Scientific advice to the UK government throughout the COVID-19 pandemic has been informed by ensembles of epidemiological models provided by members of the Scientific Pandemic Influenza group on Modelling (SPI-M). Among other applications, the model ensembles have been used to forecast daily incidence, deaths and hospitalizations. The models differ in approach (e.g. deterministic or agent-based) and in assumptions made about the disease and population. These differences capture genuine uncertainty in the understanding of disease dynamics and in the choice of simplifying assumptions underpinning the model. Although analyses of multi-model ensembles can be logistically challenging when time-frames are short, accounting for structural uncertainty can improve accuracy and reduce the risk of over-confidence in predictions. In this study, we compare the performance of various ensemble methods to combine short-term (14 day) COVID-19 forecasts within the context of the pandemic response. We address practical issues around the availability of model predictions and make some initial proposals to address the short-comings of standard methods in this challenging situation.
翻译:在整个COVID-19大流行期间,向联合王国政府提供科学咨询意见的依据是模型模型科学大流行性流感小组(SPI-M)成员提供的流行病学模型组合。模型组合用于预测每日发病率、死亡率和住院率,模型组合在方法上(例如确定性或以代理物为基础)和对疾病和人口所作的假设上各不相同。这些差异在了解疾病动态和选择支持模型的简化假设方面确实具有不确定性。虽然在时间框架短时对多模型组合进行分析在后勤上可能具有挑战性,但核算结构不确定性可以提高准确性,减少预测中过度自信的风险。在这项研究中,我们比较了各种共同方法的绩效,以便在应对流行病方面结合短期(14天)COVID-19预测。我们讨论了关于提供模型预测的实际问题,并提出一些初步建议,以解决这一挑战性情况下标准方法的短期问题。