Journal
JOURNAL OF ALZHEIMERS DISEASE
Volume 87, Issue 1, Pages 489-501Publisher
IOS PRESS
DOI: 10.3233/JAD-215553
Keywords
Alzheimer's disease; cognitive dysfunction; forecasting; mental status and dementia tests; statistical models
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Funding
- National Institute on Aging of the National Institutes of Health [R01AG037561, P20AG068024]
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This study investigates the impact of subject-specific effects on predicting cognitive decline in ADRD and finds that subject-specific effects have a profound impact on predicting ADAS-Cog. Known fitted subject effects provide the best prediction results, while imputing random effects assists in calculating average results.
Background: Accurate longitudinal modelling of cognitive decline is a major goal of Alzheimer's disease and related dementia (ADRD) research. However, the impact of subject-specific effects is not well characterized and may have implications for data generation and prediction. Objective: This study seeks to address the impact of subject-specific effects, which are a less well-characterized aspect of ADRD cognitive decline, as measured by the Alzheimer's Disease Assessment Scale's Cognitive Subscale (ADAS-Cog). Methods: Prediction errors and biases for the ADAS-Cog subscale were evaluated when using only population-level effects, robust imputation of subject-specific effects using model covariances, and directly known individual-level effects fit during modelling as a natural control. Evaluated models included pre-specified parameterizations for clinical trial simulation, analogous mixed-effects regression models parameterized directly, and random forest ensemble models. Assessment used a meta-database of Alzheimer's disease studies with validation in simulated synthetic cohorts. Results: All models observed increases in variance under imputation leading to increased prediction error. Bias decreased with imputation except under the pre-specified parameterization, which increased in the meta-database, but was attenuated under simulation. Known fitted subject effects gave the best prediction results. Conclusion: Subject-specific effects were found to have a profound impact on predicting ADAS-Cog. Reductions in bias suggest imputing random effects assists in calculating results on average, as when simulating clinical trials. However, reduction in error emphasizes population-level effects when attempting to predict outcomes for individuals. Forecasting future observations greatly benefits from using known subject-specific effects.
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