Bhavsar Nrupen A, Patzer Rachel E, Taber David J, Ross-Driscoll Katie, Deierhoi Reed Rhiannon, Caicedo-Ramirez Juan C, Gordon Elisa J, Matsouaka Roland A, Rogers Ursula, Webster Wendy, Adams Andrew, Kirk Allan D, McElroy Lisa M
From the Department of Medicine, Duke University School of Medicine, Durham, NC.
Department of Biostatistics and Bioinformatics, Duke University School of Medicine, Durham, NC.
Ann Surg Open. 2023 Sep 27;4(3):e337. doi: 10.1097/AS9.0000000000000337. eCollection 2023 Dec.
This study aims to introduce key concepts and methods that inform the design of studies that seek to quantify the causal effect of social determinants of health (SDOH) on access to and outcomes following organ transplant.
The causal pathways between SDOH and transplant outcomes are poorly understood. This is partially due to the unstandardized and incomplete capture of the complex interactions between patients, their neighborhood environments, the tertiary care system, and structural factors that impact access and outcomes. Designing studies to quantify the causal impact of these factors on transplant access and outcomes requires an understanding of the fundamental concepts of causal inference.
We present an overview of fundamental concepts in causal inference, including the potential outcomes framework and direct acyclic graphs. We discuss how to conceptualize SDOH in a causal framework and provide applied examples to illustrate how bias is introduced.
There is a need for direct measures of SDOH, increased measurement of latent and mediating variables, and multi-level frameworks for research that examine health inequities across multiple health systems to generalize results. We illustrate that biases can arise due to socioeconomic status, race/ethnicity, and incongruencies in language between the patient and clinician.
Progress towards an equitable transplant system requires establishing causal pathways between psychosocial risk factors, access, and outcomes. This is predicated on accurate and precise quantification of social risk, best facilitated by improved organization of health system data and multicenter efforts to collect and learn from it in ways relevant to specialties and service lines.
本研究旨在介绍关键概念和方法,这些概念和方法为旨在量化健康的社会决定因素(SDOH)对器官移植的可及性和移植后结果的因果效应的研究设计提供依据。
人们对SDOH与移植结果之间的因果途径了解甚少。部分原因是患者、其邻里环境、三级医疗系统以及影响可及性和结果的结构因素之间复杂相互作用的捕捉未标准化且不完整。设计研究以量化这些因素对移植可及性和结果的因果影响需要理解因果推断的基本概念。
我们概述了因果推断的基本概念,包括潜在结果框架和有向无环图。我们讨论了如何在因果框架中对SDOH进行概念化,并提供应用示例来说明如何引入偏差。
需要对SDOH进行直接测量,增加对潜在变量和中介变量的测量,以及建立多层次框架进行研究,以检验多个卫生系统中的健康不平等现象,从而推广研究结果。我们说明了偏差可能由于社会经济地位、种族/族裔以及患者与临床医生之间语言不一致而产生。
建立公平的移植系统需要在心理社会风险因素、可及性和结果之间建立因果途径。这取决于对社会风险进行准确和精确的量化,最好通过改善卫生系统数据的组织以及多中心努力以与专业和服务领域相关的方式收集和从中学习来实现。