Literature DB >> 33754707

Improved Protein-Ligand Binding Affinity Prediction with Structure-Based Deep Fusion Inference.

Derek Jones1, Hyojin Kim2, Xiaohua Zhang3, Adam Zemla1, Garrett Stevenson4, W F Drew Bennett3, Daniel Kirshner3, Sergio E Wong3, Felice C Lightstone3, Jonathan E Allen1.   

Abstract

Predicting accurate protein-ligand binding affinities is an important task in drug discovery but remains a challenge even with computationally expensive biophysics-based energy scoring methods and state-of-the-art deep learning approaches. Despite the recent advances in the application of deep convolutional and graph neural network-based approaches, it remains unclear what the relative advantages of each approach are and how they compare with physics-based methodologies that have found more mainstream success in virtual screening pipelines. We present fusion models that combine features and inference from complementary representations to improve binding affinity prediction. This, to our knowledge, is the first comprehensive study that uses a common series of evaluations to directly compare the performance of three-dimensional (3D)-convolutional neural networks (3D-CNNs), spatial graph neural networks (SG-CNNs), and their fusion. We use temporal and structure-based splits to assess performance on novel protein targets. To test the practical applicability of our models, we examine their performance in cases that assume that the crystal structure is not available. In these cases, binding free energies are predicted using docking pose coordinates as the inputs to each model. In addition, we compare these deep learning approaches to predictions based on docking scores and molecular mechanic/generalized Born surface area (MM/GBSA) calculations. Our results show that the fusion models make more accurate predictions than their constituent neural network models as well as docking scoring and MM/GBSA rescoring, with the benefit of greater computational efficiency than the MM/GBSA method. Finally, we provide the code to reproduce our results and the parameter files of the trained models used in this work. The software is available as open source at https://github.com/llnl/fast. Model parameter files are available at ftp://gdo-bioinformatics.ucllnl.org/fast/pdbbind2016_model_checkpoints/.

Year:  2021        PMID: 33754707     DOI: 10.1021/acs.jcim.0c01306

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  16 in total

1.  GCRNN: graph convolutional recurrent neural network for compound-protein interaction prediction.

Authors:  Ermal Elbasani; Soualihou Ngnamsie Njimbouom; Tae-Jin Oh; Eung-Hee Kim; Hyun Lee; Jeong-Dong Kim
Journal:  BMC Bioinformatics       Date:  2022-01-11       Impact factor: 3.169

2.  Scoring Functions for Protein-Ligand Binding Affinity Prediction using Structure-Based Deep Learning: A Review.

Authors:  Rocco Meli; Garrett M Morris; Philip C Biggin
Journal:  Front Bioinform       Date:  2022-06-17

3.  PDBspheres: a method for finding 3D similarities in local regions in proteins.

Authors:  Adam T Zemla; Jonathan E Allen; Dan Kirshner; Felice C Lightstone
Journal:  NAR Genom Bioinform       Date:  2022-10-10

Review 4.  Pose Classification Using Three-Dimensional Atomic Structure-Based Neural Networks Applied to Ion Channel-Ligand Docking.

Authors:  Heesung Shim; Hyojin Kim; Jonathan E Allen; Heike Wulff
Journal:  J Chem Inf Model       Date:  2022-04-21       Impact factor: 6.162

5.  Prediction of Binding Free Energy of Protein-Ligand Complexes with a Hybrid Molecular Mechanics/Generalized Born Surface Area and Machine Learning Method.

Authors:  Lina Dong; Xiaoyang Qu; Yuan Zhao; Binju Wang
Journal:  ACS Omega       Date:  2021-11-21

6.  Transferability of Geometric Patterns from Protein Self-Interactions to Protein-Ligand Interactions.

Authors:  Antoine Koehl; Milind Jagota; Dan D Erdmann-Pham; Alexander Fung; Yun S Song
Journal:  Pac Symp Biocomput       Date:  2022

7.  PIGNet: a physics-informed deep learning model toward generalized drug-target interaction predictions.

Authors:  Seokhyun Moon; Wonho Zhung; Soojung Yang; Jaechang Lim; Woo Youn Kim
Journal:  Chem Sci       Date:  2022-02-07       Impact factor: 9.825

8.  Dowker complex based machine learning (DCML) models for protein-ligand binding affinity prediction.

Authors:  Xiang Liu; Huitao Feng; Jie Wu; Kelin Xia
Journal:  PLoS Comput Biol       Date:  2022-04-06       Impact factor: 4.475

9.  Decoding the protein-ligand interactions using parallel graph neural networks.

Authors:  Carter Knutson; Mridula Bontha; Jenna A Bilbrey; Neeraj Kumar
Journal:  Sci Rep       Date:  2022-05-10       Impact factor: 4.996

10.  Discovery of Small-Molecule Inhibitors of SARS-CoV-2 Proteins Using a Computational and Experimental Pipeline.

Authors:  Edmond Y Lau; Oscar A Negrete; W F Drew Bennett; Brian J Bennion; Monica Borucki; Feliza Bourguet; Aidan Epstein; Magdalena Franco; Brooke Harmon; Stewart He; Derek Jones; Hyojin Kim; Daniel Kirshner; Victoria Lao; Jacky Lo; Kevin McLoughlin; Richard Mosesso; Deepa K Murugesh; Edwin A Saada; Brent Segelke; Maxwell A Stefan; Garrett A Stevenson; Marisa W Torres; Dina R Weilhammer; Sergio Wong; Yue Yang; Adam Zemla; Xiaohua Zhang; Fangqiang Zhu; Jonathan E Allen; Felice C Lightstone
Journal:  Front Mol Biosci       Date:  2021-07-09
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