la Cour Tanja, Kiemer Lars, Mølgaard Anne, Gupta Ramneek, Skriver Karen, Brunak Søren
Center for Biological Sequence Analysis, Biocentrum-DTU, Technical University of Denmark, Building 208, DK-2800 Lyngby, Denmark.
Protein Eng Des Sel. 2004 Jun;17(6):527-36. doi: 10.1093/protein/gzh062. Epub 2004 Aug 16.
We present a thorough analysis of nuclear export signals and a prediction server, which we have made publicly available. The machine learning prediction method is a significant improvement over the generally used consensus patterns. Nuclear export signals (NESs) are extremely important regulators of the subcellular location of proteins. This regulation has an impact on transcription and other nuclear processes, which are fundamental to the viability of the cell. NESs are studied in relation to cancer, the cell cycle, cell differentiation and other important aspects of molecular biology. Our conclusion from this analysis is that the most important properties of NESs are accessibility and flexibility allowing relevant proteins to interact with the signal. Furthermore, we show that not only the known hydrophobic residues are important in defining a nuclear export signals. We employ both neural networks and hidden Markov models in the prediction algorithm and verify the method on the most recently discovered NESs. The NES predictor (NetNES) is made available for general use at http://www.cbs.dtu.dk/.
我们对核输出信号进行了全面分析,并提供了一个预测服务器,现已公开可用。机器学习预测方法相较于普遍使用的共有模式有显著改进。核输出信号(NESs)是蛋白质亚细胞定位的极其重要的调节因子。这种调节对转录和其他核过程有影响,而这些过程对细胞的生存能力至关重要。人们在癌症、细胞周期、细胞分化及分子生物学的其他重要方面对NESs进行研究。我们从该分析得出的结论是,NESs最重要的特性是可及性和灵活性,这使得相关蛋白质能够与该信号相互作用。此外,我们表明,不仅已知的疏水残基在定义核输出信号中很重要。我们在预测算法中采用了神经网络和隐马尔可夫模型,并在最近发现的NESs上验证了该方法。NES预测器(NetNES)可在http://www.cbs.dtu.dk/上供一般使用。