Incorporating small-area estimation into mediation analyses with areal datasets

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Melissa J. Smith , Emily K. Roberts , Mary E. Charlton , Jacob J. Oleson
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引用次数: 0

Abstract

Various methods have been employed in the medical literature to conduct mediation analyses with areal datasets. These analyses are typically performed to understand why age-adjusted incidence or mortality rates vary by county or ZIP code-level characteristics. Two primary approaches are commonly used: the “Calculation before mediation” (C-BM) approach, where age-adjusted rates are calculated from the raw data for each areal unit and used as the outcome in the mediation analysis, and the “Small-area estimation before mediation” (SAE-BM) approach, which uses pre-existing small-area estimates as the outcome in the mediation analysis. However, these approaches have significant limitations that can impact the inferences around mediation effects and the overall conclusions of a mediation analysis. In this paper, we propose a new method, the “Small-area estimation within mediation” (SAE-WM) approach, for conducting mediation analyses with areal datasets. This method integrates Bayesian small-area estimation techniques into the mediation analysis outcome model, allowing for precise estimation of mediation effects with areal datasets. We conduct a simulation study to demonstrate the advantages of the SAE-WM method for estimating mediation effects with areal datasets, while highlighting the pitfalls and potential problems with the C-BM and SAE-BM methods. We also illustrate an application of the SAE-WM method to assess whether healthcare access mediates the relationship between ZIP code-level socioeconomic environment and age-adjusted colorectal cancer incidence rates in Iowa.
将小区域估计纳入具有区域数据集的中介分析
医学文献中采用了各种方法对实际数据集进行中介分析。通常进行这些分析是为了了解为什么年龄调整后的发病率或死亡率因县或邮政编码级别的特征而异。常用的两种主要方法是:“中介前计算”(C-BM)方法,其中年龄调整率是从每个区域单位的原始数据中计算出来的,并用作中介分析的结果;以及“中介前小区域估计”(SAE-BM)方法,它使用预先存在的小区域估计作为中介分析的结果。然而,这些方法有明显的局限性,可能会影响围绕中介效应的推断和中介分析的总体结论。在本文中,我们提出了一种新的方法,即“中介内小区域估计”(SAE-WM)方法,用于对区域数据集进行中介分析。该方法将贝叶斯小区域估计技术集成到中介分析结果模型中,允许对区域数据集的中介效果进行精确估计。我们进行了一项模拟研究,以证明SAE-WM方法在估算实际数据集的中介效应方面的优势,同时强调了C-BM和SAE-BM方法的缺陷和潜在问题。我们还举例说明了SAE-WM方法的应用,以评估医疗保健可及性是否介导邮编级社会经济环境与爱荷华州年龄调整后结直肠癌发病率之间的关系。
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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来源期刊
Spatial and Spatio-Temporal Epidemiology
Spatial and Spatio-Temporal Epidemiology PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
5.10
自引率
8.80%
发文量
63
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