将基于模拟模型的结果与县级数据相结合,用于新干预措施的地理卫生公平影响评估。

IF 6 2区 医学 Q1 ECONOMICS
Jeroen P Jansen, Michael P Douglas, Kathryn A Phillips
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引用次数: 0

摘要

目的:美国各地的地理健康差异持续存在,各地区之间的健康结果存在很大差异。评估新兴卫生技术可能如何影响这些差异,对于制定公平的卫生政策至关重要。本文介绍了一种地理健康公平影响评估方法,该方法将模拟模型中与公平相关的子组预测结果与美国县级子组比例数据相结合。方法:该方法包括以下步骤:1)创建县级股票相关因素和目标适应症终身风险信息数据集;2)利用仿真模型估计有和没有干预的不同股权相关因素组合的质量年和成本;3)根据公平相关因素的分布和第2步估计,计算每个县目标人口的预期和增量质量预期寿命、每10万普通人口的增量净健康福利,以及没有和有LB的质量调整出生预期寿命(QALEs);4)量化有技术县与无技术县在质量质量年和质量质量方面的不平等以及相应的卫生公平影响。结果:我们阐述了液体活检在非小细胞肺癌的一线治疗中的方法。未来的申请应按县纳入更多有关股权相关群体的详细信息。结论:将模拟模型结果与县级公平相关亚组数据相结合,为新干预措施的卫生公平影响评估提供了一种新方法。它有助于审查引进一项新的卫生技术如何影响卫生领域的地域差异,并有助于确定可能从一项新的干预措施中获益最多的地区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combining simulation model-based outcomes with county-level data for geographic health equity impact evaluations of new interventions.

Objective: Geographic health disparities persist across the United States, with substantial variations in health outcomes between regions. Evaluating how emerging health technologies might affect these disparities is crucial for developing equitable health policies. This paper introduces an approach for geographic health equity impact evaluation by combining predicted outcomes by equity-relevant subgroup from a simulation model with US county-level data on subgroup proportions.

Methods: The approach involves the following steps: 1) Create a dataset with county-level information on equity-relevant factors and lifetime risk of the target indication; 2) Estimate QALYs and costs with and without the intervention for different combinations of equity-relevant factors with the simulation model; 3) Calculate expected and incremental QALYs in target population, incremental net health benefits per 100,000 general population, and quality adjusted life expectancy at birth (QALEs) without and with LB for each county based on its distribution of equity-relevant factors and step 2 estimates; and 4) Quantify inequality in QALYs and QALEs between counties with and without the technology and the corresponding health equity impact.

Results: We illustrate the approach using liquid biopsy for first-line treatment in non-small cell lung cancer. Future applications should incorporate more detailed information on the equity-relevant groups by county.

Conclusion: Combining simulation model outcomes with county-level data on equity-relevant subgroups provides a novel approach for health equity impact evaluations of new interventions. It facilitates examining how introducing a new health technology can impact geographic disparities in health, and can help identify areas that may benefit most from a new intervention.

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来源期刊
Value in Health
Value in Health 医学-卫生保健
CiteScore
6.90
自引率
6.70%
发文量
3064
审稿时长
3-8 weeks
期刊介绍: Value in Health contains original research articles for pharmacoeconomics, health economics, and outcomes research (clinical, economic, and patient-reported outcomes/preference-based research), as well as conceptual and health policy articles that provide valuable information for health care decision-makers as well as the research community. As the official journal of ISPOR, Value in Health provides a forum for researchers, as well as health care decision-makers to translate outcomes research into health care decisions.
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