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Effects of neighboring sequence environment in predicting cleavage sites of signal peptides.

机译:邻近序列环境在预测信号肽裂解位点中的作用。

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Signal peptide has a pivotal role in the translocation of secretory protein. Some models have been designed to predict its cleavage site. It is reported that the cleavage site has relationship with the neighboring sequence environment, i.e., hydrophobic core h-region, and the specific patterns in c-region. In some studies, this finding does facilitate the prediction of cleavage site. However, in these models, sequence environment information is merely taken account of as model inputs and no detailed investigation into its effect on the prediction of cleavage site has been made. In this work, we analyze the constraint on cleave site placed by the hydrophobic core of signal peptide and then use it to improve the performance of the signal peptide cleavage site prediction. Our model is designed as follows: firstly, a sliding window is used to scan sample and artificial neural network (ANN) is employed to give cleavage siteon-cleavage site scores. Then, based on an estimated hydrophobic h-region a correcting function is proposed to improve the prediction result, in which the sequence environment is taken into account. A trend of cleavage site is indicated by our analysis for each position, which is consistent with experimental findings. Through this correcting step, the improvement of prediction accuracy is over 7%. It therefore demonstrates the neighboring sequence environment is helpful for determination of cleavage site. Program written in Matlab can be downloaded from http://www.scucic.cn/combined model/source code.html.
机译:信号肽在分泌蛋白的转运中具有关键作用。已经设计了一些模型来预测其切割位点。据报道,切割位点与邻近的序列环境,即疏水核心h区和c区的特定模式有关。在某些研究中,这一发现确实促进了切割位点的预测。然而,在这些模型中,仅将序列环境信息作为模型输入,并且尚未对其序列对切割位点的预测的影响进行详细研究。在这项工作中,我们分析了信号肽的疏水核对切割位点的限制,然后使用它来改善信号肽切割位点预测的性能。我们的模型设计如下:首先,使用滑动窗口扫描样品,并使用人工神经网络(ANN)给出切割位点/非切割位点的分数。然后,基于估计的疏水性h区,提出一种校正函数以改善预测结果,其中考虑了序列环境。我们对每个位置的分析表明了切割位点的趋势,这与实验结果一致。通过该校正步骤,预测准确性的提高超过7%。因此,它证明了邻近序列环境有助于确定切割位点。可以从http://www.scucic.cn/combined model / source code.html下载用Matlab编写的程序。

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