Gene-based microbiome representation enhances host phenotype classification

被引:2
|
作者
Deschenes, Thomas [1 ,2 ,3 ]
Tohoundjona, Fred Wilfried Elom [1 ,2 ]
Plante, Pier-Luc [1 ,2 ,3 ]
Di Marzo, Vincenzo [1 ,2 ,4 ,5 ,6 ,7 ]
Raymond, Frederic [1 ,2 ,3 ,4 ]
机构
[1] Univ Laval, Inst Nutr & Aliments Fonct INAF, Ctr Nutr Sante & Soc NUTRISS, Quebec City, PQ, Canada
[2] Canada Res Excellence Chair Microbiome Endocannabi, Quebec City, PQ, Canada
[3] Univ Laval, Inst Intelligence & Donnees, Quebec City, PQ, Canada
[4] Univ Laval, Ecole Nutr, Fac Sci Agr & alimentat FSAA, Quebec City, PQ, Canada
[5] Ctr Rech Inst Univ cardiol & pneumol Quebec IUCPQ, Quebec City, PQ, Canada
[6] Univ Laval, Fac Med, Dept Med, Quebec City, PQ, Canada
[7] Joint Int Unit Chem & Biomol Res Microbiome & its, Quebec City, PQ, Canada
基金
加拿大健康研究院; 加拿大自然科学与工程研究理事会;
关键词
microbiome; machine learning; metagenomics; shotgun microbiome; feature selection; gene clusters; interpretable models; metabolic health; gut-brain axis; endocannabinoidome; HUMAN GUT MICROBIOME; METAGENOMICS;
D O I
10.1128/msystems.00531-23
中图分类号
Q93 [微生物学];
学科分类号
071005 ; 100705 ;
摘要
With the concomitant advances in both the microbiome and machine learning fields, the gut microbiome has become of great interest for the potential discovery of biomarkers to be used in the classification of the host health status. Shotgun metagenomics data derived from the human microbiome is composed of a high-dimensional set of microbial features. The use of such complex data for the modeling of host-microbiome interactions remains a challenge as retaining de novo content yields a highly granular set of microbial features. In this study, we compared the prediction performances of machine learning approaches according to different types of data representations derived from shotgun metagenomics. These representations include commonly used taxonomic and functional profiles and the more granular gene cluster approach. For the five case-control datasets used in this study (Type 2 diabetes, obesity, liver cirrhosis, colorectal cancer, and inflammatory bowel disease), gene-based approaches, whether used alone or in combination with reference-based data types, allowed improved or similar classification performances as the taxonomic and functional profiles. In addition, we show that using subsets of gene families from specific functional categories of genes highlight the importance of these functions on the host phenotype. This study demonstrates that both reference-free microbiome representations and curated metagenomic annotations can provide relevant representations for machine learning based on metagenomic data. IMPORTANCEData representation is an essential part of machine learning performance when using metagenomic data. In this work, we show that different microbiome representations provide varied host phenotype classification performance depending on the dataset. In classification tasks, untargeted microbiome gene content can provide similar or improved classification compared to taxonomical profiling. Feature selection based on biological function also improves classification performance for some pathologies. Function-based feature selection combined with interpretable machine learning algorithms can generate new hypotheses that can potentially be assayed mechanistically. This work thus proposes new approaches to represent microbiome data for machine learning that can potentiate the findings associated with metagenomic data. Data representation is an essential part of machine learning performance when using metagenomic data. In this work, we show that different microbiome representations provide varied host phenotype classification performance depending on the dataset. In classification tasks, untargeted microbiome gene content can provide similar or improved classification compared to taxonomical profiling. Feature selection based on biological function also improves classification performance for some pathologies. Function-based feature selection combined with interpretable machine learning algorithms can generate new hypotheses that can potentially be assayed mechanistically. This work thus proposes new approaches to represent microbiome data for machine learning that can potentiate the findings associated with metagenomic data.
引用
收藏
页数:16
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