期刊:IEEE Intelligent Systems [Institute of Electrical and Electronics Engineers] 日期:2019-01-16卷期号:34 (2): 66-74被引量:5
标识
DOI:10.1109/mis.2019.2893158
摘要
Adverse drug event (ADE) is a serious health concern. Social media has provided patients a broad platform to share their ADE experiences, impelling the development of social media-based pharmacovigilance. However, social media analysis of ADEs presents several important challenges that need to be addressed for high-performing ADE identification. To address these challenges, a feature weighted-based improved disagreement-based semisupervised learning method, named WIDSSL, is proposed for effectively identifying ADEs from non-ADEs. Empirical results demonstrate the effectiveness of WIDSSL. Our proposed WIDSSL method can reduce the reliance on a large number of labeled instances for high-performing ADE identification, and hence enhance the feasibility of conducting social media-based pharmacovigilance.