Prediction of Neighbor-Dependent Microbial Interactions From Limited Population Data.

Front Microbiol

Biological Sciences Division, Pacific Northwest National Laboratory, Richland, WA, United States.

Published: January 2020

AI Article Synopsis

  • The study focuses on how the presence of neighboring species influences microbial community dynamics and highlights the need for better theoretical frameworks to understand these context-dependent interactions.
  • A new method called Minimal Interspecies Interaction Adjustment (MIIA) has been proposed to predict how interaction networks change when new species are introduced, but its application is limited without specific data on species abundance.
  • To address these limitations, the authors suggest alternative approaches for estimating interaction coefficients in complex microbial communities, including scaling equations and conducting sensitivity analyses, as demonstrated in case studies of various microbial populations.

Article Abstract

Modulation of interspecies interactions by the presence of neighbor species is a key ecological factor that governs dynamics and function of microbial communities, yet the development of theoretical frameworks explicit for understanding context-dependent interactions are still nascent. In a recent study, we proposed a novel rule-based inference method termed the Minimal Interspecies Interaction Adjustment (MIIA) that predicts the reorganization of interaction networks in response to the addition of new species such that the modulation in interaction coefficients caused by additional members is minimal. While the theoretical basis of MIIA was established through the previous work by assuming the full availability of species abundance data in axenic, binary, and complex communities, its extension to actual microbial ecology can be highly constrained in cases that species have not been cultured axenically (e.g., due to their inability to grow in the absence of specific partnerships) because binary interaction coefficients - basic parameters required for implementing the MIIA - are inestimable without axenic and binary population data. Thus, here we present an alternative formulation based on the following two central ideas. First, in the case where only data from axenic cultures are unavailable, we remove axenic populations from governing equations through appropriate scaling. This allows us to predict neighbor-dependent interactions in a sense (i.e., fractional change of interactions between with versus without neighbors). Second, in the case where both axenic and binary populations are missing, we parameterize binary interaction coefficients to determine their values through a sensitivity analysis. Through the case study of two microbial communities with distinct characteristics and complexity (i.e., a three-member community where all members can grow independently, and a four-member community that contains member species whose growth is dependent on other species), we demonstrated that despite data limitation, the proposed new formulation was able to successfully predict interspecies interactions that are consistent with experimentally derived results. Therefore, this technical advancement enhances our ability to predict context-dependent interspecies interactions in a broad range of microbial systems without being limited to specific growth conditions as a pre-requisite.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6985286PMC
http://dx.doi.org/10.3389/fmicb.2019.03049DOI Listing

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