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Predicting Subcellular Localization of Gram-Negative Bacterial Proteins by Linear Dimensionality Reduction Method

机译:线性降维方法预测革兰氏阴性细菌蛋白的亚细胞定位

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摘要

With the rapid increase of protein sequences in the post-genomic age, the need for an automated and accurate tool to predict protein subcellular localization becomes increasingly important. Many efforts have been tried. Most of them aim to find the optimal classification scheme and less of them take the simplifying the complexity of biological system into consideration. This work shows how to decrease the complexity of biological system with linear DR (Dimensionality Reduction) method by transforming the original high-dimensional feature vectors into the low-dimensional feature vectors. A powerful sequence encoding scheme by fusing PSSM (Position-Specific Score Matrix) and Chou's PseAA (Pseudo Amino Acid) composition is proposed to represent the protein samples. Then, the K-NN (K-Nearest Neighbor) classifier is employed to identify the subcellular localization based on their reduced low-dimensional feature vectors. Experimental results thus obtained are quite encouraging, indicating that the aforementioned linear DR method is quite promising in dealing with complicated biological problems, such as predicting the subcellular localization of Gram-negative bacterial proteins.
机译:随着后基因组时代蛋白质序列的迅速增加,对预测蛋白质亚细胞定位的自动化和准确工具的需求变得越来越重要。已经尝试了许多努力。它们中的大多数旨在找到最佳的分类方案,而很少考虑简化生物系统的复杂性。这项工作展示了如何通过将原始的高维特征向量转换为低维特征向量来使用线性DR(降维)方法降低生物系统的复杂性。提出了一种通过融合PSSM(位置特定得分矩阵)和Chou's PseAA(伪氨基酸)组成的强大序列编码方案来表示蛋白质样品。然后,使用K-NN(K最近邻)分类器,基于其简化后的低维特征向量来识别亚细胞定位。如此获得的实验结果令人鼓舞,表明上述线性DR方法在处理复杂的生物学问题如预测革兰氏阴性细菌蛋白的亚细胞定位方面非常有前途。

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