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首页> 外文期刊>BioSystems >Using radial basis function on the general form of Chou's pseudo amino acid composition and PSSM to predict subcellular locations of proteins with both single and multiple sites
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Using radial basis function on the general form of Chou's pseudo amino acid composition and PSSM to predict subcellular locations of proteins with both single and multiple sites

机译:使用周基伪氨基酸成分和PSSM的一般形式的径向基函数来预测具有单个和多个位点的蛋白质的亚细胞位置

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Prediction of protein subcellular location is a meaningful task which attracted much attention in recent years. A lot of protein subcellular location predictors which can only deal with the single-location proteins were developed. However, some proteins may belong to two or even more subcellular locations. It is important to develop predictors which will be able to deal with multiplex proteins, because these proteins have extremely useful implication in both basic biological research and drug discovery. Considering the circumstance that the number of methods dealing with multiplex proteins is limited, it is meaningful to explore some new methods which can predict subcellular location of proteins with both single and multiple sites. Different methods of feature extraction and different models of predict algorithms using on different benchmark datasets may receive some general results. In this paper, two different feature extraction methods and two different models of neural networks were performed on three benchmark datasets of different kinds of proteins, i.e. datasets constructed specially for Gram-positive bacterial proteins, plant proteins and virus proteins. These benchmark datasets have different number of location sites. The application result shows that RBF neural network has apparently superiorities against BP neural network on these datasets no matter which type of feature extraction is chosen.
机译:蛋白质亚细胞定位的预测是一项有意义的任务,近年来引起了很多关注。开发了许多只能处理单位蛋白的蛋白质亚细胞定位预测子。但是,某些蛋白质可能属于两个甚至更多的亚细胞位置。开发能够处理多种蛋白质的预测因子非常重要,因为这些蛋白质在基础生物学研究和药物发现中都具有极其有用的意义。考虑到处理多重蛋白的方法数量有限的情况,探索一些可以预测具有单个和多个位点的蛋白质亚细胞定位的新方法是有意义的。在不同的基准数据集上使用不同的特征提取方法和不同的预测算法模型可能会收到一些常规结果。在本文中,对三种不同蛋白质的基准数据集(即专门为革兰氏阳性细菌蛋白质,植物蛋白质和病毒蛋白质构建的数据集)执行了两种不同的特征提取方法和两种不同的神经网络模型。这些基准数据集具有不同数量的位置站点。应用结果表明,无论选择哪种特征提取,RBF神经网络在这些数据集上都明显优于BP神经网络。

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