Using Neural Networks for Prediction of Subcellular Location of Prokaryotic and Eukaryotic Proteins

Yu-Dong Cai , Kuo-Chen Chou
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引用次数: 37

Abstract

T. Kohonen's self-organization model, a typical neural network model, was applied to predict the subcellular location of proteins from their amino acid composition. The Reinhardt and Hubbard database was used to examine the performance of the neural network method. The rates of correct prediction for the three possible subcellular location of prokaryotic proteins were 96.1% by the self-consistency test and 84.4% by the jackknife test. The rates of correct prediction for the four possible subcellular location of eukaryotic proteins were 95.6% by the self-consistency test and 70.6% by the jackknife test.
应用神经网络预测原核和真核蛋白的亚细胞定位
T. Kohonen的自组织模型是一种典型的神经网络模型,通过蛋白质的氨基酸组成来预测蛋白质的亚细胞位置。使用Reinhardt和Hubbard数据库来检验神经网络方法的性能。自洽试验对三种可能的原核蛋白亚细胞定位的预测正确率为96.1%,刀切试验的预测正确率为84.4%。自洽试验对真核蛋白4种可能亚细胞定位的预测正确率为95.6%,刀切试验的预测正确率为70.6%。
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