基于预测模型的血液成分需求预测

IF 1.4 4区 医学 Q4 HEMATOLOGY
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引用次数: 0

摘要

背景充足的血液供应是挽救生命、保护健康的重要保障。为了在供需条件不确定的情况下更有效地管理血液供应,对血液资源需求进行预测非常重要。将血液成分采集和供应数据直接导入预测模型,实现数据自动更新和模型自动更新。结果预测模型具有良好的预测性能。在无细胞血小板模型的拟合结果中,决定系数(R2)的最大值可达 87.6%,平均绝对百分比误差(MAPE)的最小值仅为 0.0037。洗涤红细胞的预测数据基本拟合,MAPE 为 0.0121。对于悬浮红细胞的预测,R2 大于 66%,MAPE 为 0.0372。血浆模型的拟合优度非常高,R2 超过 90%,MAPE 最低,为 0.0394。结论根据历史数据预测不同血液成分未来需求的预测模型可以帮助管理人员更有效地克服血液库存控制的挑战,从而减少血液浪费和血液短缺。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting demands of blood components based on prediction models

Background

An adequate blood supply is an important guarantee for saving lives and protecting health. In order to manage the blood supply more effectively when the condition of demand and supply are uncertainty, it is very important to forecast the demands of blood resources.

Materials and methods

SARIMAX model and LSTM model were integrated into the prediction system of blood station. The collection and supply data of blood components was directly imported into the forecasting models to achieve automatic data update and model update. The forecasting daily demands of apheresis platelets, washing red blood cells (RBCs), suspended RBCs and plasma were recorded from January to June 2023 and compared with real data.

Results

The prediction models had good forecasting performances. In the goodness of fit results of apheresis platelet model, the maximum value of coefficient of determination (R2) could reach 87.6%, and the minimum value of the mean absolute percentage error (MAPE) was only 0.0037. The predicted data of washing RBCs could be basically fitted, and the MAPE was 0.0121. For the prediction of suspended RBCs, the R2 was greater than 66%, and the MAPE could be 0.0372. The plasma model generated very high goodness of fit results, with R2 of over 90% and the lowest MAPE of 0.0394.

Conclusion

The forecasting models, which predicts future demands of different blood components based on historical data, can help managers to overcome the challenges of blood stock control more effectively, thereby reducing blood waste and blood shortages.

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来源期刊
CiteScore
2.50
自引率
11.80%
发文量
234
审稿时长
36 days
期刊介绍: Transfusion Clinique et Biologique, the official journal of the French Society of Blood Transfusion (SFTS): - an aid to training, at a European level - the only French journal indexed in the hematology and immunology sections of Current Contents Transfusion Clinique et Biologique spans fundamental research and everyday practice, with articles coming from both sides. Articles, reviews, case reports, letters to the editor and editorials are published in 4 editions a year, in French or in English, covering all scientific and medical aspects of transfusion: immunology, hematology, infectious diseases, genetics, molecular biology, etc. And finally, a convivial cross-disciplinary section on training and information offers practical updates. Readership: "Transfusers" are many and various: anesthetists, biologists, hematologists, and blood-bank, ICU and mobile emergency specialists...
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