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Topology prediction for helical transmembrane proteins at 86 accuracy.

机译:螺旋跨膜蛋白的拓扑预测精度为86%。

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摘要

Previously, we introduced a neural network system predicting locations of transmembrane helices (HTMs) based on evolutionary profiles (PHDhtm, Rost B, Casadio R, Fariselli P, Sander C, 1995, Protein Sci 4:521-533). Here, we describe an improvement and an extension of that system. The improvement is achieved by a dynamic programming-like algorithm that optimizes helices compatible with the neural network output. The extension is the prediction of topology (orientation of first loop region with respect to membrane) by applying to the refined prediction the observation that positively charged residues are more abundant in extra-cytoplasmic regions. Furthermore, we introduce a method to reduce the number of false positives, i.e., proteins falsely predicted with membrane helices. The evaluation of prediction accuracy is based on a cross-validation and a double-blind test set (in total 131 proteins). The final method appears to be more accurate than other methods published: (1) For almost 89% (+/-3%) of the test proteins, all HTMs are predicted correctly. (2) For more than 86% (+/-3%) of the proteins, topology is predicted correctly. (3) We define reliability indices that correlate with prediction accuracy: for one half of the proteins, segment accuracy raises to 98%; and for two-thirds, accuracy of topology prediction is 95%. (4) The rate of proteins for which HTMs are predicted falsely is below 2% (+/-1%). Finally, the method is applied to 1,616 sequences of Haemophilus influenzae. We predict 19% of the genome sequences to contain one or more HTMs. This appears to be lower than what we predicted previously for the yeast VIII chromosome (about 25%).
机译:以前,我们介绍了一种神经网络系统,可根据进化特征(PHDhtm,Rost B,Casadio R,Fariselli P,Sander C,1995,Protein Sci 4:521-533)预测跨膜螺旋(HTM)的位置。在这里,我们描述了该系统的改进和扩展。这种改进是通过优化类似于神经网络输出的螺旋的动态编程算法来实现的。扩展是通过将精细的预测应用于胞外质区域中带正电荷的残基更丰富的观察结果,来预测拓扑结构(第一环区域相对于膜的方向)。此外,我们介绍了一种减少假阳性数量的方法,即假阳性的膜螺旋蛋白。预测准确性的评估基于交叉验证和双盲测试集(总共131种蛋白质)。最终的方法似乎比其他已发表的方法更准确:(1)对于将近89%(+/- 3%)的测试蛋白,所有HTM都可以正确预测。 (2)对于超过86%(+/- 3%)的蛋白质,可以正确预测拓扑。 (3)我们定义了与预测准确性相关的可靠性指标:对于一半的蛋白质,片段准确性提高至98%;三分之二的拓扑预测准确性为95%。 (4)错误预测HTM的蛋白质比率低于2%(+/- 1%)。最终,该方法被应用于流感嗜血杆菌的1,616个序列。我们预测19%的基因组序列包含一个或多个HTM。这似乎低于我们先前对酵母VIII染色体的预测(约25%)。

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