In Silico Approach to Finding New Active Compounds from Histone Deacetylase (HDAC) Family

Author(s): Arry Yanuar, Azminah, Andika, Linda Erlina, Rezi Riadhi Syahdi

Journal Name: Current Pharmaceutical Design

Volume 22 , Issue 23 , 2016

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Abstract:

Background: Histone Deacetylase (HDAC) enzymes in the human body play an important role in the transcriptional regulation of gene expression. In the last decade, HDAC inhibitors and activators have been explored and have become known as therapeutic agents for many diseases such as osteodystrophy, neurogenerative disorders, cardiomyopathy, cancer, and diabetes. In recent years, the development of HDAC inhibitors or activators to obtain new potent lead compounds has been conducted using in vitro, in vivo, and in silico methods. Some HDAC family inhibitors and activators have been discovered. But some compounds have limitations such as not selectively binding to one of the HDAC variants. Methods: At present, through bioinformation, HDAC family sequences have been revealed, and some in silico methods such as molecular modelling (homology modelling and pharmacophore modelling), virtual screening, and molecular dynamics are widely used to find and develop new potent and selective compounds. Results: The main utilization of molecular modelling in this work is intended to complete the HDAC structure that partially lacks data regarding its amino acid monomer. Virtual screening methods are helpful in finding the best binding affinity of the test compounds. By molecular dynamic simulation, the temperature, time, and pressure can be adjusted to analyze the hydrogen bond. Conclusion: Combining these in silico approaches will be a more effective and efficient solution in finding new lead compounds for HDAC drug discovery research in the future.

Keywords: HDAC, in silico, bioinformatics, molecular modelling, virtual screening, molecular dynamics.

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Article Details

VOLUME: 22
ISSUE: 23
Year: 2016
Page: [3488 - 3497]
Pages: 10
DOI: 10.2174/1381612822666160414142514
Price: $65

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