Wang Yefeng, Gunashekar Divya R, Adam Terrence J, Zhang Rui
Institute for Health Informatics, University of Minnesota, Minneapolis, MN, USA.
School of Public Health, University of Minnesota, Minneapolis, MN, USA.
Stud Health Technol Inform. 2017;245:614-618.
The adverse events of the dietary supplements should be subject to scrutiny due to their growing clinical application and consumption among U.S. adults. An effective method for mining and grouping the adverse events of the dietary supplements is to evaluate product labeling for the rapidly increasing number of new products available in the market. In this study, the adverse events information was extracted from the product labels stored in the Dietary Supplement Label Data-base (DSLD) and analyzed by topic modeling techniques, specifically Latent Dirichlet Allocation (LDA). Among the 50 topics generated by LDA, eight topics were manually evaluated, with topic relatedness ranging from 58.8% to 100% on the product level, and 57.1% to 100% on the ingredient level. Five out of these eight topics were coherent groupings of the dietary supplements based on their adverse events. The results demonstrated that LDA is able to group supplements with similar adverse events based on the dietary supplement labels. Such information can be potentially used by consumers to more safely use dietary supplements.
由于膳食补充剂在美国成年人中的临床应用和消费量不断增加,其不良事件应受到审查。一种挖掘和分组膳食补充剂不良事件的有效方法是评估市场上快速增加的新产品的产品标签。在本研究中,不良事件信息从存储在膳食补充剂标签数据库(DSLD)中的产品标签中提取,并通过主题建模技术,特别是潜在狄利克雷分配(LDA)进行分析。在LDA生成的50个主题中,对8个主题进行了人工评估,产品层面的主题相关性为58.8%至100%,成分层面的主题相关性为57.1%至100%。这8个主题中有5个是基于不良事件对膳食补充剂进行的连贯分组。结果表明,LDA能够根据膳食补充剂标签对具有相似不良事件的补充剂进行分组。此类信息可能被消费者用于更安全地使用膳食补充剂。