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Neuro-fuzzy structural classification of proteins for improved protein secondary structure prediction.

机译:蛋白质的神经模糊结构分类,用于改进蛋白质二级结构预测。

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Fourier transform infrared (FTIR) spectroscopy is a very flexible technique for characterization of protein secondary structure. Measurements can be carried out rapidly in a number of different environments based on only small quantities of proteins. For this technique to become more widely used for protein secondary structure characterization, however, further developments in methods to accurately quantify protein secondary structure are necessary. Here we propose a structural classification of proteins (SCOP) class specialized neural networks architecture combining an adaptive neuro-fuzzy inference system (ANFIS) with SCOP class specialized backpropagation neural networks for improved protein secondary structure prediction. Our study shows that proteins can be accurately classified into two main classes "all alpha proteins" and "all beta proteins" merely based on the amide I band maximum position of their FTIR spectra. ANFIS is employed to perform the classification task to demonstrate the potential of this architecture with moderately complex problems. Based on studies using a reference set of 17 proteins and an evaluation set of 4 proteins, improved predictions were achieved compared to a conventional neural network approach, where structure specialized neural networks are trained based on protein spectra of both "all alpha" and "all beta" proteins. The standard errors of prediction (SEPs) in % structure were improved by 4.05% for helix structure, by 5.91% for sheet structure, by 2.68% for turn structure, and by 2.15% for bend structure. For other structure, an increase of SEP by 2.43% was observed. Those results were confirmed by a "leave-one-out" run with the combined set of 21 FTIR spectra of proteins.
机译:傅里叶红外光谱(FTIR)是表征蛋白质二级结构的非常灵活的技术。仅基于少量的蛋白质,就可以在许多不同的环境中快速进行测量。为了使该技术更广泛地用于蛋白质二级结构表征,需要进一步发展精确定量蛋白质二级结构的方法。在这里,我们提出了蛋白质的结构分类(SCOP)类专用神经网络体系结构,将自适应神经模糊推理系统(ANFIS)与SCOP类的专用反向传播神经网络相结合,以改进蛋白质的二级结构预测。我们的研究表明,仅根据其FTIR光谱中酰胺I带的最大位置,就可以将蛋白质准确地分为两大类:“所有α蛋白”和“所有β蛋白”。 ANFIS用于执行分类任务,以证明该架构具有中等复杂性问题的潜力。基于使用17种蛋白质参考集和4种蛋白质评估集的研究,与传统的神经网络方法(其中基于“所有alpha”和“所有β”蛋白。螺旋结构的标准预测标准误差(SEPs)提高了4.05%,片状结构提高了5.91%,转弯结构提高了2.68%,弯曲结构提高了2.15%。对于其他结构,观察到SEP增加了2.43%。这些结果通过对蛋白质的21个FTIR光谱组合进行的“一次保留”实验得到了证实。

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