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GraphQA: protein model quality assessment using graph convolutional networks

机译:GraphQA:使用图形卷积网络的蛋白质模型质量评估

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Motivation: Proteins are ubiquitous molecules whose function in biological processes is determined by their 3D structure. Experimental identification of a protein's structure can be time-consuming, prohibitively expensive and not always possible. Alternatively, protein folding can be modeled using computational methods, which however are not guaranteed to always produce optimal results. GraphQA is a graph-based method to estimate the quality of protein models, that possesses favorable properties such as representation learning, explicit modeling of both sequential and 3D structure, geometric invariance and computational efficiency.
机译:动机:蛋白质是普遍存在的分子,其在生物过程中的功能由其3D结构决定。对蛋白质结构的实验鉴定可能非常耗时、昂贵,而且并不总是可行的。或者,可以使用计算方法对蛋白质折叠进行建模,但不能保证总是产生最佳结果。GraphQA是一种基于图形的蛋白质模型质量评估方法,具有良好的特性,如表示学习、序列和三维结构的显式建模、几何不变性和计算效率。

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