Sun Xiaolin, Xu Zhenhua, Feng Yannan, Yang Qingqing, Xie Yan, Wang Deqing, Yu Yang
Department of Blood Transfusion, Chinese PLA General Hospital, No. 28, Fuxing Rd, Beijing, 100853 China.
HealSci Technology Co., Ltd, 1606, Tower5, 2 Rong Hua South Road, BDA, Beijing, 100176 China.
Indian J Hematol Blood Transfus. 2021 Jan;37(1):126-133. doi: 10.1007/s12288-020-01333-5. Epub 2020 Nov 2.
It is difficult to predict RBC consumption accurately. This paper aims to use big data to establish a XGBoost Model to understand the trend of RBC accurately, and forecast the demand in time. XGBoost, which implements machine learning algorithms under the Gradient Boosting framework can provide a parallel tree boosting. The daily RBC usage and inventory (May 2014-September 2017) were investigated, and rules for RBC usage were analysed. All data were divided into training sets and testing sets. A XGBoost Model was established to predict the future RBC demand for durations ranging from a day to a week. In addition, the alert range was added to the predicted value to ensure RBC demand of emergency patients and surgical accidents. The gap between RBC usage and inventory was fluctuant, and had no obvious rule. The maximum residual inventory of a certain blood group was up to 700 units one day, while the minimum was nearly 0 units. Upon comparing MAE (mean absolute error):A:10.69, B:11.19, O:10.93, and AB:5.91, respectively, the XGBoost Model was found to have a predictive advantage over other state-of-the-art approaches. It showed the model could fit the trend of daily RBC usage. An alert range could manage the demand of emergency patients or surgical accidents. The model had been built to predict RBC demand, and the alert range of RBC inventory is designed to increase the safety of inventory management.
准确预测红细胞的消耗量很困难。本文旨在利用大数据建立一个XGBoost模型,以准确了解红细胞的消耗趋势,并及时预测需求。XGBoost在梯度提升框架下实现机器学习算法,可提供并行树提升。研究了2014年5月至2017年9月期间红细胞的每日使用量和库存量,并分析了红细胞的使用规则。所有数据被分为训练集和测试集。建立了一个XGBoost模型,用于预测未来一天到一周内的红细胞需求量。此外,在预测值中增加了警报范围,以确保急诊患者和手术意外的红细胞需求。红细胞使用量和库存量之间的差距波动不定,没有明显规律。某一血型的最大剩余库存量一天可达700单位,而最小则接近0单位。通过比较平均绝对误差(MAE):A为10.69,B为11.19,O为10.93,AB为5.91,发现XGBoost模型比其他现有先进方法具有预测优势。结果表明该模型能够拟合红细胞的每日使用趋势。警报范围可以管理急诊患者或手术意外的需求。该模型用于预测红细胞需求,而红细胞库存的警报范围旨在提高库存管理的安全性。