Chinese Journal of Stroke ›› 2025, Vol. 20 ›› Issue (4): 385-390.DOI: 10.3969/j.issn.1673-5765.2025.04.001
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ZHOU Hongyu1,2, LI Zixiao1,2
Received:
2025-03-15
Online:
2025-04-20
Published:
2025-04-20
Contact:
LI Zixiao, E-mail: lizixiao2008@hotmail.com
周宏宇1,2,李子孝1,2
通讯作者:
李子孝 lizixiao2008@hotmail.com
基金资助:
CLC Number:
ZHOU Hongyu, LI Zixiao. Digital Biomarkers: Unlocking the Potential of Digital Intelligent Healthcare[J]. Chinese Journal of Stroke, 2025, 20(4): 385-390.
周宏宇, 李子孝. 数字生物标志物:打开数智医疗应用的钥匙[J]. 中国卒中杂志, 2025, 20(4): 385-390.
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