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一种用于识别原核和真核信号肽及其切割位点预测的神经网络方法。

A neural network method for identification of prokaryotic and eukaryotic signal peptides and prediction of their cleavage sites.

作者信息

Nielsen H, Engelbrecht J, Brunak S, von Heijne G

机构信息

Department of Biotechnology, The Technical University of Denmark, Lyngby.

出版信息

Int J Neural Syst. 1997 Oct-Dec;8(5-6):581-99. doi: 10.1142/s0129065797000537.

Abstract

We have developed a new method for the identification of signal peptides and their cleavage sites based on neural networks trained on separate sets of prokaryotic and eukaryotic sequences. The method performs significantly better than previous prediction schemes, and can easily be applied to genome-wide data sets. Discrimination between cleaved signal peptides and uncleaved N-terminal signal-anchor sequences is also possible, though with lower precision. Predictions can be made on a publicly available WWW server: http://www.cbs.dtu.dk/services/SignalP/.

摘要

我们基于在原核生物和真核生物序列的单独集合上训练的神经网络,开发了一种识别信号肽及其切割位点的新方法。该方法的性能明显优于先前的预测方案,并且可以轻松应用于全基因组数据集。虽然精度较低,但区分切割的信号肽和未切割的N端信号锚定序列也是可能的。预测可以在一个公开可用的万维网服务器上进行:http://www.cbs.dtu.dk/services/SignalP/

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