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Identification of Compounds That Interfere with High-Throughput Screening Assay Technologies

Authors :
David, Laurianne
Walsh, Jarrod
Sturm, Noé
Feierberg, Isabella
Nissink, J. Willem M.
Chen, Hongming
Bajorath, Jürgen
Engkvist, Ola
Publication Year :
2019
Publisher :
Zenodo, 2019.

Abstract

A significant challenge in high-throughput screening (HTS) campaigns is the identification of assay technology interference compounds. A Compound Interfering with an Assay Technology (CIAT) gives false readouts in many assays. CIATs are often considered viable hits and investigated in follow-up studies, thus impeding research and wasting resources. In this study, we developed a machine-learning (ML) model to predict CIATs for three assay technologies. The model was trained on known CIATs and non-CIATs (NCIATs) identified in artefact assays and described by their 2D structural descriptors. Usual methods identifying CIATs are based on statistical analysis of historical primary screening data and do not consider experimental assays identifying CIATs. Our results show successful prediction of CIATs for existing and novel compounds and provide a complementary and wider set of predicted CIATs compared to BSF, a published structure-independent model, and to the PAINS substructural filters. Our analysis is an example of how well-curated datasets can provide powerful predictive models despite their relatively small size.

Subjects

Subjects :
"Marie Sklodowska-Curie Actions"

Details

Database :
OpenAIRE
Accession number :
edsair.od......2659..db20bbfd5c2694ed88268fbbc5a32c9c