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一种用于急诊科需求建模与预测的多元时间序列方法。

A multivariate time series approach to modeling and forecasting demand in the emergency department.

作者信息

Jones Spencer S, Evans R Scott, Allen Todd L, Thomas Alun, Haug Peter J, Welch Shari J, Snow Gregory L

机构信息

Department of Biomedical Informatics, University of Utah, Health Sciences Education Building, 26 S 2000 E, Salt Lake City, UT 84112-5750, USA.

出版信息

J Biomed Inform. 2009 Feb;42(1):123-39. doi: 10.1016/j.jbi.2008.05.003. Epub 2008 May 17.

Abstract

STUDY OBJECTIVE

The goals of this investigation were to study the temporal relationships between the demands for key resources in the emergency department (ED) and the inpatient hospital, and to develop multivariate forecasting models.

METHODS

Hourly data were collected from three diverse hospitals for the year 2006. Descriptive analysis and model fitting were carried out using graphical and multivariate time series methods. Multivariate models were compared to a univariate benchmark model in terms of their ability to provide out-of-sample forecasts of ED census and the demands for diagnostic resources.

RESULTS

Descriptive analyses revealed little temporal interaction between the demand for inpatient resources and the demand for ED resources at the facilities considered. Multivariate models provided more accurate forecasts of ED census and of the demands for diagnostic resources.

CONCLUSION

Our results suggest that multivariate time series models can be used to reliably forecast ED patient census; however, forecasts of the demands for diagnostic resources were not sufficiently reliable to be useful in the clinical setting.

摘要

研究目的

本调查的目标是研究急诊科(ED)和住院部关键资源需求之间的时间关系,并开发多变量预测模型。

方法

收集了2006年来自三家不同医院的每小时数据。使用图形和多变量时间序列方法进行描述性分析和模型拟合。在提供急诊科人口普查和诊断资源需求的样本外预测能力方面,将多变量模型与单变量基准模型进行了比较。

结果

描述性分析显示,在所考虑的机构中,住院资源需求和急诊科资源需求之间几乎没有时间上的相互作用。多变量模型对急诊科人口普查和诊断资源需求提供了更准确的预测。

结论

我们的结果表明,多变量时间序列模型可用于可靠地预测急诊科患者人数;然而,诊断资源需求的预测不够可靠,无法在临床环境中发挥作用。

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