支持下一代癌症人口模拟模型的健康公平框架。

Christina Chapman, Jinani Jayasekera, Chiranjeev Dash, Vanessa Sheppard, Jeanne Mandelblatt
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引用次数: 0

摘要

在过去20年中,人口模拟模型已发展成为一种有效的公共卫生工具,用于监测癌症趋势和估计筛查和治疗策略对发病率和死亡率的影响,包括记录持续存在的癌症不公平现象。这项研究的目标是提供一个框架来支持下一代癌症人群模拟模型,以确定癌症控制连续体中的杠杆点,从而加速实现少数民族癌症护理的公平。在我们的框架中,系统性种族主义被概念化为不公平的根本原因和对随后的下游事件的上游影响,最终对癌症发病率和死亡率以及竞争性合并症产生生理影响。迄今为止,大多数调查种族不平等的模拟模型都使用了个人层面的种族变量。个人层面的种族是暴露于系统性种族主义的代表,而不是生物学结构。然而,单一层面的种族变量是使不平等长期存在的多层面系统、政策和实践的次优代理。我们建议,未来旨在捕捉系统性种族主义与癌症结果之间关系的模型,用捕捉结构性、人际性和内在种族主义的多层次测量来取代或扩展单层次种族变量。模型应调查可操作的杠杆,如医疗保健、教育、经济结构和政策的变化,以提高公平性,减少基于医疗保健的人际种族主义。这种综合方法可以支持新的研究方法,明确不同结构和政策的影响,突出模型组成部分之间相互作用的数据差距,反映现实世界中因素的作用,为我们如何收集数据以模拟癌症公平提供信息,并产生可以为政策提供信息的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A health equity framework to support the next generation of cancer population simulation models.

Over the past 2 decades, population simulation modeling has evolved as an effective public health tool for surveillance of cancer trends and estimation of the impact of screening and treatment strategies on incidence and mortality, including documentation of persistent cancer inequities. The goal of this research was to provide a framework to support the next generation of cancer population simulation models to identify leverage points in the cancer control continuum to accelerate achievement of equity in cancer care for minoritized populations. In our framework, systemic racism is conceptualized as the root cause of inequity and an upstream influence acting on subsequent downstream events, which ultimately exert physiological effects on cancer incidence and mortality and competing comorbidities. To date, most simulation models investigating racial inequity have used individual-level race variables. Individual-level race is a proxy for exposure to systemic racism, not a biological construct. However, single-level race variables are suboptimal proxies for the multilevel systems, policies, and practices that perpetuate inequity. We recommend that future models designed to capture relationships between systemic racism and cancer outcomes replace or extend single-level race variables with multilevel measures that capture structural, interpersonal, and internalized racism. Models should investigate actionable levers, such as changes in health care, education, and economic structures and policies to increase equity and reductions in health-care-based interpersonal racism. This integrated approach could support novel research approaches, make explicit the effects of different structures and policies, highlight data gaps in interactions between model components mirroring how factors act in the real world, inform how we collect data to model cancer equity, and generate results that could inform policy.

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CiteScore
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