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Prediction of Signal Peptide Cleavage Sites with SubsiteCoupled and Template Matching Fusion Algorithm

机译:子位点耦合与模板匹配融合算法预测信号肽切割位点

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摘要

Fast and effective prediction of signal peptides (SP) and their cleavage sites is of great importance in computational biology. The approaches developed to predict signal peptide can be roughly divided into machine learning based, and sliding windows based. In order to further increase the prediction accuracy and coverage of organism for SP cleavage sites, we propose a novel method for predicting SP cleavage sites called Signal-CTF that utilizes machine learning and sliding windows, and is designed for N-termial secretory proteins in a large variety of organisms including human, animal, plant, virus, bacteria, fungi and archaea. Signal-CTF consists of three distinct elements: (1) a subsite-coupled and regularization function with a scaled window of fixed width that selects a set of candidates of possible secretion-cleavable segment for a query secretory protein; (2) a sum fusion system that integrates the outcomes from aligning the cleavage site template sequence with each of the aforementioned candidates in a scaled window of fixed width to determine the best candidate cleavage sites for the query secretory protein; (3) a voting system that identifies the ultimate signal peptide cleavage site among all possible results derived from using scaled windows of different width. When compared with Signal-3L and SignalP 4.0 predictors, the prediction accuracy of Signal-CTF is 4-12%, 10-25% higher than that of Signal-3L for human, animal and eukaryote, and SignalP 4.0 for eukaryota, Gram-positive bacteria and Gram-negative bacteria, respectively. Comparing with PRED-SIGNAL and SignalP 4.0 predictors on the 32 archaea secretory proteins of used in Bagos's paper, the prediction accuracy of Signal-CTF is 12.5%, 25% higher than that of PRED-SIGNAL and SignalP 4.0, respectively. The predicting results of several long signal peptides show that the Signal-CTF can better predict cleavage sites for long signal peptides than SignalP, Phobius, Philius, SPOCTOPUS, Signal-CF and Signal-3L. These results show that Signal-CTF is more accurate and flexible in predicting signal peptides of different characteristics for many organisms. Signal-CTF is freely available as a web-server at http://darwin2.cbi.utsa.edu/minniweb/index.html.
机译:快速有效地预测信号肽(SP)及其裂解位点在计算生物学中非常重要。预测信号肽的方法大致可分为基于机器学习的方法和基于滑动窗口的方法。为了进一步提高SP裂解位点的预测准确性和覆盖范围,我们提出了一种新的预测SP裂解位点的方法,称为Signal-CTF,该方法利用机器学习和滑动窗口,并针对N末端分泌蛋白进行了设计。多种生物,包括人类,动物,植物,病毒,细菌,真菌和古细菌。 Signal-CTF由三个不同的元素组成:(1)具有固定宽度的缩放窗口的子位耦合和正则化功能,用于选择查询分泌蛋白的可能的分泌可切割片段的候选集; (2)一种求和融合系统,其将在固定宽度的缩放窗口中将切割位点模板序列与每个上述候选物比对的结果整合在一起,以确定查询分泌蛋白的最佳候选切割位点; (3)一种投票系统,可在使用不同宽度的缩放窗口得出的所有可能结果中识别最终的信号肽切割位点。与Signal-3L和SignalP 4.0预测器相比,Signal-CTF的预测精度比Signal-3L对人,动物和真核生物的预测精度高,SignalP 4.0对真核生物,革兰氏阳性的预测精度高10-25%阳性细菌和革兰氏阴性细菌。与Bagos论文中使用的32种古细菌分泌蛋白的PRED-SIGNAL和SignalP 4.0预测因子相比,Signal-CTF的预测准确性分别为PRED-SIGNAL和SignalP 4.0的12.5%,25%。几种长信号肽的预测结果表明,Signal-CTF比SignalP,Phobius,Philius,SPOCTOPUS,Signal-CF和Signal-3L可以更好地预测长信号肽的切割位点。这些结果表明,Signal-CTF在预测许多生物体具有不同特征的信号肽方面更为准确和灵活。 Signal-CTF可作为Web服务器免费提供,网址为http://darwin2.cbi.utsa.edu/minniweb/index.html。

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