周质间隙
亚细胞定位
计算生物学
细菌外膜
蛋白质亚细胞定位预测
支持向量机
革兰氏阴性菌
功能(生物学)
生物
细菌
细胞质
计算机科学
生物化学
人工智能
基因
细胞生物学
遗传学
大肠杆菌
作者
Chin‐Sheng Yu,Chih‐Jen Lin,Jenn‐Kang Hwang
摘要
Abstract Gram‐negative bacteria have five major subcellular localization sites: the cytoplasm, the periplasm, the inner membrane, the outer membrane, and the extracellular space. The subcellular location of a protein can provide valuable information about its function. With the rapid increase of sequenced genomic data, the need for an automated and accurate tool to predict subcellular localization becomes increasingly important. We present an approach to predict subcellular localization for Gram‐negative bacteria. This method uses the support vector machines trained by multiple feature vectors based on n ‐peptide compositions. For a standard data set comprising 1443 proteins, the overall prediction accuracy reaches 89%, which, to the best of our knowledge, is the highest prediction rate ever reported. Our prediction is 14% higher than that of the recently developed multimodular PSORT‐B. Because of its simplicity, this approach can be easily extended to other organisms and should be a useful tool for the high‐throughput and large‐scale analysis of proteomic and genomic data.
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