Computational Construction of Toxicant Signaling Networks

Jeffrey N. Law, Sophia M. Orbach, Bronson R. Weston, Peter A. Steele, Padmavathy Rajagopalan, T. M. Murali

Research output: Contribution to journalArticlepeer-review

1 Scopus citations

Abstract

Humans and animals are regularly exposed to compounds that may have adverse effects on health. The Toxicity Forecaster (ToxCast) program was developed to use high throughput screening assays to quickly screen chemicals by measuring their effects on many biological end points. Many of these assays test for effects on cellular receptors and transcription factors (TFs), under the assumption that a toxicant may perturb normal signaling pathways in the cell. We hypothesized that we could reconstruct the intermediate proteins in these pathways that may be directly or indirectly affected by the toxicant, potentially revealing important physiological processes not yet tested for many chemicals. We integrate data from ToxCast with a human protein interactome to build toxicant signaling networks that contain physical and signaling protein interactions that may be affected as a result of toxicant exposure. To build these networks, we developed the EdgeLinker algorithm, which efficiently finds short paths in the interactome that connect the receptors to TFs for each toxicant. We performed multiple evaluations and found evidence suggesting that these signaling networks capture biologically relevant effects of toxicants. To aid in dissemination and interpretation, interactive visualizations of these networks are available at http://graphspace.org.

Original languageEnglish (US)
Pages (from-to)1267-1277
Number of pages11
JournalChemical Research in Toxicology
Volume36
Issue number8
DOIs
StatePublished - Aug 21 2023
Externally publishedYes

All Science Journal Classification (ASJC) codes

  • Toxicology

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