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工业残疾个体自评健康轨迹:潜在类别增长分析。

Trajectories of Self-Rated Health Among Industrially Disabled Individuals: A Latent Class Growth Analysis.

机构信息

College of Nursing, Seoul National University, Seoul, Republic of Korea.

College of Nursing and Research Institute of Nursing Science, Seoul National University, 103 Daehak-ro, Jongno-gu, Seoul, 03080, Republic of Korea.

出版信息

J Occup Rehabil. 2024 Sep;34(3):630-643. doi: 10.1007/s10926-023-10151-1. Epub 2023 Nov 22.

Abstract

BACKGROUND

Understanding the self-rated health of industrially disabled individuals is an important variable that significantly affects their quality of life, satisfaction, and return to work after an industrial accident. Since the health of people with industrial disabilities is affected by various environments and variables, interventions and policies that are suitable for their characteristics are needed.

OBJECTIVES

This study aimed to identify changes in self-rated health among industrially disabled individuals, distinguish between different latent classes, and verify predictive factors for each latent class.

METHODS

Four time-point datasets from the 2018-2021 panel study of Korean workers' compensation insurance were used. Using the latent growth curve model, an overall trajectory of self-rated health of industrially disabled individuals was confirmed, and the number and characteristics of different trajectories were identified using the latent class growth model. Multinomial logistic regression analysis was used to identify the predictive factors for each class.

RESULTS

Four classes of self-rated health trajectories were identified: low-decreasing (21.7%), moderate-increasing (15.7%), high-decreasing (56.1%), and low-stable (6.5%) classes. A multinomial logistic regression analysis revealed that significant determinants (age, capacity, type of industrial accident, grade of disability, mental activity, outdoor activity, and social relationships) were different for each latent class. Capacity level affected all potential class classifications.

CONCLUSIONS

To improve the self-rated health of industrially disabled individuals, it is necessary to develop an appropriate strategy that considers the characteristics of the latent class.

摘要

背景

了解工业残疾个体的自评健康是一个重要的变量,它会显著影响他们的生活质量、满意度和工伤后重返工作岗位的情况。由于工业残疾者的健康受到各种环境和变量的影响,因此需要针对他们的特点采取合适的干预和政策。

目的

本研究旨在确定工业残疾个体自评健康的变化情况,区分不同的潜在类别,并验证每个潜在类别的预测因素。

方法

使用韩国工人赔偿保险 2018-2021 年面板研究的四个时间点数据集。使用潜在增长曲线模型,确认了工业残疾个体自评健康的总体轨迹,并使用潜在类别增长模型确定了不同轨迹的数量和特征。使用多项逻辑回归分析确定每个类别的预测因素。

结果

确定了四种自评健康轨迹类别:低下降(21.7%)、中升高(15.7%)、高下降(56.1%)和低稳定(6.5%)类别。多项逻辑回归分析显示,每个潜在类别都有不同的显著决定因素(年龄、能力、工业事故类型、残疾等级、精神活动、户外活动和社会关系)。能力水平影响所有潜在的类别分类。

结论

为了改善工业残疾个体的自评健康状况,需要制定一个考虑潜在类别特点的适当策略。

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