Title | Multivariable association discovery in population-scale meta-omics studies |
Publication Type | Journal Article |
Year of Publication | 2021 |
Authors | Mallick H, Rahnavard A, McIver LJ, Ma S, Zhang Y, Nguyen LH, Tickle TL, Weingart G, Ren B, Schwager EH, Chatterjee S, Thompson KN, Wilkinson JE, Subramanian A, Lu Y, Waldron L, Paulson JN, Franzosa EA, Bravo HCorrada, Huttenhower C |
Journal | PLoS Comput Biol |
Volume | 17 |
Issue | 11 |
Pagination | e1009442 |
Date Published | 2021 Nov |
ISSN | 1553-7358 |
Keywords | Computational Biology, Computer Simulation, Gastrointestinal Microbiome, Humans, Inflammatory Bowel Diseases, Multivariate Analysis |
Abstract | It is challenging to associate features such as human health outcomes, diet, environmental conditions, or other metadata to microbial community measurements, due in part to their quantitative properties. Microbiome multi-omics are typically noisy, sparse (zero-inflated), high-dimensional, extremely non-normal, and often in the form of count or compositional measurements. Here we introduce an optimized combination of novel and established methodology to assess multivariable association of microbial community features with complex metadata in population-scale observational studies. Our approach, MaAsLin 2 (Microbiome Multivariable Associations with Linear Models), uses generalized linear and mixed models to accommodate a wide variety of modern epidemiological studies, including cross-sectional and longitudinal designs, as well as a variety of data types (e.g., counts and relative abundances) with or without covariates and repeated measurements. To construct this method, we conducted a large-scale evaluation of a broad range of scenarios under which straightforward identification of meta-omics associations can be challenging. These simulation studies reveal that MaAsLin 2's linear model preserves statistical power in the presence of repeated measures and multiple covariates, while accounting for the nuances of meta-omics features and controlling false discovery. We also applied MaAsLin 2 to a microbial multi-omics dataset from the Integrative Human Microbiome (HMP2) project which, in addition to reproducing established results, revealed a unique, integrated landscape of inflammatory bowel diseases (IBD) across multiple time points and omics profiles. |
DOI | 10.1371/journal.pcbi.1009442 |
Alternate Journal | PLoS Comput Biol |
PubMed ID | 34784344 |
PubMed Central ID | PMC8714082 |
Grant List | R01 HG005220 / HG / NHGRI NIH HHS / United States U54 DK102557 / DK / NIDDK NIH HHS / United States R24 DK110499 / DK / NIDDK NIH HHS / United States U19 AI110820 / AI / NIAID NIH HHS / United States P30 DK043351 / DK / NIDDK NIH HHS / United States |