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An improved sequence-based prediction protocol for protein-protein interactions using amino acids substitution matrix and rotation forest ensemble classifiers

机译:基于氨基酸替换矩阵和旋转森林集成分类器的蛋白质-蛋白质相互作用的基于序列的改进预测协议

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摘要

Protein-protein Interactions (PPIs) play important roles in a wide variety of cellular processes, including metabolic cycles, DNA transcription and replication, and signaling cascades. High-throughput biological experiments for identifying PPIs are beginning to provide valuable information about the complexity of PPI networks, but are expensive, cumbersome, and extremely time-consuming. Hence, there is a need for accurate and robust computational methods for predicting PPIs. In this article, a sequence-based approach is proposed by combining a novel amino acid substitution matrix feature representation and Rotation Forest (RF) classifier. Given the protein sequences as input, the proposed method predicts whether or not the pair of proteins interacts. When performed on the PPI data of Saccharomyces cerevisiae, the proposed method achieved 93.74% prediction accuracy with 90.05% sensitivity at the precision of 97.08%. Extensive experiments are performed to compare our method with the existing sequence-based method. Experimental results demonstrate that PPIs can be reliably predicted using only sequence-derived information. Achieved results show that the proposed approach offers an inexpensive method for computational construction of PPI networks, so it can be a useful supplementary tool for future proteomics studies.
机译:蛋白质相互作用(PPI)在多种细胞过程中起重要作用,包括代谢循环,DNA转录和复制以及信号级联。用于识别PPI的高通量生物学实验开始提供有关PPI网络复杂性的有价值的信息,但是它昂贵,麻烦且非常耗时。因此,需要用于预测PPI的准确且鲁棒的计算方法。在本文中,通过结合一种新型的氨基酸替代矩阵特征表示法和旋转林(RF)分类器,提出了一种基于序列的方法。给定蛋白质序列作为输入,建议的方法可以预测这对蛋白质是否相互作用。当对酿酒酵母的PPI数据进行分析时,该方法的预测精度达到了93.74%,灵敏度达到了90.05%,精度达到了97.08%。进行了广泛的实验,以将我们的方法与现有的基于序列的方法进行比较。实验结果表明,仅使用序列信息即可可靠地预测PPI。取得的成果表明,该方法为PPI网络的计算构建提供了一种廉价的方法,因此它可以作为将来蛋白质组学研究的有用补充工具。

著录项

  • 作者

    You, ZH; Li, X; Chan, KC;

  • 作者单位
  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 en
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