Chinese Journal of Emergency and Critical Care Nursing ›› 2025, Vol. 6 ›› Issue (3): 380-384.doi: 10.3761/j.issn.2096-7446.2025.03.022
• Review • Previous Articles
WENG Chengjie(), PAN Xiangying, WANG Jinning, JIN Jiajia(
), ZHAO Xuehong
Received:
2024-05-16
Online:
2025-03-10
Published:
2025-03-03
WENG Chengjie, PAN Xiangying, WANG Jinning, JIN Jiajia, ZHAO Xuehong. Research progress on digitization and intelligence of ICU alarm management[J]. Chinese Journal of Emergency and Critical Care Nursing, 2025, 6(3): 380-384.
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