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预测伦敦哮喘发病高峰期:分位数回归模型的应用。

Forecasting peak asthma admissions in London: an application of quantile regression models.

机构信息

Monash University, Kuala Lumpur, Selangor Darul Ehsan, Malaysia.

出版信息

Int J Biometeorol. 2013 Jul;57(4):569-78. doi: 10.1007/s00484-012-0584-0. Epub 2012 Aug 12.

DOI:10.1007/s00484-012-0584-0
PMID:22886344
Abstract

Asthma is a chronic condition of great public health concern globally. The associated morbidity, mortality and healthcare utilisation place an enormous burden on healthcare infrastructure and services. This study demonstrates a multistage quantile regression approach to predicting excess demand for health care services in the form of asthma daily admissions in London, using retrospective data from the Hospital Episode Statistics, weather and air quality. Trivariate quantile regression models (QRM) of asthma daily admissions were fitted to a 14-day range of lags of environmental factors, accounting for seasonality in a hold-in sample of the data. Representative lags were pooled to form multivariate predictive models, selected through a systematic backward stepwise reduction approach. Models were cross-validated using a hold-out sample of the data, and their respective root mean square error measures, sensitivity, specificity and predictive values compared. Two of the predictive models were able to detect extreme number of daily asthma admissions at sensitivity levels of 76 % and 62 %, as well as specificities of 66 % and 76 %. Their positive predictive values were slightly higher for the hold-out sample (29 % and 28 %) than for the hold-in model development sample (16 % and 18 %). QRMs can be used in multistage to select suitable variables to forecast extreme asthma events. The associations between asthma and environmental factors, including temperature, ozone and carbon monoxide can be exploited in predicting future events using QRMs.

摘要

哮喘是一种全球性的重大公共卫生关注的慢性疾病。相关的发病率、死亡率和医疗保健利用给医疗基础设施和服务带来了巨大的负担。本研究采用多阶段分位数回归方法,利用来自医院病例统计数据、天气和空气质量的回顾性数据,预测伦敦哮喘每日住院人数的超额医疗服务需求。对哮喘每日住院人数进行了三变量分位数回归模型(QRM)拟合,考虑了数据中保留样本的季节性,对环境因素的 14 天范围的滞后进行了拟合。将有代表性的滞后值汇集在一起,形成多元预测模型,通过系统的逐步后退选择方法进行选择。使用数据的保留样本对模型进行交叉验证,并比较了各自的均方根误差、灵敏度、特异性和预测值。两个预测模型能够以 76%和 62%的灵敏度水平检测到每日哮喘住院人数的极端值,特异性分别为 66%和 76%。它们的阳性预测值对于保留样本(29%和 28%)略高于保留模型开发样本(16%和 18%)。QRMs 可以用于多阶段选择合适的变量来预测极端哮喘事件。哮喘与环境因素(包括温度、臭氧和一氧化碳)之间的关联可以通过 QRMs 用于预测未来事件。

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