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Using protein-protein interaction network information to predict the subcellular locations of proteins in budding yeast

机译:利用蛋白质-蛋白质相互作用网络信息预测出芽酵母中蛋白质的亚细胞位置

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摘要

The information of protein subcellular localization is vitally important for in-depth understanding the intricate pathways that regulate biological processes at the cellular level. With the rapidly increasing number of newly found protein sequence in the Post-Genomic Age, many automated methods have been developed attempting to help annotate their subcellular locations in a timely manner. However, very few of them were developed using the protein-protein interaction (PPI) network information. In this paper, we have introduced a new concept called tethering potential' by which the PPI information can be effectively fused into the formulation for protein samples. Based on such a network frame, a new predictor called Yeast-PLoc has been developed for identifying budding yeast proteins among their 19 subcellular location sites. Meanwhile, a purely sequence-based approach, called the hybrid-property' method, is integrated into Yeast-PLoc as a fall-back to deal with those proteins without sufficient PPI information. The overall success rate by the jackknife test on the 4,683 yeast proteins in the training dataset was 70.25%. Furthermore, it was shown that the success rate by Yeast- PLoc on an independent dataset was remarkably higher than those by some other existing predictors, indicating that the current approach by incorporating the PPI information is quite promising. As a user-friendly web-server, Yeast-PLoc is freely accessible at http://yeastloc.biosino.org/.
机译:蛋白质亚细胞定位信息对于深入了解调节细胞水平生物过程的复杂途径至关重要。随着后基因组时代新发现的蛋白质序列数量的迅速增加,已经开发出许多自动方法来尝试帮助及时注释其亚细胞位置。但是,很少有使用蛋白质-蛋白质相互作用(PPI)网络信息开发的。在本文中,我们引入了一种新的概念,称为“系留潜力”,通过该概念可以将PPI信息有效地融合到蛋白质样品的配方中。基于这样的网络框架,已经开发了一种称为Yeast-PLoc的新预测因子,用于在其19个亚细胞定位位点中鉴定出芽的酵母蛋白。同时,一种纯基于序列的方法(称为杂化特性法)已被整合到Yeast-PLoc中,作为一种后备方法,可以在没有足够PPI信息的情况下处理这些蛋白质。通过折刀测试对训练数据集中的4,683种酵母蛋白的总体成功率为70.25%。此外,研究表明,Yeast-PLoc在独立数据集上的成功率显着高于其他一些现有预测变量,这表明采用PPI信息的当前方法是很有希望的。作为用户友好的Web服务器,可以在http://yeastloc.biosino.org/免费访问Yeast-PLoc。

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