Background:Traditional surveillance of adverse infant outcomes following maternal medication exposures relies on pregnancy exposure registries, which are often underpowered. We characterize the statistical power of TreeScan, a data mining tool, to identify potential signals in the setting of perinatal medication exposures and infant outcomes. Methods:We used empirical data to inform background incidence of major congenital malformations and other birth conditions. Statistical power was calculated using two probability models compatible with TreeScan, Bernoulli and Poisson, while varying the sample size, magnitude of the risk increase, and incidence of a specified outcome. We also simulated larger referent to exposure matching ratios when using the Bernoulli model in the setting of fixed N:1 propensity score matching. Finally, we assessed the impact of outcome misclassification on power. Results:The Poisson model demonstrated greater power to detect signals than the Bernoulli model across all scenarios and suggested a sample size of 4,000 exposed pregnancies is needed to detect a twofold increase in risk of a common outcome (approximately 8 per 1,000) with 85% power. Increasing the fixed matching ratio with the Bernoulli model did not reliably increase power. An outcome definition with high sensitivity is expected to have somewhat greater power to detect signals than an outcome definition with high positive predictive value. Conclusions:Use of the Poisson model with an outcome definition that prioritizes sensitivity may be optimal for signal detection. TreeScan is a viable method for surveillance of adverse infant outcomes following maternal medication use.
Journal article
Monitoring Drug Safety in Pregnancy with Scan Statistics: A Comparison of Two Study Designs
Epidemiology (Cambridge, Mass.), v 34(1)
18 Oct 2022
Featured in Collection : UN Sustainable Development Goals @ Drexel
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Details
- Title
- Monitoring Drug Safety in Pregnancy with Scan Statistics: A Comparison of Two Study Designs
- Creators
- Elizabeth A Suarez - Harvard Pilgrim Health CareMichael Nguyen - Center for Drug Evaluation and ResearchDi Zhang - Center for Drug Evaluation and ResearchYueqin Zhao - Center for Drug Evaluation and ResearchDanijela Stojanovic - Center for Drug Evaluation and ResearchMonica Munoz - Center for Drug Evaluation and ResearchJane Liedtka - Center for Drug Evaluation and ResearchAbby Anderson - Center for Drug Evaluation and ResearchWei Liu - Center for Drug Evaluation and ResearchInna Dashevsky - Harvard Pilgrim Health CareSandra DeLuccia - Harvard Pilgrim Health CareTalia Menzin - Harvard Pilgrim Health CareJennifer Noble - Harvard Pilgrim Health CareJudith C Maro - Harvard Pilgrim Health Care
- Publication Details
- Epidemiology (Cambridge, Mass.), v 34(1)
- Publisher
- Lippincott Williams & Wilkins; PHILADELPHIA
- Number of pages
- 9
- Grant note
- US Food and Drug Administration (FDA): HHSF22301012T, HHSF223201400030I
This project was supported by Task Order HHSF22301012T under Master Agreement HHSF223201400030I from the US Food and Drug Administration (FDA). The FDA approved the study protocol includ-ing statistical analysis plan and reviewed and approved this manuscript. Coauthors from the FDA participated in the results interpretation and in the preparation and decision to submit the manuscript for publication. The FDA had no role in data collection, management, or analysis.
- Resource Type
- Journal article
- Language
- English
- Academic Unit
- Pediatrics
- Web of Science ID
- WOS:000893034500015
- Scopus ID
- 2-s2.0-85143198906
- Other Identifier
- 991021962014504721
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- Collaboration types
- Domestic collaboration
- Web of Science research areas
- Public, Environmental & Occupational Health