Extraction of Conditional Probabilities of the Relationships Between Drugs, Diseases, and Genes from PubMed Guided by Relationships in PharmGKB.

Martin Theobald, Nigam Shah, Jeff Shrager
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Abstract

Guided by curated associations between genes, treatments (i.e., drugs), and diseases in pharmGKB, we constructed n-way Bayesian networks based on conditional probability tables (cpt's) extracted from co-occurrence statistics over the entire Pubmed corpus, producing a broad-coverage analysis of the relationships between these biological entities. The networks suggest hypotheses regarding drug mechanisms, treatment biomarkers, and/or potential markers of genetic disease. The cpt's enable Trio, an inferential database, to query indirect (inferred) relationships via an SQL-like query language.

基于PharmGKB关系的PubMed药物、疾病和基因关系的条件概率提取
在基因库基因、治疗(即药物)和疾病之间的关联的指导下,我们基于从整个Pubmed语料的共现统计数据中提取的条件概率表(cpt)构建了n-way贝叶斯网络,对这些生物实体之间的关系进行了广泛的分析。这些网络提出了关于药物机制、治疗生物标志物和/或遗传疾病潜在标志物的假设。cpt使推断数据库Trio能够通过类似sql的查询语言查询间接(推断)关系。
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