Litcius/Paper detail

SCAM Detective: Accurate Predictor of Small, Colloidally Aggregating Molecules

Vinícius M. Alves, Stephen J. Capuzzi, Rodolpho C. Braga, Daniel Korn, Joshua E. Hochuli, Kyle H. Bowler, Adam Yasgar, Ganesha Rai, Anton Simeonov, Eugene Muratov, Alexey Zakharov, Alexander Tropsha

2020Journal of Chemical Information and Modeling38 citationsDOI

Abstract

Small, colloidally aggregating molecules (SCAMs) are the most common source of false positives in high-throughput screening (HTS) campaigns. Although SCAMs can be experimentally detected and suppressed by the addition of detergent in the assay buffer, detergent sensitivity is not routinely monitored in HTS. Computational methods are thus needed to flag potential SCAMs during HTS triage. In this study, we have developed and rigorously validated quantitative structure-interference relationship (QSIR) models of detergent-sensitive aggregation in several HTS campaigns under various assay conditions and screening concentrations. In particular, we have modeled detergent-sensitive aggregation in an AmpC β-lactamase assay, the preferred HTS counter-screen for aggregation, as well as in another assay that measures cruzain inhibition. Our models increase the accuracy of aggregation prediction by ∼53% in the β-lactamase assay and by ∼46% in the cruzain assay compared to previously published methods. We also discuss the importance of both assay conditions and screening concentrations in the development of QSIR models for various interference mechanisms besides aggregation. The models developed in this study are publicly available for fast prediction within the SCAM detective web application (https://scamdetective.mml.unc.edu/).

Topics & Concepts

False positive paradoxSmall moleculeSensitivity (control systems)ChromatographyComputer scienceChemistryComputational biologyMachine learningBiologyBiochemistryEngineeringElectronic engineeringComputational Drug Discovery MethodsBiosimilars and Bioanalytical MethodsProtein purification and stability