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首页> 外文期刊>Transfusion: The Journal of the American Association of Blood Banks >Performance of time-series methods in forecasting the demand for red blood cell transfusion.
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Performance of time-series methods in forecasting the demand for red blood cell transfusion.

机译:时间序列方法在预测红细胞输血需求中的性能。

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BACKGROUND: Planning the future blood collection efforts must be based on adequate forecasts of transfusion demand. In this study, univariate time-series methods were investigated for their performance in forecasting the monthly demand for RBCs at one tertiary-care, university hospital. STUDY DESIGN AND METHODS: Three time-series methods were investigated: autoregressive integrated moving average (ARIMA), the Holt-Winters family of exponential smoothing models, and one neural-network-based method. The time series consisted of the monthly demand for RBCs from January 1988 to December 2002 and was divided into two segments: the older one was used to fit or train the models, and the younger to test for the accuracy of predictions. Performance was compared across forecasting methods by calculating goodness-of-fit statistics, the percentage of months in which forecast-based supply would have met the RBC demand (coverage rate), and the outdate rate. RESULTS: The RBC transfusion series was best fitted by a seasonal ARIMA(0,1,1)(0,1,1)(12) model. Over 1-year time horizons, forecasts generated by ARIMA or exponential smoothing laid within the +/- 10 percent interval of the real RBC demand in 79 percent of months (62% in the case of neural networks). The coverage rate for the three methods was 89, 91, and 86 percent, respectively. Over 2-year time horizons, exponential smoothing largely outperformed the other methods. Predictions by exponential smoothing laid within the +/- 10 percent interval of real values in 75 percent of the 24 forecasted months, and the coverage rate was 87 percent. CONCLUSION: Over 1-year time horizons, predictions of RBC demand generated by ARIMA or exponential smoothing are accurate enough to be of help in the planning of blood collection efforts. For longer time horizons, exponential smoothing outperforms the other forecasting methods.
机译:背景:规划未来的采血工作必须基于对输血需求的充分预测。在这项研究中,调查了单变量时间序列方法在预测一家三级医疗大学医院对RBC的每月需求方面的性能。研究设计和方法:研究了三种时间序列方法:自回归综合移动平均值(ARIMA),Holt-Winters指数平滑模型系列以及一种基于神经网络的方法。该时间序列由1988年1月至2002年12月的RBC每月需求组成,分为两个部分:较旧的一个用于拟合或训练模型,较年轻的用于预测预测的准确性。通过计算拟合优度统计数据,基于预测的供应量满足RBC需求的月份百分比(覆盖率)以及过时率,比较了各种预测方法的绩效。结果:RBC输血系列最适合季节性ARIMA(0,1,1)(0,1,1)(12)模型。在1年的时间范围内,由ARIMA或指数平滑法生成的预测在79%的月份中位于实际RBC需求的+/- 10%区间内(对于神经网络,则为62%)。三种方法的覆盖率分别为89%,91%和86%。在2年的时间范围内,指数平滑在很大程度上优于其他方法。通过指数平滑进行的预测位于24个预测月份中的75%的真实值的+/- 10%区间内,覆盖率为87%。结论:在1年的时间范围内,由ARIMA或指数平滑法生成的RBC需求的预测足够准确,有助于计划采血工作。对于更长的时间范围,指数平滑要优于其他预测方法。

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