荟萃分析
相对风险
子群分析
医学
置信区间
系统回顾
随机效应模型
人口学
急诊医学
内科学
梅德林
化学
生物化学
社会学
作者
Xu Er,Yanni Li,Tingting Li,Qing Li
标识
DOI:10.1007/s11356-022-20508-3
摘要
Previous studies have quantified the associations between ambient temperature and dispatch of ambulances, but the conclusions are still controversial. Therefore, a systematic review and meta-analysis were conducted to summarize all the current evidence. A systematic review of published literature was undertaken to characterize the effect of temperature on ambulance dispatch. We completed the literature search by the end of January 5, 2022. The pooled estimates for different temperature exposures were calculated using a random effects model. Differences among temperature pooled estimates were determined using subgroup analysis. This study was registered with PROSPERO under the number CRD42021284434. This is the first meta-analysis investigating the association between temperature and ambulance dispatch. A total of 25 studies were eligible for this study. The overall increased risks of high temperature, expressed as relative risks, were 1.734 (95% CI: 1.481–2.031). Subgroup analysis found that for the study using daily mean temperature, the high temperature increased the risk of ambulance dispatch by 15.2% (RR = 1.152, 95%CI: 1.081–1.228). In the ambulance dispatch of all-cause subgroups, the RR was 1.179 (95% CI: 1.085–1.282). The results also reported a significant association between low temperature and ambulance dispatch (RR = 1.130, 95% CI: 1.052–1.213). In the subgroup, the RR for cardiovascular disease was 1.209 (95% CI: 1.033–1.414), and respiratory disease was 1.126 (95% CI: 1.012–1.253). Sensitivity analysis indicated that the results were robust, and no obvious publication bias was observed. High temperature and low temperature are important factors influencing the dispatch of ambulances. These findings help improve the understanding of temperature effect on ambulance dispatch, demonstrating the need to consider wider surveillance of acute health outcomes in different environments.
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