Gecko: A time-series model for COVID-19 hospital admission forecasting

被引:7
作者
Panaggio, Mark J. [1 ]
Rainwater-Lovett, Kaitlin [1 ]
Nicholas, Paul J. [1 ]
Fang, Mike [1 ]
Bang, Hyunseung [1 ]
Freeman, Jeffrey [1 ]
Peterson, Elisha [1 ]
Imbriale, Samuel [2 ]
机构
[1] Johns Hopkins Univ, Appl Phys Lab, 11100 Johns Hopkins Rd, Laurel, MD 20723 USA
[2] US Dept HHS, Off Assistant Secretary Preparedness & Response, Washington, DC 20201 USA
关键词
SARS-CoV-2; Coronavirus disease; COVID-19; SARIMA; Forecasting; Time-series model; Hospitalization;
D O I
10.1016/j.epidem.2022.100580
中图分类号
R51 [传染病];
学科分类号
100401 ;
摘要
During the COVID-19 pandemic, concerns about hospital capacity in the United States led to a demand for models that forecast COVID-19 hospital admissions. These short-term forecasts were needed to support planning efforts by providing decision-makers with insight about future demands for health care capacity and resources. We present a SARIMA time-series model called Gecko developed for this purpose. We evaluate its historical performance using metrics such as mean absolute error, predictive interval coverage, and weighted interval scores, and compare to alternative hospital admission forecasting models. We find that Gecko outperformed baseline approaches and was among the most accurate models for forecasting hospital admissions at the state and national levels from January-May 2021. This work suggests that simple statistical methods can provide a viable alternative to traditional epidemic models for short-term forecasting.
引用
收藏
页数:8
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