首页> 外文会议>2008 International Conference on Machine Learning and Cybernetics(2008机器学习与控制论国际会议)论文集 >PREDICTION OF PROTEIN SUBCELLULAR LOCALIZATION WITH A NOVEL METHOD: SEQUENCE-SEGMENTED PSEAAC
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PREDICTION OF PROTEIN SUBCELLULAR LOCALIZATION WITH A NOVEL METHOD: SEQUENCE-SEGMENTED PSEAAC

机译:预测蛋白质亚细胞定位的新方法:序列分割的PSEAAC

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Information of the subcelluiar localizations of proteins is important because it can provide useful insights about their functions, as well as how and in what kind of cellular environments they interact with each other and with other molecules. Facing the explosion of newly generated protein sequences In the port gcnomic era, we are challenged to develop an automated method for fast and reliably annotating their subcelluiar localizations. To tackle the challenge, a novel method of the sequence-segmented pseudo amino acid composition (PscAAC) is introduced to represent protein samples. Based on the concept of Chou's PseAAC, a series of useful information and techniques, such as multi-scale energy and moment descriptors were utilized to generate the sequence-segmented pseudo amino acid components for representing the protein samples. Meanwhile, the multi-class SVM classifier modules were adopted for predicting 16 kinds of eukaryotic protein subcelluiar localizations. Compared with existing methods, this new approach provides better predictive performance The success total accuracies were obtained in the jackknife test and independent dataset test, suggesting that the sequence-segmented PscAAC method is quite promising, and might also hold a great potential as a? useful vehicle for the other areas of molecular biology.
机译:蛋白质亚细胞定位的信息很重要,因为它可以提供有关其功能以及彼此之间以及与其他分子之间如何相互作用以及在何种细胞环境中相互作用的有用见解。面对新生成的蛋白质序列的爆炸式增长在port gcnomic时代,我们面临的挑战是开发一种自动方法来快速,可靠地注释其亚细胞定位。为了解决这一难题,引入了一种新的序列分段的伪氨基酸组成(PscAAC)方法来代表蛋白质样品。基于Chou's PseAAC的概念,利用了一系列有用的信息和技术,例如多尺度能量和矩描述符,来生成代表蛋白质样品的序列分段的伪氨基酸成分。同时,采用多类SVM分类器模块预测16种真核蛋白亚细胞定位。与现有方法相比,该新方法提供了更好的预测性能。在折刀检验和独立数据集检验中获得了成功的总准确度,这表明序列分段的PscAAC方法是很有前途的,并且可能还具有很大的潜力。分子生物学其他领域的有用工具。

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