Speeding up subcellular localization by extracting informative regions of protein sequences for profile alignment

Wei Wang, M. Mak, S. Kung
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引用次数: 4

Abstract

The functions of proteins are closely related to their subcellular locations. In the post-proteomics era, the amount of gene and protein data grows exponentially, which necessitates the prediction of subcellular localization by computational means. This paper proposes mitigating the computation burden of alignment-based approaches to subcellular localization prediction by using the information provided by the N-terminal sorting signals. To this end, a cascaded fusion of cleavage site prediction and profile alignment is proposed. Specifically, the informative segments of protein sequences are identified by a cleavage site predictor. Then, only the informative segments are applied to a homology-based classifier for predicting the subcellular locations. Experimental results on a newly constructed dataset show that the method can make use of the best property of both approaches and can attain an accuracy higher than using the full-length sequences. Moreover, the method can reduce the computation time by 20 folds. We advocate that the method will be important for biologists to conduct large-scale protein annotation or for bioinformaticians to perform preliminary investigations on new algorithms that involve pairwise alignments.
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通过提取蛋白质序列的信息区域,加快亚细胞定位
蛋白质的功能与其亚细胞位置密切相关。在后蛋白质组学时代,基因和蛋白质数据量呈指数级增长,这就需要通过计算手段来预测亚细胞定位。本文提出利用n端排序信号提供的信息,减轻基于对准的亚细胞定位预测方法的计算负担。为此,提出了一种将解理位置预测和剖面对准相结合的级联融合方法。具体来说,蛋白质序列的信息片段是由切割位点预测器识别的。然后,仅将信息片段应用于基于同源的分类器以预测亚细胞位置。在一个新建立的数据集上的实验结果表明,该方法可以利用两种方法的最佳特性,并且可以获得比使用全长序列更高的精度。此外,该方法可将计算时间缩短20倍。我们认为,该方法对于生物学家进行大规模蛋白质注释或生物信息学家对涉及成对比对的新算法进行初步研究具有重要意义。
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