美国各县医疗保健支出差异的驱动因素。

IF 9.5 Q1 HEALTH CARE SCIENCES & SERVICES
Joseph L Dieleman, Maxwell Weil, Meera Beauchamp, Catherine Bisignano, Sawyer W Crosby, Drew DeJarnatt, Haley Lescinsky, Ali H Mokdad, Samuel Ostroff, Hilary Paul, Ian Pollock, Maitreyi Sahu, John W Scott, Kayla V Taylor, Azalea Thomson, Marcia R Weaver, Lauren B Wilner, Christopher J L Murray
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引用次数: 0

摘要

重要性:了解美国各县卫生保健支出的驱动因素对于制定政策和评估卫生保健服务的分配非常重要。目的:探讨(1)人口年龄、(2)健康状况、(3)服务利用、(4)服务价格和服务强度对县域卫生保健支出差异的影响。设计、环境和参与者:在这项横断面研究中,提取了2019年美国3110个县、148种健康状况、38个年龄性别群体、4个支付者和7种护理类型的人均支出4个关键驱动因素的数据。服务利用率以每个流行病例的服务量来衡量,而价格和强度以每次就诊、入院或处方的支出来衡量。采用Das Gupta和Shapley分解方法和线性回归估计各因素的贡献。数据分析在2024年3月至2024年7月期间进行。暴露因素:年龄、患病率、服务利用率或服务价格和强度。主要结果和措施:美国各县医疗保健支出的差异。结果:2019年,76.6%的个人医疗保健支出被纳入本研究。总体而言,在美国3110个县中,64.8%的跨县医疗保健支出变化是由服务利用率解释的,而人口年龄、疾病患病率和服务价格和强度分别解释了4.1%、7.0%和24.1%。这些因素对支出变化的影响程度因付款人、护理类型和健康状况而异。服务利用率与保险覆盖率、收入中位数和教育程度有关。从中位数到第75百分位的每项增加分别与门诊护理使用率增加7.8%,4.4%和3.8%相关。享有医疗保险优惠的医疗保险受益人比例与较低的利用率相关。医疗保险优势覆盖范围从中位数增加到第75百分位,与门诊护理利用率下降1.9%相关。跨州支出水平的差异也归因于不同的因素。犹他州是人均医疗保健支出最少的州,主要由于年龄小,所有类型的医疗保健支出率都较低。对于支出最高的纽约州来说,住院病人和处方药支出的支出率相对较高。对于这两种类型的护理,高服务价格和高强度导致了高于平均水平的支出。结论和相关性:在这项横断面研究中,美国各县医疗保健支出的变化在很大程度上与服务利用率的变化有关。了解美国支出变化的驱动因素可能有助于决策者评估医疗资源的分配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drivers of Variation in Health Care Spending Across US Counties.

Importance: Understanding the drivers of health care spending across US counties is important for developing policies and assessing the allocation of health care services.

Objective: To estimate the amount of cross-county health care spending variation explained by (1) population age, (2) health condition prevalence, (3) service utilization, and (4) service price and intensity.

Design, setting, and participants: In this cross-sectional study, data for 4 key drivers of per capita spending were extracted for 3110 US counties, 148 health conditions, 38 age-sex groups, 4 payers, and 7 types of care for 2019. Service utilization was measured as service volume per prevalent case, while price and intensity was measured as spending per visit, admission, or prescription. Das Gupta and Shapley decomposition methods and linear regression were used to estimate the contribution of each factor. The data analysis was conducted between March 2024 and July 2024.

Exposures: Age, disease prevalence, service utilization, or service price and intensity.

Main outcomes and measures: Variation in health care spending across US counties.

Results: In 2019, 76.6% of personal health care spending was included in this study. Overall, 64.8% of cross-county health care spending variation among 3110 US counties was explained by service utilization, while population age, disease prevalence, and price and intensity of services explained 4.1%, 7.0%, and 24.1%, respectively. The rate at which these factors contributed to variation in spending differed by payer, type of care, and health condition. Service utilization was associated with insurance coverage, median income, and education. An increase in each of these from the median to the 75th percentile was associated with a 7.8%, 4.4%, and 3.8% increase in ambulatory care utilization, respectively. The fraction of Medicare beneficiaries with Medicare Advantage was associated with less utilization. An increase in Medicare Advantage coverage from the median to the 75th percentile was associated with a 1.9% decrease in ambulatory care utilization. Differences in cross-state spending levels were also attributed to different factors. For Utah, the state with the least health care spending per capita, spending rates were lower for all types of care due principally to the young age profile. For New York, the state with the highest spending, spending rates were relatively high for hospital inpatient and prescribed pharmaceutical spending. For both types of care, high service price and intensity contributed to the above-average spending.

Conclusions and relevance: In this cross-sectional study, variation in health care spending among US counties was largely related to variation in service utilization. Understanding the drivers of spending variation in the US may help policymakers assess the allocation of health care resources.

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来源期刊
CiteScore
4.00
自引率
7.80%
发文量
0
期刊介绍: JAMA Health Forum is an international, peer-reviewed, online, open access journal that addresses health policy and strategies affecting medicine, health, and health care. The journal publishes original research, evidence-based reports, and opinion about national and global health policy. It covers innovative approaches to health care delivery and health care economics, access, quality, safety, equity, and reform. In addition to publishing articles, JAMA Health Forum also features commentary from health policy leaders on the JAMA Forum. It covers news briefs on major reports released by government agencies, foundations, health policy think tanks, and other policy-focused organizations. JAMA Health Forum is a member of the JAMA Network, which is a consortium of peer-reviewed, general medical and specialty publications. The journal presents curated health policy content from across the JAMA Network, including journals such as JAMA and JAMA Internal Medicine.
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