Literature DB >> 15591784

TransMiner: mining transitive associations among biological objects from text.

Vijay Narayanasamy1, Snehasis Mukhopadhyay, Mathew Palakal, David A Potter.   

Abstract

Associations among biological objects such as genes, proteins, and drugs can be discovered automatically from the scientific literature. TransMiner is a system for finding associations among objects by mining the Medline database of the scientific literature. The direct associations among the objects are discovered based on the principle of co-occurrence in the form of an association graph. The principle of transitive closure is applied to the association graph to find potential transitive associations. The potential transitive associations that are indeed direct are discovered by iterative retrieval and mining of the Medline documents. Those associations that are not found explicitly in the entire Medline database are transitive associations and are the candidates for hypothesis generation. The transitive associations were ranked based on the sum of weight of terms that co-occur with both the objects. The direct and transitive associations are visualized using a graph visualization applet. TransMiner was tested by finding associations among 56 breast cancer genes and among 24 objects in the calpain signal transduction pathway. TransMiner was also used to rediscover associations between magnesium and migraine. 2004 National Science Council, ROC and S. Karger AG, Basel

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Year:  2004        PMID: 15591784     DOI: 10.1007/bf02254372

Source DB:  PubMed          Journal:  J Biomed Sci        ISSN: 1021-7770            Impact factor:   8.410


  6 in total

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

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6.  FunMod: a Cytoscape plugin for identifying functional modules in undirected protein-protein networks.

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  6 in total

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