1. Shape-Based Generative Modeling for de Novo Drug Design.
- Author
-
Skalic M, Jiménez J, Sabbadin D, and De Fabritiis G
- Subjects
- Drug Design, Hydrogen Bonding, Hydrophobic and Hydrophilic Interactions, Models, Molecular, Molecular Conformation, Molecular Structure, Quantitative Structure-Activity Relationship, Machine Learning, Pharmaceutical Preparations chemistry
- Abstract
In this work, we propose a machine learning approach to generate novel molecules starting from a seed compound, its three-dimensional (3D) shape, and its pharmacophoric features. The pipeline draws inspiration from generative models used in image analysis and represents a first example of the de novo design of lead-like molecules guided by shape-based features. A variational autoencoder is used to perturb the 3D representation of a compound, followed by a system of convolutional and recurrent neural networks that generate a sequence of SMILES tokens. The generative design of novel scaffolds and functional groups can cover unexplored regions of chemical space that still possess lead-like properties.
- Published
- 2019
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