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预测在英格兰北部一所大学就读的预注册助产专业学生的压力状况。

Predicting stress in pre-registration midwifery students attending a university in Northern England.

作者信息

Pryjmachuk Steven, Richards David A

机构信息

School of Nursing, Midwifery and Social Work, University of Manchester, Gateway House, Piccadilly South, Manchester, M60 7LP, UK.

出版信息

Midwifery. 2008 Mar;24(1):108-22. doi: 10.1016/j.midw.2006.07.006. Epub 2007 Jan 2.

Abstract

OBJECTIVE

to determine which variables predict stress (psychological distress) in pre-registration midwifery students.

DESIGN

a cross-sectional survey, using a range of self-report measures bound together in a 'questionnaire pack'.

SETTING

the study reported here is taken from a wider investigation into stress among nursing and midwifery students, undertaken in the nursing and midwifery department of a large university in Northern England.

PARTICIPANTS

120 pre-registration midwifery students pursuing one of three diploma programmes: 'standard', 'enhanced' and 'short'.

MEASUREMENTS

multivariate logistic regression was used as the analytical technique. The variables used in the analyses undertaken were all derived from formal and study-specific, self-report measures included in the questionnaire pack. 'Stress' (whether a participant was psychologically distressed or not) was obtained via the General Health Questionnaire. Potential predictors of stress were collected from two formal measures (the Student Nurse Stress Index and the Coping Inventory for Stressful Situations) and from questions in the questionnaire pack designed to elicit demographic data and data of specific interest to nurse and midwife educators.

FINDINGS

102 questionnaire packs (85%) were returned. The prevalence of stress among participants was over 40%. A series of logistic regression analyses resulted in five competing regression models. Through a systematic selection process, two of these models were chosen for discussion. These models suggested that the key predictors of psychological distress in the population studied were self-report of stress levels, the type of midwifery programme being pursued, the use of 'task-oriented' coping and, possibly, whether or not a student smokes cigarettes.

KEY CONCLUSIONS AND IMPLICATIONS FOR PRACTICE

despite the prevalence rate of 40%, the prevalence of stress among midwifery students is generally no better or worse than that of other students or of qualified health-care professionals. Those involved in midwifery education need to know how to manage student stress effectively. This can be achieved by ensuring that personal teachers (continue to) play a key role in supporting students, especially when students self-report high levels of stress. Incorporating formal stress-management training into pre-registration midwifery programmes may also be useful. Sound knowledge of the issues associated with student stress during curriculum design, however, may ultimately prove to be the most effective way of managing student stress. In a discipline such as midwifery, these issues are as divergent as the politics of midwifery, the processes used in recruitment and selection, the role of women in society, and the nature, quality and quantity of the learning experiences and the assessment strategies used.

摘要

目的

确定哪些变量可预测注册前助产专业学生的压力(心理困扰)。

设计

横断面调查,使用一系列汇总在“问卷包”中的自我报告测量方法。

背景

此处报告的研究取自对护理和助产专业学生压力的一项更广泛调查,该调查在英格兰北部一所大型大学的护理和助产系进行。

参与者

120名注册前助产专业学生,他们攻读三个文凭课程之一:“标准”、“强化”和“短期”课程。

测量方法

采用多变量逻辑回归作为分析技术。分析中使用的变量均来自问卷包中包含的正式且针对该研究的自我报告测量方法。“压力”(参与者是否存在心理困扰)通过一般健康问卷获得。压力的潜在预测因素从两项正式测量方法(学生护士压力指数和应激情境应对量表)以及问卷包中旨在获取人口统计学数据和护理及助产教育工作者特别感兴趣的数据的问题中收集。

研究结果

共收回102份问卷包(85%)。参与者中压力的患病率超过40%。一系列逻辑回归分析得出了五个相互竞争的回归模型。通过系统的筛选过程,选择了其中两个模型进行讨论。这些模型表明,在所研究人群中,心理困扰的关键预测因素是压力水平的自我报告、所攻读的助产课程类型、“任务导向型”应对方式的使用,以及可能还有学生是否吸烟。

关键结论及对实践的启示

尽管患病率为40%,但助产专业学生的压力患病率总体上并不比其他学生或合格的医疗保健专业人员更好或更差。参与助产教育的人员需要知道如何有效管理学生的压力。这可以通过确保个人导师(继续)在支持学生方面发挥关键作用来实现,尤其是当学生自我报告压力水平较高时。将正式的压力管理培训纳入注册前助产课程可能也有用。然而,在课程设计过程中对与学生压力相关问题有充分了解,最终可能证明是管理学生压力的最有效方法。在助产这样的学科中,这些问题与助产政治、招聘和选拔过程、女性在社会中的角色以及学习经历的性质、质量和数量以及所采用的评估策略一样多种多样。

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