| Literature DB >> 31389167 |
Hyeoncheol Cho1, Insung S Choi1.
Abstract
Deep learning has made great strides in tackling chemical problems, but still lacks full-fledged representations for three-dimensional (3D) molecular structures for its inner working. For example, the molecular graph, commonly used in chemistry and recently adapted to the graph convolutional network (GCN), is inherently a 2D representation of 3D molecules. Herein we propose an advanced version of the GCN, called 3DGCN, which receives 3D molecular information from a molecular graph augmented by information on bond direction. While outperforming state-of-the-art deep-learning models in the prediction of chemical and biological properties, 3DGCN has the ability to both generalize and distinguish molecular rotations in 3D, beyond 2D, which has great impact on drug discovery and development, not to mention the design of chemical reactions.Keywords: computational chemistry; machine learning; molecular graphs; molecular topology; structure-activity relationships
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Year: 2019 PMID: 31389167 DOI: 10.1002/cmdc.201900458
Source DB: PubMed Journal: ChemMedChem ISSN: 1860-7179 Impact factor: 3.466