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Machine Learning-Enabled Pipeline for Large-Scale Virtual Drug Screening

Aayush Gupta, Huan‐Xiang Zhou

2021Journal of Chemical Information and Modeling42 citationsDOIOpen Access PDF

Abstract

Virtual screening is receiving renewed attention in drug discovery, but progress is hampered by challenges on two fronts: handling the ever-increasing sizes of libraries of drug-like compounds and separating true positives from false positives. Here, we developed a machine learning-enabled pipeline for large-scale virtual screening that promises breakthroughs on both fronts. By clustering compounds according to molecular properties and limited docking against a drug target, the full library was trimmed by 10-fold; the remaining compounds were then screened individually by docking; and finally, a dense neural network was trained to classify the hits into true and false positives. As illustration, we screened for inhibitors against RPN11, the deubiquitinase subunit of the proteasome, and a drug target for breast cancer.

Topics & Concepts

Virtual screeningFalse positive paradoxComputer scienceTrue positive rateDrug discoveryPipeline (software)Artificial intelligenceMachine learningDrugComputational biologyBioinformaticsMedicinePharmacologyBiologyProgramming languageComputational Drug Discovery MethodsMicrobial Natural Products and Biosynthesisvaccines and immunoinformatics approaches
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