Literature DB >> 29791132

Perturbation Theory/Machine Learning Model of ChEMBL Data for Dopamine Targets: Docking, Synthesis, and Assay of New l-Prolyl-l-leucyl-glycinamide Peptidomimetics.

Joana Ferreira da Costa1, David Silva1, Olga Caamaño1, José M Brea2,3, Maria Isabel Loza2,3, Cristian R Munteanu4, Alejandro Pazos4,5, Xerardo García-Mera1, Humbert González-Díaz6,7.   

Abstract

Predicting drug-protein interactions (DPIs) for target proteins involved in dopamine pathways is a very important goal in medicinal chemistry. We can tackle this problem using Molecular Docking or Machine Learning (ML) models for one specific protein. Unfortunately, these models fail to account for large and complex big data sets of preclinical assays reported in public databases. This includes multiple conditions of assays, such as different experimental parameters, biological assays, target proteins, cell lines, organism of the target, or organism of assay. On the other hand, perturbation theory (PT) models allow us to predict the properties of a query compound or molecular system in experimental assays with multiple boundary conditions based on a previously known case of reference. In this work, we report the first PTML (PT + ML) study of a large ChEMBL data set of preclinical assays of compounds targeting dopamine pathway proteins. The best PTML model found predicts 50000 cases with accuracy of 70-91% in training and external validation series. We also compared the linear PTML model with alternative PTML models trained with multiple nonlinear methods (artificial neural network (ANN), Random Forest, Deep Learning, etc.). Some of the nonlinear methods outperform the linear model but at the cost of a notable increment of the complexity of the model. We illustrated the practical use of the new model with a proof-of-concept theoretical-experimental study. We reported for the first time the organic synthesis, chemical characterization, and pharmacological assay of a new series of l-prolyl-l-leucyl-glycinamide (PLG) peptidomimetic compounds. In addition, we performed a molecular docking study for some of these compounds with the software Vina AutoDock. The work ends with a PTML model predictive study of the outcomes of the new compounds in a large number of assays. Therefore, this study offers a new computational methodology for predicting the outcome for any compound in new assays. This PTML method focuses on the prediction with a simple linear model of multiple pharmacological parameters (IC50, EC50, Ki, etc.) for compounds in assays involving different cell lines used, organisms of the protein target, or organism of assay for proteins in the dopamine pathway.

Entities:  

Keywords:  ChEMBL; PLG peptidomimetics; machine learning; peptide organic synthesis

Mesh:

Substances:

Year:  2018        PMID: 29791132     DOI: 10.1021/acschemneuro.8b00083

Source DB:  PubMed          Journal:  ACS Chem Neurosci        ISSN: 1948-7193            Impact factor:   4.418


  5 in total

1.  Prediction of Anti-Glioblastoma Drug-Decorated Nanoparticle Delivery Systems Using Molecular Descriptors and Machine Learning.

Authors:  Cristian R Munteanu; Pablo Gutiérrez-Asorey; Manuel Blanes-Rodríguez; Ismael Hidalgo-Delgado; María de Jesús Blanco Liverio; Brais Castiñeiras Galdo; Ana B Porto-Pazos; Marcos Gestal; Sonia Arrasate; Humbert González-Díaz
Journal:  Int J Mol Sci       Date:  2021-10-26       Impact factor: 5.923

2.  PTML Modeling for Pancreatic Cancer Research: In Silico Design of Simultaneous Multi-Protein and Multi-Cell Inhibitors.

Authors:  Valeria V Kleandrova; Alejandro Speck-Planche
Journal:  Biomedicines       Date:  2022-02-18

3.  Improvement of Epitope Prediction Using Peptide Sequence Descriptors and Machine Learning.

Authors:  Cristian R Munteanu; Marcos Gestal; Yunuen G Martínez-Acevedo; Nieves Pedreira; Alejandro Pazos; Julián Dorado
Journal:  Int J Mol Sci       Date:  2019-09-05       Impact factor: 5.923

Review 4.  A Review on Applications of Computational Methods in Drug Screening and Design.

Authors:  Xiaoqian Lin; Xiu Li; Xubo Lin
Journal:  Molecules       Date:  2020-03-18       Impact factor: 4.411

5.  In Silico Drug Repurposing for Anti-Inflammatory Therapy: Virtual Search for Dual Inhibitors of Caspase-1 and TNF-Alpha.

Authors:  Alejandro Speck-Planche; Valeria V Kleandrova; Marcus T Scotti
Journal:  Biomolecules       Date:  2021-12-04
  5 in total

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