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Predictive Modeling of PROTAC Cell Permeability with Machine Learning

Vasanthanathan Poongavanam, Florian Kölling, Anja Giese, Andreas H. Göller, Lutz Lehmann, Daniel Meibom, Jan Kihlberg

2023ACS Omega39 citationsDOIOpen Access PDF

Abstract

High Resolution Image Download MS PowerPoint Slide Approaches for predicting proteolysis targeting chimera (PROTAC) cell permeability are of major interest to reduce resource-demanding synthesis and testing of low-permeable PROTACs. We report a comprehensive investigation of the scope and limitations of machine learning-based binary classification models developed using 17 simple descriptors for large and structurally diverse sets of cereblon (CRBN) and von Hippel–Lindau (VHL) PROTACs. For the VHL PROTAC set, kappa nearest neighbor and random forest models performed best and predicted the permeability of a blinded test set with >80% accuracy ( k ≥ 0.57). Models retrained by combining the original training and the blinded test set performed equally well for a second blinded VHL set. However, models for CRBN PROTACs were less successful, mainly due to the imbalanced nature of the CRBN datasets. All descriptors contributed to the models, but size and lipophilicity were the most important. We conclude that properly trained machine learning models can be integrated as effective filters in the PROTAC design process.

Topics & Concepts

Machine learningArtificial intelligenceTest setComputer scienceRandom forestProtein Degradation and InhibitorsPeptidase Inhibition and AnalysisMultiple Myeloma Research and Treatments
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