Odum School of Ecology and Center for the Ecology of Infectious Diseases, University of Georgia, Athens, GA, USA.
J R Soc Interface. 2022 Feb;19(187):20210702. doi: 10.1098/rsif.2021.0702. Epub 2022 Feb 16.
Short-term forecasts of the dynamics of coronavirus disease 2019 (COVID-19) in the period up to its decline following mass vaccination was a task that received much attention but proved difficult to do with high accuracy. However, the availability of standardized forecasts and versioned datasets from this period allows for continued work in this area. Here, we introduce the Gaussian infection state space with time dependence (GISST) forecasting model. We evaluate its performance in one to four weeks ahead forecasts of COVID-19 cases, hospital admissions and deaths in the state of California made with official reports of COVID-19, Google's mobility reports and vaccination data available each week. Evaluation of these forecasts with a weighted interval score shows them to consistently outperform a naive baseline forecast and often score closer to or better than a high-performing ensemble forecaster. The GISST model also provides parameter estimates for a compartmental model of COVID-19 dynamics, includes a regression submodel for the transmission rate and allows for parameters to vary over time according to a random walk. GISST provides a novel, balanced combination of computational efficiency, model interpretability and applicability to large multivariate datasets that may prove useful in improving the accuracy of infectious disease forecasts.
短期预测 2019 年冠状病毒病 (COVID-19) 的动态,直到大规模接种疫苗后下降,这是一个备受关注但难以高精度完成的任务。然而,在此期间,标准化预测和版本数据集的可用性允许继续在该领域开展工作。在这里,我们引入了具有时间依赖性的高斯感染状态空间 (GISST) 预测模型。我们使用 COVID-19 的官方报告、谷歌的移动性报告和每周提供的疫苗接种数据,评估了该模型在加利福尼亚州 COVID-19 病例、住院和死亡的一到四周内预测的性能。使用加权区间评分对这些预测进行评估表明,它们始终优于简单的基线预测,并且通常接近或优于高性能的集合预测器。GISST 模型还为 COVID-19 动力学的房室模型提供了参数估计,包括一个用于传播率的回归子模型,并允许根据随机游走随时间变化参数。GISST 提供了一种新颖、平衡的计算效率、模型可解释性和适用于大型多元数据集的组合,这可能有助于提高传染病预测的准确性。