Department of Epidemiology and Biostatistics, College of Public Health, Temple University, Philadelphia, PA 19122, USA.
Department of Preventive Medicine, Rush University Medical Center, Chicago, IL 60612, USA.
Int J Environ Res Public Health. 2022 Mar 19;19(6):3681. doi: 10.3390/ijerph19063681.
The current gold standard for detection of flu season onset in the USA is done retrospectively, where flu season is detected after it has already started. We aimed to create a new surveillance strategy capable of detecting flu season onset prior to its starting. We used an established data generation method that combines Google search volume and historical flu activity data to simulate real-time estimates of flu activity. We then applied a method known as change-point detection to the generated data to determine the point in time that identifies the initial uptick in flu activity which indicates the imminent onset of flu season. Our strategy exhibits a high level of accuracy in predicting the onset of flu season at 86%. Additionally, on average, we detected the onset three weeks prior to the official start of flu season. The results provide evidence to support both the feasibility and efficacy of our strategy to improve the current standard of flu surveillance. The improvement may provide valuable support and lead time for public health officials to take appropriate actions to prevent and control the spread of the flu.
目前美国检测流感季节开始的金标准是回顾性的,即在流感季节已经开始后才进行检测。我们旨在创建一种新的监测策略,能够在流感季节开始之前检测到它。我们使用了一种已建立的数据生成方法,该方法结合了谷歌搜索量和历史流感活动数据,以模拟流感活动的实时估计。然后,我们将一种称为变点检测的方法应用于生成的数据,以确定识别流感活动初始上升的时间点,这表明流感季节即将开始。我们的策略在预测流感季节开始时具有 86%的高精度。此外,平均而言,我们在流感季节正式开始前三周就检测到了流感季节的开始。这些结果为我们的策略提高当前流感监测标准的可行性和有效性提供了证据。这种改进可能为公共卫生官员提供有价值的支持和预警时间,以采取适当措施预防和控制流感的传播。