Harmonization of Cognitive Function in Longitudinal Integrative Data Analysis: Results from two Chinese datasets
Chang Yu

TL;DR
This study improves the comparison of cognitive function data from two Chinese aging studies using advanced statistical methods.
Contribution
The study introduces a novel harmonization framework using Item Response Theory for cognitive function data.
Findings
Factor score harmonization improves measurement alignment compared to traditional methods.
Differences in item properties and demographics challenge harmonization efforts.
IRT-based methods show promise for longitudinal cognitive aging research.
Abstract
Integrating data from multiple longitudinal studies is crucial for understanding cognitive aging across different population groups. However, common harmonization methods, such as z-scores or percentiles, often fail to account for differences in measurement properties and sample demographics, potentially introducing bias. This study applies Item Response Theory (IRT) to harmonizing general and domain-specific cognitive function across two major Chinese national longitudinal aging studies. By developing a harmonized framework, this study aims to enhance comparability while ensuring reliability and validity in pooled analyses. The sample consists of individuals who completed at least one wave of cognitive testing from two major datasets. The Chinese Longitudinal Healthy Longevity Survey (CLHLS) (N = 38,760; 1998–2018; 8 waves) primarily focuses on older adults (65+), while the China…
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Taxonomy
TopicsPsychometric Methodologies and Testing · Dementia and Cognitive Impairment Research · Cognitive Abilities and Testing
