Caster Ola, Sandberg Lovisa, Bergvall Tomas, Watson Sarah, Norén G Niklas
Uppsala Monitoring Centre, WHO Collaborating Centre for International Drug Monitoring, Uppsala, Sweden.
Department of Computer and Systems Sciences, Stockholm University, Kista, Sweden.
Pharmacoepidemiol Drug Saf. 2017 Aug;26(8):1006-1010. doi: 10.1002/pds.4247. Epub 2017 Jun 27.
vigiRank is a data-driven predictive model for emerging safety signals. In addition to disproportionate reporting patterns, it also accounts for the completeness, recency, and geographic spread of individual case reporting, as well as the availability of case narratives. Previous retrospective analysis suggested that vigiRank performed better than disproportionality analysis alone. The purpose of the present analysis was to evaluate its prospective performance.
The evaluation of vigiRank was based on real-world signal detection in VigiBase. In May 2014, vigiRank scores were computed for pairs of new drugs and WHO Adverse Reaction Terminology critical terms with at most 30 reports from at least 2 countries. Initial manual assessments were performed in order of descending score, selecting a subset of drug-adverse drug reaction pairs for in-depth expert assessment. The primary performance metric was the proportion of initial assessments that were decided signals during in-depth assessment. As comparator, the historical performance for disproportionality- guided signal detection in VigiBase was computed from a corresponding cohort of drug-adverse drug reaction pairs assessed between 2009 and 2013. During this period, the requirement for initial manual assessment was a positive lower endpoint of the 95% credibility interval of the Information Component measure of disproportionality, observed for the first time.
194 initial assessments suggested by vigiRank's ordering eventually resulted in 6 (3.1%) signals. Disproportionality analysis yielded 19 signals from 1592 initial assessments (1.2%; P < .05).
Combining multiple strength-of-evidence aspects as in vigiRank significantly outperformed disproportionality analysis alone in real-world pharmacovigilance signal detection, for VigiBase.
vigiRank是一种用于发现新出现安全信号的数据驱动预测模型。除了不成比例的报告模式外,它还考虑了个体病例报告的完整性、时效性和地理分布,以及病例叙述的可获得性。先前的回顾性分析表明,vigiRank的表现优于单独的不成比例性分析。本分析的目的是评估其前瞻性表现。
vigiRank的评估基于VigiBase中的真实世界信号检测。2014年5月,计算了新药与世界卫生组织不良反应术语关键术语对的vigiRank分数,这些术语对来自至少2个国家且报告最多30例。按照分数从高到低的顺序进行初步人工评估,选择一部分药物-药物不良反应对进行深入专家评估。主要性能指标是在深入评估中被判定为信号的初步评估的比例。作为对照,从2009年至2013年评估的相应药物-药物不良反应对队列中计算VigiBase中不成比例性引导信号检测的历史表现。在此期间,初步人工评估的要求是首次观察到的不成比例性信息成分测量的95%可信度区间的正下限端点。
vigiRank排序建议的194次初步评估最终产生了6个(3.1%)信号。不成比例性分析从1592次初步评估中产生了19个信号(1.2%;P < 0.05)。
在VigiBase的真实世界药物警戒信号检测中,像vigiRank那样综合多个证据强度方面的表现明显优于单独的不成比例性分析。