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 framework. We extract a set of heterogeneous features such as random walk based features, ne...
BackgroundLiterature based discovery (LBD) automatically infers missed connections between concepts ...
BACKGROUND: The complexity and scale of the knowledge in the biomedical domain has motivated researc...
Background: Literature-based discovery (LBD) is characterized by uncovering hidden associations in n...
AbstractThe explosive growth in biomedical literature has made it difficult for researchers to keep ...
Paper accepted for publication in Journal of Information Systems. Retrieved 6/26/2006 from http://ww...
Hypothesis generation is becoming a crucial time-saving technique which allows biomedical researcher...
With the rapid development of digitalized literature, more and more knowledge has been discovered by...
Abstract Background In bio-medicine, exploratory studies and hypothesis generation often begin with ...
Copyright © 2015 Shengtian Sang et al.This is an open access article distributed under the Creative ...
AbstractTo support biomedical experts in their knowledge discovery process, we have developed a lite...
Nowadays, the amount of biomedical literatures is growing at an explosive speed, and there is much u...
Presented at the 2006 SIAM Conference on Data Mining (SIAM DM 2006). Retrieved 6/26/2006 from http:/...
Innovative biomedical librarians and information specialists who want to expand their roles as exper...
This paper describes the EurekaSeek bibliometric technique for automated linked-literature analysis....
BMC Bioinformatics 2007, 8:324The problem of mining undiscovered public knowledge from biomedical li...
BackgroundLiterature based discovery (LBD) automatically infers missed connections between concepts ...
BACKGROUND: The complexity and scale of the knowledge in the biomedical domain has motivated researc...
Background: Literature-based discovery (LBD) is characterized by uncovering hidden associations in n...
AbstractThe explosive growth in biomedical literature has made it difficult for researchers to keep ...
Paper accepted for publication in Journal of Information Systems. Retrieved 6/26/2006 from http://ww...
Hypothesis generation is becoming a crucial time-saving technique which allows biomedical researcher...
With the rapid development of digitalized literature, more and more knowledge has been discovered by...
Abstract Background In bio-medicine, exploratory studies and hypothesis generation often begin with ...
Copyright © 2015 Shengtian Sang et al.This is an open access article distributed under the Creative ...
AbstractTo support biomedical experts in their knowledge discovery process, we have developed a lite...
Nowadays, the amount of biomedical literatures is growing at an explosive speed, and there is much u...
Presented at the 2006 SIAM Conference on Data Mining (SIAM DM 2006). Retrieved 6/26/2006 from http:/...
Innovative biomedical librarians and information specialists who want to expand their roles as exper...
This paper describes the EurekaSeek bibliometric technique for automated linked-literature analysis....
BMC Bioinformatics 2007, 8:324The problem of mining undiscovered public knowledge from biomedical li...
BackgroundLiterature based discovery (LBD) automatically infers missed connections between concepts ...
BACKGROUND: The complexity and scale of the knowledge in the biomedical domain has motivated researc...
Background: Literature-based discovery (LBD) is characterized by uncovering hidden associations in n...