Explanation of the internet addiction model based on academic performance, academic experience, and clinical self-efficacy in nursing students: A path analysis

基于学业成绩、学业经验和临床自我效能的护理学生网络成瘾模型解释:路径分析

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Abstract

BACKGROUND: Internet addiction is a common disorder in nursing students, and this calls for a deeper investigation into this phenomenon and its dimensions. The aim of this study was to explain the internet addiction model based on academic performance, academic experience, and clinical self-efficacy in nursing students. MATERIALS AND METHODS: This study is a correlational and path analysis study that was conducted on 340 nursing students. Data collection tools included Yang's internet addiction questionnaire and self-efficacy in clinical performance scale. In this study, the academic grade point average was the measure of academic performance and the academic term was the measure of academic performance. Data were analyzed using SPSS-16 and AMOS-22 software, descriptive and analytical statistics, and structural equations. RESULTS: There was a significant negative correlation between clinical self-efficacy (r = -0.950, P ≤ 0.01), academic experience (r = -0.872, P ≤ 0.01), and academic performance (r = -0.654, P ≤ 0.01) with internet addiction. A negative and significant relationship was found between the internet addiction and variables of clinical self-efficacy (total effect = -0.743, P < 0.001). Model fit indices were good and acceptable. CONCLUSIONS: There was a negative and significant relationship between the variables of clinical self-efficacy, academic experience and academic performance, and the internet addiction. Meanwhile, the academic experience had a negative and significant effect on the internet addiction. This finding highlights the need to implement advisory and psychological interventions to reduce internet addiction, especially in students with less academic experiences.

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