Title :
Identifying adverse drug events from patient social media: A case study for diabetes
Author :
Xiao Liu ; Hsinchun Chen
Author_Institution :
Univ. of Arizona, Tucson, AZ, USA
Abstract :
Patient social media sites have emerged as major platforms for discussion of treatments and drug side effects, making them a promising source for listening to patients´ voices in adverse drug event reporting. However, extracting patient reports from social media continues to be a challenge in health informatics research. In light of the need for more robust extraction methods, the authors developed a novel information extraction framework for identifying adverse drug events from patient social media. They also conducted a case study on a major diabetes patient social media platform to evaluate their framework´s performance. Their approach achieves an f-measure of 86 percent in recognizing discussion of medical events and treatments, an f-measure of 69 percent for identifying adverse drug events, and an f-measure of 84 percent in patient report extraction. Their proposed methods significantly outperformed prior work in extracting patient reports of adverse drug events in health social media.
Keywords :
diseases; medical information systems; patient treatment; pharmaceuticals; social networking (online); adverse drug event reporting; adverse drug events; diabetes; drug side effects; f-measure; health social media; information extraction framework; patient report extraction; patient social media sites; robust extraction methods; treatment discussion; Data mining; Diabetes; Drugs; Informatics; Information retrieval; Media; Patient monitoring; Safety; Social network services; ADE; adverse drug effects; clinical trials; diabetes; health; intelligent systems; predictive analytics; social media;
Journal_Title :
Intelligent Systems, IEEE