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Clustering protein environments for function prediction: finding PROSITE motifs in 3D

机译:聚类蛋白质环境以进行功能预测:在3D中找到PROSITE主题

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摘要

BackgroundStructural genomics initiatives are producing increasing numbers of three-dimensional (3D) structures for which there is little functional information. Structure-based annotation of molecular function is therefore becoming critical. We previously presented FEATURE, a method for describing microenvironments around functional sites in proteins. However, FEATURE uses supervised machine learning and so is limited to building models for sites of known importance and location. We hypothesized that there are a large number of sites in proteins that are associated with function that have not yet been recognized. Toward that end, we have developed a method for clustering protein microenvironments in order to evaluate the potential for discovering novel sites that have not been previously identified.
机译:背景技术结构基因组学计划正在产生越来越多的三维(3D)结构,而这些结构的功能信息很少。因此,分子功能的基于结构的注释变得至关重要。我们之前介绍过FEATURE,一种用于描述蛋白质功能位点周围的微环境的方法。但是,功能使用有监督的机器学习,因此仅限于为已知重要性和位置的站点构建模型。我们假设蛋白质中有大量与功能相关的位点尚未被发现。为此,我们开发了一种对蛋白质微环境进行聚类的方法,以评估发现以前未发现的新位点的潜力。

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