Wendy D. Cornell
IBM
6 Papers
60 Citations
Wendy D. Cornell is an academic researcher from IBM. The author has contributed to research in topics: Convolutional neural network & Deep learning. The author has an hindex of 3, co-authored 6 publications.
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Papers
Combining Docking Pose Rank and Structure with Deep Learning Improves Protein–Ligand Binding Mode Prediction over a Baseline Docking Approach
TL;DR: In this paper, a graph-based convolutional neural network was proposed for activity and binding mode prediction in protein-ligand complexes. But their work is limited to cross-docking data sets.
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Combining docking pose rank and structure with deep learning improves protein-ligand binding mode prediction
TL;DR: In this article, a graph-based convolutional neural network is proposed for activity and binding mode prediction in protein-ligand complexes. But, the authors do not consider the effect of data bias on classification performance.
30
Simplified, interpretable graph convolutional neural networks for small molecule activity prediction.
Jeffrey K. Weber,Joseph A. Morrone,Sugato Bagchi,Jan D. Estrada Pabon,Seung-gu Kang,Leili Zhang,Wendy D. Cornell +6 more
TL;DR: In this article, a simplified graph convolutional neural network (gCNN) architecture was proposed for small molecule activity prediction, which can yield performance improvements over standard gCNN and RF methods on difficult-to-classify test sets.
19
Patent
Target molecule-ligand binding mode prediction combining deep learning-based informatics with molecular docking
Joseph A. Morrone,Jeffrey K. Weber,Wendy D. Cornell +2 more
- 29 Oct 2020
TL;DR: In this article, a computer-implemented method is described to generate, by a ligand bond graph generator, a first graph based on bond connectivity within an input ligand molecule that is specified as input.
2
•Posted Content
Analysis of training and seed bias in small molecules generated with a conditional graph-based variational autoencoder -- Insights for practical AI-driven molecule generation
TL;DR: In this paper, the impact of seed and training bias on the output of an activity-conditioned graph-based variational autoencoder (VAE) was analyzed.