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Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation

[Image: see text] Drug design based on kinetic properties is growing in application. Here, we applied retrosynthesis-based pre-trained molecular representation (RPM) in machine learning (ML) to train 501 inhibitors of 55 proteins and successfully predicted the dissociation rate constant (k(off)) val...

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Autores principales: Zhou, Feng, Yin, Shiqiu, Xiao, Yi, Lin, Zaiyun, Fu, Weiqiang, Zhang, Yingsheng J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10210189/
https://www.ncbi.nlm.nih.gov/pubmed/37251166
http://dx.doi.org/10.1021/acsomega.3c02294
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author Zhou, Feng
Yin, Shiqiu
Xiao, Yi
Lin, Zaiyun
Fu, Weiqiang
Zhang, Yingsheng J.
author_facet Zhou, Feng
Yin, Shiqiu
Xiao, Yi
Lin, Zaiyun
Fu, Weiqiang
Zhang, Yingsheng J.
author_sort Zhou, Feng
collection PubMed
description [Image: see text] Drug design based on kinetic properties is growing in application. Here, we applied retrosynthesis-based pre-trained molecular representation (RPM) in machine learning (ML) to train 501 inhibitors of 55 proteins and successfully predicted the dissociation rate constant (k(off)) values of 38 inhibitors from an independent dataset for the N-terminal domain of heat shock protein 90α (N-HSP90). Our RPM molecular representation outperforms other pre-trained molecular representations such as GEM, MPG, and general molecular descriptors from RDKit. Furthermore, we optimized the accelerated molecular dynamics to calculate the relative retention time (RT) for the 128 inhibitors of N-HSP90 and obtained the protein–ligand interaction fingerprints (IFPs) on their dissociation pathways and their influencing weights on the k(off) value. We observed a high correlation among the simulated, predicted, and experimental −log(k(off)) values. Combining ML, molecular dynamics (MD) simulation, and IFPs derived from accelerated MD helps design a drug for specific kinetic properties and selectivity profiles to the target of interest. To further validate our k(off) predictive ML model, we tested our model on two new N-HSP90 inhibitors, which have experimental k(off) values and are not in our ML training dataset. The predicted k(off) values are consistent with experimental data, and the mechanism of their kinetic properties can be explained by IFPs, which shed light on the nature of their selectivity against N-HSP90 protein. We believe that the ML model described here is transferable to predict k(off) of other proteins and will enhance the kinetics-based drug design endeavor.
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spelling pubmed-102101892023-05-26 Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation Zhou, Feng Yin, Shiqiu Xiao, Yi Lin, Zaiyun Fu, Weiqiang Zhang, Yingsheng J. ACS Omega [Image: see text] Drug design based on kinetic properties is growing in application. Here, we applied retrosynthesis-based pre-trained molecular representation (RPM) in machine learning (ML) to train 501 inhibitors of 55 proteins and successfully predicted the dissociation rate constant (k(off)) values of 38 inhibitors from an independent dataset for the N-terminal domain of heat shock protein 90α (N-HSP90). Our RPM molecular representation outperforms other pre-trained molecular representations such as GEM, MPG, and general molecular descriptors from RDKit. Furthermore, we optimized the accelerated molecular dynamics to calculate the relative retention time (RT) for the 128 inhibitors of N-HSP90 and obtained the protein–ligand interaction fingerprints (IFPs) on their dissociation pathways and their influencing weights on the k(off) value. We observed a high correlation among the simulated, predicted, and experimental −log(k(off)) values. Combining ML, molecular dynamics (MD) simulation, and IFPs derived from accelerated MD helps design a drug for specific kinetic properties and selectivity profiles to the target of interest. To further validate our k(off) predictive ML model, we tested our model on two new N-HSP90 inhibitors, which have experimental k(off) values and are not in our ML training dataset. The predicted k(off) values are consistent with experimental data, and the mechanism of their kinetic properties can be explained by IFPs, which shed light on the nature of their selectivity against N-HSP90 protein. We believe that the ML model described here is transferable to predict k(off) of other proteins and will enhance the kinetics-based drug design endeavor. American Chemical Society 2023-05-12 /pmc/articles/PMC10210189/ /pubmed/37251166 http://dx.doi.org/10.1021/acsomega.3c02294 Text en © 2023 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Zhou, Feng
Yin, Shiqiu
Xiao, Yi
Lin, Zaiyun
Fu, Weiqiang
Zhang, Yingsheng J.
Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation
title Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation
title_full Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation
title_fullStr Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation
title_full_unstemmed Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation
title_short Structure–Kinetic Relationship for Drug Design Revealed by a PLS Model with Retrosynthesis-Based Pre-Trained Molecular Representation and Molecular Dynamics Simulation
title_sort structure–kinetic relationship for drug design revealed by a pls model with retrosynthesis-based pre-trained molecular representation and molecular dynamics simulation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10210189/
https://www.ncbi.nlm.nih.gov/pubmed/37251166
http://dx.doi.org/10.1021/acsomega.3c02294
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