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Advisor(s)
Abstract(s)
Background Biomarker-based risk predictions of dementia in people with mild cognitive impairment are highly
relevant for care planning and to select patients for treatment when disease-modifying drugs become available. We
aimed to establish robust prediction models of disease progression in people at risk of dementia.
Methods In this modelling study, we included people with mild cognitive impairment (MCI) from single-centre and
multicentre cohorts in Europe and North America: the European Medical Information Framework for Alzheimer’s
Disease (EMIF-AD; n=883), Alzheimer’s Disease Neuroimaging Initiative (ADNI; n=829), Amsterdam Dementia
Cohort (ADC; n=666), and the Swedish BioFINDER study (n=233). Inclusion criteria were a baseline diagnosis of
MCI, at least 6 months of follow-up, and availability of a baseline Mini-Mental State Examination (MMSE) and MRI
or CSF biomarker assessment. The primary endpoint was clinical progression to any type of dementia. We evaluated
performance of previously developed risk prediction models—a demographics model, a hippocampal volume model,
and a CSF biomarkers model—by evaluating them across cohorts, incorporating different biomarker measurement
methods, and determining prognostic performance with Harrell’s C statistic. We then updated the models by
re-estimating parameters with and without centre-specific effects and evaluated model calibration by comparing
observed and expected survival. Finally, we constructed a model combining markers for amyloid deposition, tauopathy,
and neurodegeneration (ATN), in accordance with the National Institute on Aging and Alzheimer’s Association
research framework.
Findings We included all 2611 individuals with MCI in the four cohorts, 1007 (39%) of whom progressed to dementia.
The validated demographics model (Harrell’s C 0·62, 95% CI 0·59–0·65), validated hippocampal volume model
(0·67, 0·62–0·72), and updated CSF biomarkers model (0·72, 0·68–0·74) had adequate prognostic performance
across cohorts and were well calibrated. The newly constructed ATN model had the highest performance (0·74,
0·71–0·76).
Interpretation We generated risk models that are robust across cohorts, which adds to their potential clinical
applicability. The models could aid clinicians in the interpretation of CSF biomarker and hippocampal volume results
in individuals with MCI, and help research and clinical settings to prepare for a future of precision medicine in
Alzheimer’s disease. Future research should focus on the clinical utility of the models, particularly if their use affects
participants’ understanding, emotional wellbeing, and behaviour.
Funding ZonMW-Memorabel.
Description
Keywords
Alzheimers disease Csf biomarkers Dementia Progression Diagnosis
Citation
Publisher
Elsevier