Dynamic interaction network inference from longitudinal microbiome data.
Jose Lugo-MartinezDaniel Ruiz-PerezGiri NarasimhanZiv Bar-JosephPublished in: Microbiome (2019)
We propose a computational pipeline for analyzing longitudinal microbiome data. Our results provide evidence that microbiome alignments coupled with dynamic Bayesian networks improve predictive performance over previous methods and enhance our ability to infer biological relationships within the microbiome and between taxa and clinical factors.