TY - JOUR
T1 - Beyond microbial abundance
T2 - metadata integration enhances disease prediction in human microbiome studies
AU - Goncalves, Andre R.
AU - Ranganathan, Hiranmayi
AU - Valdes, Camilo
AU - Zhu, Haonan
AU - Zhang, Boya
AU - Kok, Car Reen
AU - Martí, Jose Manuel
AU - Mulakken, Nisha J.
AU - Thissen, James B.
AU - Jaing, Crystal
AU - Be, Nicholas A.
N1 - Publisher Copyright:
Copyright © 2026 Goncalves, Ranganathan, Valdes, Zhu, Zhang, Kok, Martí, Mulakken, Thissen, Jaing and Be.
PY - 2026
Y1 - 2026
N2 - Multiple studies have highlighted the interaction of the human microbiome with physiological systems such as the gut, immune, liver, and skin, via key axes. Advances in sequencing technologies and high-performance computing have enabled the analysis of large-scale metagenomic data, facilitating the use of machine learning to predict disease likelihood from microbiome profiles. However, challenges such as compositionality, high dimensionality, sparsity, and limited sample sizes have hindered the development of actionable models. One strategy to improve these models is by incorporating key metadata from both the human host and sample collection/processing protocols. This remains challenging due to sparsity and inconsistency in metadata annotation and availability. In this paper, we introduce a machine learning-based pipeline for predicting human disease states by integrating host and protocol metadata with microbiome abundance profiles from 68 different studies, processed through a consistent pipeline. Our findings indicate that metadata can enhance machine learning predictions, particularly at higher taxonomic ranks like Kingdom and Phylum, though this effect diminishes at lower ranks. Our study leverages a large collection of microbiome datasets comprising 11,208 samples, therefore enhancing the robustness and statistical confidence of our findings. This work is a critical step toward utilizing microbiome and metadata for predicting diseases such as gastrointestinal infections, diabetes, cancer, and neurological disorders.
AB - Multiple studies have highlighted the interaction of the human microbiome with physiological systems such as the gut, immune, liver, and skin, via key axes. Advances in sequencing technologies and high-performance computing have enabled the analysis of large-scale metagenomic data, facilitating the use of machine learning to predict disease likelihood from microbiome profiles. However, challenges such as compositionality, high dimensionality, sparsity, and limited sample sizes have hindered the development of actionable models. One strategy to improve these models is by incorporating key metadata from both the human host and sample collection/processing protocols. This remains challenging due to sparsity and inconsistency in metadata annotation and availability. In this paper, we introduce a machine learning-based pipeline for predicting human disease states by integrating host and protocol metadata with microbiome abundance profiles from 68 different studies, processed through a consistent pipeline. Our findings indicate that metadata can enhance machine learning predictions, particularly at higher taxonomic ranks like Kingdom and Phylum, though this effect diminishes at lower ranks. Our study leverages a large collection of microbiome datasets comprising 11,208 samples, therefore enhancing the robustness and statistical confidence of our findings. This work is a critical step toward utilizing microbiome and metadata for predicting diseases such as gastrointestinal infections, diabetes, cancer, and neurological disorders.
KW - host disease prediction
KW - host metadata
KW - human microbiome
KW - machine learning
KW - meta-analysis
UR - http://www.scopus.com/inward/record.url?scp=105029375399&partnerID=8YFLogxK
U2 - 10.3389/fmicb.2025.1695501
DO - 10.3389/fmicb.2025.1695501
M3 - Article
AN - SCOPUS:105029375399
SN - 1664-302X
VL - 16
JO - Frontiers in Microbiology
JF - Frontiers in Microbiology
M1 - 1695501
ER -