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GNeg-CEF: Gram-negative bacterial protein prediction using ensemble approach for individual feature extraction strategies

机译:GNEG-CEF:使用集合方法进行个别特征提取策略的革兰氏阴细菌蛋白质预测

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The importance of automatically annotating the subcellular attributes of uncharacterized proteins and its timely utilization in drug discovery is self-evident. This accurate information about protein locations in a cell facilitates in the understanding of the function of a protein and further interaction in the cellular environment. We proposed a novel GNeg-CEF approach for predicting gram-negative bacterial subcellular locations. In the proposed scheme, we exploited diversity both in feature and decision spaces. In order to exploit diversity in feature space, we used six feature extraction strategies; Amino Acid Composition (AAC), Split Amino Acid Composition (SAAC), Pseudo Amino Acid Composition (PseAAC) parallel, PseAAC Series, Dipeptide Composition (DC), and Sequential Evolution (PseEvo). Diversity in decision space is exploited using three state of the art classification models; Support Vector Machine, k-Nearest Neighbor, and Back Propagation Neural Network. First, the performance of individual ensemble classifiers for single feature extraction technique is evaluated. Next, the improved performance of the composite ensemble GNeg-CEF of all individual ensembles is investigated using majority voting scheme for gram-negative bacterial protein dataset.
机译:自动注释非特征化蛋白质的亚细胞属性及其在药物发现中及时使用的重要性是不言而喻的。关于细胞中蛋白质位置的这种准确的信息有助于了解蛋白质的功能和细胞环境中的进一步相互作用。我们提出了一种用于预测革兰氏阴性细菌亚细胞位置的新型GNEG-CEF方法。在拟议方案中,我们在特征和决策空间中利用多样性。为了利用特征空间的多样性,我们使用了六种特征提取策略;氨基酸组合物(AAC),分裂氨基酸组合物(SAAC),假氨基酸组合物(PSEAAC)平行,PSEAAC系列,二肽组合物(DC)和顺序进化(Pseevo)。利用第三种现有技术模型利用决策空间的多样性;支持向量机,k最近邻居和后传播神经网络。首先,评估单个特征提取技术的单个集合分类器的性能。接下来,研究使用多数表决蛋白数据集研究了所有单独系列的复合集合GNEG-CEF的改进性能。

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