Bayly Ric, Cordes Jack, Bernson Dana, Ackerson Leland K, LaRochelle Marc R, Hassan Ghada H, Bauer Cici X, Stopka Thomas J
Department of Public Health and Community Medicine, Tufts University School of Medicine, 136 Harrison Avenue, Boston, MA 02111, United States.
Office of Population Health, Department of Public Health, Commonwealth of Massachusetts, Boston, MA, United States.
Int J Drug Policy. 2025 Mar;137:104730. doi: 10.1016/j.drugpo.2025.104730. Epub 2025 Feb 9.
An estimated 60 million people used opioids non-medically worldwide in 2021. In 2019, opioid use disorder caused the loss of over 12.5 million healthy years of life due to disability and premature deaths, including those resulting from opioid-involved overdoses. Factors associated with opioid-involved overdoses are numerous, multi-layered, and interrelated. Using the social-ecological model as a foundation, we sought to comprehensively identify risk and preventive factors of fatal opioid-involved overdoses and operationalize them with quantifiable measures.
With our Community Advisory Board, investigators' expertise, and an examination of the literature, we created an expansive, opioid-overdose specific social-ecological model structured as a matrix, with demographic, behavioral, environmental, and service domains and individual, interpersonal, community, and society/policy levels of influence. Factors contributed by the advisory board included those from two freelisting instruments. We used the resultant freelists to calculate a salience index of factors as a reference for prioritization. We organized the compiled factors in the social-ecological model matrix according to their theorized distal-proximal relationship with fatal opioid-involved overdoses. We operationalized the social-ecological model factors by matching them against measures in the Massachusetts Public Health Data Warehouse, which includes 26 individually-linkable datasets and 19 community-level datasets drawn from 85 data components.
We identified 224 factors potentially associated with fatal opioid-involved overdoses and organized them in the social-ecological model. Of these, 53 had matches to measures in the Public Health Data Warehouse. Of those factors identified by freelisting, salience indexing further identified 10 as most related to the risk of fatal opioid-involved overdose, including housing stability, increased risk substances such as fentanyl, xylazine, and polysubstances, and using alone.
The opioid-overdose specific social-ecological model points to the need both for analysis that penetrates the complexities of the opioid crisis and for multi-faceted interventions. Further, the social-ecological model can provide a foundation for simulation models for prevention and intervention efforts. Our matrix-structured social-ecological model, salience index, and data matching table provide a holistic and relationship-oriented view of the factors associated with fatal opioid-involved overdose and will inform subsequent data analysis, model development, and opioid-involved overdose policy and prevention efforts.
2021年,全球估计有6000万人非医疗使用阿片类药物。2019年,阿片类药物使用障碍导致超过1250万个健康生命年因残疾和过早死亡而丧失,包括与阿片类药物相关的过量用药导致的死亡。与阿片类药物相关的过量用药的因素众多、多层次且相互关联。我们以社会生态模型为基础,试图全面识别致命阿片类药物相关过量用药的风险和预防因素,并用可量化的指标将其操作化。
通过我们的社区咨询委员会、研究人员的专业知识以及对文献的审查,我们创建了一个广泛的、针对阿片类药物过量用药的社会生态模型,该模型构建为一个矩阵,包括人口统计学、行为、环境和服务领域以及个人、人际、社区和社会/政策影响层面。咨询委员会提出的因素包括来自两份自由列举工具的因素。我们使用由此产生的自由列举清单来计算因素的显著指数,作为优先排序的参考。我们根据与致命阿片类药物相关过量用药的理论上的远端 - 近端关系,将汇编的因素组织在社会生态模型矩阵中。我们通过将社会生态模型因素与马萨诸塞州公共卫生数据仓库中的指标进行匹配来将其操作化,该数据仓库包括26个可单独链接的数据集和19个从85个数据组件中提取的社区层面数据集。
我们识别出224个可能与致命阿片类药物相关过量用药有关的因素,并将它们组织在社会生态模型中。其中,53个与公共卫生数据仓库中的指标相匹配。在自由列举识别出的那些因素中,显著指数进一步确定了10个与致命阿片类药物相关过量用药风险最相关的因素,包括住房稳定性、芬太尼、赛拉嗪和多种物质等风险增加的物质以及单独使用药物。
针对阿片类药物过量用药的社会生态模型表明,既需要深入分析阿片类药物危机的复杂性,也需要进行多方面的干预。此外,社会生态模型可为预防和干预努力的模拟模型提供基础。我们的矩阵结构社会生态模型、显著指数和数据匹配表提供了与致命阿片类药物相关过量用药相关因素的整体和以关系为导向的观点,并将为后续的数据分析、模型开发以及阿片类药物相关过量用药政策和预防努力提供信息。