Chinese Journal of Nursing ›› 2023, Vol. 58 ›› Issue (9): 1063-1067.DOI: 10.3761/j.issn.0254-1769.2023.09.006
• Special Planning—Nursing Informatization and Intelligent Construc-tion • Previous Articles Next Articles
XU Xuefen(), WANG Hongyan, GUO Pingping, WANG Yulu, FENG Suwen()
Received:
2022-09-15
Online:
2023-05-10
Published:
2023-05-10
Contact:
FENG Suwen
通讯作者:
冯素文
作者简介:
徐雪芬:女,硕士,主管护师,护士长,E-mail:5613024@zju.edu.cn
基金资助:
XU Xuefen, WANG Hongyan, GUO Pingping, WANG Yulu, FENG Suwen. Progress on the application of artificial intelligence in chronic disease health management[J]. Chinese Journal of Nursing, 2023, 58(9): 1063-1067.
徐雪芬, 王红燕, 郭萍萍, 王宇璐, 冯素文. 人工智能在慢性病患者健康管理中的应用进展[J]. 中华护理杂志, 2023, 58(9): 1063-1067.
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