Freifeld Clark C, Brownstein John S, Menone Christopher M, Bao Wenjie, Filice Ross, Kass-Hout Taha, Dasgupta Nabarun
Department of Biomedical Engineering, Boston University, Boston, USA.
Drug Saf. 2014 May;37(5):343-50. doi: 10.1007/s40264-014-0155-x.
Traditional adverse event (AE) reporting systems have been slow in adapting to online AE reporting from patients, relying instead on gatekeepers, such as clinicians and drug safety groups, to verify each potential event. In the meantime, increasing numbers of patients have turned to social media to share their experiences with drugs, medical devices, and vaccines.
The aim of the study was to evaluate the level of concordance between Twitter posts mentioning AE-like reactions and spontaneous reports received by a regulatory agency.
We collected public English-language Twitter posts mentioning 23 medical products from 1 November 2012 through 31 May 2013. Data were filtered using a semi-automated process to identify posts with resemblance to AEs (Proto-AEs). A dictionary was developed to translate Internet vernacular to a standardized regulatory ontology for analysis (MedDRA(®)). Aggregated frequency of identified product-event pairs was then compared with data from the public FDA Adverse Event Reporting System (FAERS) by System Organ Class (SOC).
Of the 6.9 million Twitter posts collected, 4,401 Proto-AEs were identified out of 60,000 examined. Automated, dictionary-based symptom classification had 86 % recall and 72 % precision [corrected]. Similar overall distribution profiles were observed, with Spearman rank correlation rho of 0.75 (p < 0.0001) between Proto-AEs reported in Twitter and FAERS by SOC.
Patients reporting AEs on Twitter showed a range of sophistication when describing their experience. Despite the public availability of these data, their appropriate role in pharmacovigilance has not been established. Additional work is needed to improve data acquisition and automation.
传统的不良事件(AE)报告系统在适应患者在线AE报告方面进展缓慢,而是依赖于把关人,如临床医生和药物安全小组,来核实每一个潜在事件。与此同时,越来越多的患者转向社交媒体分享他们使用药物、医疗设备和疫苗的经历。
本研究的目的是评估推特上提及类似AE反应的帖子与监管机构收到的自发报告之间的一致性水平。
我们收集了2012年11月1日至2013年5月31日期间提及23种医疗产品的公开英文推特帖子。使用半自动流程对数据进行筛选,以识别与AE(原始AE)相似的帖子。开发了一个词典,将网络白话翻译成标准化的监管本体进行分析(MedDRA(®))。然后按系统器官分类(SOC)将识别出的产品-事件对的汇总频率与美国食品药品监督管理局不良事件报告系统(FAERS)的公开数据进行比较。
在收集的690万条推特帖子中,在60000条检查的帖子中识别出4401条原始AE。基于词典的自动症状分类召回率为86%,精确率为72%[校正后]。观察到相似的总体分布概况,推特和FAERS按SOC报告的原始AE之间的斯皮尔曼等级相关性rho为0.75(p<0.0001)。
在推特上报告AE的患者在描述他们的经历时表现出不同程度的复杂性。尽管这些数据是公开可用的,但它们在药物警戒中的适当作用尚未确立。需要开展更多工作来改进数据采集和自动化。