Saw Swee Hock School of Public Health, National University of Singapore and National University Health System, 12 Science Drive 2, 117549, Singapore; Environmental Health Institute, National Environment Agency, 11 Biopolis Way #06-05/08, Helios Block, 138667, Singapore.
Environmental Health Institute, National Environment Agency, 11 Biopolis Way #06-05/08, Helios Block, 138667, Singapore; Pre-hospital and Emergency Research Centre, Duke-NUS Medical School, 8 College Road, 169857, Singapore.
Int J Hyg Environ Health. 2021 May;234:113748. doi: 10.1016/j.ijheh.2021.113748. Epub 2021 Apr 13.
Acute respiratory infections (ARIs) are among the most common human illnesses globally. Previous studies that examined the associations between climate variability and ARIs or ARI pathogens have reported inconsistent findings. Few studies have been conducted in Southeast Asia to date, and the impact of climatic factors are not well-understood. This study aimed to investigate the short-term associations between climate variability and ARIs in Singapore.
We obtained reports of ARIs from all government primary healthcare services from 2005 to 2019 and analysed their dependence on mean ambient temperature, minimum temperature and maximum temperature using the distributed lag non-linear framework. Separate negative binomial regression models were used to estimate the association between each temperature (mean, minimum, maximum temperature) and ARIs, adjusted for seasonality and long-term trend, rainfall, relative humidity, public holidays and autocorrelations. For temperature variables and relative humidity we reported cumulative relative risks (RRs) at 10th and 90th percentiles compared to the reference value (centered at their medians) with corresponding 95% confidence intervals (CIs). For rainfall we reported RRs at 50th and 90th percentiles compared to 0 mm with corresponding 95% CIs.
Statistically significant inverse S-curve shaped associations were observed between all three temperature variables (mean, minimum, maximum) and ARIs. A decrease of 1.1 °C from the median value of 27.8 °C to 26.7 °C (10th percentile) in the mean temperature was associated with a 6% increase (RR: 1.06, 95% CI: 1.03 to 1.09) in ARIs. ARIs also increased at 23.9 °C (10th percentile) compared to 24.9 °C of minimum temperature (RR: 1.11, 95% CI: 1.07 to 1.16). The effect of maximum temperature for the same comparison (30.5 °C vs 31.7 °C) was non-significant (RR: 1.02, 95% CI: 0.99 to 1.05). An increase in ambient temperature to 28.9 °C (90th percentile) was associated with an 18% decrease (RR: 0.82, 95% CI: 0.80 to 0.83) in ARIs. Similarly, ARIs decreased with the same increase to 90th percentile in minimum (RR: 0.84, 95% CI: 0.80 to 0.87) and maximum (RR: 0.89, 95% CI: 0.86 to 0.93) temperatures. Rainfall was inversely associated with ARIs and displayed similar shape in all three temperature models. Relative humidity, on the other hand, exhibited a U-shaped relationship with ARIs.
Our findings suggest that lower temperatures increase the risk of ARIs. Anticipated extreme weather events that reduce ambient temperature can be used to inform increased healthcare resource allocation for ARIs.
急性呼吸道感染(ARI)是全球最常见的人类疾病之一。此前研究表明,气候变异性与 ARI 或 ARI 病原体之间存在关联,但研究结果并不一致。迄今为止,东南亚地区开展的此类研究较少,气候因素的影响也尚未明确。本研究旨在调查新加坡 ARI 与气候变异性之间的短期关联。
我们从 2005 年至 2019 年所有政府初级保健服务机构获取 ARI 报告,并使用分布式滞后非线性框架分析环境平均温度、最低温度和最高温度对 ARI 的影响。采用单独的负二项回归模型,调整季节性和长期趋势、降雨量、相对湿度、公共假期和自相关性,估计每种温度(平均、最低、最高温度)与 ARI 之间的关联。对于温度变量和相对湿度,我们报告了与参考值(以中位数为中心)相比,第 10 和 90 百分位数的累积相对风险(RR)及其相应的 95%置信区间(CI)。对于降雨量,我们报告了与 0 mm 相比,第 50 和 90 百分位数的 RR 及其相应的 95%CI。
我们观察到所有三种温度变量(平均、最低、最高)与 ARI 之间呈显著的反“S”形关联。与 27.8°C 的中位数相比,平均温度降低 1.1°C(至 26.7°C,第 10 百分位数),ARI 增加 6%(RR:1.06,95%CI:1.03 至 1.09)。与 24.9°C(最低温度第 10 百分位数)相比,最低温度为 23.9°C(第 10 百分位数)时,ARI 也会增加(RR:1.11,95%CI:1.07 至 1.16)。同样,对于相同的比较,最高温度的影响不显著(RR:1.02,95%CI:0.99 至 1.05)。环境温度升高至 28.9°C(第 90 百分位数),ARI 下降 18%(RR:0.82,95%CI:0.80 至 0.83)。类似地,ARI 随着最低(RR:0.84,95%CI:0.80 至 0.87)和最高(RR:0.89,95%CI:0.86 至 0.93)温度达到相同的第 90 百分位数而降低。降雨量与 ARI 呈负相关,且在三种温度模型中呈现出相似的形态。另一方面,相对湿度与 ARI 呈 U 形关系。
我们的研究结果表明,较低的温度会增加 ARI 的风险。预计会减少环境温度的极端天气事件可以用来告知 ARI 增加医疗保健资源分配。