Abstract
Abstract
Background
Forecasting new cases, hospitalizations, and disease-induced deaths is an important part of infectious disease surveillance and helps guide health officials in implementing effective countermeasures. For disease surveillance in the US, the Centers for Disease Control and Prevention (CDC) combine more than 65 individual forecasts of these numbers in an ensemble forecast at national and state levels. A similar initiative has been launched by the European CDC (ECDC) in the second half of 2021.
Methods
We collected data on CDC and ECDC ensemble forecasts of COVID-19 fatalities, and we compare them with easily interpretable “Euler” forecasts serving as a model-free benchmark that is only based on the local rate of change of the incidence curve. The term “Euler method” is motivated by the eponymous numerical integration scheme that calculates the value of a function at a future time step based on the current rate of change.
Results
Our results show that simple and easily interpretable “Euler” forecasts can compete favorably with both CDC and ECDC ensemble forecasts on short-term forecasting horizons of 1 week. However, ensemble forecasts better perform on longer forecasting horizons.
Conclusions
Using the current rate of change in incidences as estimates of future incidence changes is useful for epidemic forecasting on short time horizons. An advantage of the proposed method over other forecasting approaches is that it can be implemented with a very limited amount of work and without relying on additional data (e.g., data on human mobility and contact patterns) and high-performance computing systems.
Funder
horizon 2020 framework programme
swiss national fund
Swiss Federal Institute of Technology Zurich
Publisher
Springer Science and Business Media LLC
Reference21 articles.
1. The COVID-19 Forecast Hub. https://covid19forecasthub.org/, 2021. Accessed: 2021-02-17.
2. Ray et. al. Ensemble Forecasts of Coronavirus Disease 2019 (COVID-19) in the U.S. medRxiv, 2020.
3. European Covid-19 Forecast Hub. https://covid19forecasthub.eu/, 2021. Accessed: 2022-01-21.
4. Perc M, Gorišek Miksić N, Slavinec M, Stožer A. Forecasting Covid-19. Front Phys. 2020;8:127.
5. Appadu AR, Kelil AS, Tijani YO. Comparison of some forecasting methods for covid-19. Alexandria Eng J. 2021;60(1):1565–89.
Cited by
3 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献