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Detecting De Novo Plasmodesmata Targeting Signals and Identifying PD Targeting Proteins

机译:检测从头疟原虫靶向信号并鉴定PD靶向蛋白

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Subcellular localization plays important roles in protein's functioning. In this paper, we developed a hidden Markov model to detect de novo signals in protein sequences that target at a particular cellular location: plasmodesmata. We also developed a support vector machine to classify plasmodesmata located proteins (PDLPs) in Arabidopsis, and devised a decision-tree approach to combine the SVM and HMM for better classification performance. The methods achieved high performance with ROC score 0.99 in cross-validation test on a set of 360 type I transmembrane proteins in Arabidopsis. The predicted PD targeting signals in one PDLP have been experimentally verified.
机译:亚细胞定位在蛋白质功能中起重要作用。在本文中,我们开发了一种隐藏的马尔可夫模型,用于检测针对特定细胞位置(浆胞)的蛋白质序列中的从头信号。我们还开发了一种支持向量机,用于对拟南芥中定位于胞藻的蛋白质(PDLP)进行分类,并设计了一种决策树方法来将SVM和HMM结合起来以实现更好的分类性能。该方法在拟南芥中的一组360种I型跨膜蛋白的交叉验证测试中,ROC得分为0.99,具有较高的性能。一种PDLP中的预测PD靶向信号已通过实验验证。

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