[1]黄艳玲唐欣芝周如华顾则娟杨磊苏子雯.心力衰竭临床决策支持系统临床应用效果分析[J].中国卫生质量管理,2021,28(11):029-33.[doi:10.13912/j.cnki.chqm.2021.28.11.07 ]
 HUANG Yanling,TANG Xinzhi,ZHOU Ruhua.Clinical Effectiveness of Clinical Decision Support Systems for Heart Failure: A Systematic Review[J].Chinese Health Quality Management,2021,28(11):029-33.[doi:10.13912/j.cnki.chqm.2021.28.11.07 ]
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心力衰竭临床决策支持系统临床应用效果分析
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《中国卫生质量管理》[ISSN:1006-7515/CN:CN 61-1283/R]

卷:
第28卷
期数:
2021年11期
页码:
029-33
栏目:
医疗质量
出版日期:
2021-11-28

文章信息/Info

Title:
Clinical Effectiveness of Clinical Decision Support Systems for Heart Failure: A Systematic Review
作者:
黄艳玲唐欣芝周如华顾则娟杨磊苏子雯
南京中医药大学护理学院
Author(s):
HUANG YanlingTANG XinzhiZHOU Ruhua
School of Nursing, Nanjing University of Chinese Medicine
关键词:
临床决策支持系统心力衰竭临床应用系统综述
Keywords:
Clinical Decision Support System Heart Failure Clinical Application Systematic Review
分类号:
R197.324;R541.5
DOI:
10.13912/j.cnki.chqm.2021.28.11.07
文献标志码:
A
摘要:
目的系统总结国内外心力衰竭临床决策支持系统临床应用现状与效果,为我国开展相关研究提供参考。方法检索中英文数据库中心力衰竭临床决策支持系统相关文献,检索时限为建库至2021年4月。采用Cochrane RoB工具、JBI清单、CASP清单等工具评价文献质量。结果共纳入27篇文献。心力衰竭临床决策支持系统在协助临床诊断、识别早期风险、协助调整用药方案、提高患者自我管理能力、提高医护患对指南的依从性和临床决策效率等方面具有积极影响。结论心力衰竭临床决策支持系统在临床实践中发挥了积极作用,但在系统内容设计、适用对象和服务范围、评价工具方面仍需完善。
Abstract:
ObjectiveTo systematically summarize the status and effects of clinical application of heart failure clinical decision support system, and provide reference for relevant research in China.MethodsLiteratures related to clinical decision support system for heart failure were searched from Chinese and English database.The search time is from the establishment of the database to April 2021. The Cochrane RoB, JBI inventory, CASP inventory and other tools were used to evaluate the literature quality.ResultsA total of 27 studies were included.The heart failure clinical decision support system had a positive impact on improving clinical diagnosis, early identification of heart failure risk, adjustment of medication regimens, improving patient self-management, improving adherence to evidence-based recommendations and clinical decision making efficiency.Conclusion The clinical decision support system for heart failure played a positive role in clinical practice, but it still needed to be improved in system content design, applicable objects and service scope, evaluation tools.

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更新日期/Last Update: 2021-11-28