首页> 外文期刊>Journal of Theoretical Biology >Predicting protein subchloroplast locations with both single and multiple sites via three different modes of Chou's pseudo amino acid compositions
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Predicting protein subchloroplast locations with both single and multiple sites via three different modes of Chou's pseudo amino acid compositions

机译:通过周的伪氨基酸组成的三种不同模式预测具有单个和多个位点的蛋白质亚叶绿体位置

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摘要

Owing to the fact that location information can indicate important functionalities of proteins, developing computational tools to predict protein subcellular localization is one of the most efficient and meaningful tasks with no doubt. The existence methods dealing with prediction of protein subchloroplast locations can only handle the case of single location site. Therefore, it is meaningful and challenging to make effort in how to deal with the proteins with multiple subchloroplast location sites instead of just excluding them. To solve this problem, new systems for predicting protein subchloroplast localization with single or multiple sites are developed and discussed in the paper. Three different editions of KNN algorithms and four different types of feature extraction were adopted to construct the prediction systems. This is the first effort to predict the proteins with multiple subchloroplast locations. The overall jackknife success rates achieved by the best combination (features+classifier) on three dataset with different levels of homology were 89.08%, 81.29% and 71.11%. The performance of the prediction models indicate that the proposed methods might be applied as a useful and efficient assistant tool for the prediction of sub-subcellular localizations.
机译:由于位置信息可以指示蛋白质的重要​​功能,因此开发预测蛋白质亚细胞定位的计算工具无疑是最有效和有意义的任务之一。处理蛋白质亚叶绿体位置的现有方法只能处理单个位置的情况。因此,努力处理具有多个亚叶绿体定位位点的蛋白质而不仅仅是排除它们是有意义且具有挑战性的。为了解决这个问题,在本文中开发并讨论了预测具有单个或多个位点的蛋白质亚叶绿体定位的新系统。采用三种不同版本的KNN算法和四种不同类型的特征提取来构建预测系统。这是预测具有多个亚叶绿体位置的蛋白质的首次尝试。在三个具有不同同源性水平的数据集上,最佳组合(特征+分类器)获得的整体折刀成功率为89.08%,81.29%和71.11%。预测模型的性能表明,所提出的方法可以用作预测亚亚细胞定位的有用和高效的辅助工具。

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