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首页> 外文期刊>Journal of healthcare engineering. >Comparison of Time Series Methods and Machine Learning Algorithms for Forecasting Taiwan Blood Services Foundation's Blood Supply
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Comparison of Time Series Methods and Machine Learning Algorithms for Forecasting Taiwan Blood Services Foundation's Blood Supply

机译:时间序列方法和机器学习算法预测台湾血液服务基金会的血液供应的比较

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摘要

Purpose. The uncertainty in supply and the short shelf life of blood products have led to a substantial outdating of the collected donor blood. On the other hand, hospitals and blood centers experience severe blood shortage due to the very limited donor population. Therefore, the necessity to forecast the blood supply to minimize outdating as well as shortage is obvious. This study aims to efficiently forecast the supply of blood components at blood centers. Methods. Two different types of forecasting techniques, time series and machine learning algorithms, are developed and the best performing method for the given case study is determined. Under the time series, we consider the Autoregressive (AUTOREG), Autoregressive Moving Average (ARMA), Autoregressive Integrated Moving Average (ARIMA), Seasonal ARIMA, Seasonal Exponential Smoothing Method (ESM), and Holt-Winters models. Artificial neural network (ANN) and multiple regression are considered under the machine learning algorithms. Results. We leverage five years worth of historical blood supply data from the Taiwan Blood Services Foundation (TBSF) to conduct our study. On comparing the different techniques, we found that time series forecasting methods yield better results than machine learning algorithms. More specifically, the least value of the error measures is observed in seasonal ESM and ARIMA models. Conclusions. The models developed can act as a decision support system to administrators and pathologists at blood banks, blood donation centers, and hospitals to determine their inventory policy based on the estimated future blood supply. The forecasting models developed in this study can help healthcare managers to manage blood inventory control more efficiently, thus reducing blood shortage and blood wastage.
机译:目的。血液产品供应的不确定性和较短的保质期已导致所采集的供体血液大大过时。另一方面,由于捐助者非常有限,医院和血液中心的血液严重短缺。因此,预测供血量以尽量减少过时和短缺的必要性显而易见。这项研究旨在有效地预测血液中心的血液成分供应。方法。开发了两种不同类型的预测技术,即时间序列和机器学习算法,并确定了针对给定案例研究的最佳执行方法。在时间序列下,我们考虑自回归(AUTOREG),自回归移动平均值(ARMA),自回归综合移动平均值(ARIMA),季节性ARIMA,季节性指数平滑方法(ESM)和Holt-Winters模型。在机器学习算法下考虑了人工神经网络(ANN)和多元回归。结果。我们利用来自台湾血液服务基金会(TBSF)的五年历史血液供应数据来进行我们的研究。通过比较不同的技术,我们发现时间序列预测方法比机器学习算法产生更好的结果。更具体地说,在季节性ESM和ARIMA模型中观察到了误差测量值的最小值。结论。开发的模型可以作为决策支持系统,供血库,献血中心和医院的管理人员和病理学家根据估计的未来血液供应确定其库存策略。本研究中开发的预测模型可以帮助医疗保健经理更有效地管理血液库存控制,从而减少血液短缺和血液浪费。

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