.ncbi.nlm.nih.gov/pubmed/27689004
http://dx.doi.org/10.1016/j.molmet.2016.08.011
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author Yengo, Loic
Arredouani, Abdelilah
Marre, Michel
Roussel, Ronan
Vaxillaire, Martine
Falchi, Mario
Haoudi, Abdelali
Tichet, Jean
Balkau, Beverley
Bonnefond, Amélie
Froguel, Philippe
author_facet Yengo, Loic
Arredouani, Abdelilah
Marre, Michel
Roussel, Ronan
Vaxillaire, Martine
Falchi, Mario
Haoudi, Abdelali
Tichet, Jean
Balkau, Beverley
Bonnefond, Amélie
Froguel, Philippe
author_sort Yengo, Loic
collection PubMed
description OBJECTIVE: Characterizing specific metabolites in sub-clinical phases preceding the onset of type 2 diabetes to enable efficient preventive and personalized interventions. RESEARCH DESIGN AND METHODS: We developed predictive models of type 2 diabetes using two strategies. One strategy focused on the probability of incidence only and was based on logistic regression (MRS1); the other strategy accounted for the age at diagnosis of diabetes and was based on Cox regression (MRS2). We assessed 293 metabolites using non-targeted metabolomics in fasting plasma samples of 1,044 participants (including 231 incident cases over 9 years) used as training population; and fasting serum samples of 128 participants (64 incident cases versus 64 controls) used as validation population. We applied a LASSO-based variable selection aiming at maximizing the out-of-sample area under the receiver operating characteristic curve (AROC) and integrated AROC. RESULTS: Sixteen and 17 metabolites were selected for MRS1 and MRS2, respectively, with AROC = 90% and 73% in the training and validation populations, respectively for MRS1. MRS2 had a similar performance and was significantly associated with a younger age of onset of type 2 diabetes (β = −3.44 years per MRS2 SD in the training population, p = 1.56 × 10(−7); β = −4.73 years per MRS2 SD in the validation population, p = 4.04 × 10(−3)). CONCLUSIONS: Overall, this study illustrates that metabolomics improves prediction of type 2 diabetes incidence of 4.5% on top of known clinical and biological markers, reaching 90% in total AROC, which is considered the threshold for clinical validity, suggesting it may be used in targeting interventions to prevent type 2 diabetes.
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spelling pubmed-50346862016-09-29 Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling Yengo, Loic Arredouani, Abdelilah Marre, Michel Roussel, Ronan Vaxillaire, Martine Falchi, Mario Haoudi, Abdelali Tichet, Jean Balkau, Beverley Bonnefond, Amélie Froguel, Philippe Mol Metab Original Article OBJECTIVE: Characterizing specific metabolites in sub-clinical phases preceding the onset of type 2 diabetes to enable efficient preventive and personalized interventions. RESEARCH DESIGN AND METHODS: We developed predictive models of type 2 diabetes using two strategies. One strategy focused on the probability of incidence only and was based on logistic regression (MRS1); the other strategy accounted for the age at diagnosis of diabetes and was based on Cox regression (MRS2). We assessed 293 metabolites using non-targeted metabolomics in fasting plasma samples of 1,044 participants (including 231 incident cases over 9 years) used as training population; and fasting serum samples of 128 participants (64 incident cases versus 64 controls) used as validation population. We applied a LASSO-based variable selection aiming at maximizing the out-of-sample area under the receiver operating characteristic curve (AROC) and integrated AROC. RESULTS: Sixteen and 17 metabolites were selected for MRS1 and MRS2, respectively, with AROC = 90% and 73% in the training and validation populations, respectively for MRS1. MRS2 had a similar performance and was significantly associated with a younger age of onset of type 2 diabetes (β = −3.44 years per MRS2 SD in the training population, p = 1.56 × 10(−7); β = −4.73 years per MRS2 SD in the validation population, p = 4.04 × 10(−3)). CONCLUSIONS: Overall, this study illustrates that metabolomics improves prediction of type 2 diabetes incidence of 4.5% on top of known clinical and biological markers, reaching 90% in total AROC, which is considered the threshold for clinical validity, suggesting it may be used in targeting interventions to prevent type 2 diabetes. Elsevier 2016-08-23 /pmc/articles/PMC5034686/ /pubmed/27689004 http://dx.doi.org/10.1016/j.molmet.2016.08.011 Text en © 2016 The Author(s) http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Original Article
Yengo, Loic
Arredouani, Abdelilah
Marre, Michel
Roussel, Ronan
Vaxillaire, Martine
Falchi, Mario
Haoudi, Abdelali
Tichet, Jean
Balkau, Beverley
Bonnefond, Amélie
Froguel, Philippe
Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling
title Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling
title_full Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling
title_fullStr Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling
title_full_unstemmed Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling
title_short Impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling
title_sort impact of statistical models on the prediction of type 2 diabetes using non-targeted metabolomics profiling
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5034686/
https://www.ncbi.nlm.nih.gov/pubmed/27689004
http://dx.doi.org/10.1016/j.molmet.2016.08.011
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