基于n端信号的多位点蛋白质亚细胞定位预测

Xumi Qu, Yuehui Chen, Shanping Qiao
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引用次数: 4

摘要

蛋白质的亚细胞定位是生物信息学的一个重要属性,与蛋白质的功能、信号转导和生物过程密切相关。在这一研究领域,近年来取得了很大的进展。然而,目前的预测方法还存在一些不足。如提取的特征信息不够完整,无法达到较高的预测准确率,一些重要的蛋白质信息和氨基酸序列的相关性通常被忽略等。有些蛋白质不只有一个位置,它们可能有两个位置或三个位置,甚至更多,但被认为只有一个位置。在本研究中,我们根据蛋白质序列的n端分选信号将其分成两部分,并分别提取其伪氨基酸组成特征。然后我们使用多标签KNN,简称ML-KNN来处理有两个,三个甚至更多位置的蛋白质。经切刀试验,结果满意。
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Predicting the Subcellular Localization of Proteins with Multiple Sites Based on N-Terminal Signals
Sub cellular localization of proteins is an important attribute in bioinformatics, closely related to its functions, signal transduction and biological process. In this research field, great progress has been made in recent years. However, some shortcomings still exist in the prediction methods. Such as the extracted features information is not complete enough to achieve a higher prediction accuracy rate, some important protein information and the correlation of the amino acid sequence are usually ignored and so on. Some proteins do not have only one location, they may have two locations or three and even more, but were considered to have only one location. In this study, we divide a protein sequence into two parts according to its N-terminal sorting signals and extract their pseudo amino acid composition features respectively. And then we use the multi-label KNN, shorted for ML-KNN to deal with the proteins which have two, three or even more locations. The results are satisfied by Jack Knife test.
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