蛋白质相互作用预测中的去噪技术评价

Yong-Cui Wang, X. Ren, Chunhua Zhang, N. Deng, Xiang-Sun Zhang
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引用次数: 0

摘要

在过去的几十年里,人们对蛋白质之间的关系进行了广泛的研究。特别是,基于序列的蛋白质-蛋白质相互作用(PPIs)预测对于加速绘制生物体相互作用组的过程至关重要。组合向量通常被构造为将蛋白质编码为实值向量,并将其馈送给机器学习框架。然而,组成向量值可能与氨基酸的分布高度相关,即在自然界中经常观察到的氨基酸往往具有较大的组成向量值。因此,在表示过程中可能需要估计噪声的公式。在此,我们引入了两种有效构建系统发生树的去噪组合向量来消除噪声。当分别在大肠杆菌(E.coli)和酿酒酵母(S.cerevisiae)随机阴性数据集和人工阴性数据集上验证这两种去噪组合向量时,预测性能没有提高,甚至比未去噪的预测更差。这些结果表明,在系统发育树构建中有效的去噪公式并不能改善PPIs的预测,即噪声是什么取决于应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluating the denoising techniques in protein-protein interaction prediction
The past decades witnessed extensive efforts to study the relationships among proteins. Particularly, sequence-based protein-protein interactions (PPIs) prediction is fundamentally important in speeding up the process of mapping interactomes of organisms. The composition vectors are usually constructed to encode proteins as real-value vectors, which is feeding to a machine learning framework. However, the composition vector value might be highly correlated to the distribution of amino acids, i.e., amino acids which are frequently observed in nature tend to have a large value of composition vector. Thus formulation to estimate the noise may be needed during representations. Here, we introduce two kinds of denoising composition vectors, which are efficient in construction of phylogenetic trees, to eliminate the noise. When validating these two denoising composition vectors on Escherichia coli (E.coli) and Saccharomyces cerevisiae (S.cerevisiae) randomly and artificial negative datasets, respectively, the predictive performance is not improved, and even worse than non-denoised prediction. These results suggest that, the denoising formulation efficient in phylogenetic trees construction can not improve the PPIs prediction, that is, what is noise is dependent on the applications.
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