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Information-Derived Mechanistic Hypotheses for Structural Cardiotoxicity

Authors :
Samar Mahmoud
Avid M. Afzal
Amy Pointon
Nigel Greene
Fredrik Svensson
James Harvey
Andreas Bender
Jerome T. Mettetal
Ines Smit
Richard V. Williams
Kathryn A. Giblin
Azedine Zoufir
Peter Clements
Source :
Chemical Research in Toxicology. 31:1119-1127
Publication Year :
2018
Publisher :
American Chemical Society (ACS), 2018.

Abstract

Adverse events resulting from drug therapy can be a cause of drug withdrawal, reduced and or restricted clinical use, as well as a major economic burden for society. To increase the safety of new drugs, there is a need to better understand the mechanisms causing the adverse events. One way to derive new mechanistic hypotheses is by linking data on drug adverse events with the drugs' biological targets. In this study, we have used data mining techniques and mutual information statistical approaches to find associations between reported adverse events collected from the FDA Adverse Event Reporting System and assay outcomes from ToxCast, with the aim to generate mechanistic hypotheses related to structural cardiotoxicity (morphological damage to cardiomyocytes and/or loss of viability). Our workflow identified 22 adverse event-assay outcome associations. From these associations, 10 implicated targets could be substantiated with evidence from previous studies reported in the literature. For two of the identified targets, we also describe a more detailed mechanism, forming putative adverse outcome pathways associated with structural cardiotoxicity. Our study also highlights the difficulties deriving these type of associations from the very limited amount of data available.

Details

ISSN :
15205010 and 0893228X
Volume :
31
Database :
OpenAIRE
Journal :
Chemical Research in Toxicology
Accession number :
edsair.doi.dedup.....468ece67d4a40c03df67d959acb10c22
Full Text :
https://doi.org/10.1021/acs.chemrestox.8b00159