| Literature DB >> 27132190 |
Guozhu Zhang1, Skylar Marvel2, Lisa Truong3, Robert L Tanguay4, David M Reif5.
Abstract
Robust computational approaches are needed to characterize systems-level responses to chemical perturbations in environmental and clinical toxicology applications. Appropriate characterization of response presents a methodological challenge when dealing with diverse phenotypic endpoints measured using in vivo systems. In this article, we propose an information-theoretic method named Aggregate Entropy (AggE) and apply it to scoring multiplexed, phenotypic endpoints measured in developing zebrafish (Danio rerio) across a broad concentration-response profile for a diverse set of 1060 chemicals. AggE accurately identified chemicals with significant morphological effects, including single-endpoint effects and multi-endpoint responses that would have been missed by univariate methods, while avoiding putative false-positives that confound traditional methods due to irregular correlation structure. By testing AggE in a variety of high-dimensional real and simulated datasets, we have characterized its performance and suggested implementation parameters that can guide its application across a wide range of experimental scenarios. Published by Elsevier Inc.Entities:
Keywords: Chemical biology; Developmental neurotoxicology; High throughput screening; Morphology; Multiplexed assays; ToxCast; Zebrafish
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Year: 2016 PMID: 27132190 PMCID: PMC4905797 DOI: 10.1016/j.reprotox.2016.04.012
Source DB: PubMed Journal: Reprod Toxicol ISSN: 0890-6238 Impact factor: 3.143