From data towards knowledge: Revealing the architecture of signaling systems by unifying knowledge mining and data mining of systematic perturbation data
Songjian Lu, Bo Jin, Ashley Cowart, Xinghua Lu

TL;DR
This paper presents a unified framework combining knowledge mining and data mining to automatically infer the architecture of cellular signaling systems from systematic perturbation-response data, demonstrated on yeast data.
Contribution
It introduces an automated, ontology-driven approach to identify functional modules and organize signaling units hierarchically, transforming gene-level data into conceptual knowledge.
Findings
Recovered known yeast signal transduction pathways
Generated hypotheses about yeast signaling system
Automatically organized perturbed genes into a signaling architecture
Abstract
Genetic and pharmacological perturbation experiments, such as deleting a gene and monitoring gene expression responses, are powerful tools for studying cellular signal transduction pathways. However, it remains a challenge to automatically derive knowledge of a cellular signaling system at a conceptual level from systematic perturbation-response data. In this study, we explored a framework that unifies knowledge mining and data mining approaches towards the goal. The framework consists of the following automated processes: 1) applying an ontology-driven knowledge mining approach to identify functional modules among the genes responding to a perturbation in order to reveal potential signals affected by the perturbation; 2) applying a graph-based data mining approach to search for perturbations that affect a common signal with respect to a functional module, and 3) revealing the…
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