Bayesian integration of longitudinal and survival outcomes in Alzheimer's disease prediction.
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2025-09
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Abstract
Introduction
Accurate prediction of Alzheimer's disease (AD) dementia onset and progression to mild cognitive impairment (MCI) is crucial for early intervention and clinical trial design. This study presents a predictive framework leveraging Bayesian model averaging (BMA) with a multivariate functional mixed model (MFMM) to integrate multivariate longitudinal outcomes and survival data.Methods
The training cohort included 1012 participants from the Alzheimer's Disease Neuroimaging Initiative (ADNI). The validation cohort comprised 2087 participants from the National Alzheimer's Coordinating Center (NACC). BMA methods, including stacking and pseudo-BMA+, aggregated predictions across candidate models to enhance accuracy and robustness. Predictive performance was evaluated using the C-index, a measure of discrimination.Results
Compared to the composite model, BMA improved prediction accuracy. The C-index was 0.777 (stacking) and 0.771 (pseudo-BMA+) in ADNI and 0.743 and 0.738 in NACC.Discussion
This framework offers a robust tool for personalized medicine, enabling accurate predictions and enhanced generalizability across diverse populations.Highlights
We introduced a novel joint modeling framework integrating multivariate longitudinal outcomes (Mini-Mental State Examination and Clinical Dementia Rating Sum of Boxes) with survival data to predict Alzheimer's disease dementia onset and progression. We validated the framework across complementary datasets: Alzheimer's Disease Neuroimaging Initiative (training) and National Alzheimer's Coordinating Center (NACC; validation), with NACC providing a demographically diverse population to assess generalizability. The model enhanced predictive accuracy using Bayesian model averaging, which synthesizes insights across multiple models to reduce uncertainty and improve robustness. The model demonstrated consistent and clinically relevant performance, supporting its applicability for early intervention, precision medicine, and clinical trial design.Type
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Zou, Haotian, Michael W Lutz, Kathleen Welsh-Bohmer and Sheng Luo (2025). Bayesian integration of longitudinal and survival outcomes in Alzheimer's disease prediction. Alzheimer's & dementia : the journal of the Alzheimer's Association, 21(9). p. e70094. 10.1002/alz.70094 Retrieved from https://hdl.handle.net/10161/33162.
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Scholars@Duke
Haotian Zou
Kathleen Anne Welsh-Bohmer
Dr. Kathleen Welsh-Bohmer is a Professor of Psychiatry with a secondary appointment in the Department of Neurology.
Clinically trained as a neuropsychologist, Dr. Welsh-Bohmer's research activities have been focused around developing effective prevention and treatment strategies to delay the onset of cognitive disorders occurring in later life. From 2006 through 2018 she directed the Joseph and Kathleen Bryan Alzheimer’s Center in the Department of Neurology. She also oversaw the neuropsychology scientific operations of a ground-breaking Phase III global clinical trial to delay the onset of early clinical symptoms of Alzheimer’s disease entitled the “TOMMORROW” study (Takeda Pharmaceutical Company funded) which concluded in 2018.
Currently, she directs the Alzheimer's disease therapeutic area within the Duke Clinical Research Institute and she collaborates actively with VeraSci, a Durham based company, to develop reliable digital cognitive and functional assessment tools of early Alzheimer's disease and related dementias. The methods her team is developing are informed by advances in neuroscience and technology and fill an information void in early pre-clinical Alzheimer's disease. Her work has implications for clinical practice and for the acceleration of global clinical trials aimed at the prevention of Alzheimer’s disease and related dementias.
Sheng Luo
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