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Automatic Prediction of Enzyme Functions from Domain Compositions Using Enzyme Reaction Prediction Scheme

机译:使用酶反应预测方案从领域组成自动预测酶功能

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摘要

Proteins perform most important biochemical reactions in organisms, such as the catalysis, signal transduction, and transport of nutrients. The urgent need of automatic annotation is due to the advent of high-throughput sequencing techniques in the post-genomic era. Proteins consist of domains which are elementary building units of protein folding, function, and evolution. The evidence of protein function is convincible to deduce from its domain composition. For enzyme function prediction, efficiency and reliability become more and more important in the recent researches. This study proposed an enzyme reaction prediction scheme with a learning model for enzyme function predictions to avoid the exponential enumeration problem of frequent item-sets in the association rule algorithm. Our work also contributed to the prediction of multiple reactions due to the nature of enzymes.
机译:蛋白质在生物体中执行最重要的生化反应,例如催化,信号转导和营养物质的运输。由于后基因组时代高通量测序技术的出现,迫切需要自动注释。蛋白质由结构域组成,这些结构域是蛋白质折叠,功能和进化的基本构建单元。从其结构域组成可以推断出蛋白质功能的证据。对于酶功能的预测,在最近的研究中,效率和可靠性变得越来越重要。为了避免关联规则算法中频繁项集的指数枚举问题,本研究提出了一种具有学习模型的酶反应预测方案,该模型具有酶功能预测模型。由于酶的性质,我们的工作还有助于多种反应的预测。

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