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Assigning gene ontology categories (GO) to yeast genes using text-based supervised learning methods

机译:使用基于文本的监督学习方法为酵母基因分配基因本体类别(GO)

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We propose a method for assigning upper level gene ontology terms (GO categories) to genes using relevant documents. This method represents each gene as a vector using relevant documents to the gene. Then, binary classifiers are made for the GO categories using such supervised learning methods as support vector machines and maximum entropy method. We applied this method for assigning GO categories to yeast genes and achieved an average F-measure of 0.67, which is < 0.3 higher than the existing method developed by Raychaudhun et al. We also applied this method to genome-wide annotation for yeast by all GO Slim categories provided by SGD and achieved average F-measures of 0.58, 0.72, and 0.60, respectively, for the three GO parts: cellular component, molecular function, and biological process.
机译:我们提出了一种使用相关文档为基因分配高级基因本体术语(GO类别)的方法。该方法使用与该基因有关的文献将每个基因表示为载体。然后,使用诸如支持向量机和最大熵方法之类的监督学习方法对GO类别进行二进制分类。我们应用这种方法为酵母基因分配GO类别,并实现了0.67的平均F值,比Raychaudhun等人开发的现有方法高<0.3。我们还将这种方法应用于SGD提供的所有GO Slim类别的酵母全基因组注释,并实现了三个GO部分(细胞成分,分子功能和生物学)的平均F值分别为0.58、0.72和0.60。过程。

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