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首页> 外文期刊>Proteins: Structure, Function, and Genetics >Amino acid sequence autocorrelation vectors and Bayesian-regularized genetic neural networks for modeling protein conformational stability: gene V protein mutants.
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Amino acid sequence autocorrelation vectors and Bayesian-regularized genetic neural networks for modeling protein conformational stability: gene V protein mutants.

机译:用于建模蛋白质构象稳定性的氨基酸序列自相关载体和贝叶斯正则化遗传神经网络:基因V蛋白突变体。

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Development of novel computational approaches for modeling protein properties from their primary structure is the main goal in applied proteomics. In this work, we reported the extension of the autocorrelation vector formalism to amino acid sequences for encoding protein structural information with modeling purposes. Amino acid sequence autocorrelation (AASA) vectors were calculated by measuring the autocorrelations at sequence lags ranging from 1 to 15 on the protein primary structure of 48 amino acid/residue properties selected from the AAindex data base. A total of 720 AASA descriptors were tested for building predictive models of the change of thermal unfolding Gibbs free energy change (delta deltaG) of gene V protein upon mutation. In this sense, ensembles of Bayesian-regularized genetic neural networks (BRGNNs) were used for obtaining an optimum nonlinear model for the conformational stability. The ensemble predictor described about 88% and 66% variance of the data in training and test sets respectively. Furthermore, the optimum AASA vector subset not only helped to successfully model unfolding stability but also well distributed wild-type and gene V protein mutants on a stability self-organized map (SOM), when used for unsupervised training of competitive neurons.
机译:从蛋白质的一级结构建模蛋白质特性的新颖计算方法的开发是应用蛋白质组学的主要目标。在这项工作中,我们报告了自相关向量形式的扩展到氨基酸序列,用于编码具有建模目的的蛋白质结构信息。通过在选自AAindex数据库的48个氨基酸/残基特性的蛋白质一级结构上以1到15的序列滞后测量自相关来计算氨基酸序列自相关(AASA)载体。总共测试了720个AASA描述子,以建立突变后基因V蛋白的热展开吉布斯自由能变化(delta deltaG)变化的预测模型。从这个意义上讲,使用贝叶斯正则化遗传神经网络(BRGNN)的集成来获得构象稳定性的最佳非线性模型。整体预测器分别描述了训练和测试集中数据的约88%和66%的方差。此外,当用于竞争性神经元的无监督训练时,最佳的AASA载体子集不仅有助于成功地对展开稳定性进行建模,而且还可以在稳定性自组织图(SOM)上很好地分布野生型和基因V蛋白突变体。

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