期刊论文详细信息
BMC Genomics
Hypotheses generation as supervised link discovery with automated class labeling on large-scale biomedical concept networks
Proceedings
Jayasimha Reddy Katukuri1  Vijay V Raghavan1  Ashish Gupta1  Ying Xie2 
[1] Center for Advanced Computer Studies, University of Louisiana at Lafayette, 70504, Lafayette, Louisiana, USA;Department of Computer Science, Kennesaw State University, 30144, Kennesaw, Georgia, USA;
关键词: Support Vector Machine;    Semantic Type;    Link Prediction;    Biomedical Literature;    Concept Network;   
DOI  :  10.1186/1471-2164-13-S3-S5
来源: Springer
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【 摘 要 】

Computational approaches to generate hypotheses from biomedical literature have been studied intensively in recent years. Nevertheless, it still remains a challenge to automatically discover novel, cross-silo biomedical hypotheses from large-scale literature repositories. In order to address this challenge, we first model a biomedical literature repository as a comprehensive network of biomedical concepts and formulate hypotheses generation as a process of link discovery on the concept network. We extract the relevant information from the biomedical literature corpus and generate a concept network and concept-author map on a cluster using Map-Reduce frame-work. We extract a set of heterogeneous features such as random walk based features, neighborhood features and common author features. The potential number of links to consider for the possibility of link discovery is large in our concept network and to address the scalability problem, the features from a concept network are extracted using a cluster with Map-Reduce framework. We further model link discovery as a classification problem carried out on a training data set automatically extracted from two network snapshots taken in two consecutive time duration. A set of heterogeneous features, which cover both topological and semantic features derived from the concept network, have been studied with respect to their impacts on the accuracy of the proposed supervised link discovery process. A case study of hypotheses generation based on the proposed method has been presented in the paper.

【 授权许可】

CC BY   
© Katukuri et al; licensee BioMed Central Ltd. 2012

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