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Structure prediction of cyclic peptides by molecular dynamics + machine learning

Recent computational methods have made strides in discovering well-structured cyclic peptides that preferentially populate a single conformation. However, many successful cyclic-peptide therapeutics adopt multiple conformations in solution. In fact, the chameleonic properties of some cyclic peptides...

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Detalles Bibliográficos
Autores principales: Miao, Jiayuan, Descoteaux, Marc L., Lin, Yu-Shan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8597836/
https://www.ncbi.nlm.nih.gov/pubmed/34820109
http://dx.doi.org/10.1039/d1sc05562c
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author Miao, Jiayuan
Descoteaux, Marc L.
Lin, Yu-Shan
author_facet Miao, Jiayuan
Descoteaux, Marc L.
Lin, Yu-Shan
author_sort Miao, Jiayuan
collection PubMed
description Recent computational methods have made strides in discovering well-structured cyclic peptides that preferentially populate a single conformation. However, many successful cyclic-peptide therapeutics adopt multiple conformations in solution. In fact, the chameleonic properties of some cyclic peptides are likely responsible for their high cell membrane permeability. Thus, we require the ability to predict complete structural ensembles for cyclic peptides, including the majority of cyclic peptides that have broad structural ensembles, to significantly improve our ability to rationally design cyclic-peptide therapeutics. Here, we introduce the idea of using molecular dynamics simulation results to train machine learning models to enable efficient structure prediction for cyclic peptides. Using molecular dynamics simulation results for several hundred cyclic pentapeptides as the training datasets, we developed machine-learning models that can provide molecular dynamics simulation-quality predictions of structural ensembles for all the hundreds of thousands of sequences in the entire sequence space. The prediction for each individual cyclic peptide can be made using less than 1 second of computation time. Even for the most challenging classes of poorly structured cyclic peptides with broad conformational ensembles, our predictions were similar to those one would normally obtain only after running multiple days of explicit-solvent molecular dynamics simulations. The resulting method, termed StrEAMM (Structural Ensembles Achieved by Molecular Dynamics and Machine Learning), is the first technique capable of efficiently predicting complete structural ensembles of cyclic peptides without relying on additional molecular dynamics simulations, constituting a seven-order-of-magnitude improvement in speed while retaining the same accuracy as explicit-solvent simulations.
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spelling pubmed-85978362021-11-23 Structure prediction of cyclic peptides by molecular dynamics + machine learning Miao, Jiayuan Descoteaux, Marc L. Lin, Yu-Shan Chem Sci Chemistry Recent computational methods have made strides in discovering well-structured cyclic peptides that preferentially populate a single conformation. However, many successful cyclic-peptide therapeutics adopt multiple conformations in solution. In fact, the chameleonic properties of some cyclic peptides are likely responsible for their high cell membrane permeability. Thus, we require the ability to predict complete structural ensembles for cyclic peptides, including the majority of cyclic peptides that have broad structural ensembles, to significantly improve our ability to rationally design cyclic-peptide therapeutics. Here, we introduce the idea of using molecular dynamics simulation results to train machine learning models to enable efficient structure prediction for cyclic peptides. Using molecular dynamics simulation results for several hundred cyclic pentapeptides as the training datasets, we developed machine-learning models that can provide molecular dynamics simulation-quality predictions of structural ensembles for all the hundreds of thousands of sequences in the entire sequence space. The prediction for each individual cyclic peptide can be made using less than 1 second of computation time. Even for the most challenging classes of poorly structured cyclic peptides with broad conformational ensembles, our predictions were similar to those one would normally obtain only after running multiple days of explicit-solvent molecular dynamics simulations. The resulting method, termed StrEAMM (Structural Ensembles Achieved by Molecular Dynamics and Machine Learning), is the first technique capable of efficiently predicting complete structural ensembles of cyclic peptides without relying on additional molecular dynamics simulations, constituting a seven-order-of-magnitude improvement in speed while retaining the same accuracy as explicit-solvent simulations. The Royal Society of Chemistry 2021-11-05 /pmc/articles/PMC8597836/ /pubmed/34820109 http://dx.doi.org/10.1039/d1sc05562c Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Miao, Jiayuan
Descoteaux, Marc L.
Lin, Yu-Shan
Structure prediction of cyclic peptides by molecular dynamics + machine learning
title Structure prediction of cyclic peptides by molecular dynamics + machine learning
title_full Structure prediction of cyclic peptides by molecular dynamics + machine learning
title_fullStr Structure prediction of cyclic peptides by molecular dynamics + machine learning
title_full_unstemmed Structure prediction of cyclic peptides by molecular dynamics + machine learning
title_short Structure prediction of cyclic peptides by molecular dynamics + machine learning
title_sort structure prediction of cyclic peptides by molecular dynamics + machine learning
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8597836/
https://www.ncbi.nlm.nih.gov/pubmed/34820109
http://dx.doi.org/10.1039/d1sc05562c
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