SPARTA: Interpretable functional classification of microbiomes and detection of hidden cumulative effects

Archive ouverte

Ruiz, Baptiste | Belcour, Arnaud | Blanquart, Samuel | Buffet-Bataillon, Sylvie | Le Huërou-Luron, Isabelle, Luron | Siegel, Anne | Le Cunff, Yann

Edité par CCSD ; PLOS -

The source code and data used to produce the results and analyses presented in this manuscript are available on GitHub at https://github.com/baptisteruiz/SPARTA.git. A supplemental archive with detailed outputs and material for reproduction is available on Zenodo at https://doi.org/10.5281/zenodo.10728697.. International audience. The composition of the gut microbiota is a known factor in various diseases and has proven to be a strong basis for automatic classification of disease state. A need for a better understanding of microbiota data on the functional scale has since been voiced, as it would enhance these approaches’ biological interpretability. In this paper, we have developed a computational pipeline for integrating the functional annotation of the gut microbiota into an automatic classification process and facilitating downstream interpretation of its results. The process takes as input taxonomic composition data, which can be built from 16S or whole genome sequencing, and links each component to its functional annotations through interrogation of the UniProt database. A functional profile of the gut microbiota is built from this basis. Both profiles, microbial and functional, are used to train Random Forest classifiers to discern unhealthy from control samples. SPARTA ensures full reproducibility and exploration of inherent variability by extending state-of-the-art methods in three dimensions: increased number of trained random forests, selection of important variables with an iterative process, repetition of full selection process from different seeds. This process shows that the translation of the microbiota into functional profiles gives non-significantly different performances when compared to microbial profiles on 5 of 6 datasets. This approach’s main contribution however stems from its interpretability rather than its performance: through repetition, it also outputs a robust subset of discriminant variables. These selections were shown to be more consistent than those obtained by a state-of-the-art method, and their contents were validated through a manual bibliographic research. The interconnections between selected taxa and functional annotations were also analyzed and revealed that important annotations emerge from the cumulated influence of non-selected taxa.

Suggestions

Du même auteur

Highlighting discriminating functional annotations in patients' gut microbiota through Machine Learning classification applied to functional descriptions of the microbiome

Archive ouverte | Ruiz, Baptiste | CCSD

International audience. BackgroundUnderstanding the gut microbiota and its mechanisms has become a major point of interest in the medical field, with more and more studies correlating it to a variety of pathologies....

Empirical evidence for metabolic drift in plant and algal lipid biosynthesis pathways

Archive ouverte | Zonnequin, Maëlle | CCSD

International audience. Metabolic pathway drift has been formulated as a general principle to help in the interpretation of comparative analyses between biosynthesis pathways. Indeed, such analyses often indicate su...

Inferring and comparing metabolism across heterogeneous sets of annotated genomes using AuCoMe

Archive ouverte | Belcour, Arnaud | CCSD

International audience. Comparative analysis of genome-scale metabolic networks (GSMNs) may yield important information on the biology, evolution, and adaptation of species. However, it is impeded by the high hetero...

Chargement des enrichissements...