Robust Detection of Hierarchical Communities from Escherichia coli Gene Expression Data
Santiago Trevi\~no, Yudong Sun, Tim F. Cooper, Kevin E., Bassler

TL;DR
This paper introduces robust methods for detecting hierarchical, functionally meaningful gene communities in E. coli gene expression data, effectively handling noise and revealing potential new regulatory interactions.
Contribution
The authors develop and validate a noise-resistant approach for identifying hierarchical gene communities, advancing the analysis of biological networks beyond traditional methods.
Findings
Hierarchical communities enriched for GO terms are identified.
Method reliably detects core communities despite added noise.
Potential new regulatory interactions are suggested within significant communities.
Abstract
Determining the functional structure of biological networks is a central goal of systems biology. One approach is to analyze gene expression data to infer a network of gene interactions on the basis of their correlated responses to environmental and genetic perturbations. The inferred network can then be analyzed to identify functional communities. However, commonly used algorithms can yield unreliable results due to experimental noise, algorithmic stochasticity, and the influence of arbitrarily chosen parameter values. Furthermore, the results obtained typically provide only a simplistic view of the network partitioned into disjoint communities and provide no information of the relationship between communities. Here, we present methods to robustly detect coregulated and functionally enriched gene communities and demonstrate their application and validity for Escherichia coli gene…
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