CPT: Pharmacometrics & Systems Pharmacology (Jul 2023)

Modeling Alzheimer's disease progression utilizing clinical trial and ADNI data to predict longitudinal trajectory of CDR‐SB

  • Samira Jamalian,
  • Michael Dolton,
  • Pascal Chanu,
  • Vidya Ramakrishnan,
  • Yesenia Franco,
  • Kristin Wildsmith,
  • Paul Manser,
  • Edmond Teng,
  • Jin Y. Jin,
  • Angelica Quartino,
  • Joy C. Hsu,
  • for the Alzheimer's Disease Neuroimaging Initiative

DOI
https://doi.org/10.1002/psp4.12974
Journal volume & issue
Vol. 12, no. 7
pp. 1029 – 1042

Abstract

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Abstract There is strong interest in developing predictive models to better understand individual heterogeneity and disease progression in Alzheimer's disease (AD). We have built upon previous longitudinal AD progression models, using a nonlinear, mixed‐effect modeling approach to predict Clinical Dementia Rating Scale – Sum of Boxes (CDR‐SB) progression. Data from the Alzheimer's Disease Neuroimaging Initiative (observational study) and placebo arms from four interventional trials (N = 1093) were used for model building. The placebo arms from two additional interventional trials (N = 805) were used for external model validation. In this modeling framework, CDR‐SB progression over the disease trajectory timescale was obtained for each participant by estimating disease onset time (DOT). Disease progression following DOT was described by both global progression rate (RATE) and individual progression rate (α). Baseline Mini‐Mental State Examination and CDR‐SB scores described the interindividual variabilities in DOT and α well. This model successfully predicted outcomes in the external validation datasets, supporting its suitability for prospective prediction and use in design of future trials. By predicting individual participants' disease progression trajectories using baseline characteristics and comparing these against the observed responses to new agents, the model can help assess treatment effects and support decision making for future trials.