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

Spat Spatiotemporal Epidemiol

Department of Environmental and Occupational Health, Program in Public Health, Susan and Henry Samueli College of Health Sciences, University of California, 100 Theory Drive, Suite 100, Irvine, CA 92617, USA.

Published: June 2023

AI Article Synopsis

  • Unmatched spatially stratified random sampling (SSRS) is a method that ensures the selection of geographically balanced control groups by dividing a study area into different regions and randomly choosing controls from non-cases within those regions.
  • A case study on preterm birth in Massachusetts revealed that SSRS had lower mean squared error (MSE) and higher relative efficiency (RE) compared to traditional simple random sampling (SRS), making it a more effective method for control selection in spatial analyses.
  • The results showed that SSRS produced more consistent and reliable maps for identifying significant areas across simulations, highlighting its advantages, especially in regions with lower population density.

Article 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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Source
http://dx.doi.org/10.1016/j.sste.2023.100584DOI Listing

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