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Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening

Recently much effort has been invested in using convolutional neural network (CNN) models trained on 3D structural images of protein-ligand complexes to distinguish binding from non-binding ligands for virtual screening. However, the dearth of reliable protein-ligand x-ray structures and binding aff...

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Autores principales: Chen, Lieyang, Cruz, Anthony, Ramsey, Steven, Dickson, Callum J., Duca, Jose S., Hornak, Viktor, Koes, David R., Kurtzman, Tom
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6701836/
https://www.ncbi.nlm.nih.gov/pubmed/31430292
http://dx.doi.org/10.1371/journal.pone.0220113
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author Chen, Lieyang
Cruz, Anthony
Ramsey, Steven
Dickson, Callum J.
Duca, Jose S.
Hornak, Viktor
Koes, David R.
Kurtzman, Tom
author_facet Chen, Lieyang
Cruz, Anthony
Ramsey, Steven
Dickson, Callum J.
Duca, Jose S.
Hornak, Viktor
Koes, David R.
Kurtzman, Tom
author_sort Chen, Lieyang
collection PubMed
description Recently much effort has been invested in using convolutional neural network (CNN) models trained on 3D structural images of protein-ligand complexes to distinguish binding from non-binding ligands for virtual screening. However, the dearth of reliable protein-ligand x-ray structures and binding affinity data has required the use of constructed datasets for the training and evaluation of CNN molecular recognition models. Here, we outline various sources of bias in one such widely-used dataset, the Directory of Useful Decoys: Enhanced (DUD-E). We have constructed and performed tests to investigate whether CNN models developed using DUD-E are properly learning the underlying physics of molecular recognition, as intended, or are instead learning biases inherent in the dataset itself. We find that superior enrichment efficiency in CNN models can be attributed to the analogue and decoy bias hidden in the DUD-E dataset rather than successful generalization of the pattern of protein-ligand interactions. Comparing additional deep learning models trained on PDBbind datasets, we found that their enrichment performances using DUD-E are not superior to the performance of the docking program AutoDock Vina. Together, these results suggest that biases that could be present in constructed datasets should be thoroughly evaluated before applying them to machine learning based methodology development.
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spelling pubmed-67018362019-09-04 Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening Chen, Lieyang Cruz, Anthony Ramsey, Steven Dickson, Callum J. Duca, Jose S. Hornak, Viktor Koes, David R. Kurtzman, Tom PLoS One Research Article Recently much effort has been invested in using convolutional neural network (CNN) models trained on 3D structural images of protein-ligand complexes to distinguish binding from non-binding ligands for virtual screening. However, the dearth of reliable protein-ligand x-ray structures and binding affinity data has required the use of constructed datasets for the training and evaluation of CNN molecular recognition models. Here, we outline various sources of bias in one such widely-used dataset, the Directory of Useful Decoys: Enhanced (DUD-E). We have constructed and performed tests to investigate whether CNN models developed using DUD-E are properly learning the underlying physics of molecular recognition, as intended, or are instead learning biases inherent in the dataset itself. We find that superior enrichment efficiency in CNN models can be attributed to the analogue and decoy bias hidden in the DUD-E dataset rather than successful generalization of the pattern of protein-ligand interactions. Comparing additional deep learning models trained on PDBbind datasets, we found that their enrichment performances using DUD-E are not superior to the performance of the docking program AutoDock Vina. Together, these results suggest that biases that could be present in constructed datasets should be thoroughly evaluated before applying them to machine learning based methodology development. Public Library of Science 2019-08-20 /pmc/articles/PMC6701836/ /pubmed/31430292 http://dx.doi.org/10.1371/journal.pone.0220113 Text en © 2019 Chen et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Chen, Lieyang
Cruz, Anthony
Ramsey, Steven
Dickson, Callum J.
Duca, Jose S.
Hornak, Viktor
Koes, David R.
Kurtzman, Tom
Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening
title Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening
title_full Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening
title_fullStr Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening
title_full_unstemmed Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening
title_short Hidden bias in the DUD-E dataset leads to misleading performance of deep learning in structure-based virtual screening
title_sort hidden bias in the dud-e dataset leads to misleading performance of deep learning in structure-based virtual screening
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6701836/
https://www.ncbi.nlm.nih.gov/pubmed/31430292
http://dx.doi.org/10.1371/journal.pone.0220113
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