干预(咨询)
工作投入
心率变异性
心理学
自主神经系统
工作(物理)
应用心理学
作业控制
工作设计
工作表现
物理疗法
心率
医学
工作满意度
社会心理学
工程类
血压
精神科
机械工程
放射科
作者
Piia Seppälä,Jari Hakanen,Jussi Virkkala,Asko Tolvanen,Anne Punakallio,Telma Rivinoja,Arja Uusitalo
摘要
Applying job demands-resources theory, this quasiexperimental, three-wave study investigated whether work engagement can be increased via an eLearning intervention aiming to increase job crafting behavior. Furthermore, proposing a refinement to job demands-resources theory, that is, adding "a health enhancement process," this study also investigated whether through improvements in work engagement, the intervention would yield health-related benefits, utilizing an objective indicator of physical health (i.e., optimal functioning of autonomic nervous system activity indicated by increased heart rate variability [HRV]). The study was conducted among all the employees of a municipality (n = 69/experimental group, n = 45/control group), and the effects were assessed 2 weeks and 4 months after the intervention. Job crafting and work engagement were measured using an electronic questionnaire, and HRV using ambulatory monitoring period of two nights' sleep. Latent change score modeling revealed, as expected, that job crafting increased both immediately and delayed after the intervention. Furthermore, as hypothesized, the intervention increased work engagement via increased job crafting when measured immediately after the intervention, but there was no indirect delayed effect on work engagement. There were no indirect immediate or delayed effects on HRV. However, unexpectedly, HRV decreased among the control group after the intervention. Thus, an eLearning intervention based on the principles of job crafting is a promising tool to increase job crafting and consequently work engagement. Furthermore, the findings provide an initial indication that a job crafting eLearning intervention could have a buffering effect on autonomic nervous system activity and help to maintain its optimal functioning. (PsycInfo Database Record (c) 2023 APA, all rights reserved).
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