Abstract

To study the value of combining individual- and neighborhood-level sociodemographic data to predict study participation and assess the effects of baseline selection on the distribution of metabolic risk factors and lifestyle factors in the Swedish CardioPulmonary bioImage Study (SCAPIS). We linked sociodemographic register data to SCAPIS participants (n = 30,154, ages: 50-64 years) and a random sample of the study's target population (n = 59,909). We assessed the classification ability of participation models based on individual-level data, neighborhood-level data, and combinations of both. Standardized mean differences (SMD) were used to examine how reweighting the sample to match the population affected the averages of 32 cardiopulmonary risk factors at baseline. Absolute SMDs >0.10 were considered meaningful. Combining both individual-level and neighborhood-level data gave rise to a model with better classification ability (AUC: 71.3%) than models with only individual-level (AUC: 66.9%) or neighborhood-level data (AUC: 65.5%). We observed a greater change in the distribution of risk factors when we reweighted the participants using both individual and area data. The only meaningful change was related to the (self-reported) frequency of alcohol consumption, which appears to be higher in the SCAPIS sample than in the population. The remaining risk factors did not change meaningfully. Both individual- and neighborhood-level characteristics are informative in assessing study selection effects. Future analyses of cardiopulmonary outcomes in the SCAPIS cohort can benefit from our study, though the average impact of selection on risk factor distributions at baseline appears small.

Highlights

  • Selective participation is a general concern in population-based research that aims to make inferences about health outcomes or exposure effects in the general population [1]

  • We observed a greater change in the distribution of risk factors when we reweighted the participants using both individual and area data

  • The only meaningful change was related to the frequency of alcohol consumption, which appears to be higher in the Swedish CardioPulmonary bioImage Study (SCAPIS) sample than in the population

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Summary

Introduction

Selective participation is a general concern in population-based research that aims to make inferences about health outcomes or exposure effects in the general population [1]. The study combines new imaging techniques with advanced large-scale ‘omics’ and epidemiological analyses to characterize a population-based cohort, and is expected to provide new evidence about the prevalence of hidden cardiopulmonary disease and improved prediction models for the general population. To fulfill these aims, the participants of SCAPIS must reflect their intended target population. A lack of internal validity implies spurious correlations between exposures (or treatments) and health outcomes [7], and a lack of external validity implies poor generalizability of the study results to the intended target population [1] These problems may negatively influence the utility of the research findings for public health decision-making [9]. Constructing such weights typically requires access to external data on non-participants or (a random sample of) the target population [6, 14]

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