Litcius/Paper detail

Controlling for selective dropout in longitudinal dementia data: Application to the SveDem registry

Ron Handels, Linus Jönsson, Sara García‐Ptacek, Maria Eriksdotter, Anders Wimo

2020Alzheimer s & Dementia31 citationsDOIOpen Access PDF

Abstract

INTRODUCTION: Loss to follow-up in dementia studies is common and related to cognition, which worsens over time. We aimed to (1) describe dropout and missing cognitive data in the Swedish dementia registry, SveDem; (2) identify factors associated with dropout; and (3) estimate propensity scores and use them to adjust for dropout. METHODS: Longitudinal cognitive data were obtained from 53,880 persons from the SveDem national quality dementia registry. Inverse probability of censoring weights (IPCWs) were estimated using a logistic regression model on dropout. RESULTS: The mean annualized rate of change in Mini-Mental State Examination (MMSE) in those with a low MMSE (0 to 10) was likely underestimated in the complete case analysis (+1.5 points/year) versus the IPCW analysis (-0.3 points/year). DISCUSSION: Handling dropout by IPCWs resulted in plausible estimates of cognitive decline. This method is likely of value to adjust for biased dropout in longitudinal cohorts of dementia.

Topics & Concepts

Dropout (neural networks)DementiaLongitudinal dataPsychologyLongitudinal studyPhysical medicine and rehabilitationMedicineGerontologyComputer scienceData miningMachine learningInternal medicineDiseasePathologyDementia and Cognitive Impairment ResearchAlzheimer's disease research and treatmentsHealth Systems, Economic Evaluations, Quality of Life
Controlling for selective dropout in longitudinal dementia data: Application to the SveDem registry | Litcius