Cargando…
Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort
INTRODUCTION: The gut microbiota (GM) dysbiosis is one of the causal factors for the progression of different chronic metabolic diseases, including type 2 diabetes mellitus (T2D). Understanding the basis that laid this association may lead to developing new therapeutic strategies for preventing and...
Autores principales: | , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Frontiers Media S.A.
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10333697/ https://www.ncbi.nlm.nih.gov/pubmed/37441494 http://dx.doi.org/10.3389/fendo.2023.1170459 |
_version_ | 1785070720262340608 |
---|---|
author | Neri-Rosario, Daniel Martínez-López, Yoscelina Estrella Esquivel-Hernández, Diego A. Sánchez-Castañeda, Jean Paul Padron-Manrique, Cristian Vázquez-Jiménez, Aarón Giron-Villalobos, David Resendis-Antonio, Osbaldo |
author_facet | Neri-Rosario, Daniel Martínez-López, Yoscelina Estrella Esquivel-Hernández, Diego A. Sánchez-Castañeda, Jean Paul Padron-Manrique, Cristian Vázquez-Jiménez, Aarón Giron-Villalobos, David Resendis-Antonio, Osbaldo |
author_sort | Neri-Rosario, Daniel |
collection | PubMed |
description | INTRODUCTION: The gut microbiota (GM) dysbiosis is one of the causal factors for the progression of different chronic metabolic diseases, including type 2 diabetes mellitus (T2D). Understanding the basis that laid this association may lead to developing new therapeutic strategies for preventing and treating T2D, such as probiotics, prebiotics, and fecal microbiota transplants. It may also help identify potential early detection biomarkers and develop personalized interventions based on an individual’s gut microbiota profile. Here, we explore how supervised Machine Learning (ML) methods help to distinguish taxa for individuals with prediabetes (prediabetes) or T2D. METHODS: To this aim, we analyzed the GM profile (16s rRNA gene sequencing) in a cohort of 410 Mexican naïve patients stratified into normoglycemic, prediabetes, and T2D individuals. Then, we compared six different ML algorithms and found that Random Forest had the highest predictive performance in classifying T2D and prediabetes patients versus controls. RESULTS: We identified a set of taxa for predicting patients with T2D compared to normoglycemic individuals, including Allisonella, Slackia, Ruminococus_2, Megaspgaera, Escherichia/Shigella, and Prevotella, among them. Besides, we concluded that Anaerostipes, Intestinibacter, Prevotella_9, Blautia, Granulicatella, and Veillonella were the relevant genus in patients with prediabetes compared to normoglycemic subjects. DISCUSSION: These findings allow us to postulate that GM is a distinctive signature in prediabetes and T2D patients during the development and progression of the disease. Our study highlights the role of GM and opens a window toward the rational design of new preventive and personalized strategies against the control of this disease. |
format | Online Article Text |
id | pubmed-10333697 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Frontiers Media S.A. |
record_format | MEDLINE/PubMed |
spelling | pubmed-103336972023-07-12 Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort Neri-Rosario, Daniel Martínez-López, Yoscelina Estrella Esquivel-Hernández, Diego A. Sánchez-Castañeda, Jean Paul Padron-Manrique, Cristian Vázquez-Jiménez, Aarón Giron-Villalobos, David Resendis-Antonio, Osbaldo Front Endocrinol (Lausanne) Endocrinology INTRODUCTION: The gut microbiota (GM) dysbiosis is one of the causal factors for the progression of different chronic metabolic diseases, including type 2 diabetes mellitus (T2D). Understanding the basis that laid this association may lead to developing new therapeutic strategies for preventing and treating T2D, such as probiotics, prebiotics, and fecal microbiota transplants. It may also help identify potential early detection biomarkers and develop personalized interventions based on an individual’s gut microbiota profile. Here, we explore how supervised Machine Learning (ML) methods help to distinguish taxa for individuals with prediabetes (prediabetes) or T2D. METHODS: To this aim, we analyzed the GM profile (16s rRNA gene sequencing) in a cohort of 410 Mexican naïve patients stratified into normoglycemic, prediabetes, and T2D individuals. Then, we compared six different ML algorithms and found that Random Forest had the highest predictive performance in classifying T2D and prediabetes patients versus controls. RESULTS: We identified a set of taxa for predicting patients with T2D compared to normoglycemic individuals, including Allisonella, Slackia, Ruminococus_2, Megaspgaera, Escherichia/Shigella, and Prevotella, among them. Besides, we concluded that Anaerostipes, Intestinibacter, Prevotella_9, Blautia, Granulicatella, and Veillonella were the relevant genus in patients with prediabetes compared to normoglycemic subjects. DISCUSSION: These findings allow us to postulate that GM is a distinctive signature in prediabetes and T2D patients during the development and progression of the disease. Our study highlights the role of GM and opens a window toward the rational design of new preventive and personalized strategies against the control of this disease. Frontiers Media S.A. 2023-06-27 /pmc/articles/PMC10333697/ /pubmed/37441494 http://dx.doi.org/10.3389/fendo.2023.1170459 Text en Copyright © 2023 Neri-Rosario, Martínez-López, Esquivel-Hernández, Sánchez-Castañeda, Padron-Manrique, Vázquez-Jiménez, Giron-Villalobos and Resendis-Antonio https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. |
spellingShingle | Endocrinology Neri-Rosario, Daniel Martínez-López, Yoscelina Estrella Esquivel-Hernández, Diego A. Sánchez-Castañeda, Jean Paul Padron-Manrique, Cristian Vázquez-Jiménez, Aarón Giron-Villalobos, David Resendis-Antonio, Osbaldo Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort |
title | Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort |
title_full | Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort |
title_fullStr | Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort |
title_full_unstemmed | Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort |
title_short | Dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a Mexican cohort |
title_sort | dysbiosis signatures of gut microbiota and the progression of type 2 diabetes: a machine learning approach in a mexican cohort |
topic | Endocrinology |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10333697/ https://www.ncbi.nlm.nih.gov/pubmed/37441494 http://dx.doi.org/10.3389/fendo.2023.1170459 |
work_keys_str_mv | AT nerirosariodaniel dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort AT martinezlopezyoscelinaestrella dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort AT esquivelhernandezdiegoa dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort AT sanchezcastanedajeanpaul dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort AT padronmanriquecristian dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort AT vazquezjimenezaaron dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort AT gironvillalobosdavid dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort AT resendisantonioosbaldo dysbiosissignaturesofgutmicrobiotaandtheprogressionoftype2diabetesamachinelearningapproachinamexicancohort |