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What degree of work overload is likely to cause increased sickness absenteeism among nurses? Evidence from the RAFAELA patient classification system.

机译:什么程度的工作超负荷可能导致护士的病假增加?来自RAFAELA患者分类系统的证据。

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AIM: This paper reports a study examining whether nurses' work overload is associated with increased sick leave and quantifying the loss of working days from work overload. BACKGROUND: The RAFAELA patient classification system indicates nursing care intensity in relation to an optimum and is one of the few validated monitoring instruments of patient-associated workload among nurses. However, it is not clear whether work overload is a risk factor for increased sickness absenteeism, an important occupational problem in health care. METHOD: An observational cohort study was carried out with 877 nurses, 31 wards and five Finnish hospitals. Patient-associated workload scores from the RAFAELA system were based on a 6-month monitoring period in 2004. Records of 12-month self certified (1-3 days) and medically certified (>3 days) periods of sick leave in the same year were obtained from employers' registers. FINDINGS: The mean workload was 9% (sd = 8%) above the optimum. There was a linear trend between increasing workload and increasing sick leave (P < or = 0.006). Among nurses with workload > or =30% above the optimum the rate of self certified periods of sick leave was 1.44 (95% CI 1.13-1.83) times higher than among those with an optimum workload. The corresponding rate ratio for medically certified sick leave was 1.49 (1.10-2.03). These excess rates of sickness absence resulted in 12 extra sick leave days per person-year. CONCLUSION: Measuring nurses' workload may be an important part of strategic human resource management of nurses to reduce sick leave among nurses.
机译:目的:本文报道了一项研究,检查护士的工作负担是否与病假增加有关,并量化因工作负担而导致的工作日损失。背景:RAFAELA患者分类系统可指示与最佳护理相关的护理强度,并且是护士中为数不多的经过验证的患者相关工作量监测工具之一。但是,目前尚不清楚工作超负荷是否是疾病缺勤增加的危险因素,而疾病缺勤是卫生保健中的重要职业问题。方法:一项观察性队列研究对877名护士,31个病区和五家芬兰医院进行了研究。 RAFAELA系统中与患者相关的工作量评分基于2004年的6个月监控期。同一年的12个月自我认证(1-3天)和医学认证(> 3天)病假记录从雇主名册中获得。结果:平均工作量比最佳工作量高9%(sd = 8%)。工作量增加和病假增加之间存在线性趋势(P <或= 0.006)。在工作量大于或等于最佳工作量的30%的护士中,自我证明的病假期间的比率是工作量最佳的护士的1.44倍(95%CI 1.13-1.83)。经医疗证明的病假的相应比率为1.49(1.10-2.03)。这些疾病缺席率过高导致每人年多出12天病假。结论:衡量护士的工作量可能是护士战略人力资源管理中减少护士病假的重要组成部分。

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