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Signal-BNF: A Bayesian Network Fusing Approach to Predict Signal Peptides

机译:信号-BNF:一种贝叶斯网络融合方法来预测信号肽

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摘要

A signal peptide is a short peptide chain that directs the transport of a protein and has become the crucial vehicle in finding new drugs or reprogramming cells for gene therapy. As the avalanche of new protein sequences generated in the postgenomic era, the challenge of identifying new signal sequences has become even more urgent and critical in biomedical engineering. In this paper, we propose a novel predictor called Signal-BNF to predict the N-terminal signal peptide as well as its cleavage site based on Bayesian reasoning network. Signal-BNF is formed by fusing the results of different Bayesian classifiers which used different feature datasets as its input through weighted voting system. Experiment results show that Signal-BNF is superior to the popular online predictors such as Signal-3L and PrediSi. Signal-BNF is featured by high prediction accuracy that may serve as a useful tool for further investigating many unclear details regarding the molecular mechanism of the zip code protein-sorting system in cells.
机译:信号肽是一种短肽链,其引导蛋白质的运输,并且已成为寻找新药或重编程细胞的关键型载体进行基因治疗。作为在后一组中产生的新蛋白质序列的雪崩,识别新信号序列的挑战在生物医学工程中已经变得更加紧迫和批判。在本文中,我们提出了一种称为信号-BNF的新型预测因子,以预测基于贝叶斯推理网络的N末端信号肽以及其切割位点。通过熔断不同贝叶斯分类器的结果来形成信号-BF,其使用不同的特征数据集作为通过加权投票系统的输入。实验结果表明,信号-BF优于流行的在线预测因子,如信号-3L和Qualisi。信号-BNF具有高预测精度,可用作进一步研究关于细胞中邮政编码蛋白分选系统的分子机制的许多不清楚细节的有用工具。

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