计算最佳患者护理能力:传统方法与新方法的比较分析。

JMIR nursing Pub Date : 2024-11-22 DOI:10.2196/59619
Anna Ware, Terri Blumke, Peter Hoover, David Arreola
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引用次数: 0

摘要

背景:事实证明,最佳的护士配置水平会影响患者的预后和安全,以及员工的职业倦怠。计算人员配备水平的主要方法是病人与护士(P/N)比率和每个病人每天的护理时间。然而,这两种方法都无法解决人员配置需求的动态性问题,因为随着病人临床状态的改变以及新病人的入院或出院,人员配置需求往往在一天中不断变化:在本次评估中,退伍军人事务帕洛阿尔托医疗保健系统(VAPAHCS)试行了一种新的动态床位计算方法,以努力实现每小时的最佳人员配置水平,从而为退伍军人医疗保健管理局内的护士人员配置水平提供更高的时间分辨率:方法:动态床位计算使用每病人每天的护理时间和 P/N 比率来计算每小时的当前和目标人员配置水平,同时平衡各种护士类型(注册护士和护士助理),以便更好地从时间上了解人员分配情况。动态床位计算与传统的 P/N 比率计算方法进行了比较,以评估瓦努阿图亚洲太平洋医院急症监护病房从 2023 年 1 月 1 日到 2023 年 5 月 25 日的最佳病人容量。描述性统计汇总了重症监护病房(ICU)、内外科 ICU 和 3 个急症监护病房的病人容量变量。采用学生 t 检验(双尾)分析患者容量测量之间的差异:结果:对病人容量信息的每小时分析表明,动态床位计数提高了病人容量的时间分辨率。通过比较动态床位数和P/N比值,我们发现在整个瓦努阿图医疗中心急症监护病房和内外科重症监护病房中,由P/N比值决定的病人容量平均高于动态床位数(结论:作为一种新的病人容量计算方法,P/N比值可以帮助我们更好地了解病人容量:作为一种新的病人容量计算方法,动态床位数提供了更多的细节和有关临床人员配备水平、病人严重程度和病人更替的及时信息。将这一计算方法纳入管理流程,有可能使各部门进一步优化人员配置和病人护理。
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Calculating Optimal Patient to Nursing Capacity: Comparative Analysis of Traditional and New Methods.

Background: Optimal nurse staffing levels have been shown to impact patients' prognoses and safety, as well as staff burnout. The predominant method for calculating staffing levels has been patient-to-nurse (P/N) ratios and nursing hours per patient day. However, both methods fall short of addressing the dynamic nature of staffing needs that often fluctuate throughout the day as patients' clinical status changes and new patients are admitted or discharged from the unit.

Objective: In this evaluation, the Veterans Affairs Palo Alto Health Care System (VAPAHCS) piloted a new dynamic bed count calculation in an effort to target optimal staffing levels every hour to provide greater temporal resolution on nurse staffing levels within the Veterans Health Administration.

Methods: The dynamic bed count uses elements from both the nursing hours per patient day and P/N ratio to calculate current and target staffing levels, every hour, while balancing across nurse types (registered nurses to nurse assistants) to provide improved temporal insight into staff allocation. The dynamic bed count was compared with traditional P/N ratio methods of calculating patient capacity at the VAPAHCS, to assess optimal patient capacity within their acute care ward from January 1, 2023, through May 25, 2023. Descriptive statistics summarized patient capacity variables across the intensive care unit (ICU), medical-surgical ICU, and 3 acute care units. Student t tests (2-tailed) were used to analyze differences between patient capacity measures.

Results: Hourly analysis of patient capacity information displayed how the dynamic bed count provided improved temporal resolution on patient capacity. Comparing the dynamic bed count to the P/N ratio, we found the patient capacity, as determined by the P/N ratio, was, on average, higher than that of the dynamic bed count across VAPAHCS acute care units and the medical-surgical ICU (P<.001). For example, in acute care unit 3C, the average dynamic bed count was 21.6 (SD 4.2) compared with a P/N ratio of 28.6 (SD 3.2). This suggests that calculating patient capacity using P/N ratios alone could lead to units taking on more patients than what the dynamic bed count suggests the unit can optimally handle.

Conclusions: As a new patient capacity calculation, the dynamic bed count provided additional details and timely information about clinical staffing levels, patient acuity, and patient turnover. Implementing this calculation into the management process has the potential to empower departments to further optimize staffing and patient care.

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来源期刊
CiteScore
5.20
自引率
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审稿时长
16 weeks
期刊最新文献
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