样本量测定
统计
入射(几何)
I类和II类错误
泊松回归
泊松分布
统计能力
医学
统计的
计量经济学
数学
人口
几何学
环境卫生
作者
Thuy Nhu Thai,Almut G. Winterstein,Elizabeth A. Suarez,Jiwei He,Yueqin Zhao,Yue Liang,Danijela Stojanović,Jane Liedtka,Abby Anderson,José J. Hernández-Muñoz,Mónica Muñoz,Wei Liu,Inna Dashevsky,Elizabeth Messenger-Jones,Elizabeth Siranosian,Judith C. Maro
摘要
Abstract There is a dearth of safety data on maternal outcomes after perinatal medication exposure. Data-mining for unexpected adverse event occurrence in existing datasets is a potentially useful approach. One method, the Poisson tree-based scan statistic (TBSS), assumes that the expected outcome counts, based on incidence of outcomes in the control group, are estimated without error. This assumption may be difficult to satisfy with a small control group. Our simulation study evaluated the effect of imprecise incidence proportions from the control group on TBSS’ ability to identify maternal outcomes in pregnancy research. We simulated base case analyses with “true” expected incidence proportions and compared these to imprecise incidence proportions derived from sparse control samples. We varied parameters impacting Type I error and statistical power (exposure group size, outcome’s incidence proportion, and effect size). We found that imprecise incidence proportions generated by a small control group resulted in inaccurate alerting, inflation of Type I error, and removal of very rare outcomes for TBSS analysis due to “zero” background counts. Ideally, the control size should be at least several times larger than the exposure size to limit the number of false positive alerts and retain statistical power for true alerts.
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