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性别平等政策、护理专业化和护理人员队伍:2000-2015 年 22 个国家的横断面时间序列分析。

Gender equality policies, nursing professionalization, and the nursing workforce: A cross-sectional, time-series analysis of 22 countries, 2000-2015.

机构信息

Lawrence S. Bloomberg Faculty of Nursing, University of Toronto, Ontario, M5T 1P8, Canada; Dalla Lana School of Public Health, Collaborative Specialization in Global Health, University of Toronto, Ontario, M5T 1P8, Canada.

Lawrence S. Bloomberg Faculty of Nursing, University of Toronto, Ontario, M5T 1P8, Canada; Dalla Lana School of Public Health, University of Toronto, Ontario, M5T 1P8, Canada.

出版信息

Int J Nurs Stud. 2019 Nov;99:103388. doi: 10.1016/j.ijnurstu.2019.103388. Epub 2019 Aug 5.

Abstract

BACKGROUND

Nursing professionalization has substantial benefits for patients, health care systems, and the nursing workforce. Currently, however, there is limited understanding of the macro-level factors, such as policies and other country-level determinants, influencing both the professionalization process and the supply of nursing human resources.

OBJECTIVES

Given the significance of gender to the development of nursing, a majority-female occupation, the purpose of this analysis was to investigate the relationship between gender regimes and gender equality policies, as macro-level determinants, and nursing professionalization indicators, in this case the regulated nurse and nurse graduate ratios.

DESIGN

This cross-sectional, time-series analysis covered 16 years, from 2000 to 2015, and included 22 high-income countries, members of the Organisation for Economic Co-operation and Development. We divided countries into three clusters, using the gender policy model developed by Korpi, as proxy for gender regimes. The countries were grouped as follows: (a) Traditional family - Austria, Belgium, France, Germany, Greece, Italy, Netherlands, Portugal, and Spain; (b) Market-oriented - Australia, Canada, Ireland, Japan, New Zealand, South Korea, Switzerland, United Kingdom, and the United States; and (c) Earner-carer - Denmark, Finland, Norway, and Sweden.

METHODS

We used fixed-effects linear regression models and ran Prais-Winsten regressions with panel-corrected standard errors, including a first-order autocorrelation correction to examine the effect of gender equality policies on nursing professionalization indicators. Given the existence of missing observations, we devised and implemented a multiple imputation strategy, with the help of the Amelia II program. We gathered our data from open access secondary sources.

RESULTS

Both the regulated nurse and nurse graduate ratios had averages that differed across gender regimes, being the highest in Earner-carer regimes and the lowest in Traditional family ones. In addition, we identified a number of indicators of gender equality policy in education, the labour market, and politics that are predictive of the regulated nurse and nurse graduate ratios.

CONCLUSION

This study's findings could add to existing upstream advocacy efforts to strengthen nursing and the nursing workforce through healthy public policy. Given that the study consists of an international comparative analysis of nursing, it should be relevant to both national and global nursing communities.

摘要

背景

护理专业化对患者、医疗体系和护理人员都有重大益处。然而,目前对于影响护理专业化进程和护理人力资源供应的宏观层面因素(如政策和其他国家层面的决定因素)的理解有限。

目的

鉴于护理是一个以女性为主的职业,其发展与性别密切相关,本分析旨在探讨性别制度和性别平等政策作为宏观决定因素与护理专业化指标(即注册护士和护士毕业生比例)之间的关系。

设计

本横断面时间序列分析涵盖了 2000 年至 2015 年的 16 年,包括经合组织的 22 个高收入国家。我们使用 Korpi 开发的性别政策模型将国家分为三个集群,作为性别制度的代表。国家分组如下:(a)传统家庭-奥地利、比利时、法国、德国、希腊、意大利、荷兰、葡萄牙和西班牙;(b)市场导向-澳大利亚、加拿大、爱尔兰、日本、新西兰、韩国、瑞士、英国和美国;(c)挣养家者-丹麦、芬兰、挪威和瑞典。

方法

我们使用固定效应线性回归模型和 Prais-Winsten 回归,使用面板校正标准误差,包括一阶自相关校正,以检验性别平等政策对护理专业化指标的影响。鉴于存在缺失观测值,我们设计并实施了多重插补策略,借助 Amelia II 程序。我们从公开获取的二手资料中收集数据。

结果

注册护士和护士毕业生比例在性别制度方面存在差异,挣养家者制度的平均值最高,传统家庭制度的平均值最低。此外,我们还确定了一些教育、劳动力市场和政治领域的性别平等政策指标,这些指标可以预测注册护士和护士毕业生比例。

结论

本研究的结果可以为通过健康公共政策加强护理和护理人员队伍的现有上游倡导工作做出贡献。鉴于该研究是对护理的国际比较分析,它应该与国家和全球护理界都有关。

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