Cargando…

Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel

In vitro antiproliferative assays still represent one of the most important tools in the anticancer drug discovery field, especially to gain insights into the mechanisms of action of anticancer small molecules. The NCI-DTP (National Cancer Institute Developmental Therapeutics Program) undoubtedly re...

Descripción completa

Detalles Bibliográficos
Autores principales: Martorana, Annamaria, La Monica, Gabriele, Bono, Alessia, Mannino, Salvatore, Buscemi, Silvestre, Palumbo Piccionello, Antonio, Gentile, Carla, Lauria, Antonino, Peri, Daniele
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9694168/
https://www.ncbi.nlm.nih.gov/pubmed/36430850
http://dx.doi.org/10.3390/ijms232214374
_version_ 1784837731169337344
author Martorana, Annamaria
La Monica, Gabriele
Bono, Alessia
Mannino, Salvatore
Buscemi, Silvestre
Palumbo Piccionello, Antonio
Gentile, Carla
Lauria, Antonino
Peri, Daniele
author_facet Martorana, Annamaria
La Monica, Gabriele
Bono, Alessia
Mannino, Salvatore
Buscemi, Silvestre
Palumbo Piccionello, Antonio
Gentile, Carla
Lauria, Antonino
Peri, Daniele
author_sort Martorana, Annamaria
collection PubMed
description In vitro antiproliferative assays still represent one of the most important tools in the anticancer drug discovery field, especially to gain insights into the mechanisms of action of anticancer small molecules. The NCI-DTP (National Cancer Institute Developmental Therapeutics Program) undoubtedly represents the most famous project aimed at rapidly testing thousands of compounds against multiple tumor cell lines (NCI60). The large amount of biological data stored in the National Cancer Institute (NCI) database and many other databases has led researchers in the fields of computational biology and medicinal chemistry to develop tools to predict the anticancer properties of new agents in advance. In this work, based on the available antiproliferative data collected by the NCI and the manipulation of molecular descriptors, we propose the new in silico Antiproliferative Activity Predictor (AAP) tool to calculate the GI(50) values of input structures against the NCI60 panel. This ligand-based protocol, validated by both internal and external sets of structures, has proven to be highly reliable and robust. The obtained GI(50) values of a test set of 99 structures present an error of less than ±1 unit. The AAP is more powerful for GI(50) calculation in the range of 4–6, showing that the results strictly correlate with the experimental data. The encouraging results were further supported by the examination of an in-house database of curcumin analogues that have already been studied as antiproliferative agents. The AAP tool identified several potentially active compounds, and a subsequent evaluation of a set of molecules selected by the NCI for the one-dose/five-dose antiproliferative assays confirmed the great potential of our protocol for the development of new anticancer small molecules. The integration of the AAP tool in the free web service DRUDIT provides an interesting device for the discovery and/or optimization of anticancer drugs to the medicinal chemistry community. The training set will be updated with new NCI-tested compounds to cover more chemical spaces, activities, and cell lines. Currently, the same protocol is being developed for predicting the TGI (total growth inhibition) and LC(50) (median lethal concentration) parameters to estimate toxicity profiles of small molecules.
format Online
Article
Text
id pubmed-9694168
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-96941682022-11-26 Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel Martorana, Annamaria La Monica, Gabriele Bono, Alessia Mannino, Salvatore Buscemi, Silvestre Palumbo Piccionello, Antonio Gentile, Carla Lauria, Antonino Peri, Daniele Int J Mol Sci Article In vitro antiproliferative assays still represent one of the most important tools in the anticancer drug discovery field, especially to gain insights into the mechanisms of action of anticancer small molecules. The NCI-DTP (National Cancer Institute Developmental Therapeutics Program) undoubtedly represents the most famous project aimed at rapidly testing thousands of compounds against multiple tumor cell lines (NCI60). The large amount of biological data stored in the National Cancer Institute (NCI) database and many other databases has led researchers in the fields of computational biology and medicinal chemistry to develop tools to predict the anticancer properties of new agents in advance. In this work, based on the available antiproliferative data collected by the NCI and the manipulation of molecular descriptors, we propose the new in silico Antiproliferative Activity Predictor (AAP) tool to calculate the GI(50) values of input structures against the NCI60 panel. This ligand-based protocol, validated by both internal and external sets of structures, has proven to be highly reliable and robust. The obtained GI(50) values of a test set of 99 structures present an error of less than ±1 unit. The AAP is more powerful for GI(50) calculation in the range of 4–6, showing that the results strictly correlate with the experimental data. The encouraging results were further supported by the examination of an in-house database of curcumin analogues that have already been studied as antiproliferative agents. The AAP tool identified several potentially active compounds, and a subsequent evaluation of a set of molecules selected by the NCI for the one-dose/five-dose antiproliferative assays confirmed the great potential of our protocol for the development of new anticancer small molecules. The integration of the AAP tool in the free web service DRUDIT provides an interesting device for the discovery and/or optimization of anticancer drugs to the medicinal chemistry community. The training set will be updated with new NCI-tested compounds to cover more chemical spaces, activities, and cell lines. Currently, the same protocol is being developed for predicting the TGI (total growth inhibition) and LC(50) (median lethal concentration) parameters to estimate toxicity profiles of small molecules. MDPI 2022-11-19 /pmc/articles/PMC9694168/ /pubmed/36430850 http://dx.doi.org/10.3390/ijms232214374 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/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 (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Martorana, Annamaria
La Monica, Gabriele
Bono, Alessia
Mannino, Salvatore
Buscemi, Silvestre
Palumbo Piccionello, Antonio
Gentile, Carla
Lauria, Antonino
Peri, Daniele
Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel
title Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel
title_full Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel
title_fullStr Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel
title_full_unstemmed Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel
title_short Antiproliferative Activity Predictor: A New Reliable In Silico Tool for Drug Response Prediction against NCI60 Panel
title_sort antiproliferative activity predictor: a new reliable in silico tool for drug response prediction against nci60 panel
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9694168/
https://www.ncbi.nlm.nih.gov/pubmed/36430850
http://dx.doi.org/10.3390/ijms232214374
work_keys_str_mv AT martoranaannamaria antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT lamonicagabriele antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT bonoalessia antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT manninosalvatore antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT buscemisilvestre antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT palumbopiccionelloantonio antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT gentilecarla antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT lauriaantonino antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel
AT peridaniele antiproliferativeactivitypredictoranewreliableinsilicotoolfordrugresponsepredictionagainstnci60panel