Fragment-based structural exploration and chemico-biological interaction study of HDAC3 inhibitors through non-linear pattern recognition, chemical space, and binding mode of interaction analysis.

IF 2.7 3区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY
Suvankar Banerjee, Shraddha Dumawat, Tarun Jha, Goverdhan Lanka, Nilanjan Adhikari, Balaram Ghosh
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Abstract

HDAC3 is an emerging target for the identification and discovery of novel drug candidates against several disease conditions including cancer. Here, a fragment-based non-linear machine learning (ML) method along with chemical space exploration followed by a structure-based binding mode of interaction analysis study was carried out on some HDAC3 inhibitors to obtain the key structural features modulating HDAC3 inhibition. Both the ML and chemical space analysis identified several physicochemical and structural properties namely lipophilicity, polar and relative polar surface area, arylcarboxamide moiety, bulky fused aromatic group, n-alkyl, and cinnamoyl moieties, the higher number of oxygen atoms, π-electrons for the substituted tetrahydrofuronaphthodioxolone moiety favorable for higher HDAC3 inhibition. Moreover, hydrogen bond forming capabilities, the length and substitution position of the linker moiety, the importance of phenyl ring in the linker motif, the contribution of heterocyclic cap moieties for effective inhibitor binding at the HDAC3 catalytic site that correspondingly affects the HDAC3 inhibitory potency. Again, macrocyclic ring structure and cyclohexyl cap moiety are responsible for lower HDAC3 inhibition. The MD simulation study of selected compounds explained strong binding patterns at the HDAC3 active site as evidenced by the lower RMSD and RMSF values. Nevertheless, it also explained the importance of the crucial structural fragments derived from the fragment-based analysis during ligand-enzyme interactions. Therefore, the outcomes of this current structural analysis will be a useful tool for fragment-based drug discovery of effective HDAC3 inhibitors for clinical therapeutics in the future.Communicated by Ramaswamy H. Sarma.

通过非线性模式识别、化学空间和相互作用结合模式分析,对 HDAC3 抑制剂进行基于片段的结构探索和化学生物相互作用研究。
HDAC3 是针对包括癌症在内的多种疾病鉴定和发现新型候选药物的新兴靶点。在此,我们对一些HDAC3抑制剂进行了基于片段的非线性机器学习(ML)方法和化学空间探索,以及基于结构的相互作用结合模式分析研究,以获得调节HDAC3抑制作用的关键结构特征。通过 ML 分析和化学空间分析,确定了几种物理化学和结构特性,即亲脂性、极性和相对极性表面积、芳基甲酰胺分子、膨大的融合芳基、正烷基和肉桂酰基、较多的氧原子数目、取代的四氢呋喃萘并二氧戊环分子的 π 电子,这些特性有利于提高 HDAC3 抑制作用。此外,氢键形成能力、连接分子的长度和取代位置、苯基环在连接基团中的重要性、杂环盖分子对抑制剂在 HDAC3 催化位点有效结合的贡献,都会相应地影响 HDAC3 的抑制效力。同样,大环环结构和环己基帽子分子对 HDAC3 的抑制作用较低。对所选化合物进行的 MD 模拟研究解释了 HDAC3 活性位点的强结合模式,较低的 RMSD 值和 RMSF 值证明了这一点。不过,这也说明了基于片段分析得出的关键结构片段在配体与酶相互作用过程中的重要性。因此,目前的结构分析结果将成为基于片段的药物发现有效 HDAC3 抑制剂的有用工具,在未来用于临床治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Biomolecular Structure & Dynamics
Journal of Biomolecular Structure & Dynamics 生物-生化与分子生物学
CiteScore
8.90
自引率
9.10%
发文量
597
审稿时长
2 months
期刊介绍: The Journal of Biomolecular Structure and Dynamics welcomes manuscripts on biological structure, dynamics, interactions and expression. The Journal is one of the leading publications in high end computational science, atomic structural biology, bioinformatics, virtual drug design, genomics and biological networks.
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