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A Brief History of Protein Sorting Prediction

机译:蛋白质分选预测的简要历史

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Ever since the signal hypothesis was proposed in 1971, the exact nature of signal peptides has been a focus point of research. The prediction of signal peptides and protein subcellular location from amino acid sequences has been an important problem in bioinformatics since the dawn of this research field, involving many statistical and machine learning technologies. In this review, we provide a historical account of how position-weight matrices, artificial neural networks, hidden Markov models, support vector machines and, lately, deep learning techniques have been used in the attempts to predict where proteins go. Because the secretory pathway was the first one to be studied both experimentally and through bioinformatics, our main focus is on the historical development of prediction methods for signal peptides that target proteins for secretion; prediction methods to identify targeting signals for other cellular compartments are treated in less detail.
机译:自1971年提出的信号假设以来,信号肽的确切性是焦点研究。 从氨基酸序列的信号肽和蛋白质亚细胞位置的预测是自该研究领域黎明以来生物信息学的重要问题,涉及许多统计和机器学习技术。 在这篇综述中,我们提供了如何使用定位矩阵,人工神经网络,隐马尔可夫模型,支持向量机以及最近,深入学习技术的历史记录,以预测蛋白质去的地方。 由于分泌途径是第一个要通过实验和通过生物信息学研究的第一个,我们的主要重点是在靶向分泌蛋白的信号肽预测方法的历史发展; 以更少的细节识别用于识别其他蜂窝隔室的靶向信号的预测方法。

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