Rocky Mountain Poison and Drug Center, Denver Health, Denver, CO, USA.
Injury Prevention Research Center and Eshelman School of Pharmacy, University of North Carolina, Chapel Hill, NC, USA.
Pharmacoepidemiol Drug Saf. 2019 May;28(5):716-725. doi: 10.1002/pds.4736. Epub 2019 Feb 3.
One response to the opioid crisis in the United States has been the development of opioid analgesics with properties intended to reduce non-oral use. Previous evaluations of abuse in the community have relied on population averaged interrupted time series Poisson models with utilization offsets. However, competing interventions and secular trends complicate interpretation of time-series analyses. An alternative research design, trend-in-trend, accounts for heterogeneity in per capita opioid dispensing and unmeasured time-varying confounding, which provides a causal evaluation, provided that underlying assumptions are met.
Trend-in-trend can be modeled using a logistic regression framework. In logistic regression, exposure was any product-specific outpatient dispensing by three-digit ZIP code and calendar quarter, for 22 opioids. The outcome was any product-specific abuse case ascertained from poison centers and drug treatment programs, covering 94% of the US population, between July 2009 and December 2016. Product-specific odds ratios compared places without dispensing with places with any dispensing; the causal contrast represents the odds of product-specific abuse in the community given exposure.
Dispensing of new and low-volume opioids varied considerably across the country, with no region showing high of all products. Of 22 opioids analyzed, the three with approved labeling as intended to deter abuse ranked near the lowest in both absolute (population-adjusted rates: 1.7, 0.9, and 8.2 per million people per quarter, respectively) and relative measures (trend-in-trend ORs: 1.96, 1.79, 1.69, respectively).
Postmarketing studies of prescription opioid abuse may benefit by evolving from unadjusted surveillance rates to a causal inference approach.
美国阿片类药物危机的应对措施之一是开发具有减少非口服使用意图的阿片类镇痛药。之前对社区滥用情况的评估依赖于利用偏移的人群平均中断时间序列泊松模型。然而,竞争干预和长期趋势使时间序列分析的解释变得复杂。替代研究设计,趋势中的趋势,考虑了人均阿片类药物配给的异质性和未测量的随时间变化的混杂因素,只要满足潜在假设,就可以提供因果评估。
趋势中的趋势可以使用逻辑回归框架进行建模。在逻辑回归中,暴露是指按三位数邮政编码和日历季度进行的任何特定产品的门诊配给,共涉及 22 种阿片类药物。结果是从毒中心和药物治疗计划中确定的任何特定产品的滥用病例,覆盖了 2009 年 7 月至 2016 年 12 月期间的 94%的美国人口。特定产品的比值比将无配给的地方与有任何配给的地方进行比较;因果对比代表了在社区中暴露于特定产品的情况下发生特定产品滥用的可能性。
新的和低容量阿片类药物的配给在全国各地差异很大,没有一个地区显示所有产品的高配给。在分析的 22 种阿片类药物中,有三种被批准的标签表明旨在阻止滥用,其绝对(人口调整率:分别为每百万人口每季度 1.7、0.9 和 8.2)和相对(趋势中的趋势 ORs:分别为 1.96、1.79、1.69)措施都排名较低。
处方类阿片类药物滥用的上市后研究可能受益于从未经调整的监测率演变为因果推理方法。