红细胞成分短期需求预测与订购的决策集成策略

IF 1.5 Q3 HEALTH CARE SCIENCES & SERVICES
Na Li , Fei Chiang , Douglas G. Down , Nancy M. Heddle
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引用次数: 20

摘要

输血是世界范围内最重要和最常用的治疗方法之一。需要更准确和有效的方法来管理血液需求和供应,这是一个日益令人关切的问题。在现代卫生保健系统中,建立一个以技术为基础、强劲的血液需求和供应链至关重要,该供应链能够实现减少订购频率、库存水平、浪费和短缺的目标,同时保持血液使用的安全。在本研究中,我们总结了当前红细胞(rbc)需求和供应管理中的主要挑战。我们结合了统计时间序列建模、机器学习和运筹学的思想,通过集成使用临床预测因子的混合需求预测模型和考虑库存和再订货约束的数据驱动的多周期库存问题,开发了红细胞的订购决策策略。我们利用2008年至2018年的大型临床数据库,将综合订购策略应用于安大略省汉密尔顿的血液库存管理系统。提出的混合需求预测模型提供了稳健和准确的预测,并确定了短期RBC需求预测的重要临床预测因子。与实际的历史数据相比,我们的综合订货策略使库存水平降低了40%,订货频率降低了60%,缺货和过期损耗发生率低。如果成功实施,我们提出的策略可以为医疗保健系统和血液供应商节省大量成本。所提出的排序策略可推广到其他血液制品,甚至其他易腐产品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A decision integration strategy for short-term demand forecasting and ordering for red blood cell components

Blood transfusion is one of the most crucial and commonly administered therapeutics worldwide. The need for more accurate and efficient ways to manage blood demand and supply is an increasing concern. Building a technology-based, robust blood demand and supply chain that can achieve the goals of reducing ordering frequency, inventory level, wastage and shortage, while maintaining the safety of blood usage, is essential in modern healthcare systems. In this study, we summarize the key challenges in current demand and supply management for red blood cells (RBCs). We combine ideas from statistical time series modeling, machine learning, and operations research in developing an ordering decision strategy for RBCs, through integrating a hybrid demand forecasting model using clinical predictors and a data-driven multi-period inventory problem considering inventory and reorder constraints. We have applied the integrated ordering strategy to the blood inventory management system in Hamilton, Ontario using a large clinical database from 2008 to 2018. The proposed hybrid demand forecasting model provides robust and accurate predictions, and identifies important clinical predictors for short-term RBC demand forecasting. Compared with the actual historical data, our integrated ordering strategy reduces the inventory level by 40% and decreases the ordering frequency by 60%, with low incidence of shortages and wastage due to expiration. If implemented successfully, our proposed strategy can achieve significant cost savings for healthcare systems and blood suppliers. The proposed ordering strategy is generalizable to other blood products or even other perishable products.

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来源期刊
Operations Research for Health Care
Operations Research for Health Care HEALTH CARE SCIENCES & SERVICES-
CiteScore
3.90
自引率
0.00%
发文量
9
审稿时长
69 days
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