Omgaan met onzekerheden ten tijde van een pandemie maak adaptief beleid

Open Access
Authors
  • Marcel G.M. Olde Rikkert
  • EtiĆ«nne Rouwette
  • Hubert Korzilius
  • Tom Oreel
  • Rick Quax ORCID logo
  • Vincent Marchau
  • Heiman Wertheim
Publication date 06-02-2025
Journal Nederlands Tijdschrift voor Geneeskunde
Article number D8287
Volume | Issue number 169 | 2
Number of pages 7
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract

This article is a reflection on the covid-19 pandemic and the policy on medical and non-medical e.g. (lock down) measures, and on how we can anticipate earlier on for example effects on education and wellbeing of young people. We show that insights from complexity science are relevant for pandemic policy making and advocate use of resilience indicators, alternative computational models and deep uncertainty modeling. Time series of sick leave can act as resilience indicator in health care and showed large difference between acute care, long term care and mental health care in Dutch covid-19 pandemic. Instead of epidemiology based predict and act models, which mostly turn out to be incorrect, we developed alternative multiscale modelsto simulate interdomain effects. In sum, future pandemics policymaking can profit from adaptive decision making under deep uncertainty.

Document type Article
Language Dutch
Published at https://www.ntvg.nl/artikelen/omgaan-met-onzekerheden-ten-tijde-van-een-pandemie
Other links https://www.ntvg.nl/tijdschrift/ntvg-nummer-2-2025 https://www.scopus.com/pages/publications/85216571676
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