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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >iPhosH-PseAAC: Identify Phosphohistidine Sites in Proteins by Blending Statistical Moments and Position Relative Features According to the Chou's 5-Step Rule and General Pseudo Amino Acid Composition
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iPhosH-PseAAC: Identify Phosphohistidine Sites in Proteins by Blending Statistical Moments and Position Relative Features According to the Chou's 5-Step Rule and General Pseudo Amino Acid Composition

机译:iphosh-pseaac:根据Chou的5步规则和一般伪氨基酸组合物通过混合统计矩和位置相对特征,鉴别蛋白质中的磷酸肽位点

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摘要

Protein phosphorylation is one of the key mechanism in prokaryotes and eukaryotes and is responsible for various biological functions such as protein degradation, intracellular localization, the multitude of cellular processes, molecular association, cytoskeletal dynamics, and enzymatic inhibition/activation. Phosphohistidine (PhosH) has a key role in a number of biological processes, including central metabolism to signalling in eukaryotes and bacteria. Thus, identification of phosphohistidine sites in a protein sequence is crucial, and experimental identification can be expensive, time-taking, and laborious. To address this problem, here, we propose a novel computational model namely iPhosH-PseAAC for prediction of phosphohistidine sites in a given protein sequence using pseudo amino acid composition (PseAAC), statistical moments, and position relative features. The results of the proposed predictor are validated through self-consistency testing, 10-fold cross-validation, and jackknife testing. The self-consistency validation gave the 100 percent accuracy, whereas, for cross-validation, the accuracy achieved is 94.26 percent. Moreover, jackknife testing gave 97.07 percent accuracy for the proposed model. Thus, the proposed model iPhosH-PseAAC for prediction of iPhosH site has the great ability to predict the PhosH sites in given proteins.
机译:蛋白质磷酸化是原核生物和真核生物中的关键机制之一,并负责各种生物学功能,例如蛋白质降解,细胞内定位,众多细胞过程,分子关联,细胞骨骼动力学和酶抑制/活化。磷酸磷酸磷(磷酸盐)在许多生物过程中具有关键作用,包括在真核生物和细菌中的信号传导中的中央代谢。因此,蛋白质序列中的磷酸肽位点至关重要,实验识别可以是昂贵的,延时的,艰苦的。为了解决这个问题,在这里,我们提出了一种新颖的计算模型,即使用伪氨基酸组合物(PSEAAC),统计时刻和位置相对特征来预测给定蛋白质序列中的磷酸磷酸盐位点。所提出的预测因子的结果通过自我一致性测试,10倍交叉验证和千刀测试验证。自我一致性验证给出了100%的准确性,而对于交叉验证,所取得的准确性为94.26%。此外,夹克刀检测为所提出的模型提供97.07%的精度。因此,拟议的模型Iphosh-PSEAAC用于预测硫芯网站具有预测给定蛋白质中的伯型位点的能力。

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