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Dynamic Bayesian Networks for Integrating Multi-omics Time Series Microbiome Data
by
Mathee, Kalai
, Lugo-Martinez, Jose
, Lerner, Betiana
, Bar-Joseph, Ziv
, Narasimhan, Giri
, Bourguignon, Natalia
, Ruiz-Perez, Daniel
in
dynamic Bayesian networks
/ longitudinal microbiome analysis
/ Methods and Protocols
/ microbial composition prediction
/ multi-omic integration
/ temporal alignment
2021
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Dynamic Bayesian Networks for Integrating Multi-omics Time Series Microbiome Data
by
Mathee, Kalai
, Lugo-Martinez, Jose
, Lerner, Betiana
, Bar-Joseph, Ziv
, Narasimhan, Giri
, Bourguignon, Natalia
, Ruiz-Perez, Daniel
in
dynamic Bayesian networks
/ longitudinal microbiome analysis
/ Methods and Protocols
/ microbial composition prediction
/ multi-omic integration
/ temporal alignment
2021
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Do you wish to request the book?
Dynamic Bayesian Networks for Integrating Multi-omics Time Series Microbiome Data
by
Mathee, Kalai
, Lugo-Martinez, Jose
, Lerner, Betiana
, Bar-Joseph, Ziv
, Narasimhan, Giri
, Bourguignon, Natalia
, Ruiz-Perez, Daniel
in
dynamic Bayesian networks
/ longitudinal microbiome analysis
/ Methods and Protocols
/ microbial composition prediction
/ multi-omic integration
/ temporal alignment
2021
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Dynamic Bayesian Networks for Integrating Multi-omics Time Series Microbiome Data
Journal Article
Dynamic Bayesian Networks for Integrating Multi-omics Time Series Microbiome Data
2021
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Overview
A key challenge in the analysis of longitudinal microbiome data is the inference of temporal interactions between microbial taxa, their genes, the metabolites that they consume and produce, and host genes. To address these challenges, we developed a computational pipeline, a pipeline for the analysis of longitudinal multi-omics data (PALM), that first aligns multi-omics data and then uses dynamic Bayesian networks (DBNs) to reconstruct a unified model. Our approach overcomes differences in sampling and progression rates, utilizes a biologically inspired multi-omic framework, reduces the large number of entities and parameters in the DBNs, and validates the learned network. Applying PALM to data collected from inflammatory bowel disease patients, we show that it accurately identifies known and novel interactions. Targeted experimental validations further support a number of the predicted novel metabolite-taxon interactions. IMPORTANCE While a number of large consortia collect and profile several different types of microbiome and genomic time series data, very few methods exist for joint modeling of multi-omics data sets. We developed a new computational pipeline, PALM, which uses dynamic Bayesian networks (DBNs) and is designed to integrate multi-omics data from longitudinal microbiome studies. When used to integrate sequence, expression, and metabolomics data from microbiome samples along with host expression data, the resulting models identify interactions between taxa, their genes, and the metabolites that they produce and consume, as well as their impact on host expression. We tested the models both by using them to predict future changes in microbiome levels and by comparing the learned interactions to known interactions in the literature. Finally, we performed experimental validations for a few of the predicted interactions to demonstrate the ability of the method to identify novel relationships and their impact.
Publisher
American Society for Microbiology
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