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

    Date
    2012-08-12
    Author
    Soyiri, Ireneous N.
    Reidpath, Daniel
    Sarran, Christophe
    Metadata
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    Citation
    Soyiri, I.N., Reidpath, D.D. and Sarran, C. (2013) ‘Forecasting peak asthma admissions in London: an application of quantile regression models’, International Journal of Biometeorology, 57(4), pp. 569–578. Available at: https://doi.org/10.1007/s00484-012-0584-0.
    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.
    URI
    https://eresearch.qmu.ac.uk/handle/20.500.12289/13044
    Official URL
    https://doi.org/10.1007/s00484-012-0584-0
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