阿魏酸脱羧酶改善底物结合移情的硅基突变研究

Pravin Kumar, Shashwati Ghosh Sachan, R. Poddar
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摘要

微生物对阿魏酸的生物转化为生产4-乙烯愈创木酚和香兰素等香味化合物提供了更好的选择。阿魏酸脱羧酶(FADase)通过非氧化脱羧途径转化为4-乙烯基愈创木酚。本文报道了FADase活性位点的计算突变分析。位点定向突变(单核苷酸多态性,SNPs)开始使用硅分子建模方法。随后应用能量最小化、动态相互关联图(DCCM)和主成分分析(PCA)方法验证FADase的不同构象(snp)。底物阿魏酸与不同的snp进行对接。结果表明,活性位点上的某些氨基酸如Tyr21、Trp25、Tyr27和Glu134与阿魏酸结合较好。此外,通过结构分析和对接研究,FADase的突变形式Y27F (Tyr27Phe)对阿魏酸的结合亲和力优于其天然形式。
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In-silico mutational study of ferulic acid decarboxylase for improvement of substrate binding empathy
Biotransformation of ferulic acid by microorganisms provides a better alternative for production of flavour and fragrance compounds like 4-vinylguaiacol and vanillin. Ferulic acid is transformed to 4-vinylguaiacol using the non-oxidative decarboxylation pathway by ferulic acid decarboxylase (FADase). Here we report, computational mutational analysis of active site of FADase. Site directed mutations (single nucleotide polymorphisms, SNPs) were commenced using in-silico molecular modelling methods. Energy minimisation, dynamic cross-correlation map (DCCM) and principle components analysis (PCA) methods were subsequently applied to validate different conformers (SNPs) of FADase. Substrate ferulic acid was docked with different SNPs. It was observed that, certain amino acids like Tyr21, Trp25, Tyr27 and Glu134 at active sites are responsible for better binding to ferulic acid. Further, mutated form Y27F (Tyr27Phe) of FADase shows a better binding affinity towards ferulic acid than its native form through structure analysis and docking studies.
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