预测过氧化物酶体蛋白

J. Hawkins, M. Bodén
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引用次数: 5

摘要

PTS1蛋白是一种过氧化物酶体基质蛋白,在c端有一个保守的靶向基序。然而,这个基序也存在于许多非过氧化物酶体蛋白中,因此预测过氧化物酶体蛋白需要区分假的PTS1信号和真实的PTS1信号。在本文中,我们报告了一个具有单独训练的逻辑输出函数的支持向量机分类器的发展。该模型使用一个输入窗口,在c端包含12个连续残基和完整序列的氨基酸组成。最终模型的马修斯相关系数为0.77,与众所周知的PeroxiP预测器相比,增加了54%。我们通过将该模型应用于真核生物的几个蛋白质组来测试,这些蛋白质组没有过氧化物酶体的证据,产生0.088%的假阳性率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Peroxisomal Proteins
PTS1 proteins are peroxisomal matrix proteins that have a well conserved targeting motif at the C-terminal end. However, this motif is present in many non peroxisomal proteins as well, thus predicting peroxisomal proteins involves differentiating fake PTS1 signals from actual ones. In this paper we report on the development of an SVM classifier with a separately trained logistic output function. The model uses an input window containing 12 consecutive residues at the C-terminus and the amino acid composition of the full sequence. The final model gives a Matthews Correlation Coefficient of 0.77, representing an increase of 54% compared with the well-known PeroxiP predictor. We test the model by applying it to several proteomes of eukaryotes for which there is no evidence of a peroxisome, producing a false positive rate of 0.088%.
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