Literature DB >> 35156325

Benchmarking Accuracy and Generalizability of Four Graph Neural Networks Using Large In Vitro ADME Datasets from Different Chemical Spaces.

Fabio Broccatelli1, Richard Trager1, Michael Reutlinger2, George Karypis3,4, Mufei Li5.   

Abstract

In this work, we benchmark a variety of single- and multi-task graph neural network (GNN) models against lower-bar and higher-bar traditional machine learning approaches employing human engineered molecular features. We consider four GNN variants - Graph Convolutional Network (GCN), Graph Attention Network (GAT), Message Passing Neural Network (MPNN), and Attentive Fingerprint (AttentiveFP). So far deep learning models have been primarily benchmarked using lower-bar traditional models solely based on fingerprints, while more realistic benchmarks employing fingerprints, whole-molecule descriptors and predictions from other related endpoints (e. g., LogD7.4) appear to be scarce for industrial ADME datasets. In addition to time-split test sets based on Genentech data, this study benefits from the availability of measurements from an external chemical space (Roche data). We identify GAT as a promising approach to implementing deep learning models. While all the deep learning models significantly outperform lower-bar benchmark traditional models solely based on fingerprints, only GATs seem to offer a small but consistent improvement over higher-bar benchmark traditional models. Finally, the accuracy of in vitro assays from different laboratories predicting the same experimental endpoints appears to be comparable with the accuracy of GAT single-task models, suggesting that most of the observed error from the models is a function of the experimental error propagation.
© 2022 Wiley-VCH GmbH.

Entities:  

Keywords:  ADME; deep learning; graph neural network; in vitro assays; multi-task learning

Mesh:

Year:  2022        PMID: 35156325     DOI: 10.1002/minf.202100321

Source DB:  PubMed          Journal:  Mol Inform        ISSN: 1868-1743            Impact factor:   4.050


  2 in total

1.  Enabling data-limited chemical bioactivity predictions through deep neural network transfer learning.

Authors:  Ruifeng Liu; Srinivas Laxminarayan; Jaques Reifman; Anders Wallqvist
Journal:  J Comput Aided Mol Des       Date:  2022-10-22       Impact factor: 4.179

Review 2.  On modeling and utilizing chemical compound information with deep learning technologies: A task-oriented approach.

Authors:  Sangsoo Lim; Sangseon Lee; Yinhua Piao; MinGyu Choi; Dongmin Bang; Jeonghyeon Gu; Sun Kim
Journal:  Comput Struct Biotechnol J       Date:  2022-08-05       Impact factor: 6.155

  2 in total

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