Cargando…

Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands

The identification of subtype-selective GPCR (G-protein coupled receptor) ligands is a challenging task. In this study, we developed a computational protocol to find compounds with 5-HT(2B)R versus 5-HT(1B)R selectivity. Our approach employs the hierarchical combination of machine learning methods,...

Descripción completa

Detalles Bibliográficos
Autores principales: Rataj, Krzysztof, Kelemen, Ádám Andor, Brea, José, Loza, María Isabel, Bojarski, Andrzej J., Keserű, György Miklós
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6100008/
https://www.ncbi.nlm.nih.gov/pubmed/29748476
http://dx.doi.org/10.3390/molecules23051137
_version_ 1783348780437864448
author Rataj, Krzysztof
Kelemen, Ádám Andor
Brea, José
Loza, María Isabel
Bojarski, Andrzej J.
Keserű, György Miklós
author_facet Rataj, Krzysztof
Kelemen, Ádám Andor
Brea, José
Loza, María Isabel
Bojarski, Andrzej J.
Keserű, György Miklós
author_sort Rataj, Krzysztof
collection PubMed
description The identification of subtype-selective GPCR (G-protein coupled receptor) ligands is a challenging task. In this study, we developed a computational protocol to find compounds with 5-HT(2B)R versus 5-HT(1B)R selectivity. Our approach employs the hierarchical combination of machine learning methods, docking, and multiple scoring methods. First, we applied machine learning tools to filter a large database of druglike compounds by the new Neighbouring Substructures Fingerprint (NSFP). This two-dimensional fingerprint contains information on the connectivity of the substructural features of a compound. Preselected subsets of the database were then subjected to docking calculations. The main indicators of compounds’ selectivity were their different interactions with the secondary binding pockets of both target proteins, while binding modes within the orthosteric binding pocket were preserved. The combined methodology of ligand-based and structure-based methods was validated prospectively, resulting in the identification of hits with nanomolar affinity and ten-fold to ten thousand-fold selectivities.
format Online
Article
Text
id pubmed-6100008
institution National Center for Biotechnology Information
language English
publishDate 2018
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-61000082018-11-13 Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands Rataj, Krzysztof Kelemen, Ádám Andor Brea, José Loza, María Isabel Bojarski, Andrzej J. Keserű, György Miklós Molecules Article The identification of subtype-selective GPCR (G-protein coupled receptor) ligands is a challenging task. In this study, we developed a computational protocol to find compounds with 5-HT(2B)R versus 5-HT(1B)R selectivity. Our approach employs the hierarchical combination of machine learning methods, docking, and multiple scoring methods. First, we applied machine learning tools to filter a large database of druglike compounds by the new Neighbouring Substructures Fingerprint (NSFP). This two-dimensional fingerprint contains information on the connectivity of the substructural features of a compound. Preselected subsets of the database were then subjected to docking calculations. The main indicators of compounds’ selectivity were their different interactions with the secondary binding pockets of both target proteins, while binding modes within the orthosteric binding pocket were preserved. The combined methodology of ligand-based and structure-based methods was validated prospectively, resulting in the identification of hits with nanomolar affinity and ten-fold to ten thousand-fold selectivities. MDPI 2018-05-10 /pmc/articles/PMC6100008/ /pubmed/29748476 http://dx.doi.org/10.3390/molecules23051137 Text en © 2018 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Rataj, Krzysztof
Kelemen, Ádám Andor
Brea, José
Loza, María Isabel
Bojarski, Andrzej J.
Keserű, György Miklós
Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands
title Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands
title_full Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands
title_fullStr Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands
title_full_unstemmed Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands
title_short Fingerprint-Based Machine Learning Approach to Identify Potent and Selective 5-HT(2B)R Ligands
title_sort fingerprint-based machine learning approach to identify potent and selective 5-ht(2b)r ligands
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6100008/
https://www.ncbi.nlm.nih.gov/pubmed/29748476
http://dx.doi.org/10.3390/molecules23051137
work_keys_str_mv AT ratajkrzysztof fingerprintbasedmachinelearningapproachtoidentifypotentandselective5ht2brligands
AT kelemenadamandor fingerprintbasedmachinelearningapproachtoidentifypotentandselective5ht2brligands
AT breajose fingerprintbasedmachinelearningapproachtoidentifypotentandselective5ht2brligands
AT lozamariaisabel fingerprintbasedmachinelearningapproachtoidentifypotentandselective5ht2brligands
AT bojarskiandrzejj fingerprintbasedmachinelearningapproachtoidentifypotentandselective5ht2brligands
AT keserugyorgymiklos fingerprintbasedmachinelearningapproachtoidentifypotentandselective5ht2brligands