| Literature DB >> 33707845 |
Xiaolin Sun1, Zhenhua Xu2, Yannan Feng1, Qingqing Yang2, Yan Xie2, Deqing Wang1, Yang Yu1.
Abstract
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. © Indian Society of Hematology and Blood Transfusion 2020.Entities:
Keywords: Big data; RBC inventory; Transfusion prediction; XGBoost model
Year: 2020 PMID: 33707845 PMCID: PMC7900290 DOI: 10.1007/s12288-020-01333-5
Source DB: PubMed Journal: Indian J Hematol Blood Transfus ISSN: 0971-4502 Impact factor: 0.900