Literature DB >> 31598630

Learning from the ligand: using ligand-based features to improve binding affinity prediction.

Fergus Boyles1, Charlotte M Deane1, Garrett M Morris1.   

Abstract

MOTIVATION: Machine learning scoring functions for protein-ligand binding affinity prediction have been found to consistently outperform classical scoring functions. Structure-based scoring functions for universal affinity prediction typically use features describing interactions derived from the protein-ligand complex, with limited information about the chemical or topological properties of the ligand itself.
RESULTS: We demonstrate that the performance of machine learning scoring functions are consistently improved by the inclusion of diverse ligand-based features. For example, a Random Forest (RF) combining the features of RF-Score v3 with RDKit molecular descriptors achieved Pearson correlation coefficients of up to 0.836, 0.780 and 0.821 on the PDBbind 2007, 2013 and 2016 core sets, respectively, compared to 0.790, 0.746 and 0.814 when using the features of RF-Score v3 alone. Excluding proteins and/or ligands that are similar to those in the test sets from the training set has a significant effect on scoring function performance, but does not remove the predictive power of ligand-based features. Furthermore a RF using only ligand-based features is predictive at a level similar to classical scoring functions and it appears to be predicting the mean binding affinity of a ligand for its protein targets.
AVAILABILITY AND IMPLEMENTATION: Data and code to reproduce all the results are freely available at http://opig.stats.ox.ac.uk/resources. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
© The Author(s) 2019. Published by Oxford University Press. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.

Year:  2020        PMID: 31598630     DOI: 10.1093/bioinformatics/btz665

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  13 in total

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Review 2.  Delta Machine Learning to Improve Scoring-Ranking-Screening Performances of Protein-Ligand Scoring Functions.

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Journal:  J Chem Inf Model       Date:  2022-05-17       Impact factor: 6.162

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5.  Persistent spectral-based machine learning (PerSpect ML) for protein-ligand binding affinity prediction.

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Review 7.  Pose Classification Using Three-Dimensional Atomic Structure-Based Neural Networks Applied to Ion Channel-Ligand Docking.

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8.  SMPLIP-Score: predicting ligand binding affinity from simple and interpretable on-the-fly interaction fingerprint pattern descriptors.

Authors:  Surendra Kumar; Mi-Hyun Kim
Journal:  J Cheminform       Date:  2021-03-25       Impact factor: 5.514

9.  Learning protein-ligand binding affinity with atomic environment vectors.

Authors:  Rocco Meli; Andrew Anighoro; Mike J Bodkin; Garrett M Morris; Philip C Biggin
Journal:  J Cheminform       Date:  2021-08-14       Impact factor: 5.514

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

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Journal:  PLoS Comput Biol       Date:  2022-04-06       Impact factor: 4.475

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