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Forecasting prevalence and mortality of Alzheimer's disease using the partitioning models.

Publication ,  Journal Article
Akushevich, I; Yashkin, A; Kovtun, M; Kravchenko, J; Arbeev, K; Yashin, AI
Published in: Exp Gerontol
April 2023

OBJECTIVES: Health forecasting is an important aspect of ensuring that the health system can effectively respond to the changing epidemiological environment. Common models for forecasting Alzheimer's disease and related dementias (AD/ADRD) are based on simplifying methodological assumptions, applied to limited population subgroups, or do not allow analysis of medical interventions. This study uses 5 %-Medicare data (1991-2017) to identify, partition, and forecast age-adjusted prevalence and incidence-based mortality of AD as well as their causal components. METHODS: The core underlying methodology is the partitioning analysis that calculates the relative impact each component has on the overall trend as well as intertemporal changes in the strength and direction of these impacts. B-spline functions estimated for all parameters of partitioning models represent the basis for projections of these parameters in future. RESULTS: Prevalence of AD is predicted to be stable between 2017 and 2028 primarily due to a decline in the prevalence of pre-AD-diagnosis stroke. Mortality, on the other hand, is predicted to increase. In all cases the resulting patterns come from a trade-off of two disadvantageous processes: increased incidence and disimproved survival. Analysis of health interventions demonstrates that the projected burden of AD differs significantly and leads to alternative policy implications. DISCUSSION: We developed a forecasting model of AD/ADRD risks that involves rigorous mathematical models and incorporation of the dynamics of important determinative risk factors for AD/ADRD risk. The applications of such models for analyses of interventions would allow for predicting future burden of AD/ADRD conditional on a specific treatment regime.

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Published In

Exp Gerontol

DOI

EISSN

1873-6815

Publication Date

April 2023

Volume

174

Start / End Page

112133

Location

England

Related Subject Headings

  • United States
  • Risk Factors
  • Prevalence
  • Medicare
  • Incidence
  • Humans
  • Gerontology
  • Forecasting
  • Alzheimer Disease
  • Aged
 

Citation

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Akushevich, I., Yashkin, A., Kovtun, M., Kravchenko, J., Arbeev, K., & Yashin, A. I. (2023). Forecasting prevalence and mortality of Alzheimer's disease using the partitioning models. Exp Gerontol, 174, 112133. https://doi.org/10.1016/j.exger.2023.112133
Akushevich, I., A. Yashkin, M. Kovtun, J. Kravchenko, K. Arbeev, and A. I. Yashin. “Forecasting prevalence and mortality of Alzheimer's disease using the partitioning models.Exp Gerontol 174 (April 2023): 112133. https://doi.org/10.1016/j.exger.2023.112133.
Akushevich I, Yashkin A, Kovtun M, Kravchenko J, Arbeev K, Yashin AI. Forecasting prevalence and mortality of Alzheimer's disease using the partitioning models. Exp Gerontol. 2023 Apr;174:112133.
Akushevich, I., et al. “Forecasting prevalence and mortality of Alzheimer's disease using the partitioning models.Exp Gerontol, vol. 174, Apr. 2023, p. 112133. Pubmed, doi:10.1016/j.exger.2023.112133.
Akushevich I, Yashkin A, Kovtun M, Kravchenko J, Arbeev K, Yashin AI. Forecasting prevalence and mortality of Alzheimer's disease using the partitioning models. Exp Gerontol. 2023 Apr;174:112133.
Journal cover image

Published In

Exp Gerontol

DOI

EISSN

1873-6815

Publication Date

April 2023

Volume

174

Start / End Page

112133

Location

England

Related Subject Headings

  • United States
  • Risk Factors
  • Prevalence
  • Medicare
  • Incidence
  • Humans
  • Gerontology
  • Forecasting
  • Alzheimer Disease
  • Aged