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1.
Protein Sci ; 30(5): 1087-1097, 2021 05.
Artigo em Inglês | MEDLINE | ID: mdl-33733530

RESUMO

EDock-ML is a web server that facilitates the use of ensemble docking with machine learning to help decide whether a compound is worthwhile to be considered further in a drug discovery process. Ensemble docking provides an economical way to account for receptor flexibility in molecular docking. Machine learning improves the use of the resulting docking scores to evaluate whether a compound is likely to be useful. EDock-ML takes a bottom-up approach in which machine-learning models are developed one protein at a time to improve predictions for the proteins included in its database. Because the machine-learning models are intended to be used without changing the docking and model parameters with which the models were trained, novice users can use it directly without worrying about what parameters to choose. A user simply submits a compound specified by an ID from the ZINC database (Sterling, T.; Irwin, J. J., J Chem Inf Model 2015, 55[11], 2,324-2,337.) or upload a file prepared by a chemical drawing program and receives an output helping the user decide the likelihood of the compound to be active or inactive for a drug target. EDock-ML can be accessed freely at edock-ml.umsl.edu.


Assuntos
Bases de Dados de Compostos Químicos , Descoberta de Drogas , Internet , Aprendizado de Máquina , Simulação de Acoplamento Molecular , Software
2.
Proteins ; 88(10): 1263-1270, 2020 10.
Artigo em Inglês | MEDLINE | ID: mdl-32401384

RESUMO

Ensemble docking has provided an inexpensive method to account for receptor flexibility in molecular docking for virtual screening. Unfortunately, as there is no rigorous theory to connect the docking scores from multiple structures to measured activity, researchers have not yet come up with effective ways to use these scores to classify compounds into actives and inactives. This shortcoming has led to the decrease, rather than an increase in the performance of classifying compounds when more structures are added to the ensemble. Previously, we suggested machine learning, implemented in the form of a naïve Bayesian model could alleviate this problem. However, the naïve Bayesian model assumed that the probabilities of observing the docking scores to different structures to be independent. This approximation might prevent it from achieving even higher performance. In the work presented in this paper, we have relaxed this approximation when using several other machine learning methods-k nearest neighbor, logistic regression, support vector machine, and random forest-to improve ensemble docking. We found significant improvement.


Assuntos
Descoberta de Drogas/métodos , Simulação de Acoplamento Molecular/estatística & dados numéricos , Inibidores de Proteínas Quinases/química , Máquina de Vetores de Suporte , Teorema de Bayes , Sítios de Ligação , Receptores ErbB/antagonistas & inibidores , Receptores ErbB/química , Receptores ErbB/metabolismo , Humanos , Ligantes , Ligação Proteica , Inibidores de Proteínas Quinases/farmacologia , Estrutura Secundária de Proteína , Interface Usuário-Computador
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