1. Off-targetP ML: an open source machine learning framework for off-target panel safety assessment of small molecules
- Author
-
Doha Naga, Wolfgang Muster, Eunice Musvasva, and Gerhard F. Ecker
- Subjects
Drug discovery ,Safety screening ,Off-target panel ,Class imbalance ,Deep learning ,Automated machine learning (AutoML) ,Information technology ,T58.5-58.64 ,Chemistry ,QD1-999 - Abstract
Abstract Unpredicted drug safety issues constitute the majority of failures in the pharmaceutical industry according to several studies. Some of these preclinical safety issues could be attributed to the non-selective binding of compounds to targets other than their intended therapeutic target, causing undesired adverse events. Consequently, pharmaceutical companies routinely run in-vitro safety screens to detect off-target activities prior to preclinical and clinical studies. Hereby we present an open source machine learning framework aiming at the prediction of our in-house 50 off-target panel activities for ~ 4000 compounds, directly from their structure. This framework is intended to guide chemists in the drug design process prior to synthesis and to accelerate drug discovery. We also present a set of ML approaches that require minimum programming experience for deployment. The workflow incorporates different ML approaches such as deep learning and automated machine learning. It also accommodates popular issues faced in bioactivity predictions, as data imbalance, inter-target duplicated measurements and duplicated public compound identifiers. Throughout the workflow development, we explore and compare the capability of Neural Networks and AutoML in constructing prediction models for fifty off-targets of different protein classes, different dataset sizes, and high-class imbalance. Outcomes from different methods are compared in terms of efficiency and efficacy. The most important challenges and factors impacting model construction and performance in addition to suggestions on how to overcome such challenges are also discussed.
- Published
- 2022
- Full Text
- View/download PDF