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 Oct 2;24(1):1093. doi: 10.1186/s12879-024-09996-5.
Influenza outbreaks have occurred frequently these years, especially in the summer of 2022 when the number of influenza cases in southern provinces of China increased abnormally. However, the exact evidence of the driving factors involved in the prodrome period is unclear, posing great difficulties for early and accurate prediction in practical work.
In order to avoid the serious interference of strict prevention and control measures on the analysis of influenza influencing factors during the COVID-19 epidemic period, only the impact of meteorological and air quality factors on influenza A (H3N2) in Xiamen during the non coronavirus disease 2019 (COVID-19) period (2013/01/01-202/01/24) was analyzed using the distribution lag non-linear model. Phylogenetic analysis of influenza A (H3N2) during 2013-2022 was also performed. Influenza A (H3N2) was predicted through a random forest and long short-term memory (RF-LSTM) model via actual and forecasted meteorological and influenza A (H3N2) values.
Twenty nine thousand four hundred thirty five influenza cases were reported in 2022, accounting for 58.54% of the total cases during 2013-2022. A (H3N2) dominated the 2022 summer epidemic season, accounting for 95.60%. The influenza cases in the summer of 2022 accounted for 83.72% of the year and 49.02% of all influenza reported from 2013 to 2022. Among them, the A (H3N2) cases in the summer of 2022 accounted for 83.90% of all A (H3N2) reported from 2013 to 2022. Daily precipitation(20-50 mm), relative humidity (70-78%), low (≤ 3 h) and high (≥ 7 h) sunshine duration, air temperature (≤ 21 °C) and O concentration (≤ 30 µg/m, > 85 µg/m) had significant cumulative effects on influenza A (H3N2) during the non-COVID-19 period. The daily values of PRE, RHU, SSD, and TEM in the prodrome period of the abnormal influenza A (H3N2) epidemic (19-22 weeks) in the summer of 2022 were significantly different from the average values of the same period from 2013 to 2019 (P < 0.05). The minimum RHU value was 70.5%, the lowest TEM value was 16.0 °C, and there was no sunlight exposure for 9 consecutive days. The highest O concentration reached 164 µg/m. The range of these factors were consistent with the risk factor range of A (H3N2). The common influenza A (H3N2) variant genotype in 2022 was 3 C.2a1b.2a.1a. It was more accurate to predict influenza A (H3N2) with meteorological forecast values than with actual values only.
The extreme weather conditions of sustained low temperature and wet rain may have been important driving factors for the abnormal influenza A (H3N2) epidemic. A low vaccination rate, new mutated strains, and insufficient immune barriers formed by natural infections may have exacerbated this epidemic. Meteorological forecast values can aid in the early prediction of influenza outbreaks. This study can help relevant departments prepare for influenza outbreaks during extreme weather, provide a scientific basis for prevention strategies and risk warnings, better adapt to climate change, and improve public health.
近年来流感疫情频发,尤其是 2022 年夏季,中国南方省份流感病例异常增多。然而,在流行前期,确切的驱动因素证据尚不清楚,这给实际工作中的早期和准确预测带来了很大的困难。
为避免新冠肺炎疫情期间严格防控措施对流感影响因素分析的严重干扰,仅分析了 2013/01/01-2022/01/24 非新冠肺炎期间厦门地区甲型流感(H3N2)与气象和空气质量因素的关系,采用分布滞后非线性模型。对 2013-2022 年甲型流感(H3N2)进行了系统发育分析。通过实际和预测的气象及甲型流感(H3N2)值,利用随机森林和长短时记忆(RF-LSTM)模型对甲型流感(H3N2)进行预测。
2022 年共报告流感病例 29435 例,占 2013-2022 年总病例数的 58.54%。A(H3N2)是 2022 年夏季流行季的主要优势株,占 95.60%。2022 年夏季流感病例占全年的 83.72%,占 2013-2022 年所有流感报告的 49.02%。其中,2022 年夏季 A(H3N2)病例占 2013-2022 年所有 A(H3N2)报告的 83.90%。日降水量(20-50mm)、相对湿度(70-78%)、低(≤3h)和高(≥7h)日照时间、气温(≤21°C)和 O浓度(≤30µg/m,>85µg/m)在非新冠肺炎期间对甲型流感(H3N2)具有显著的累积效应。2022 年夏季甲型流感(H3N2)异常流行期(19-22 周)的 PRE、RHU、SSD 和 TEM 的日值与 2013-2019 年同期的平均值明显不同(P<0.05)。最低 RHU 值为 70.5%,最低 TEM 值为 16.0°C,连续 9 天无阳光照射,最高 O 浓度达到 164µg/m。这些因素的范围与 A(H3N2)的风险因素范围一致。2022 年常见的甲型流感(H3N2)变异基因型为 3C.2a1b.2a.1a。仅使用气象预报值预测甲型流感(H3N2)比仅使用实际值更准确。
持续低温多雨的极端天气条件可能是甲型流感(H3N2)异常流行的重要驱动因素。低疫苗接种率、新变异株以及自然感染形成的不足免疫屏障可能加剧了此次疫情。气象预报值有助于早期预测流感爆发。本研究可为相关部门在极端天气下做好流感爆发准备提供科学依据,为预防策略和风险预警提供科学依据,更好地适应气候变化,提高公众健康水平。