Can Pre-trained Models Really Learn Better Molecular Representations for AI-aided Drug Discovery?
Ziqiao Zhang, Yatao Bian, Ailin Xie, Pengju Han, Long-Kai Huang,, Shuigeng Zhou

TL;DR
This paper introduces RePRA, a method to evaluate and visualize the quality of molecular representations learned by pre-trained models in drug discovery, revealing their strengths and limitations compared to traditional fingerprints.
Contribution
The paper proposes a novel evaluation framework, RePRA, that generalizes Activity Cliffs and Scaffold Hopping concepts to assess representation quality in molecular models.
Findings
Pre-trained models can outperform ECFP in some tasks.
Representation-property correlations are often implicit.
Some representations are worse than traditional fingerprints.
Abstract
Self-supervised pre-training is gaining increasingly more popularity in AI-aided drug discovery, leading to more and more pre-trained models with the promise that they can extract better feature representations for molecules. Yet, the quality of learned representations have not been fully explored. In this work, inspired by the two phenomena of Activity Cliffs (ACs) and Scaffold Hopping (SH) in traditional Quantitative Structure-Activity Relationship (QSAR) analysis, we propose a method named Representation-Property Relationship Analysis (RePRA) to evaluate the quality of the representations extracted by the pre-trained model and visualize the relationship between the representations and properties. The concepts of ACs and SH are generalized from the structure-activity context to the representation-property context, and the underlying principles of RePRA are analyzed theoretically. Two…
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Taxonomy
TopicsComputational Drug Discovery Methods · Machine Learning in Materials Science · Protein Structure and Dynamics
