Fujian Provincial Center for Disease Control and Prevention, Fuzhou, Fujian, 350012, China.
School of Public Health, Fujian Medical University, Fuzhou, Fujian, 350011, China.
BMC Infect Dis. 2024 Aug 28;24(1):878. doi: 10.1186/s12879-024-09750-x.
At different times, public health faces various challenges and the degree of intervention measures varies. The research on the impact and prediction of meteorology factors on influenza is increasing gradually, however, there is currently no evidence on whether its research results are affected by different periods. This study aims to provide limited evidence to reveal this issue.
Daily data on influencing factors and influenza in Xiamen were divided into three parts: overall period (phase AB), non-COVID-19 epidemic period (phase A), and COVID-19 epidemic period (phase B). The association between influencing factors and influenza was analysed using generalized additive models (GAMs). The excess risk (ER) was used to represent the percentage change in influenza as the interquartile interval (IQR) of meteorology factors increases. The 7-day average daily influenza cases were predicted using the combination of bi-directional long short memory (Bi-LSTM) and random forest (RF) through multi-step rolling input of the daily multifactor values of the previous 7-day.
In periods A and AB, air temperature below 22 °C was a risk factor for influenza. However, in phase B, temperature showed a U-shaped effect on it. Relative humidity had a more significant cumulative effect on influenza in phase AB than in phase A (peak: accumulate 14d, AB: ER = 281.54, 95% CI = 245.47 ~ 321.37; A: ER = 120.48, 95% CI = 100.37 ~ 142.60). Compared to other age groups, children aged 4-12 were more affected by pressure, precipitation, sunshine, and day light, while those aged ≥ 13 were more affected by the accumulation of humidity over multiple days. The accuracy of predicting influenza was highest in phase A and lowest in phase B.
The varying degrees of intervention measures adopted during different phases led to significant differences in the impact of meteorology factors on influenza and in the influenza prediction. In association studies of respiratory infectious diseases, especially influenza, and environmental factors, it is advisable to exclude periods with more external interventions to reduce interference with environmental factors and influenza related research, or to refine the model to accommodate the alterations brought about by intervention measures. In addition, the RF-Bi-LSTM model has good predictive performance for influenza.
不同时期公共卫生面临的挑战不同,干预措施的程度也有所不同。气象因素对流感的影响及其预测的研究逐渐增多,但目前尚无证据表明其研究结果是否受到不同时期的影响。本研究旨在提供有限的证据来揭示这个问题。
将厦门的影响因素和流感的日数据分为三个部分:整体期(AB 期)、非 COVID-19 流行期(A 期)和 COVID-19 流行期(B 期)。采用广义加性模型(GAMs)分析影响因素与流感的关系。采用超额风险(ER)表示气象因素每增加一个四分位距(IQR)时流感的百分比变化。通过对前 7 天每日多因素值的多步滚动输入,采用双向长短期记忆(Bi-LSTM)和随机森林(RF)相结合的方法预测 7 天平均每日流感病例数。
在 A 期和 AB 期,低于 22°C 的气温是流感的危险因素。然而,在 B 期,温度对流感呈 U 型影响。相对湿度对 AB 期流感的累积影响大于 A 期(峰值:累积 14d,AB:ER=281.54,95%CI=245.47321.37;A:ER=120.48,95%CI=100.37142.60)。与其他年龄组相比,4-12 岁儿童受气压、降水、日照和日光影响更大,而≥13 岁儿童受多日湿度累积影响更大。在 A 期预测流感的准确率最高,在 B 期最低。
不同阶段采取的干预措施程度不同,导致气象因素对流感的影响以及流感预测结果存在显著差异。在呼吸道传染病特别是流感与环境因素的关联研究中,排除外部干预较多的时期可以减少环境因素对流感相关研究的干扰,或者细化模型以适应干预措施带来的变化。此外,RF-Bi-LSTM 模型对流感具有良好的预测性能。