Development of an Artificial Intelligence Teaching Assistant System for Undergraduate Nursing Students: A Field Testing Study.

Journal: Computers, informatics, nursing : CIN
PMID:

Abstract

Keeping students engaged and motivated during online or class discussion may be challenging. Artificial intelligence has potential to facilitate active learning by enhancing student engagement, motivation, and learning outcomes. The purpose of this study was to develop, test usability of, and explore undergraduate nursing students' perceptions toward the Artificial Intelligence-Teaching Assistant System. The system was developed based on three main components: machine tutor intelligence, a graphical user interface, and a communication connector. They were included in the system to support contextual machine tutoring. A field-testing study design, a mixed-method approach, was utilized with questionnaires and focus group interview. Twenty-one undergraduate nursing students participated in this study, and they interacted with the system for 2 hours following the required activity checklist. The students completed the validated usability questionnaires and then participated in the focus group interview. Descriptive statistics were used to analyze quantitative data, and thematic analysis was used to analyze qualitative data from the focus group interviews. The results showed that the Artificial Intelligence-Teaching Assistant System was user-friendly. Four main themes emerged, namely, functionality, feasibility, artificial unintelligence, and suggested learning modality. However, Artificial Intelligence-Teaching Assistant System functions, user interface, and content can be improved before full implementation.

Authors

  • Yanika Kowitlawakul
    Author Affiliations: School of Nursing, College of Public Health, George Mason University, Fairfax, VA (Dr Kowitlawakul); Alice Lee Centre for Nursing Studies, National University of Singapore (Ms Tan, Mr Chai, and Drs Kamala and Wang); Changi General Hospital, Singapore (Ms Tan); Faculty of Dentistry, Thammasat University, Bangkok, Thailand (Dr Suebnukarn); Computer Science and Information Technology, University of College Cork, Ireland (Dr Nguyen); and Information Systems and Analytics National University of Singapore (Dr Poo).
  • Jocelyn Jie Min Tan
  • Siriwan Suebnukarn
    Faculty of Dentistry, Thammasat University, Pathum Thani, Thailand.
  • Hoang D Nguyen
  • Danny Chiang Choon Poo
  • Joseph Chai
  • Devi M Kamala
  • Wenru Wang