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Development of blood demand prediction model using artificial intelligence based on national public big data

Title
Development of blood demand prediction model using artificial intelligence based on national public big data
Authors
KwonHi JeongParkSholhuiYoung HoonBaikSeung MinDong Jin
Ewha Authors
박설희박영훈백승민
SCOPUS Author ID
박설희scopus; 박영훈scopus; 백승민scopusscopus
Issue Date
2024
Journal Title
Digital Health
ISSN
2055-2076JCR Link
Citation
Digital Health vol. 10
Keywords
artificial intelligencebig databoosting modelprediction modelTransfusion
Publisher
SAGE Publications Inc.
Indexed
SCIE; SSCI; SCOPUS WOS scopus
Document Type
Article
Abstract
Objective: Modern healthcare systems face challenges related to the stable and sufficient blood supply of blood due to shortages. This study aimed to predict the monthly blood transfusion requirements in medical institutions using an artificial intelligence model based on national open big data related to transfusion. Methods: Data regarding blood types and components in Korea from January 2010 to December 2021 were obtained from the Health Insurance Review and Assessment Service and Statistics Korea. The data were collected from a single medical institution. Using the obtained information, predictive models were developed, including eXtreme Gradient Boosting (XGBoost), Light Gradient Boosting Machine (LGBM), and category boosting (CatBoost). An ensemble model was created using these three models. Results: The prediction performance of XGBoost, LGBM, and CatBoost demonstrated a mean absolute error ranging from 14.6657 for AB+ red blood cells (RBCs) to 84.0433 for A+ platelet concentrate (PC) and a root mean squared error ranging from 18.5374 for AB+ RBCs to 118.6245 for B+ PC. The error range was further improved by creating ensemble models, wherein the department requesting blood was the most influential parameter affecting transfusion prediction performance for different blood products and types. Except for the department, the features that affected the prediction performance varied for each product and blood type, including the number of RBC antibody screens, crossmatch, nationwide blood donations, and surgeries. Conclusion: Based on blood-related open big data, the developed blood-demand prediction algorithm can efficiently provide medical facilities with an appropriate volume of blood ahead of time. © The Author(s) 2024.
DOI
10.1177/20552076231224245
Appears in Collections:
의료원 > 의료원 > Journal papers
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