预测蛋白质亚细胞位置的不同方法的性能:综述

Muhammad Taskeen Raza, N. M. Sheikh, M. A. Fahiem, Ahmed M. Mehdi
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引用次数: 0

摘要

蛋白质的亚细胞定位与其功能密切相关。了解蛋白质的亚细胞定位在分子细胞生物学、蛋白质组学、系统生物学和药物发现中非常重要。已经开发了不同的预测器,使用各种计算技术(包括机器学习和人工智能算法的概率模型)来预测分子的存在、位置和相互作用。这些预测部分覆盖了亚细胞位置探索的不同方面。其中一些同样适用于许多类型的生物体(人类,酵母,小鼠,细菌),而一些是特定的,并专注于预测结果准确性的更好表现。类似地,一些技术覆盖“少数”数量的蛋白质,但更准确,另一方面,一些算法以牺牲预测准确性为代价预测“许多”蛋白质的亚细胞位置。本研究综述了最常见和最有效的四种预测方法,即1-基于氨基酸组成和顺序的预测方法2-排序信号预测方法3-基于同源性的预测方法和4-使用多种信息来源预测定位的混合方法。该工作阐明了亚细胞位置预测器的性能和覆盖比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance of different approaches for predicting the subcellular locations of proteins: A review
Subcellular location of a protein is closely related to its function. Knowing the subcellular localization of proteins is important in molecular cell biology, proteomics, and system biology and drug discovery. Different predictors have been developed that predict presence, location and interaction of molecules using various computational techniques including probabilistic models of Machine Learning and artificial intelligence algorithms. These predictors partially cover the different aspects of exploration of subcellular locations. Some of them are equally well applicable to many types of organisms (human, yeast, mouse, bacteria) while some are specific and focus on better performance in accuracy of the predicted results. Similarly some of the techniques cover “few” number of proteins but more accurately and on the other side some algorithms predict sub cellular locations of “many” proteins at the expense of prediction accuracy. This research is a review of most common and efficient techniques grouped in four in total, which are 1-amino acid composition and order-based predictors 2-sorting signal predictors 3- homology-based predictors and 4-hybrid methods that use several sources of information to predict localization. The work Elucidate the performance and coverage comparisons among the subcellular locations predictors.
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