Unmatched spatially stratified controls: A simulation study examining efficiency and precision using spatially-diverse controls and generalized additive models

IF 2.1 Q3 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Spatial and Spatio-Temporal Epidemiology Pub Date : 2023-06-01 DOI:10.1016/j.sste.2023.100584
Ian W. Tang , Scott M. Bartell , Verónica M. Vieira
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Abstract

Unmatched spatially stratified random sampling (SSRS) of non-cases selects geographically balanced controls by dividing the study area into spatial strata and randomly selecting controls from all non-cases within each stratum. The performance of SSRS control selection was evaluated in a case study spatial analysis of preterm birth in Massachusetts. In a simulation study, we fit generalized additive models using controls selected by SSRS or simple random sample (SRS) designs. We compared mean squared error (MSE), bias, relative efficiency (RE), and statistically significant map results to the model results with all non-cases. SSRS designs had lower average MSE (0.0042–0.0044) and higher RE (77–80%) compared to SRS designs (MSE: 0.0072–0.0073; RE across designs: 71%). SSRS map results were more consistent across simulations, reliably identifying statistically significant areas. SSRS designs improved efficiency by selecting controls that are geographically distributed, particularly from low population density areas, and may be more appropriate for spatial analyses.

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不匹配的空间分层控制:使用空间多样化控制和广义加性模型检查效率和精度的模拟研究
非病例的非匹配空间分层随机抽样(SSRS)通过将研究区域划分为空间分层并从每个分层内的所有非病例中随机选择对照,来选择地理平衡的对照。在马萨诸塞州早产的案例研究空间分析中评估了SSRS对照选择的性能。在模拟研究中,我们使用SSRS或简单随机样本(SRS)设计选择的控制来拟合广义加性模型。我们将均方误差(MSE)、偏差、相对效率(RE)和具有统计学意义的映射结果与所有非病例的模型结果进行了比较。与SRS设计相比,SSRS设计的平均MSE较低(0.0042–0.0044),RE较高(77–80%)(MSE:0.0072–0.0073;各设计的RE:71%)。SSRS地图结果在模拟中更加一致,可靠地确定了具有统计学意义的区域。SSRS设计通过选择地理分布的控制,特别是来自低人口密度地区的控制,提高了效率,并且可能更适合空间分析。
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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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