TY - JOUR
T1 - Implementing Artificial Intelligence in Physiotherapy Education
T2 - A Case Study on the Use of Large Language Models (LLM) to Enhance Feedback
AU - Villagran, Ignacio
AU - Hernandez, Rocio
AU - Schuit, Gregory
AU - Neyem, Andres
AU - Fuentes-Cimma, Javiera
AU - Miranda, Constanza
AU - Hilliger, Isabel
AU - Duran, Valentina
AU - Escalona, Gabriel
AU - Varas, Julian
PY - 2024
Y1 - 2024
N2 - This article presents a controlled case study focused on implementing and using Generative Artificial Intelligence (AI), specifically Large Language Models (LLM) in physiotherapy education to assist instructors with formulating effective technology-mediated feedback for students. It outlines how these advanced technologies have been integrated into an existing feedback-oriented platform to guide instructors in providing feedback inputs and establish a reference framework for future innovations in practical skills training for health professions education. Specifically, the proposed solution uses LLM to automatically evaluate feedback inputs made by instructors based on pre-defined and literature-based quality criteria and generates actionable textual explanations for reformulation. In addition, if the instructor requires, the tool supports summary generation for large sets of text inputs to achieve better student reception and understanding. The case study describes how these features were integrated into the feedback-oriented platform, how their effectiveness was evaluated in a controlled setting with documented feedback inputs, and the results of its implementation with real users through cognitive walkthroughs. Initial results indicate that this innovative implementation holds great potential to enhance learning and performance in physiotherapy education and has the potential to expand to other health disciplines where the development of procedural skills is critical, offering a valuable tool to assess and improve feedback based on quality standards for effective feedback processes. The cognitive walkthroughs allowed us to determine participants' usability decisions in the face of these new features and to evaluate the perceived usefulness, how this would integrate into their workload, and their opinion regarding the potential for the future within this teaching strategy. The article concludes with a discussion of the implications of these findings for practice and future research directions in this developing field.
AB - This article presents a controlled case study focused on implementing and using Generative Artificial Intelligence (AI), specifically Large Language Models (LLM) in physiotherapy education to assist instructors with formulating effective technology-mediated feedback for students. It outlines how these advanced technologies have been integrated into an existing feedback-oriented platform to guide instructors in providing feedback inputs and establish a reference framework for future innovations in practical skills training for health professions education. Specifically, the proposed solution uses LLM to automatically evaluate feedback inputs made by instructors based on pre-defined and literature-based quality criteria and generates actionable textual explanations for reformulation. In addition, if the instructor requires, the tool supports summary generation for large sets of text inputs to achieve better student reception and understanding. The case study describes how these features were integrated into the feedback-oriented platform, how their effectiveness was evaluated in a controlled setting with documented feedback inputs, and the results of its implementation with real users through cognitive walkthroughs. Initial results indicate that this innovative implementation holds great potential to enhance learning and performance in physiotherapy education and has the potential to expand to other health disciplines where the development of procedural skills is critical, offering a valuable tool to assess and improve feedback based on quality standards for effective feedback processes. The cognitive walkthroughs allowed us to determine participants' usability decisions in the face of these new features and to evaluate the perceived usefulness, how this would integrate into their workload, and their opinion regarding the potential for the future within this teaching strategy. The article concludes with a discussion of the implications of these findings for practice and future research directions in this developing field.
KW - Artificial intelligence
KW - Training
KW - Task analysis
KW - Reviews
KW - Logic gates
KW - Tutorials
KW - Large language models
KW - Feedback
KW - generative artificial intelligence (AI)
KW - health science education
KW - large language models (LLMs)
KW - procedural skills
KW - technology-enhanced learning
U2 - 10.1109/TLT.2024.3450210
DO - 10.1109/TLT.2024.3450210
M3 - Article
SN - 1939-1382
VL - 17
SP - 2079
EP - 2090
JO - IEEE Transactions on Learning Technologies
JF - IEEE Transactions on Learning Technologies
ER -