Using qualitative system dynamics modeling to understand overdose bystander behavior in the context of Connecticut's Good Samaritan Laws and identify effective policy options.

IF 4 2区 社会学 Q1 SUBSTANCE ABUSE
Rachel L Thompson, Nasim S Sabounchi, Syed Shayan Ali, Robert Heimer, Gail D'Onofrio, Rebekah Heckmann
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引用次数: 0

Abstract

Background: Good Samaritan Laws are a harm reduction policy intended to facilitate a reduction in fatal opioid overdoses by enabling bystanders, first responders, and health care providers to assist individuals experiencing an overdose without facing civil or criminal liability. However, Good Samaritan Laws may not be reaching their full impact in many communities due to a lack of knowledge of protections under these laws, distrust in law enforcement, and fear of legal consequences among potential bystanders. The purpose of this study was to develop a systems-level understanding of the factors influencing bystander responses to opioid overdose in the context of Connecticut's Good Samaritan Laws and identify high-leverage policies for improving opioid-related outcomes and implementation of these laws in Connecticut (CT).

Methods: We conducted six group model building (GMB) workshops that engaged a diverse set of participants with medical and community expertise and lived bystander experience. Through an iterative, stakeholder-engaged process, we developed, refined, and validated a qualitative system dynamics (SD) model in the form of a causal loop diagram (CLD).

Results: Our resulting qualitative SD model captures our GMB participants' collective understanding of the dynamics driving bystander behavior and other factors influencing the effectiveness of Good Samaritan Laws in the state of CT. In this model, we identified seven balancing (B) and eight reinforcing (R) feedback loops within four narrative domains: Narrative 1 - Overdose, Calling 911, and First Responder Burnout; Narrative 2 - Naloxone Use, Acceptability, and Linking Patients to Services; Narrative 3 - Drug Arrests, Belief in Good Samaritan Laws, and Community Trust in Police; and Narrative 4 - Bystander Naloxone Use, Community Participation in Harm Reduction, and Cultural Change Towards Carrying Naloxone.

Conclusions: Our qualitative SD model brings a nuanced systems perspective to the literature on bystander behavior in the context of Good Samaritan Laws. Our model, grounded in local knowledge and experience, shows how the hypothesized non-linear interdependencies of the social, structural, and policy determinants of bystander behavior collectively form endogenous feedback loops that can be leveraged to design policies to advance and sustain systems change.

利用定性系统动力学建模,在康涅狄格州《撒玛利亚好人法》的背景下了解用药过量旁观者的行为,并确定有效的政策选择。
背景:好撒玛利亚人法》是一项减少伤害的政策,旨在通过使旁观者、急救人员和医疗服务提供者能够在不承担民事或刑事责任的情况下帮助用药过量者,从而减少致命的阿片类药物过量。然而,由于潜在的旁观者对这些法律的保护措施缺乏了解、不信任执法部门以及害怕承担法律后果,撒玛利亚好人法在许多社区可能无法充分发挥作用。本研究的目的是在康涅狄格州《好撒玛利亚人法》的背景下,从系统层面了解影响旁观者对阿片类药物过量反应的因素,并确定高杠杆政策,以改善阿片类药物相关结果和这些法律在康涅狄格州(Connecticut,CT)的实施情况:我们举办了六次小组模式构建(GMB)研讨会,吸引了具有医疗和社区专业知识以及旁观者生活经验的不同参与者。通过利益相关者参与的迭代过程,我们以因果循环图(CLD)的形式开发、完善并验证了一个定性系统动力学(SD)模型:结果:我们的定性 SD 模型捕捉到了 GMB 参与者对旁观者行为动态的集体理解,以及影响康涅狄格州好撒玛利亚人法有效性的其他因素。在该模型中,我们在四个叙事领域中确定了七个平衡(B)和八个强化(R)反馈回路:叙事 1 - 吸毒过量、拨打 911 和急救人员倦怠;叙事 2 - 纳洛酮的使用、可接受性和将患者与服务联系起来;叙事 3 - 毒品逮捕、对撒玛利亚好人法的信仰和社区对警察的信任;叙事 4 - 旁观者纳洛酮的使用、社区对减低伤害的参与和携带纳洛酮的文化改变:我们的定性 SD 模型为有关好撒玛利亚人法背景下旁观者行为的文献带来了细致入微的系统视角。我们的模型以当地知识和经验为基础,展示了旁观者行为的社会、结构和政策决定因素之间假设的非线性相互依存关系是如何共同形成内生反馈回路的,可以利用这些反馈回路来设计政策,以推进和维持系统变革。
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来源期刊
Harm Reduction Journal
Harm Reduction Journal Medicine-Public Health, Environmental and Occupational Health
CiteScore
5.90
自引率
9.10%
发文量
126
审稿时长
26 weeks
期刊介绍: Harm Reduction Journal is an Open Access, peer-reviewed, online journal whose focus is on the prevalent patterns of psychoactive drug use, the public policies meant to control them, and the search for effective methods of reducing the adverse medical, public health, and social consequences associated with both drugs and drug policies. We define "harm reduction" as "policies and programs which aim to reduce the health, social, and economic costs of legal and illegal psychoactive drug use without necessarily reducing drug consumption". We are especially interested in studies of the evolving patterns of drug use around the world, their implications for the spread of HIV/AIDS and other blood-borne pathogens.
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