与护士精神工作量相关的影响因素:潜在特征分析

IF 2.9 3区 医学 Q1 NURSING
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引用次数: 0

摘要

方法于2023年3月至7月,采用人口统计学资料、感知社会支持量表、简化应对技能问卷和NASA-任务负荷指数,对来自中国四川省5家三级甲等医院的526名中国临床护士进行了定量横断面研究。使用 Mplus 7.3 软件进行了潜在特征分析。结果根据护士对精神工作量评估的回答,确定了三种精神工作量特征,分别为 "低MWL-高自评(n=70,13.3%)"、"中等MWL(n=273,51.9%)"和 "高MWL-低自评(n=183,34.8%)"。根据三个亚型的分析,工作年限< 5年(χ2 = 12.135,P < 0.05)、无子女(χ2 = 16.182,P < 0.01)、月收入< 6000(χ2 = 55.231,P < 0.001)、健康状况差(χ2 = 39.658,P <;0.001)、过去一年未接受过心理训练(χ2 = 56.329,P <;0.001)和遭受过职场暴力(χ2 = 19.803,P <;0.001)与 MWL 显著相关。此外,多变量逻辑回归分析表明,消极应对方式(OR = 1.146,95% CI:1.060-1.238,P = 0.001)伴随着较高的 MWL,而与感知的社会支持负相关(OR = 0.927,95% CI:0.900-0.955,P <0.001)。月收入、健康状况、心理培训、工作场所暴力、消极应对方式和感知到的社会支持是影响 MWL 的因素。管理者可根据不同亚型的个体特征采取个性化的干预策略,以减少护士的MWL。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Influencing factors associated with mental workload among nurses: A latent profile analysis

Objective

This study aimed to examine the latent profile of nurses' mental workload (MWL) and explore the influencing factors via a person-centred approach.

Methods

From March to July 2023, a quantitative cross-sectional study was carried out to investigate 526 Chinese clinical nurses from five tertiary hospitals in Sichuan Province, China, by using demographic information, the Perceived Social Support Scale, Simplified Coping Skill Questionnaire, and NASA-Task Load Index. Latent profile analyses were performed using Mplus 7.3 software. Pearson’s chi-squared and logistic regression analysis was done using SPSS 24.0 software.

Results

Three profiles of mental workload were identified based on the nurses’ responses to the mental workload assessment, designated as “low MWL-high self-rated (n = 70, 13.3%)”, “moderate MWL (n = 273, 51.9%)”, and “high MWL-low self-rated (n = 183, 34.8%)”. Based on the analysis of the three subtypes, nurses with working years < 5 years (χ2 = 12.135, P < 0.05), no children (χ2 = 16.182, P < 0.01), monthly income < 6000 (χ2 = 55.231, P < 0.001), poor health status (χ2 = 39.658, P < 0.001), no psychological training in the past year (χ2 = 56.329, P < 0.001) and suffering from workplace violence (χ2 = 19.803, P < 0.001) were significantly associated with MWL. Moreover, the multivariate logistic regression analysis showed that negative coping styles (OR = 1.146, 95% CI: 1.060–1.238, P = 0.001) were accompanied by higher MWL while negatively associated with perceived social support (OR = 0.927, 95% CI: 0.900–0.955, P < 0.001).

Conclusion

Our results showed that the MWL of nurses could be classified into three subtypes. Monthly income, health status, psychological training, workplace violence, negative coping style, and perceived social support were the factors influencing MWL. Managers can employ personalised intervention strategies according to the individual characteristics of different subgroups to reduce nurses’ MWL.

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来源期刊
CiteScore
6.10
自引率
2.60%
发文量
408
审稿时长
25 days
期刊介绍: This journal aims to promote excellence in nursing and health care through the dissemination of the latest, evidence-based, peer-reviewed clinical information and original research, providing an international platform for exchanging knowledge, research findings and nursing practice experience. This journal covers a wide range of nursing topics such as advanced nursing practice, bio-psychosocial issues related to health, cultural perspectives, lifestyle change as a component of health promotion, chronic disease, including end-of-life care, family care giving. IJNSS publishes four issues per year in Jan/Apr/Jul/Oct. IJNSS intended readership includes practicing nurses in all spheres and at all levels who are committed to advancing practice and professional development on the basis of new knowledge and evidence; managers and senior members of the nursing; nurse educators and nursing students etc. IJNSS seeks to enrich insight into clinical need and the implications for nursing intervention and models of service delivery. Contributions are welcomed from other health professions on issues that have a direct impact on nursing practice.
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