The Use of Generative AI in Clinical Learning Activities and Its Relationship on Student Nurses’ Caring Practices
DOI:
https://doi.org/10.65232/q07jhb10Keywords:
Caring Practices, Clinical Learning Activities, Generative Artificial Intelligence, Holistic Care, Nursing Education, Student NursesAbstract
This study examined the relationship between the use of Generative Artificial Intelligence (Generative AI) in clinical learning activities and the caring practices of student nurses. Guided by Watson’s Theory of Human Caring, the research investigated caring behaviors across decision-making, holistic care, and helping-trusting relationships among 293 second- to fourth-year nursing students at Wesleyan University-Philippines during Academic Year 2024-2025. Using a quantitative descriptive-correlational design and stratified purposive sampling, the study included only students who had completed at least one semester of Related Learning Experience and had prior exposure to Generative AI for academic and clinical tasks. Data were gathered through a researcher-developed questionnaire with validated subscales, including an adapted Caring Behaviors Inventory (Cronbach’s α = 0.86 in the full dataset). Descriptive statistics showed that student nurses “often” used Generative AI across planning, writing, and review tasks, while caring practices remained consistently “high” across all measured domains. Assumption testing using Shapiro-Wilk confirmed that composite scores were approximately normally distributed, permitting the use of Pearson’s r to analyze relationships between variables. Correlation results revealed no significant associations (p > 0.05) between the frequency of Generative AI use and caring practices, indicating that increased AI use did not predict changes in humanistic nursing behaviors. Uniformly high scores across caring dimensions also suggested potential ceiling effects, warranting cautious interpretation of nonsignificant results. The study concludes that while Generative AI supports academic tasks, it does not diminish core caring values among student nurses and highlights the need for ethical, balanced integration of AI in nursing education.
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Copyright (c) 2025 Shamelle Tobias, Jahn Marius B. Bernardo, Hanna Joyce A. Bulacan, Mariel B. De Guzman, Charles Raven R. Laurente, Kaycee Mae P. Tadeo, Cheena B. Mallari (Author)

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