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Using complexity measure factor to predict protein subcellular location

机译:使用复杂性度量因子预测蛋白质亚细胞定位

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摘要

Recent advances in large-scale genome sequencing have led to the rapid accumulation of amino acid sequences of proteins whose functions are unknown. Because the functions of these proteins are closely correlated with their subcellular localizations, it is vitally important to develop an automated method as a high-throughput tool to timely identify their subcellular location. Based on the concept of the pseudo amino acid composition by which a considerable amount of sequence-order effects can be incorporated into a set of discrete numbers (Chou, K. C., Proteins: Structure, Function, and Genetics, 2001, 43: 246 - 255), the complexity measure approach is introduced. The advantage by incorporating the complexity measure factor as one of the pseudo amino acid components for a protein is that it can more effectively reflect its overall sequence-order feature than the conventional correlation factors. With such a formulation frame to represent the samples of protein sequences, the covariant-discriminant predictor ( Chou, K. C. and Elrod, D. W., Protein Engineering, 1999, 12: 107 - 118) was adopted to conduct prediction. High success rates were obtained by both the jackknife cross-validation test and independent dataset test, suggesting that introduction of the concept of the complexity measure into prediction of protein subcellular location is quite promising, and might also hold a great potential as a useful vehicle for the other areas of molecular biology.
机译:大规模基因组测序的最新进展已导致功能未知的蛋白质的氨基酸序列迅速积累。由于这些蛋白质的功能与其亚细胞定位密切相关,因此开发一种自动化方法作为高通量工具以及时识别其亚细胞位置至关重要。基于伪氨基酸组成的概念,通过该概念,可以将大量的序列效应合并到一组离散数字中(Chou,KC,Proteins:Structure,Function and Genetics,2001,43:246-255 ),介绍了复杂度度量方法。通过将复杂性测量因子作为蛋白质的伪氨基酸成分之一,其优势在于,与常规相关因子相比,它可以更有效地反映其整体序列顺序特征。在代表蛋白质序列样品的这种构架下,采用协变判别预测因子(Chou,K.C。和Elrod,D.W.,Protein Engineering,1999,12:107-118)进行预测。通过折刀交叉验证测试和独立数据集测试均获得了很高的成功率,这表明将复杂性度量的概念引入蛋白质亚细胞定位的预测是非常有前途的,并且也可能具有巨大的潜力,可用于分子生物学的其他领域。

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