ARTICLE
20 May 2026

数字健康技术在谵妄患者应用的研究进展

颖 王1 宝樱 张1 营营 王1 锦泉 刘1
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1 空军军医大学第二附属医院麻醉手术科, 中国
© 2026 by the Author(s). Licensee Art and Technology, USA. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution -Noncommercial 4.0 International License (CC BY-NC 4.0) ( https://creativecommons.org/licenses/by-nc/4.0/ )
Abstract

谵妄是重症监护室及围手术期患者最常见的急性神经精神综合征,发病率高且与不良预后密切相关。近年来,数字健康技术为谵妄的连续监测与精准管理提供了创新解决方案。本文系统综述了数字健康技术在谵妄监测预警与精准干预中的应用进展,深入探讨多模态数据融合与智能决策支持的潜在机制,旨在突破传统床边评估的时空局限性,为构建覆盖全流程的智能化管理体系提供新的理论依据与研究思路。

Keywords
数字健康技术
谵妄
研究进展
References

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