Attrition Bias Related to Missing Outcome Data

التفاصيل البيبلوغرافية
العنوان: Attrition Bias Related to Missing Outcome Data
المؤلفون: Frédérique Thomas, Tarik Benmarhnia, Basile Chaix, Ruben Brondeel, Antoine Lewin
المصدر: Epidemiology. 29:87-95
بيانات النشر: Ovid Technologies (Wolters Kluwer Health), 2018.
سنة النشر: 2018
مصطلحات موضوعية: Adult, Male, Patient Dropouts, Epidemiology, Computer science, media_common.quotation_subject, Inference, 01 natural sciences, Body Mass Index, 010104 statistics & probability, 03 medical and health sciences, Sex Factors, 0302 clinical medicine, Bias, Outcome Assessment, Health Care, Statistics, medicine, Humans, Computer Simulation, Attrition, Longitudinal Studies, Obesity, 030212 general & internal medicine, 0101 mathematics, Dropout (neural networks), Aged, media_common, Selection bias, Inverse probability weighting, Age Factors, Middle Aged, Missing data, medicine.disease, Outcome (probability), Educational Status, Female, France, Cohort study
الوصف: Background Most longitudinal studies do not address potential selection biases due to selective attrition. Using empirical data and simulating additional attrition, we investigated the effectiveness of common approaches to handle missing outcome data from attrition in the association between individual education level and change in body mass index (BMI). Methods Using data from the two waves of the French RECORD Cohort Study (N = 7,172), we first examined how inverse probability weighting (IPW) and multiple imputation handled missing outcome data from attrition in the observed data (stage 1). Second, simulating additional missing data in BMI at follow-up under various missing-at-random scenarios, we quantified the impact of attrition and assessed how multiple imputation performed compared to complete case analysis and to a perfectly specified IPW model as a gold standard (stage 2). Results With the observed data in stage 1, we found an inverse association between individual education and change in BMI, with complete case analysis, as well as with IPW and multiple imputation. When we simulated additional attrition under a missing-at-random pattern (stage 2), the bias increased with the magnitude of selective attrition, and multiple imputation was useless to address it. Conclusions Our simulations revealed that selective attrition in the outcome heavily biased the association of interest. The present article contributes to raising awareness that for missing outcome data, multiple imputation does not do better than complete case analysis. More effort is thus needed during the design phase to understand attrition mechanisms by collecting information on the reasons for dropout.
تدمد: 1044-3983
الوصول الحر: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::c987ef9e6683a6b06de1c562e39bb3c8Test
https://doi.org/10.1097/ede.0000000000000755Test
رقم الانضمام: edsair.doi.dedup.....c987ef9e6683a6b06de1c562e39bb3c8
قاعدة البيانات: OpenAIRE