Wu Dongxuan, Xiang Yifan, Wu Xiaohang, Yu Tongyong, Huang Xiucheng, Zou Yuxian, Liu Zhenzhen, Lin Haotian
State Key Laboratory of Ophthalmology, Zhongshan Ophthalmic Center, Sun Yat-sen University, Guangzhou, China.
Ann Transl Med. 2020 Jun;8(11):700. doi: 10.21037/atm.2019.12.15.
Artificial intelligence (AI) is an increasingly popular tool in medical investigations. However, AI's potential of aiding medical teaching has not been explored. This study aimed to evaluate the effectiveness of AI-tutoring problem-based-learning (PBL) in ophthalmology clerkship and to assess the student evaluations of this module.
Thirty-eight Grade-two students in ophthalmology clerkship at Sun Yat-Sen University were randomly assigned to two groups. In Group A, students learned congenital cataracts through an AI-tutoring PBL module by exploring and operating an AI diagnosis platform. In Group B, students learned congenital cataracts through traditional lecture given with the same faculty. The improvement in student performance was evaluated by comparing the pre- and post-lecture scores of a specific designed test using paired-T tests. Student evaluations of AI-tutoring PBL were measured by a 17-item questionnaire.
The post-lecture scores were significantly higher than the pre-lecture scores in both groups (Group A: P<0.0001, Group B: P<0.0001). The improvement of group A in the part of sign and diagnosis test (Part I) was more significant than that of group B (P=0.016). However, there was no difference in the improvement in the part of treatment plan test (Part II) between two groups (P=0.556). Overall, all respondents were satisfied and agreed that AI-tutoring PBL was helpful, effective, motive and beneficial to help develop critical and creative thinking.
The application of AI-tutoring PBL into ophthalmology clerkship improved students' performance and satisfaction. AI-tutoring PBL teaching showed advantage in promoting students' understanding of signs of diseases. The instructors play an indispensable role in AI-tutoring PBL curriculum.
人工智能(AI)在医学研究中是一种越来越受欢迎的工具。然而,人工智能辅助医学教学的潜力尚未得到探索。本研究旨在评估人工智能辅导的基于问题的学习(PBL)在眼科实习中的有效性,并评估学生对该模块的评价。
中山大学38名二年级眼科实习学生被随机分为两组。A组学生通过探索和操作人工智能诊断平台,通过人工智能辅导的PBL模块学习先天性白内障。B组学生通过同一位教师进行的传统讲座学习先天性白内障。通过使用配对T检验比较特定设计测试的讲座前和讲座后分数来评估学生成绩的提高。通过一份17项问卷来测量学生对人工智能辅导PBL的评价。
两组讲座后的分数均显著高于讲座前的分数(A组:P<0.0001,B组:P<0.0001)。A组在体征和诊断测试部分(第一部分)的提高比B组更显著(P=0.016)。然而,两组在治疗计划测试部分(第二部分)的提高没有差异(P=0.556)。总体而言,所有受访者都满意,并认为人工智能辅导的PBL有帮助、有效、有动力且有利于培养批判性和创造性思维。
将人工智能辅导的PBL应用于眼科实习提高了学生的成绩和满意度。人工智能辅导的PBL教学在促进学生对疾病体征的理解方面显示出优势。教师在人工智能辅导的PBL课程中发挥着不可或缺的作用。