Improving the accuracy and generalizability of molecular property regression models with a substructure-substitution-rule-informed framework
Xiaoyu Fan, Lin Guo, Ruizhen Jia, Yang Tian, Zhihao Yang, Weihao Li, Boxue Tian

TL;DR
This paper introduces MolRuleLoss, a framework that incorporates substructure substitution rules into molecular property regression models, significantly improving their accuracy and ability to generalize to out-of-distribution molecules in drug discovery tasks.
Contribution
MolRuleLoss is a novel framework that enhances molecular property regression models by integrating substructure substitution rules into their loss functions, boosting accuracy and generalizability.
Findings
Improved RMSE across multiple datasets with MolRuleLoss
Enhanced generalization to activity cliffs and OOD molecules
Formal proof linking SSR variation to prediction error
Abstract
Artificial Intelligence (AI)-aided drug discovery is an active research field, yet AI models often exhibit poor accuracy in regression tasks for molecular property prediction, and perform catastrophically poorly for out-of-distribution (OOD) molecules. Here, we present MolRuleLoss, a substructure-substitution-rule-informed framework that improves the accuracy and generalizability of multiple molecular property regression models (MPRMs) such as GEM and UniMol for diverse molecular property prediction tasks. MolRuleLoss incorporates partial derivative constraints for substructure substitution rules (SSRs) into an MPRM's loss function. When using GEM models for predicting lipophilicity, water solubility, and solvation-free energy (using lipophilicity, ESOL, and freeSolv datasets from MoleculeNet), the root mean squared error (RMSE) values with and without MolRuleLoss were 0.587 vs. 0.660,…
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Taxonomy
TopicsComputational Drug Discovery Methods · Machine Learning in Materials Science · Machine Learning in Bioinformatics
