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Forecasting asthma-related hospital admissions in London using negative binomial models

机译:使用负二项式模型预测伦敦的哮喘相关住院人数

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Health forecasting can improve health service provision and individual patient outcomes. Environmental factors are known to impact chronic respiratory conditions such as asthma, but little is known about the extent to which these factors can be used for forecasting. Using weather, air quality and hospital asthma admissions, in London (2005–2006), two related negative binomial models were developed and compared with a naive seasonal model. In the first approach, predictive forecasting models were fitted with 7-day averages of each potential predictor, and then a subsequent multivariable model is constructed. In the second strategy, an exhaustive search of the best fitting models between possible combinations of lags (0–14?days) of all the environmental effects on asthma admission was conducted. Three models were considered: a base model (seasonal effects), contrasted with a 7-day average model and a selected lags model (weather and air quality effects). Season is the best predictor of asthma admissions. The 7-day average and seasonal models were trivial to implement. The selected lags model was computationally intensive, but of no real value over much more easily implemented models. Seasonal factors can predict daily hospital asthma admissions in London, and there is a little evidence that additional weather and air quality information would add to forecast accuracy.
机译:健康预测可以改善健康服务的提供和个别患者的结局。已知环境因素会影响诸如哮喘等慢性呼吸系统疾病,但对于这些因素可用于预测的程度知之甚少。在伦敦(2005-2006年),利用天气,空气质量和医院哮喘住院率,开发了两个相关的负二项式模型,并将其与单纯的季节性模型进行了比较。在第一种方法中,将预测预测模型与每个潜在预测变量的7天平均值拟合,然后构建后续的多变量模型。在第二种策略中,对所有环境影响哮喘发作的延迟(0-14天)的可能组合之间的最佳拟合模型进行了详尽的搜索。考虑了三个模型:一个基本模型(季节性影响),与一个7天平均模型相比,一个选定的滞后模型(天气和空气质量影响)。季节是哮喘入院的最佳预测指标。 7天的平均和季节性模型实施起来很简单。选定的滞后模型需要大量的计算,但在更容易实现的模型上没有实际价值。季节性因素可以预测伦敦每天的住院哮喘病住院人数,而且几乎没有证据表明额外的天气和空气质量信息会增加预测的准确性。

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