A robust harmonization approach for cognitive data from multiple aging and dementia cohorts

Author:

Giorgio Joseph12,Tanna Ankeet3,Malpetti Maura4,White Simon R.56,Wang Jingshen7,Baker Suzanne8,Landau Susan1,Tanaka Tomotaka9,Chen Christopher9,Rowe James B.410,O'Brien John510,Fripp Jurgen11,Breakspear Michael2,Jagust William18,Kourtzi Zoe3,

Affiliation:

1. Helen Wills Neuroscience Institute University of California Berkeley Berkeley California USA

2. School of Psychological Sciences College of Engineering, Science and the Environment University of Newcastle Newcastle New South Wales Australia

3. Department of Psychology University of Cambridge Cambridge UK

4. Department of Clinical Neurosciences University of Cambridge Cambridge UK

5. Department of Psychiatry University of Cambridge Cambridge UK

6. MRC Biostatistics Unit University of Cambridgeshire Cambridge UK

7. Division of Biostatistics University of California Berkeley Berkeley California USA

8. Molecular Biophysics & Integrated Bioimaging Lawrence Berkeley National Laboratory Berkeley California USA

9. Department of Pharmacology Yong Loo Lin School of Medicine National University of Singapore Kent Ridge Singapore

10. Cambridge University Hospitals NHS Foundation Trust Cambridge UK

11. The Australian eHealth Research Centre CSIRO Health and Biosecurity Brisbane Queensland Australia

Abstract

AbstractINTRODUCTIONAlthough many cognitive measures have been developed to assess cognitive decline due to Alzheimer's disease (AD), there is little consensus on optimal measures, leading to varied assessments across research cohorts and clinical trials making it difficult to pool cognitive measures across studies.METHODSWe used a two‐stage approach to harmonize cognitive data across cohorts and derive a cross‐cohort score of cognitive impairment due to AD. First, we pool and harmonize cognitive data from international cohorts of varying size and ethnic diversity. Next, we derived cognitive composites that leverage maximal data from the harmonized dataset.RESULTSWe show that our cognitive composites are robust across cohorts and achieve greater or comparable sensitivity to AD‐related cognitive decline compared to the Mini‐Mental State Examination and Preclinical Alzheimer Cognitive Composite. Finally, we used an independent cohort validating both our harmonization approach and composite measures.DISCUSSIONOur easy to implement and readily available pipeline offers an approach for researchers to harmonize their cognitive data with large publicly available cohorts, providing a simple way to pool data for the development or validation of findings related to cognitive decline due to AD.

Publisher

Wiley

Subject

Psychiatry and Mental health,Neurology (clinical)

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