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Nonfatal Pediatric Fentanyl Exposures Reported to US Poison Centers, 2015-2023.

The American journal of drug and alcohol abuse(2025)

Department of Population Health

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Abstract
Background: The opioid crisis, driven by fentanyl use, continues to worsen in the US and there has been a lack of focus on nonfatal overdose and how pediatric populations are being affected.Objectives: We determined the prevalence of nonfatal pediatric fentanyl exposures and associated characteristics and delineated how such characteristics are associated with major (life-threatening) outcomes.Methods: This repeated cross-sectional study examined characteristics of pediatric nonfatal fentanyl exposures (aged 0-19 years) reported to poison centers in 49 US states from 2015 through 2023.Results: 3,009 nonfatal pediatric exposures (41.5% female) were reported to poison centers-58.9% aged 13-19 and 41.1% aged 0-12. The number of exposures increased overall from 69 in 2015 to 893 in 2023 (a 1,194.2% increase, p < .001). Exposures increased by 924.3% among those aged 0-12 (p < .001) and by 1,506.3% among those aged 13-19 (p < .001). Ingestion-only use was the most prevalent route of administration by those aged 0-12 (76.9%) and 13-19 (54.1%). Prevalence of ingestion-only use increased from 44.1% of exposures in 2015 to 67.9% in 2023 (p < .001). The majority of patients aged 0-12 were exposed unintentionally (81.7%, vs. 1.0% among patients aged 13-19) while the majority of patients aged 13-19 misused or "abused" fentanyl (65.7% vs. 1.8%). The plurality of exposures (41.0%) resulted in a major (life-threatening) effect.Conclusions: Pediatric exposures to fentanyl are increasing and over one-third of cases are unintentional and/or had documented life-threatening effects. Prevention and harm reduction efforts need to include efforts for youth, particularly as counterfeit pills containing fentanyl flood the illicit market.
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