A digital twin methodology using real patient data for sample size reduction in Alzheimer’s disease randomized controlled clinical trials
Abstract
INTRODUCTION
Recruitment for Alzheimer’s disease randomized controlled trials (RCTs) is difficult and expensive. To reduce RCT sample sizes, our Digital Twin Trial (DTT) methodology combines an interpretable cognitive decline prediction model with prediction-powered inference.
METHODS
For DTT participants, our model identifies similar individuals (“Digital Twins”) from a retrospective database and uses their cognitive scores to predict decline. Predictions adjust observed scores, reducing variance within treatment groups. We simulated 18-month DTTs and standard RCTs using mixed effects models of decline in Alzheimer’s Disease Neuroimaging Initiative subjects meeting lecanemab’s Phase 3 inclusion criteria.
RESULTS
Predicted and observed change in Clinical Dementia Rating Sum-of-Boxes correlated at r = 0.4. DTTs required 1,855 subjects versus 2,170 for standard RCTs to detect a simulated 25% decline-slowing drug effect at 0.9 power. DTT Type 1 error was consistent with 0.05.
DISCUSSION
DTTs could reduce recruitment and cost burdens. Model interpretability could help clinicians trust individualized prognoses.
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