认知负荷理论视角下重症感染临床决策支持 系统的研究进展
Research Progress on Clinical Decision Support Systems for Severe Infection from the Perspective of Cognitive Load Theory
DOI: 10.12677/acm.2026.1651913, PDF,   
作者: 陈丽红:丽水学院医学院,浙江 丽水;楼娟花:丽水学院附属第一医院老年科,浙江 丽水;严 平*:丽水学院附属第一医院护理部,浙江 丽水
关键词: 重症感染重症监护脓毒症认知负荷理论临床决策支持系统护理决策Severe Infection Intensive Care Sepsis Cognitive Load Theory Clinical Decision Support System Nursing Decision-Making
摘要: 认知负荷理论为复杂临床决策情境中的信息加工提供了理论框架。本文从认知负荷理论视角综述重症感染相关临床决策支持系统的类型、应用现状及效果,探讨其存在的问题与优化方向,以期为重症感染护理评估、预警响应、集束化措施落实及护理信息系统优化提供参考。
Abstract: Cognitive load theory provides a theoretical framework for information processing in complex clinical decision-making contexts. This review summarizes the types, application status, and effects of clinical decision support systems related to severe infection from the perspective of cognitive load theory, explores their existing problems and optimization directions, and aims to provide references for nursing assessment, early warning response, implementation of bundle measures, and optimization of nursing information systems in severe infection.
文章引用:陈丽红, 楼娟花, 严平. 认知负荷理论视角下重症感染临床决策支持 系统的研究进展[J]. 临床医学进展, 2026, 16(5): 1138-1145. https://doi.org/10.12677/acm.2026.1651913

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