Climate Change Research Centre, UNSW Australia, Sydney, NSW, Australia.
ARC Centre of Excellence for Climate System Science, UNSW Australia, Sydney, NSW, Australia.
Int J Biometeorol. 2018 Mar;62(3):423-432. doi: 10.1007/s00484-017-1451-9. Epub 2017 Sep 30.
Various human heat stress indices have been developed to relate atmospheric measures of extreme heat to human health impacts, but the usefulness of different indices across various health impacts and in different populations is poorly understood. This paper determines which heat stress indices best fit hospital admissions for sets of cardiovascular, respiratory, and renal diseases across five Australian cities. We hypothesized that the best indices would be largely dependent on location. We fit parent models to these counts in the summers (November-March) between 2001 and 2013 using negative binomial regression. We then added 15 heat stress indices to these models, ranking their goodness of fit using the Akaike information criterion. Admissions for each health outcome were nearly always higher in hot or humid conditions. Contrary to our hypothesis that location would determine the best-fitting heat stress index, we found that the best indices were related largely by health outcome of interest, rather than location as hypothesized. In particular, heatwave and temperature indices had the best fit to cardiovascular admissions, humidity indices had the best fit to respiratory admissions, and combined heat-humidity indices had the best fit to renal admissions. With a few exceptions, the results were similar across all five cities. The best-fitting heat stress indices appear to be useful across several Australian cities with differing climates, but they may have varying usefulness depending on the outcome of interest. These findings suggest that future research on heat and health impacts, and in particular hospital demand modeling, could better reflect reality if it avoided "all-cause" health outcomes and used heat stress indices appropriate to specific diseases and disease groups.
已经开发出各种人类热应激指数,将极端炎热天气的大气测量值与人类健康影响联系起来,但不同指数在不同健康影响和不同人群中的适用性仍知之甚少。本文旨在确定哪些热应激指数最适合澳大利亚五个城市的一系列心血管、呼吸和肾脏疾病的住院人数。我们假设最佳指数在很大程度上取决于地点。我们使用负二项回归模型,对 2001 年至 2013 年夏季(11 月至 3 月)的住院人数进行拟合。然后,我们在这些模型中加入了 15 种热应激指数,根据赤池信息量准则(Akaike information criterion)来衡量它们的拟合优度。在炎热或潮湿的条件下,各种健康结果的住院人数都较高。与我们的假设相反,即位置会决定最合适的热应激指数,我们发现最佳指数主要与所关注的健康结果有关,而不是像假设的那样与位置有关。具体来说,热浪和温度指数与心血管疾病的住院人数拟合度最高,湿度指数与呼吸道疾病的住院人数拟合度最高,而综合热湿度指数与肾脏疾病的住院人数拟合度最高。除了少数例外,结果在所有五个城市中都相似。在气候不同的几个澳大利亚城市中,最佳拟合的热应激指数似乎都很有用,但它们的有用性可能因关注的结果而异。这些发现表明,如果未来的热与健康影响研究,特别是医院需求建模,避免使用“全因”健康结果,并使用适合特定疾病和疾病群体的热应激指数,那么研究结果可能更符合实际情况。