Chinese Journal of Nursing ›› 2024, Vol. 59 ›› Issue (3): 378-384.DOI: 10.3761/j.issn.0254-1769.2024.03.018
• Review • Previous Articles
HU Huanting(
), HONG Sisi, JIA Yingying, SONG Jianping(
)
Received:2023-03-24
Online:2024-02-10
Published:2024-02-02
Contact:
SONG Jianping
通讯作者:
宋剑平
作者简介:胡欢婷:女,本科(硕士在读),E-mail:2435722830@qq.com
基金资助:HU Huanting, HONG Sisi, JIA Yingying, SONG Jianping. Research progress on application of machine learning in discharge preparation service for patients[J]. Chinese Journal of Nursing, 2024, 59(3): 378-384.
胡欢婷, 洪思思, 贾盈盈, 宋剑平. 机器学习在患者出院准备服务中的应用进展[J]. 中华护理杂志, 2024, 59(3): 378-384.
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