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Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation

The incidence of type 2 diabetes (T2D) has been increasing globally, and a growing body of evidence links type 2 diabetes with altered microbiota composition. Type 2 diabetes is preceded by a long prediabetic state characterized by changes in various metabolic parameters. We tested whether the gut m...

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Autores principales: Aasmets, Oliver, Lüll, Kreete, Lang, Jennifer M., Pan, Calvin, Kuusisto, Johanna, Fischer, Krista, Laakso, Markku, Lusis, Aldons J., Org, Elin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Society for Microbiology 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8573957/
https://www.ncbi.nlm.nih.gov/pubmed/33594006
http://dx.doi.org/10.1128/mSystems.01191-20
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author Aasmets, Oliver
Lüll, Kreete
Lang, Jennifer M.
Pan, Calvin
Kuusisto, Johanna
Fischer, Krista
Laakso, Markku
Lusis, Aldons J.
Org, Elin
author_facet Aasmets, Oliver
Lüll, Kreete
Lang, Jennifer M.
Pan, Calvin
Kuusisto, Johanna
Fischer, Krista
Laakso, Markku
Lusis, Aldons J.
Org, Elin
author_sort Aasmets, Oliver
collection PubMed
description The incidence of type 2 diabetes (T2D) has been increasing globally, and a growing body of evidence links type 2 diabetes with altered microbiota composition. Type 2 diabetes is preceded by a long prediabetic state characterized by changes in various metabolic parameters. We tested whether the gut microbiome could have predictive potential for T2D development during the healthy and prediabetic disease stages. We used prospective data of 608 well-phenotyped Finnish men collected from the population-based Metabolic Syndrome in Men (METSIM) study to build machine learning models for predicting continuous glucose and insulin measures in a shorter (1.5 year) and longer (4 year) period. Our results show that the inclusion of the gut microbiome improves prediction accuracy for modeling T2D-associated parameters such as glycosylated hemoglobin and insulin measures. We identified novel microbial biomarkers and described their effects on the predictions using interpretable machine learning techniques, which revealed complex linear and nonlinear associations. Additionally, the modeling strategy carried out allowed us to compare the stability of model performance and biomarker selection, also revealing differences in short-term and long-term predictions. The identified microbiome biomarkers provide a predictive measure for various metabolic traits related to T2D, thus providing an additional parameter for personal risk assessment. Our work also highlights the need for robust modeling strategies and the value of interpretable machine learning. IMPORTANCE Recent studies have shown a clear link between gut microbiota and type 2 diabetes. However, current results are based on cross-sectional studies that aim to determine the microbial dysbiosis when the disease is already prevalent. In order to consider the microbiome as a factor in disease risk assessment, prospective studies are needed. Our study is the first study that assesses the gut microbiome as a predictive measure for several type 2 diabetes-associated parameters in a longitudinal study setting. Our results revealed a number of novel microbial biomarkers that can improve the prediction accuracy for continuous insulin measures and glycosylated hemoglobin levels. These results make the prospect of using the microbiome in personalized medicine promising.
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spelling pubmed-85739572021-11-08 Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation Aasmets, Oliver Lüll, Kreete Lang, Jennifer M. Pan, Calvin Kuusisto, Johanna Fischer, Krista Laakso, Markku Lusis, Aldons J. Org, Elin mSystems Research Article The incidence of type 2 diabetes (T2D) has been increasing globally, and a growing body of evidence links type 2 diabetes with altered microbiota composition. Type 2 diabetes is preceded by a long prediabetic state characterized by changes in various metabolic parameters. We tested whether the gut microbiome could have predictive potential for T2D development during the healthy and prediabetic disease stages. We used prospective data of 608 well-phenotyped Finnish men collected from the population-based Metabolic Syndrome in Men (METSIM) study to build machine learning models for predicting continuous glucose and insulin measures in a shorter (1.5 year) and longer (4 year) period. Our results show that the inclusion of the gut microbiome improves prediction accuracy for modeling T2D-associated parameters such as glycosylated hemoglobin and insulin measures. We identified novel microbial biomarkers and described their effects on the predictions using interpretable machine learning techniques, which revealed complex linear and nonlinear associations. Additionally, the modeling strategy carried out allowed us to compare the stability of model performance and biomarker selection, also revealing differences in short-term and long-term predictions. The identified microbiome biomarkers provide a predictive measure for various metabolic traits related to T2D, thus providing an additional parameter for personal risk assessment. Our work also highlights the need for robust modeling strategies and the value of interpretable machine learning. IMPORTANCE Recent studies have shown a clear link between gut microbiota and type 2 diabetes. However, current results are based on cross-sectional studies that aim to determine the microbial dysbiosis when the disease is already prevalent. In order to consider the microbiome as a factor in disease risk assessment, prospective studies are needed. Our study is the first study that assesses the gut microbiome as a predictive measure for several type 2 diabetes-associated parameters in a longitudinal study setting. Our results revealed a number of novel microbial biomarkers that can improve the prediction accuracy for continuous insulin measures and glycosylated hemoglobin levels. These results make the prospect of using the microbiome in personalized medicine promising. American Society for Microbiology 2021-02-16 /pmc/articles/PMC8573957/ /pubmed/33594006 http://dx.doi.org/10.1128/mSystems.01191-20 Text en Copyright © 2021 Aasmets et al. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution 4.0 International license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Research Article
Aasmets, Oliver
Lüll, Kreete
Lang, Jennifer M.
Pan, Calvin
Kuusisto, Johanna
Fischer, Krista
Laakso, Markku
Lusis, Aldons J.
Org, Elin
Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation
title Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation
title_full Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation
title_fullStr Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation
title_full_unstemmed Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation
title_short Machine Learning Reveals Time-Varying Microbial Predictors with Complex Effects on Glucose Regulation
title_sort machine learning reveals time-varying microbial predictors with complex effects on glucose regulation
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8573957/
https://www.ncbi.nlm.nih.gov/pubmed/33594006
http://dx.doi.org/10.1128/mSystems.01191-20
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