Using ecological socioeconomic position (SEP) measures to deal with sample bias introduced by incomplete individual-level measures: inequalities in breast cancer stage at diagnosis as an example

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TitreUsing ecological socioeconomic position (SEP) measures to deal with sample bias introduced by incomplete individual-level measures: inequalities in breast cancer stage at diagnosis as an example
Type de publicationJournal Article
Year of Publication2019
AuteursLamy S, Molinie F, Daubisse-Marliac L, Cowppli-Bony A, Ayrault-Piault S, Fournier E, Woronoff A-S, Delpierre C, Grosclaude P
JournalBMC PUBLIC HEALTH
Volume19
Pagination857
Date PublishedJUL 2
Type of ArticleArticle
ISSN1471-2458
Mots-clésCancer, Deprivation, Methodology, Population-based data, Social inequalities
Résumé

BackgroundWhen studying the influence of socioeconomic position (SEP) on health from data where individual-level SEP measures may be missing, ecological measures of SEP may prove helpful. In this paper, we illustrate the best use of ecological-level measures of SEP to deal with incomplete individual level data. To do this we have taken the example of a study examining the relationship between SEP and breast cancer (BC) stage at diagnosis.MethodsUsing population based-registry data, all women over 18years newly diagnosed with a primary BC in 2007 were included. We compared the association between advanced stage at diagnosis and individual SEP containing missing data with an ecological level SEP measure without missing data. We used three modelling strategies, 1/ based on patients with complete data for individual-SEP (n=1218), or 2/ on all patients (n=1644) using an ecological-level SEP as proxy for individual SEP and 3/ individual-SEP after imputation of missing data using an ecological-level SEP.ResultsThe results obtained from these models demonstrate that selection bias was introduced in the sample where only patients with complete individual SEP were included. This bias is redressed by using ecological-level SEP to impute missing data for individual SEP on all patients. Such a strategy helps to avoid an ecological bias due to the use of aggregated data to infer to individual level.ConclusionWhen individual data are incomplete, we demonstrate the usefulness of an ecological index to assess and redress potential selection bias by using it to impute missing individual SEP.

DOI10.1186/s12889-019-7220-4