中国血液净化 ›› 2024, Vol. 23 ›› Issue (06): 466-469.doi: 10.3969/j.issn.1671-4091.2024.06.015

• 护理研究 • 上一篇    下一篇

计算机视觉血液透析感染防控行为监测系统在血液透析中心的临床应用及效果评价

傅恩琴  干铁儿  胡守慈  郑 月   张玲莉   

  1. 310006 杭州,浙江中医药大学附属第一医院(浙江省中医院)1透析中心 2医院感染管理科
  • 收稿日期:2024-01-15 修回日期:2024-03-06 出版日期:2024-06-12 发布日期:2024-06-12
  • 通讯作者: 傅恩琴 E-mail:13588871003@163.com
  • 基金资助:
    浙江省卫生医药科技计划(2021KY820);浙江省中医药科技计划(2022ZB141)

Clinical application and effect assessment of hemodialysis infection control behavior monitoring system using computer vision in a hemodialysis center

FU En-qin, GAN Tie-er, HU Shou-ci, ZHENG Yue, ZHANG Ling-li   

  1. Dialysis Center, and 2Department of Nosocomial Infection Management, The First Affiliated Hospital of Zhejiang Chinese Medical University (Zhejiang Provincial Hospital of Chinese Medicine), Hangzhou 310006, China
  • Received:2024-01-15 Revised:2024-03-06 Online:2024-06-12 Published:2024-06-12
  • Contact: 310006 杭州,浙江中医药大学附属第一医院(浙江省中医院)1透析中心 E-mail:13588871003@163.com

摘要: 目的 探讨计算机视觉血液透析感染防控监测系统在血液透析操作感染防控关键行为规范识别与人工观察的一致性及临床应用效果。 方法 抽取2022年9月─12月血液透析中心护士血液透析上下机操作198人次为研究对象。将系统实时记录规范动作定为计算机组,人工回顾系统视频规范动作定为人工组;系统使用前后同一护士血液透析上下机操作感控关键行为分为干预前和干预后;验证计算机组和人工组血液透析上下机操作一级指标,二级指标规范识别的一致性,比较系统使用前后同一护士血液透析上下机操作感控关键行为的规范率。 结果 共观察血液透析上下机操作198人次,2组一级指标:血液透析内瘘/导管上下机操作规范识别一致性较强[内瘘上机kappa值=0.718;内瘘下机kappa值=0.714;导管上机kappa值=0.788;导管下机kappa值=0.712]。二级指标:断开导管一致性较差(kappa值=0.173);戴手套一致性一般(kappa值=0.243);导管连接一致性一般(kappa值=0.305);内瘘/导管消毒一致性中等(kappa值=0.556);手卫生执行一致性中等(kappa值=0.590)。干预后护士血液透析上机规范消毒、待干时间、手卫生、通路评估规范率优于对照组(χ2=8.156,P=0.004;χ2=30.462,P<0.001;    χ2=21.023,P<0.001;χ2=23.522,P<0.001);戴手套及连接导管规范率(χ2=1.823,P=0.177;χ2=0.410,   P=0.520)比较无统计学差异;干预后护士血液透析下机操作中的规范消毒、手卫生执行规范率优于对照组(χ2=4.444,P=0.035;χ2=17.770,P<0.001);干预前后戴手套、断开导管、待干时间规范率比较无统计学差异(χ2=1.309,P=0.253;χ2=3.220,P=0.073;χ2=2.254,P=0.133)。 结论 计算机视觉血液透析感染防控行为监测系统记录护士在血液透析上下机操作规范识别与人工观察较为一致,通过该系统能提升护士在血液透析上下机操作感染控制关键行为的规范率,防止血液透析相关感染事件的发生。

关键词: 计算机视觉, 血液透析感染防控系统, 临床应用, 效果评价

Abstract: Objective  To evaluate the recognition of key and standard behaviors for infection prevention, the consistency with the effects of manual monitoring, and the clinical effects of the hemodialysis infection prevention and control monitoring system using computer vision.  Methods We randomly recruited 198 nurse-manipulations in the nurses responsible for the connecting to and disconnecting from the dialyzers in the hemodialysis center from September to December 2022 as the research objects. Systematic and real-time recordings for standard behaviors were set as the computer group, and manual review of the systematic video recordings for standard behaviors were defined as the manual group. The key behaviors systematically recorded during connecting to and disconnecting from the dialyzers before and after use of the system in a nurse were divided into behaviors before the intervention and behaviors after the intervention. The first-grade operation indexes and the second-grade indexes  were used to examine the consistency of standard recognition between computer group and manual group. The standard rates of the key behaviors recorded during connecting to and disconnecting from the dialyzers in the same nurse were compared before and after use of the system.  Results  A total of 198 nurse-manipulations during connecting to and disconnecting from the dialyzers were observed. Comparing the first-grade indexes between the two groups found that there was a strong consistency in the recognition of standard internal fistula/catheter connecting to and disconnecting from the dialyzers (kappa value of internal fistula connecting to the dialyzers =0.718; kappa value of internal fistula disconnecting from the dialyzers =0.714; kappa value of catheter connecting to the dialyzers =0.788; kappa value of catheter disconnecting from the dialyzers=0.712). Comparing the second-grade indexes between the two groups found that a less consistency in the recognition of catheter disconnection (kappa value=0.173), an average consistency in wearing gloves (kappa value =0.243) and catheter connection (kappa value =0.305), and a moderate consistency in internal fistula/catheter disinfection (kappa value =0.556) and hand hygiene execution (kappa value =0.590). After the intervention, standard disinfection manipulations during connecting to dialyzers (χ2=8.156, P=0.004), waiting time (χ2=30.462, P<0.001), hand hygiene (χ2=21.023, P<0.001) and standard rate of access evaluation (χ2=23.522, P < 0.001) were better in the computer group than in the control group; the standard rates of wearing gloves (χ2=1.823, P=0.177) and tubes connecting to the dialyzers (χ2=0.410,           P=0.520) had no statistical differences. After the intervention, the standard rates of disinfection for disconnecting from the dialyzers (χ2=4.444, P=0.035) and hand hygiene execution (χ2=17.770, P<0.001) were better in the computer group than in the control group; but the standard rates of wearing gloves (χ2=1.309, P=0.253), catheter disconnections (χ2=3.220, P=0.073) and waiting time (χ2=2.254, P=0.133) had no statistical differences between the two groups.  Conclusion  Hemodialysis infection prevention and control monitoring system using computer vision can record and recognize the standard manipulations of nurses during connecting to and disconnecting from the dialyzers, which is relatively consistent with the results of manual observation. This system increases the standard rates of key behaviors for infection control during connecting to and disconnecting from the dialyzers, and prevents the hemodialysis-related infection events from occurrence.

Key words: Computer vision, Prevention and control of hemodialysis infection, Clinical application, Effect evaluation

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