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    已发表论文

    基于多数据预测的门诊呼吸道医院感染动态控制方法研究

     

    Authors Wang Y, Ma W, Yang Y, Zhao H, Zhao Z, Zhao X

    Received 26 November 2024

    Accepted for publication 28 March 2025

    Published 15 April 2025 Volume 2025:18 Pages 1323—1332

    DOI http://doi.org/10.2147/RMHP.S508760

    Checked for plagiarism Yes

    Review by Single anonymous peer review

    Peer reviewer comments 2

    Editor who approved publication: Dr Jongwha Chang

    Yuncong Wang, Wenhui Ma, Yang Yang, Huijie Zhao, Zhongjing Zhao, Xia Zhao

    Hospital Infection Management Division, Xuanwu Hospital Capital Medical University, Beijing, People’s Republic of China

    Correspondence: Yuncong Wang, Hospital Infection Management Division, Xuanwu Hospital Capital Medical University, No. 45 ChangChun Street, Xicheng District, Beijing, 100053, People’s Republic of China, Tel +86 10 83198692, Email 18618247182@163.com

    Objective: This study aimed to develop a dynamic prevention and control method for fluctuating respiratory nosocomial infections in outpatients.
    Methods: Six sets of surveillance data such as influenza-like case counts and their predicted results were used in the autoregressive integrated moving average model (ARIMA) to forecast the onset and end time points of the epidemic peak. A Delphi process was then used to build consensus on hierarchical infection control measures for epidemic peaks and plateaus. The data, predicted results, and hierarchical infection control measures can assist dynamic prevention and control of respiratory nosocomial infections with changes in the infection risk.
    Results: The ARIMA model produced exact estimates. The mean absolute percentage errors (MAPE) of the data selected to estimate the time range of the high-risk and low-risk periods were 15.8%, 9.2%, 15.4%, 16.8%, 25.6%. The hierarchical infection control measures included three categories and nine key points. A risk-period judgment matrix was also designed to connect the surveillance data and the hierarchical infection control measures.
    Conclusion: Through a mathematical model, dynamic prevention and control of respiratory tract infections in outpatients was constructed based on the daily medical service monitoring data of hospitals. It is foreseeable that when applied in medical institutions, this method will provide accurate and low-cost infection prevention and control outcomes.

    Keywords: respiratory nosocomial infection, ARIMA, outpatient, dynamic infection control

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