Explainable Machine Learning Based a Packed Red Blood Cell Transfusion Prediction and Evaluation for Major Internal Medical Condition |
Lee, Seongbin
(College of Medicine, Konyang University)
Lee, Seunghee (Healthcare Data Science Center, Konyang University Hospital) Chang, Duhyeuk (Dept. of Computer Engineering Hansung University) Song, Mi-Hwa (School of Information and Communication Sciences, Semyung University) Kim, Jong-Yeup (College of Medicine, Konyang University) Lee, Suehyun (College of Medicine, Konyang University) |
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