2020
DOI: 10.3390/molecules25081952
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Computer-Driven Development of an in Silico Tool for Finding Selective Histone Deacetylase 1 Inhibitors

Abstract: Histone deacetylases (HDACs) are a class of epigenetic modulators overexpressed in numerous types of cancers. Consequently, HDAC inhibitors (HDACIs) have emerged as promising antineoplastic agents. Unfortunately, the most developed HDACIs suffer from poor selectivity towards a specific isoform, limiting their clinical applicability. Among the isoforms, HDAC1 represents a crucial target for designing selective HDACIs, being aberrantly expressed in several malignancies. Accordingly, the development of a predicti… Show more

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Cited by 21 publications
(21 citation statements)
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“…Beyond the classical computational approaches in drug discovery, such as ligand-(mainly QSAR methods and pharmacophore modelling) [28][29][30][31] and structure-based strategies (mainly based on molecular docking and molecular dynamics) [32][33][34][35] or a combination of them [36][37][38][39], currently these computational methods are integrated with ML technologies for improving the reliability of the calculation, avoiding false positive outcomes and enhancing the success ratio in identifying safer hit compounds. Some examples are represented by QSAR-ML models [40][41][42][43], multi-and combi-QSAR approaches [44][45][46][47][48][49][50].…”
Section: Drug Discovery and Developmentmentioning
confidence: 99%
“…Beyond the classical computational approaches in drug discovery, such as ligand-(mainly QSAR methods and pharmacophore modelling) [28][29][30][31] and structure-based strategies (mainly based on molecular docking and molecular dynamics) [32][33][34][35] or a combination of them [36][37][38][39], currently these computational methods are integrated with ML technologies for improving the reliability of the calculation, avoiding false positive outcomes and enhancing the success ratio in identifying safer hit compounds. Some examples are represented by QSAR-ML models [40][41][42][43], multi-and combi-QSAR approaches [44][45][46][47][48][49][50].…”
Section: Drug Discovery and Developmentmentioning
confidence: 99%
“…This computational evaluation is crucial for reducing off-target effects, and therefore the total number of animals required for the in vivo test. Computational pharmacology and toxicology take advantage from numerous scientific disciplines and usually include the application of in silico and statistical approaches for evaluating the bioactive profile of molecules for which a specific pharmacological or toxicological effect is not known, starting from a group of molecules for which the mentioned effect has been proven (training set) [ 47 , 48 , 49 , 50 ].…”
Section: Computational Aspects For the Ocular Pharmacology And Toxmentioning
confidence: 99%
“…Computational pharmacology and toxicology take advantage from numerous scientific disciplines and usually includes the application of in silico and statistical approaches for evaluating the bioactive profile of molecules for which a specific pharmacological or toxicological effect is not known, starting from a group of molecules for which the mentioned effect have been proven (training set). [44][45][46][47] Accordingly, in silico strategies used for assessing the profile of compounds are mainly based on structure-activity relationship (SAR) and quantitative SAR (QSAR). In fact, most categories of computational methods in pharmacology and toxicology are based on the similarity principle: the hypothesis that compounds possessing a structural similarity could show comparable pharmacological or toxicological profiles.…”
Section: Computational Aspects For the Ocular Pharmacology And Toxicomentioning
confidence: 99%