4.6 Article

An improved statistical method to identify chemical-genetic interactions by exploiting concentration-dependence

Journal

PLOS ONE
Volume 16, Issue 10, Pages -

Publisher

PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pone.0257911

Keywords

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Funding

  1. Bill and Melinda Gates Foundation
  2. [INV-004761]

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Chemical-genetics (C-G) experiments are used to identify interactions between inhibitory compounds and bacterial genes, potentially revealing drug targets or other functionally interacting genes and pathways. By constructing a library of hypomorphic strains, treating them with inhibitory compounds, and using high-throughput sequencing, changes in relative abundance of individual mutants can be quantified. A new statistical method called CGA-LMM is proposed for analyzing C-G data, capturing the dependence of gene abundance in the hypomorph library on increasing drug concentrations through slope coefficients. This method was applied to analyze interactions between Mycobacterium tuberculosis hypomorph libraries and antibiotics, successfully identifying known target genes or expected interactions for the majority of drugs tested.
Chemical-genetics (C-G) experiments can be used to identify interactions between inhibitory compounds and bacterial genes, potentially revealing the targets of drugs, or other functionally interacting genes and pathways. C-G experiments involve constructing a library of hypomorphic strains with essential genes that can be knocked-down, treating it with an inhibitory compound, and using high-throughput sequencing to quantify changes in relative abundance of individual mutants. The hypothesis is that, if the target of a drug or other genes in the same pathway are present in the library, such genes will display an excessive fitness defect due to the synergy between the dual stresses of protein depletion and antibiotic exposure. While assays at a single drug concentration are susceptible to noise and can yield false-positive interactions, improved detection can be achieved by requiring that the synergy between gene and drug be concentration-dependent. We present a novel statistical method based on Linear Mixed Models, called CGA-LMM, for analyzing C-G data. The approach is designed to capture the dependence of the abundance of each gene in the hypomorph library on increasing concentrations of drug through slope coefficients. To determine which genes represent candidate interactions, CGA-LMM uses a conservative population-based approach in which genes with negative slopes are considered significant only if they are outliers with respect to the rest of the population (assuming that most genes in the library do not interact with a given inhibitor). We applied the method to analyze 3 independent hypomorph libraries of M. tuberculosis for interactions with antibiotics with anti-tubercular activity, and we identify known target genes or expected interactions for 7 out of 9 drugs where relevant interacting genes are known.

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