首页> 外文期刊>Molecular simulation >Comparative modeling of the conformational stability of chymotrypsin inhibitor 2 protein mutants using amino acid sequence autocorrelation (AASA) and amino acid 3D autocorrelation (AA3DA) vectors and ensembles of Bayesianregularized genetic neural ne
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Comparative modeling of the conformational stability of chymotrypsin inhibitor 2 protein mutants using amino acid sequence autocorrelation (AASA) and amino acid 3D autocorrelation (AA3DA) vectors and ensembles of Bayesianregularized genetic neural ne

机译:使用氨基酸序列自相关(AASA)和氨基酸3D自相关(AA3DA)载体和贝叶斯正则化遗传神经网络集成对胰凝乳蛋白酶抑制剂2蛋白突变体的构象稳定性进行比较建模

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摘要

Predicting protein stability changes upon point mutation is important for understanding protein structure and designing new proteins. Autocorrelation vector formalism was extended to amino acid sequences and 3D conformations for encoding protein structural information with modeling purpose. Protein autocorrelation vectors were weighted by 48 amino acid/residue properties selected from the AAindex database. Ensembles of Bayesian-regularized genetic neural networks (BRGNNs) trained with amino acid sequence autocorrelation (AASA) vectors and amino acid 3D autocorrelation (AA3DA) vectors yielded predictive models of the change of unfolding Gibbs free energy change (DDG) of chymotrypsin Inhibitor 2 protein mutants. The ensemble predictor described about 58 and 72% of the data variances in test sets for AASA and AA3DA models, respectively. Optimum sequence and 3D-based ensembles exhibit high effects on relevant structural (volume, solvent-accessible surface area), physico-chemical (hydrophilicity/hydrophobicity-related) and thermodynamic (hydration parameters) properties.
机译:预测点突变后蛋白质稳定性的变化对于理解蛋白质结构和设计新蛋白质非常重要。自相关向量形式化已扩展到氨基酸序列和3D构象,用于编码具有建模目的的蛋白质结构信息。蛋白质自相关载体由选自Aaindex数据库的48个氨基酸/残基属性加权。由氨基酸序列自相关(AASA)载体和氨基酸3D自相关(AA3DA)载体训练的贝叶斯规则遗传神经网络(BRGNN)的集合产生了胰凝乳蛋白酶抑制剂2蛋白的未折叠吉布斯自由能变化(DDG)变化的预测模型。突变体。集成预测器分别描述了针对AASA和AA3DA模型的测试集中约58%和72%的数据差异。最佳序列和基于3D的合奏对相关的结构(体积,溶剂可及的表面积),理化(亲水性/疏水性相关)和热力学(水合参数)特性表现出很高的影响。

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