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A probabilistic projection of beneficiaries of long-term care insurance in Germany by severity of disability

[journal article]

Vanella, Patrizio
Heß, Moritz
Wilke, Christina B.

Abstract

Demographic aging puts social insurance systems under immense pressure as frailty risks increase with age. The statutory long-term care insurance in Germany (GPV), whose society has been aging for decades due to low fertility and decreasing mortality, faces massive future pressure. The present study... view more

Demographic aging puts social insurance systems under immense pressure as frailty risks increase with age. The statutory long-term care insurance in Germany (GPV), whose society has been aging for decades due to low fertility and decreasing mortality, faces massive future pressure. The present study presents a stochastic outlook on long-term care insurance in Germany until 2045 by forecasting the future number of frail persons who could claim insurance services by severity level with theory-based Monte Carlo simulations. The simulations result in credible intervals for age-, sex- and severity-specific care rates as well as the numbers of persons for all combinations of age, sex and severity by definition of the GPV on an annual basis. The model accounts for demographic trends through time series analysis and considers all realistic epidemiological developments by simulation. The study shows that increases in the general prevalence of disabilities, especially for severe disabilities, caused by the demographic development in Germany are unavoidable, whereas the influence of changes in age-specific care risks does not affect the outcome significantly. The results may serve as a basis for estimating the future demand for care nurses and the financial expenses of the GPV.... view less

Keywords
need for care; long-term care insurance; stochastics; prognosis; social policy; caregiving; personal services; recourse; morbidity; social insurance; population development; Federal Republic of Germany

Classification
Social Security
Population Studies, Sociology of Population

Free Keywords
Long-term care; Monte Carlo simulation; Disability risks; Human Mortality Database (2019); RDC of the Federal Statistical Office and Statistical Offices of the Länder, Pflegestatistik, 2017

Document language
English

Publication Year
2020

Page/Pages
p. 943-974

Journal
Quality & Quantity, 54 (2020) 3

DOI
https://doi.org/10.1007/s11135-020-00968-w

ISSN
1573-7845

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.