AI-Driven Innovations for Early Sepsis Detection by Combining Predictive Accuracy With Blood Count Analysis in an Emergency Setting: Retrospective Study (Preprint)
Tai‐Han Lin(Tri-Service General Hospital), Hung‐Sheng Shang(Tri-Service General Hospital), Cherng‐Lih Perng(Tri-Service General Hospital), Ming‐Jr Jian(Tri-Service General Hospital), Hsing‐Yi Chung(Tri-Service General Hospital), Chien-Wen Chen(Tri-Service General Hospital), Feng‐Yee Chang(Tri-Service General Hospital), Chih-Kai Chang, Sheng-Hui Tang(Tri-Service General Hospital), Hung-Hsin Lin(Tri-Service General Hospital), Pin-Ching Pan(Tri-Service General Hospital)
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