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Collection and Analysis of Drug Safety Data in Pregnancy Myla Moretti Motherisk Program The Hospital for Sick Children Toronto Aims • to discover possible adverse pregnancy events related to maternal exposure during pregnancy • to identify signals and establish risks early • to disseminate this information back to patients and health care providers so that rationale choices about disease management in pregnancy can be made But why? • drugs are RARELY evaluated in human pregnancy prior to market release – pregnant women are actively excluded • 50% of women will take at least 1 drug in pregnancy • patients may require continued pharmacotherapy in pregnancy 1 Where are we now? • currently in Canada there are no regulated, standardized methods of collecting or reporting drug safety data in pregnancy (mostly voluntary) • worldwide methods vary, but can include: – manufacturer registries – observational studies from research facilities – database linkage (often governmental) Issues • events can occur long after exposure (at least the duration of a pregnancy) • even for teratogens, adverse outcomes are rare • physiologic changes in pregnancy and concomitant exposures make evaluating the data complex Strategies: The Registry • usually initiated by manufacturers (can be done in house or outsourced) • spontaneous reporting • often retrospective (reporting bias) • variable data quality • possible duplication of results • no consistent methodology 2 US FDA/CDER Document • • • • • • • very comprehensive when, where, how active recruitment sources of follow-up data how to select comparison groups data collection and minimum data sets sample size Manufacturer’s Registries • since the guidance documents few NEW registries were voluntarily initiated • most still do not generate/collect/report comparator groups • very little data analysis or interpretation – limited to summary reports and case counts • linkage to experts in the field? • rarely published in peer review literature – not readily accessible by clinicians 3 Strategies: Database Linkage • populations where health care and medications are paid for (government/ insurance) • duplication – can occur if there are errors in linkage • • • • • cases can be unlinked if patients move exposure data not verified (ie.Rx records) huge data sets good data interpretation accessible, peer reviewed Strategies: Observational Study • research groups or industry – cohorts or case control studies • good data quality within a single centre • some standardization across different research centres • can be arduous and cumbersome without electronic collection • smaller sample sizes • good interpretation of data • accessible, peer reviewed What is really needed? 4 Work with existing infrastructure • a number of centres (research, pharma and government) have the capability to provide the expertise to achieve this goal • Teratogen Information Services and large obstetric units are ideally situated to collect the patient data as they encounter the patients as part of day-to-day operations Tool: Electronic Data Collection • Move towards electronic health records • Computer usage increasing – storage, capture, analysis • Reliance on automation is increasing BUT • do it right • make sure its working • ensure system is secure, validated, tested • funding for creation and maintenance needed Uniform Data Standards • the existing FDA document and currently published studies suggest good clear guidelines for a minimum data set • patients can be good reporters of their own health information • uniform data collected electronically can more easily be linked to existing databases (prescription, medicare) 5 The Bottom Line • the situation is complex – data that is convincing to one person is unconvincing to another • standardization and a defined data set will promote good data collection • electronic capture software can be implemented across various sites, thus increasing sample size • link human expertise to interpret data – statisticians, clinicians, epidemiologists, teratologists 6