THE IMPACT OF DIGITAL TOOLS ON NURSING STUDENTS’ CLINICAL PERFORMANCE: A MEDIATING ROLE OF COGNITIVE LOAD

Main Article Content

Yuan Jiang
Cuiping Chen
Xiaomin Huang
Jian Zhang
Liyu Ding

Abstract

The clinical performance of nursing students is a big problem in the era of modern technological advancement. With advancements in artificial intelligence and technology, clinical performance strategies with modern technology are required for nursing students. However, in the contemporary clinical environment of competition, a high level of performance is needed from nursing students. This research was conducted to investigate the impact of digital literacy level, instructor support for digital learning, and lack of technology anxiety on cognitive load and clinical performance. Furthermore, the study also investigated the direct impact of a lack of cognitive load on clinical performance. The mediating role of cognitive load in the relationship between digital literacy level, instructor support for digital learning, technology anxiety, and clinical performance was also investigated. A sample of 305 nursing students was collected from China using purposive sampling. This study used a Partial Least Squares – Structural Equation Model (PLS-SEM) to investigate the complex relationships presented in the framework. The study found that digital literacy level, instructor support for digital learning, and lack of technology anxiety have a significant impact on cognitive load and clinical performance. At the same time, the mediating role of lack of cognitive load between digital literacy level, instructor support for digital learning, lack of technology anxiety, and clinical performance was also accepted. The findings of this research provide new insights into clinical performance and nursing literature and recommend actionable practices for advancing the students' clinical performance in China.


JEL Classification Codes: C12, C20, C31.

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Section

Research Paper/Theoretical Paper/Review Paper/Short Communication Paper

Author Biographies

Yuan Jiang, Lecturer, School of Medicine, Tongji University, Shanghai, China

Yuan Jiang is a Lecturer at the School of Medicine, Tongji University. Her research interests focus on clinical nursing education and teaching leadership.

Cuiping Chen, Lecturer, School of Medicine, Tongji University, Shanghai, China

Cuiping Chen holds a senior professional title at the School of Medicine, Tongji University. She has been engaged in nursing education for more than 30 years, with extensive experience in curriculum design and teaching practice.

Xiaomin Huang, Lecturer, School of Medicine, Tongji University, Shanghai, China

Xiaomin Huang works as an Academic Affairs Officer at the School of Medicine, Tongji University. She is mainly responsible for undergraduate nursing education management and coordination.

Jian Zhang, Lecturer, School of Medicine, Tongji University, Shanghai, China

Jian Zhang is the Laboratory Director at the School of Medicine, Tongji University. His work centers on laboratory management, simulation-based teaching, and experimental training in nursing education.

Liyu Ding, Lecturer, Shanghai Tenth People’s Hospital, Tongji University, Shanghai, China

Liyu Ding serves as an Information Technology Officer at Shanghai Tenth People’s Hospital, Tongji University. His expertise lies in medical information systems, digital learning platforms, and the application of smart technologies in nursing practice.

How to Cite

Jiang, Y., Chen, C., Huang, X., Zhang, J., & Ding, L. (2025). THE IMPACT OF DIGITAL TOOLS ON NURSING STUDENTS’ CLINICAL PERFORMANCE: A MEDIATING ROLE OF COGNITIVE LOAD. Bangladesh Journal of Multidisciplinary Scientific Research, 10(6), 73-86. https://doi.org/10.46281/bjmsr.v10i6.2595

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