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Using Large Observational Data to Inform Pediatric Drug Safety James Feinstein, MD MPH Outline • A few case examples: 1. Evaluation of existing policy 2. Evidence to inform clinical practice 3. Evidence to shape new policy • Illustrate ways to present data to stakeholders The problem… The problem… • Just like adults, kids experience side effects, drug-drug interactions, and adverse drug events, too! • We lack high-quality, pediatric-specific evidence for many medications • We have limited mechanisms to monitor/reduce harm Why use big data for drug safety research? • Pediatric population exposed to these drugs is small (compared to adult population) • Side effects, drug-drug interactions, adverse drug events are rare • Necessary to ensure sample size requisite to make valid conclusions 1. Evaluation of Existing Policy 1. Evaluation of Existing Policy • In 2007, the FDA implemented Tall Man lettering – Improve safety for look-alike or sound-alike drugs – cloNIDine and clonazePAM • No small task to implement – Impacts FDA labeling, drug compendiums, electronic medical records • But, does it do anything to reduce error? Methods • Pharmacy data for pediatric inpatients (<21 years old) from 42 children’s hospitals in 2004–2012 • Pre-specified set of 8 potential LA-SA drug error patterns • Searched within each hospitalization for the occurrence of one of these patterns for a total of 12 LA-SA drug pairs • Assessed for potential change in error rates before and after Tall Man lettering implementation using segmented regression analyses for each drug pair Results • 1,676,700 hospitalizations • No statistically significant change was detected for either the intercept or the slope of LA-SA error rate for each of the drug pairs • No downward trend in potential LA-SA drug error rates was evident over any time period 2004 onwards Trends of potential look-alike sound-alike errors before and after Tall Man lettering implementation. Wenjun Zhong et al. BMJ Qual Saf 2016;25:233-240 Copyright © BMJ Publishing Group Ltd and the Health Foundation. All rights reserved. 2. Evidence to Inform Clinical Practice 2. Evidence to Inform Clinical Practice • Polypharmacy increases the potential for drug interactions • Direct implications for prescribers, pharmacists, and healthcare systems • We aimed to assess the: – Prevalence of PDDI exposures – Specific problematic drug combinations Methods • PHIS data from 2011 for patients <21 yo • For each patient day, we analyzed every potential 2-way drug-drug interaction – MicroMedex DRUG REAX compendium – Severity (contraindicated, major, moderate) – Evidence (excellent, good, fair) – Mechanism of harm Results 498,956 Hospitalizations 4,497,448 PDDI Exposures Results MAJOR DRUG DRUG INTERACTIONS Drug Pair Type of Interaction Prevalence 95% CI Fentanyl and Morphine Additive respiratory depression 13.17 (13.07, 13.27) Fentanyl and Midazolam Additive respiratory depression 11.19 (11.09, 11.28) Midazolam and Morphine Additive respiratory depression 9.20 (9.11, 9.28) Results A large proportion of contraindicated and major interactions were due to less common PDDIs Fentanyl and Morphine 2.8% 3. Evidence to Shape New Policy 3. Evidence to Shape New Policy • Medicare pays for Medication Therapy Management in the adult population, supervised by a pharmacist • We have no similar mechanism to periodically review medications for complex children • How would we identify patients requiring focused pharmacy reviews? Methods • Colorado Medicaid medication claims – 242,230 children <21 yo – 1 year continuous enrollment • We calculated the: – Daily maximum count over 1 year – The durations for each level – Patient characteristics associated with high-degree, highduration polypharmacy • Multinomial logistic regression to identify patient characteristics associated with high-depth high-duration Hotspotting High Risk Patients Who are the high-degree subjects? High-degree polypharmacy was associated with increasing age, male gender, and presence of a CCC Stay tuned… • We have a forthcoming position piece that “prescribes” the use of big population-level data to: – Investigate 5 major domains of drug safety – Prioritize pediatric drug research and funding Questions? Ideas? • Thank you! The Team Allison Kempe, MD MPH Chris Feudtner, MD PhD MPH Robert Valuck, PhD RPH Dingwei Dai, PhD Wenjun Zhong, PhD UC Denver/CHCO UPenn/CHOP UC Denver/SOP UPenn/CHOP UPenn/CHOP