Academic resilience of nursing students during COVID-19: An analysis using machine learning methods.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
Zhu Liduzi Jiesisibieke, Mao Ye, Weifang Xu, Yen-Ching Chuang, James J H Liou, Tao-Hsin Tung, Ching-Wen Chien
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引用次数: 0

Abstract

Aim: This cross-sectional study investigates the factors that contribute to academic resilience among nursing students during COVID-19 pandemic.

Design: A cross-sectional study.

Methods: A survey was conducted in a general hospital between November and December 2022. The Nursing Student Academic Resilience Inventory (NSARI) model was used to assess the academic resilience of 96 nursing students. The Boruta method was then used to identify the core factors influencing overall academic resilience, and rough set analysis was used to analyse the behavioural patterns associated with these factors.

Results: Attributes were categorised into three importance levels. Three statistically significant attributes were identified ("I earn my patient's trust by making suitable communication," "I receive support from my instructors," and "I try to endure academic hardship") based on comparison with shadow attributes. The rough set analysis showed nine main behavioural patterns. Random forest, support vector machines, and backpropagation artificial neural networks were used to test the performance of the model, with accuracies ranging from 73.0% to 76.9%.

Conclusion: Our results provide possible strategies for improving academic resilience and competence of nursing students.

护理专业学生在 COVID-19 期间的学习适应能力:使用机器学习方法进行分析。
设计:横断面研究:设计:横断面研究:方法:2022 年 11 月至 12 月期间在一家综合医院进行了一项调查。采用护理专业学生学业适应力量表(NSARI)模型评估 96 名护理专业学生的学业适应力。然后使用博鲁塔法确定影响整体学业适应力的核心因素,并使用粗糙集分析法分析与这些因素相关的行为模式:结果:属性被分为三个重要等级。根据与影子属性的比较,确定了三个具有统计意义的属性("我通过适当的沟通赢得了病人的信任"、"我得到了导师的支持 "和 "我努力忍受学业上的困难")。粗糙集分析显示了九种主要行为模式。随机森林、支持向量机和反向传播人工神经网络被用来测试模型的性能,准确率在 73.0% 到 76.9% 之间:我们的研究结果为提高护理专业学生的学习适应力和能力提供了可能的策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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