AI Article Synopsis

  • Small-area estimation methods can provide valid estimates when survey sample sizes are inadequate for ensuring representativeness.
  • The study compared smoking prevalence estimates using direct survey data with those obtained from a small-area model applied to a different non-representative survey, finding strong concordance between the two methods.
  • Results showed that the small-area model yields precise and reliable estimates of smoking prevalence by sex and age group, suggesting its utility for analyzing risk factors at a subnational level using national survey data.

Article Abstract

Introduction: Small-area estimation methods are an alternative to direct survey-based estimates in cases where a survey's sample size does not suffice to ensure representativeness. Nevertheless, the information yielded by small-area estimation methods must be validated. The objective of this study was thus to validate a small-area model.

Methods: The prevalence of smokers, ex-smokers, and never smokers by sex and age group (15-34, 35-54, 55-64, 65-74, ≥75 years) was calculated in two Spanish Autonomous Regions (ARs) by applying a weighted ratio estimator (direct estimator) to data from representative surveys. These estimates were compared against those obtained with a small-area model applied to another survey, specifically the Spanish National Health Survey, which did not guarantee representativeness for these two ARs by sex and age. To evaluate the concordance of the estimates, we calculated the intraclass correlation coefficient (ICC) and the 95% confidence intervals of the differences between estimates. To assess the precision of the estimates, the coefficients of variation were obtained.

Results: In all cases, the ICC was ≥0.87, indicating good concordance between the direct and small-area model estimates. Slightly more than eight in ten 95% confidence intervals for the differences between estimates included zero. In all cases, the coefficient of variation of the small-area model was <30%, indicating a good degree of precision in the estimates.

Conclusions: The small-area model applied to national survey data yields valid estimates of smoking prevalence by sex and age group at the AR level. These models could thus be applied to a single year's data from a national survey, which does not guarantee regional representativeness, to characterize various risk factors in a population at a subnational level.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10472341PMC
http://dx.doi.org/10.18332/tid/169683DOI Listing

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