Issue 5, 2023

Evaluating the roughness of structure–property relationships using pretrained molecular representations

Abstract

Quantitative structure–property relationships (QSPRs) aid in understanding molecular properties as a function of molecular structure. When the correlation between structure and property weakens, a dataset is described as “rough,” but this characteristic is partly a function of the chosen representation. Among possible molecular representations are those from recently-developed “foundation models” for chemistry which learn molecular representation from unlabeled samples via self-supervision. However, the performance of these pretrained representations on property prediction benchmarks is mixed when compared to baseline approaches. We sought to understand these trends in terms of the roughness of the underlying QSPR surfaces. We introduce a reformulation of the roughness index (ROGI), ROGI-XD, to enable comparison of ROGI values across representations and evaluate various pretrained representations and those constructed by simple fingerprints and descriptors. We show that pretrained representations do not produce smoother QSPR surfaces, in agreement with previous empirical results of model accuracy. Our findings suggest that imposing stronger assumptions of smoothness with respect to molecular structure during model pretraining could aid in the downstream generation of smoother QSPR surfaces.

Graphical abstract: Evaluating the roughness of structure–property relationships using pretrained molecular representations

Supplementary files

Article information

Article type
Paper
Submitted
14 May 2023
Accepted
03 Aug 2023
First published
03 Aug 2023
This article is Open Access
Creative Commons BY license

Digital Discovery, 2023,2, 1452-1460

Evaluating the roughness of structure–property relationships using pretrained molecular representations

D. E. Graff, E. O. Pyzer-Knapp, K. E. Jordan, E. I. Shakhnovich and C. W. Coley, Digital Discovery, 2023, 2, 1452 DOI: 10.1039/D3DD00088E

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