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Simplified, interpretable graph convolutional neural networks for small molecule activity prediction
- Source :
- Journal of computer-aided molecular design. 36(5)
- Publication Year :
- 2021
-
Abstract
- We here present a streamlined, explainable graph convolutional neural network (gCNN) architecture for small molecule activity prediction. We first conduct a hyperparameter optimization across nearly 800 protein targets that produces a simplified gCNN QSAR architecture, and we observe that such a model can yield performance improvements over both standard gCNN and RF methods on difficult-to-classify test sets. Additionally, we discuss how reductions in convolutional layer dimensions potentially speak to the “anatomical” needs of gCNNs with respect to radial coarse graining of molecular substructure. We augment this simplified architecture with saliency map technology that highlights molecular substructures relevant to activity, and we perform saliency analysis on nearly 100 data-rich protein targets. We show that resultant substructural clusters are useful visualization tools for understanding substructure-activity relationships. We go on to highlight connections between our models’ saliency predictions and observations made in the medicinal chemistry literature, focusing on four case studies of past lead finding and lead optimization campaigns.
- Subjects :
- Quantitative structure–activity relationship
business.industry
Computer science
Proteins
Machine learning
computer.software_genre
Convolutional neural network
Computer Science Applications
Visualization
Drug Discovery
Hyperparameter optimization
Graph (abstract data type)
Granularity
Artificial intelligence
Neural Networks, Computer
Physical and Theoretical Chemistry
Layer (object-oriented design)
business
computer
Interpretability
Subjects
Details
- ISSN :
- 15734951
- Volume :
- 36
- Issue :
- 5
- Database :
- OpenAIRE
- Journal :
- Journal of computer-aided molecular design
- Accession number :
- edsair.doi.dedup.....0d4a581e980a67cedf82bc04f8fb241c