School of Public Health and Health Sciences, University of Massachusetts Amherst, Amherst, Massachusetts, USA.
College of Health, Lehigh University, Bethlehem, Pennsylvania, USA.
Stat Med. 2023 Nov 20;42(26):4696-4712. doi: 10.1002/sim.9884. Epub 2023 Aug 30.
The characteristics of influenza seasons vary substantially from year to year, posing challenges for public health preparation and response. Influenza forecasting is used to inform seasonal outbreak response, which can in turn potentially reduce the impact of an epidemic. The United States Centers for Disease Control and Prevention, in collaboration with external researchers, has run an annual prospective influenza forecasting exercise, known as the FluSight challenge. Uniting theoretical results from the forecasting literature with domain-specific forecasts from influenza outbreaks, we applied parametric forecast combination methods that simultaneously optimize model weights and calibrate the ensemble via a beta transformation and made adjustments to the methods to reduce their complexity. We used the beta-transformed linear pool, the finite beta mixture model, and their equal weight adaptations to produce ensemble forecasts retrospectively for the 2016/2017, 2017/2018, and 2018/2019 influenza seasons in the U.S. We compared their performance to methods that were used in the FluSight challenge to produce the FluSight Network ensemble, namely the equally weighted linear pool and the linear pool. Ensemble forecasts produced from methods with a beta transformation were shown to outperform those from the equally weighted linear pool and the linear pool for all week-ahead targets across in the test seasons based on average log scores. We observed improvements in overall accuracy despite the beta-transformed linear pool or beta mixture methods' modest under-prediction across all targets and seasons. Combination techniques that explicitly adjust for known calibration issues in linear pooling should be considered to improve probabilistic scores in outbreak settings.
流感季节的特征每年都有很大的不同,这给公共卫生的准备和应对带来了挑战。流感预测用于为季节性爆发做出响应,这反过来又有可能减轻疫情的影响。美国疾病控制与预防中心(CDC)与外部研究人员合作,开展了一项年度前瞻性流感预测活动,称为 FluSight 挑战赛。我们将预测文献中的理论结果与流感爆发的特定领域预测相结合,应用参数化预测组合方法,同时优化模型权重并通过 beta 变换对集合进行校准,并对方法进行调整以降低其复杂性。我们使用 beta 变换线性池、有限 beta 混合模型及其等权重适应方法,分别对 2016/2017、2017/2018 和 2018/2019 年美国流感季节进行了回溯式集合预测。我们将它们的性能与 FluSight 挑战赛中用于生成 FluSight Network 集合的方法进行了比较,即等权重线性池和线性池。基于平均对数分数,在测试季节中,对于所有提前一周的目标,基于 beta 变换的方法生成的集合预测均优于等权重线性池和线性池。尽管 beta 变换线性池或 beta 混合方法在所有目标和季节中都存在适度的预测不足,但我们观察到整体准确性有所提高。应该考虑使用明确调整线性池中已知校准问题的组合技术,以提高爆发情况下的概率评分。