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LocNES: a computational tool for locating classical NESs in CRM1 cargo proteins

机译:LocNES:一种用于在CRM1货物蛋白中定位经典NES的计算工具

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摘要

>Motivation: Classical nuclear export signals (NESs) are short cognate peptides that direct proteins out of the nucleus via the CRM1-mediated export pathway. CRM1 regulates the localization of hundreds of macromolecules involved in various cellular functions and diseases. Due to the diverse and complex nature of NESs, reliable prediction of the signal remains a challenge despite several attempts made in the last decade.>Results: We present a new NES predictor, LocNES. LocNES scans query proteins for NES consensus-fitting peptides and assigns these peptides probability scores using Support Vector Machine model, whose feature set includes amino acid sequence, disorder propensity, and the rank of position-specific scoring matrix score. LocNES demonstrates both higher sensitivity and precision over existing NES prediction tools upon comparative analysis using experimentally identified NESs.>Availability and implementation: LocNES is freely available at >Contact: >Supplementary information: data are available at Bioinformatics online.
机译:>动机:经典的核出口信号(NESs)是短同源肽,可通过CRM1介导的出口途径将蛋白质引导出细胞核。 CRM1调节涉及多种细胞功能和疾病的数百种大分子的定位。由于NES的多样性和复杂性,尽管在过去的十年中进行了几次尝试,但是可靠的信号预测仍然是一个挑战。>结果:我们提出了一种新的NES预测器LocNES。 LocNES扫描查询蛋白中是否有NES共识拟合肽,并使用Support Vector Machine模型为这些肽分配概率得分,该模型的特征集包括氨基酸序列,疾病倾向性和位置特异性得分矩阵得分的等级。通过使用实验确定的NES进行比较分析,LocNES展示了比现有NES预测工具更高的灵敏度和精度。>可用性和实现: LocNES可以从>联系方式免费获得: >补充信息:数据可从在线生物信息学获得。

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