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Benchmarking compound activity prediction for real-world drug discovery applications

Tingzhong Tian, Shuya Li, Ziting Zhang, Lin Chen, Ziheng Zou, Dan Zhao, Jianyang Zeng

2024Communications Chemistry18 citationsDOIOpen Access PDF

Abstract

Identifying active compounds for target proteins is fundamental in early drug discovery. Recently, data-driven computational methods have demonstrated promising potential in predicting compound activities. However, there lacks a well-designed benchmark to comprehensively evaluate these methods from a practical perspective. To fill this gap, we propose a Compound Activity benchmark for Real-world Applications (CARA). Through carefully distinguishing assay types, designing train-test splitting schemes and selecting evaluation metrics, CARA can consider the biased distribution of current real-world compound activity data and avoid overestimation of model performances. We observed that although current models can make successful predictions for certain proportions of assays, their performances varied across different assays. In addition, evaluation of several few-shot training strategies demonstrated different performances related to task types. Overall, we provide a high-quality dataset for developing and evaluating compound activity prediction models, and the analyses in this work may inspire better applications of data-driven models in drug discovery.

Topics & Concepts

BenchmarkingBenchmark (surveying)Drug discoveryComputer scienceTask (project management)Machine learningData miningPerspective (graphical)Artificial intelligenceBioinformaticsEngineeringBiologySystems engineeringMarketingBusinessGeographyGeodesyComputational Drug Discovery MethodsMachine Learning in Materials ScienceProtein Structure and Dynamics