A Cure for Medical Researchers’ Big Data Headache

ORNL researchers develop smart data tool to accelerate literature-based discovery

Written byOak Ridge National Laboratory
| 5 min read
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December 7, 2015 – As medical research has become more specialized, the scientific community’s understanding of the human body has increased, resulting in enhanced treatments, new drugs, and better health outcomes.

A side effect of this information explosion, however, is the fragmentation of knowledge. With thousands of new articles being published by medical journals every day, developments that could inform and add context to medicine’s global body of knowledge often go unnoticed.

Related article: Automating Big-Data Analysis

Uncovering these overlooked gaps is the primary objective of literature-based discovery, a practice that seeks to connect existing knowledge. The advent of online databases and advanced search techniques has aided this pursuit, but existing methods still lean heavily on researchers’ intuition and chance discovery. Better tools could help uncover previously unrecognized relationships, such as the link between a gene and a disease, a drug and a side effect, or an individual’s environment and risk of developing cancer.

For the past five years, Sreenivas Rangan Sukumar, a data scientist at the Department of Energy’s Oak Ridge National Laboratory, has been working with health data and the high-performance computing resources of ORNL’s Compute and Data Environment for Science (CADES) to improve health care in the United States. His most recent success, called Oak Ridge Graph Analytics for Medical Innovation (ORiGAMI), supplies researchers with an advanced data tool for literature-based discovery that has the potential to accelerate medical research and discovery.

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