ChemRL-GEM: Geometry Enhanced Molecular Representation Learning for Property Prediction
Xiaomin Fang, Lihang Liu, Jieqiong Lei, Donglong He, Shanzhuo Zhang,, Jingbo Zhou, Fan Wang, Hua Wu, and Haifeng Wang

TL;DR
ChemRL-GEM introduces a geometry-aware GNN architecture with self-supervised learning strategies that leverage 3D molecular structures, significantly improving property prediction accuracy over existing methods.
Contribution
The paper presents a novel GNN architecture that models atoms, bonds, and bond angles simultaneously, incorporating molecular geometry into representation learning.
Findings
Outperforms state-of-the-art baselines in molecular property prediction tasks.
Achieves an average of 8.8% improvement in regression tasks.
Effectively utilizes 3D spatial information for better molecular representations.
Abstract
Effective molecular representation learning is of great importance to facilitate molecular property prediction, which is a fundamental task for the drug and material industry. Recent advances in graph neural networks (GNNs) have shown great promise in applying GNNs for molecular representation learning. Moreover, a few recent studies have also demonstrated successful applications of self-supervised learning methods to pre-train the GNNs to overcome the problem of insufficient labeled molecules. However, existing GNNs and pre-training strategies usually treat molecules as topological graph data without fully utilizing the molecular geometry information. Whereas, the three-dimensional (3D) spatial structure of a molecule, a.k.a molecular geometry, is one of the most critical factors for determining molecular physical, chemical, and biological properties. To this end, we propose a novel…
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