资源论文Robust and Scalable Models of Microbiome Dynamics

Robust and Scalable Models of Microbiome Dynamics

2020-03-16 | |  52 |   46 |   0

Abstract

Microbes are everywhere, including in and on our bodies, and have been shown to play key roles in a variety of prevalent human diseases. Consequently, there has been intense interest in the design of bacteriotherapies or “bugs as drugs,” which are communities of bacteria administered to patients for specific therapeutic applications. Central to the design of such therapeutics is an understanding of the causal microbial interaction network and the population dynamics of the organisms. In this work we present a Bayesian nonparametric model and associated efficient inference algorithm that addresses the key conceptual and practical challenges of learning microbial dynamics from time series microbe abundance data. These challenges include high-dimensional (300+ strains of bacteria in the gut) but temporally spar and non-uniformly sampled data; high measurement noise; and, nonlinear and physically nonnegative dynamics. Our contributions include a new type of dynamical systems model for microbial dynamics based on what we term interaction modules, or learned clusters of latent variables with redundant interaction structure (reducing the expected number of interaction coefficients from 图片.png; a fully Bayesian formulation of the stochastic dynamical systems model that propagates measurement and latent state uncertainty throughout the model; and introduction of a temporally varying auxiliary variable technique to enable efficient inference by relaxing the hard non-negativity constraint on states. We apply our method to simulated and real data, and demonstrate the utility of our technique for system iden tification from limited data, and for gaining new biological insights into bacteriotherapy design. 1 Massachusetts Host-Microbiome Center, Brigham and Women’s Hospital, Harvard Medical School, Boston, MA, USACorrespondence to: TE Gibson

, GK Gerber. Proceedings of the 35 th International Conference on MachLearning, Stockholm, Sweden, PMLR 80, 2018. Copyright 201by the author(s).

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