Automated ontological gene annotation for computing disease similarity.

Sachin Mathur, Deendayal Dinakarpandian
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Abstract

The annotation of gene/gene products with information on associated diseases is useful as an aid to clinical diagnosis and drug discovery. Several supervised and unsupervised methods exist that automate the association of genes with diseases, but relatively little work has been done to map protein sequence data to disease terminologies. This paper augments an existing open-disease terminology, the Disease Ontology (DO), and uses it for automated annotation of Swissprot records. In addition to the inherent benefits of mapping data to a rich ontology, we demonstrate a gain of 36.1% in gene-disease associations compared to that in DO. Further, we measure disease similarity by exploiting the co-occurrence of annotation among proteins and the hierarchical structure of DO. This makes it possible to find related diseases or signs, with the potential to find previously unknown relationships.

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计算疾病相似度的自动本体论基因注释。
基因/基因产物与相关疾病信息的注释有助于临床诊断和药物发现。有几种监督和无监督的方法可以自动将基因与疾病联系起来,但相对较少的工作是将蛋白质序列数据映射到疾病术语。本文扩充了现有的开放疾病术语——疾病本体(Disease Ontology, DO),并将其用于Swissprot记录的自动注释。除了将数据映射到丰富的本体的固有好处之外,我们还证明了与DO相比,基因-疾病关联的增益为36.1%。此外,我们通过利用蛋白质之间注释的共现性和DO的层次结构来测量疾病相似性。这使得有可能发现相关的疾病或迹象,并有可能发现以前未知的关系。
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