Modeling Long-Term Budgetary Impacts of Prevention: An Overview of Meta-analyses of Relationships Between Key Health Outcomes Across the Life-Course

Nathaniel Z. Counts, Mark E. Feinberg, Jin-kyung Lee, Justin D. Smith
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Abstract

Budget analysis entities often cannot capture the full downstream impacts of investments in prevention services, programs, and interventions. This study describes and applies an approach to synthesizing existing literature to more fully account for these effects. This study reviewed meta-analyses in PubMed published between Jan 1, 2010 and Dec 31, 2019. The initial search included meta-analyses on the association between health risk factors, including maternal behavioral health, intimate partner violence, child maltreatment, depression, and obesity, with a later health condition. Through a snowball sampling-type approach, the endpoints of the meta-analyses identified became search terms for a subsequent search, until each health risk was connected to one of the ten costliest health conditions. These results were synthesized to create a path model connecting the health risks to the high-cost health conditions in a cascade. Thirty-seven meta-analyses were included. They connected early-life health risk factors with six high-cost health conditions: hypertension, diabetes, asthma and chronic obstructive pulmonary disorder, mental disorders, heart conditions, and trauma-related disorders. If confounders could be controlled for and causality inferred, the cascading associations could be used to more fully account for downstream impacts of preventive interventions. This would support budget analysis entities to better include potential savings from investments in chronic disease prevention and promote greater implementation at scale.

Abstract Image

模拟预防的长期预算影响:一生中主要健康结果之间关系的元分析概述
预算分析实体往往无法捕捉到预防服务、计划和干预措施投资的全部下游影响。本研究介绍并应用了一种综合现有文献的方法,以更充分地考虑这些影响。本研究审查了 PubMed 上 2010 年 1 月 1 日至 2019 年 12 月 31 日期间发表的荟萃分析。最初的搜索包括有关健康风险因素(包括孕产妇行为健康、亲密伴侣暴力、虐待儿童、抑郁和肥胖)与日后健康状况之间关联的荟萃分析。通过 "滚雪球 "式的抽样方法,确定的荟萃分析终点成为后续搜索的搜索条件,直到每种健康风险都与十种成本最高的健康状况之一相关联。对这些结果进行综合后,创建了一个路径模型,将健康风险与高成本健康状况串联起来。其中包括 37 项荟萃分析。它们将早期生活中的健康风险因素与六种高成本健康状况联系起来:高血压、糖尿病、哮喘和慢性阻塞性肺部疾病、精神障碍、心脏疾病和创伤相关疾病。如果能够控制混杂因素并推断因果关系,就可以利用级联关系更充分地考虑预防性干预措施的下游影响。这将为预算分析实体提供支持,以便更好地纳入慢性病预防投资的潜在节余,并促进更大规模的实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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