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Graph representation learning for structural proteomics

机译:结构蛋白质组学的图表学习

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摘要

The field of structural proteomics, which is focused on studying the structure-function relationship of proteins and protein complexes, is experiencing rapid growth. Since the early 2000s, structural databases such as the Protein Data Bank are storing increasing amounts of protein structural data, in addition to modeled structures becoming increasingly available. This, combined with the recent advances in graph-based machine-learning models, enables the use of protein structural data in predictive models, with the goal of creating tools that will advance our understanding of protein function. Similar to using graph learning tools to molecular graphs, which currently undergo rapid development, there is also an increasing trend in using graph learning approaches on protein structures. In this short review paper, we survey studies that use graph learning techniques on proteins, and examine their successes and shortcomings, while also discussing future directions.
机译:结构蛋白质组学领域的重点是研究蛋白质和蛋白质复合物的结构功能关系,正在经历快速生长。 自2000年代初以来,除了建模的结构越来越多地使用之外,诸如蛋白质数据库之类的结构数据库正在存储越来越多的蛋白质结构数据。 这与基于图的机器学习模型的最新进展相结合,可以在预测模型中使用蛋白质结构数据,以及创建工具,以提高我们对蛋白质功能的理解。 类似于将图形学习工具用于当前正在经历快速发展的分子图,使用蛋白质结构的图形学习方法也存在越来越多的趋势。 在这篇简短的审查论文中,我们调查了使用蛋白质图形学习技术的研究,并检查其成功和缺点,同时还讨论了未来的方向。

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