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Predicting protein subchloroplast locations: the 10th anniversary

机译:预测蛋白质亚氯化体位置:十周年

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Chloroplast is a type of subcellular organelle in green plants and algae. It is the main subcellular organelle for conducting photosynthetic process. The proteins, which localize within the chloroplast, are responsible for the photosynthetic process at molecular level. The chloroplast can be further divided into several compartments. Proteins in different compartments are related to different steps in the photosynthetic process. Since the molecular function of a protein is highly correlated to the exact cellular localization, pinpointing the subchloroplast location of a chloroplast protein is an important step towards the understanding of its role in the photosynthetic process. Experimental process for determining protein subchloroplast location is always costly and time consuming. Therefore, computational approaches were developed to predict the protein subchloroplast locations from the primary sequences. Over the last decades, more than a dozen studies have tried to predict protein subchloroplast locations with machine learning methods. Various sequence features and various machine learning algorithms have been introduced in this research topic. In this review, we collected the comprehensive information of all existing studies regarding the prediction of protein subchloroplast locations. We compare these studies in the aspects of benchmarking datasets, sequence features, machine learning algorithms, predictive performances, and the implementation availability. We summarized the progress and current status in this special research topic. We also try to figure out the most possible future works in predicting protein subchloroplast locations. We hope this review not only list all existing works, but also serve the readers as a useful resource for quickly grasping the big picture of this research topic. We also hope this review work can be a starting point of future methodology studies regarding the prediction of protein subchloroplast locations.
机译:叶绿体是绿色植物和藻类中的一种亚细胞器。它是用于进行光合作用过程的主要亚细胞细胞器。本地化在叶绿体中的蛋白质是分子水平的光合作用过程。叶绿体可以进一步分成几个隔室。不同隔室中的蛋白质与光合作用过程中的不同步骤有关。由于蛋白质的分子函数与精确的细胞定位高度相关,因此针对叶绿体蛋白的亚氯化体位置定位是朝着理解其在光合作用过程中的作用的重要一步。确定蛋白质亚氯化体位置的实验方法总是昂贵且耗时的。因此,开发了计算方法以预测来自初级序列的蛋白质亚氯化体位置。在过去的几十年中,超过十几项研究试图用机器学习方法预测蛋白质亚氯化物位置。本研究主题介绍了各种序列特征和各种机器学习算法。在本次审查中,我们收集了关于预测蛋白质亚氯化体位置的所有现有研究的全面信息。我们在基准测试数据集,序列功能,机器学习算法,预测性能和实现可用性方面进行比较这些研究。我们总结了这一特殊研究主题的进步和现状。我们还试图弄清楚最可能的未来作品,以预测蛋白质亚氯化体位置。我们希望此审查不仅列出所有现有的工作,而且还为读者提供服务,作为快速掌握本研究主题的大图片的有用资源。我们还希望这项审查工作可以成为未来关于蛋白质亚氯化体位置预测的方法研究的起点。

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