Enhancing Medical Student Engagement Through Cinematic Clinical Narratives: Multimodal Generative AI-Based Mixed Methods Study.

IF 3.2 Q1 EDUCATION, SCIENTIFIC DISCIPLINES
Tyler Bland
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引用次数: 0

Abstract

Background: Medical students often struggle to engage with and retain complex pharmacology topics during their preclinical education. Traditional teaching methods can lead to passive learning and poor long-term retention of critical concepts.

Objective: This study aims to enhance the teaching of clinical pharmacology in medical school by using a multimodal generative artificial intelligence (genAI) approach to create compelling, cinematic clinical narratives (CCNs).

Methods: We transformed a standard clinical case into an engaging, interactive multimedia experience called "Shattered Slippers." This CCN used various genAI tools for content creation: GPT-4 for developing the storyline, Leonardo.ai and Stable Diffusion for generating images, Eleven Labs for creating audio narrations, and Suno for composing a theme song. The CCN integrated narrative styles and pop culture references to enhance student engagement. It was applied in teaching first-year medical students about immune system pharmacology. Student responses were assessed through the Situational Interest Survey for Multimedia and examination performance. The target audience comprised first-year medical students (n=40), with 18 responding to the Situational Interest Survey for Multimedia survey (n=18).

Results: The study revealed a marked preference for the genAI-enhanced CCNs over traditional teaching methods. Key findings include the majority of surveyed students preferring the CCN over traditional clinical cases (14/18), as well as high average scores for triggered situational interest (mean 4.58, SD 0.53), maintained interest (mean 4.40, SD 0.53), maintained-feeling interest (mean 4.38, SD 0.51), and maintained-value interest (mean 4.42, SD 0.54). Students achieved an average score of 88% on examination questions related to the CCN material, indicating successful learning and retention. Qualitative feedback highlighted increased engagement, improved recall, and appreciation for the narrative style and pop culture references.

Conclusions: This study demonstrates the potential of using a multimodal genAI-driven approach to create CCNs in medical education. The "Shattered Slippers" case effectively enhanced student engagement and promoted knowledge retention in complex pharmacological topics. This innovative method suggests a novel direction for curriculum development that could improve learning outcomes and student satisfaction in medical education. Future research should explore the long-term retention of knowledge and the applicability of learned material in clinical settings, as well as the potential for broader implementation of this approach across various medical education contexts.

通过电影临床叙事提高医学生的参与度:基于多模态生成人工智能的混合方法研究。
背景:在临床前教育中,医学生经常难以接触和掌握复杂的药理学主题。传统的教学方法会导致被动学习和对关键概念的长期记忆不良。目的:本研究旨在通过使用多模态生成人工智能(genAI)方法创建引人注目的电影临床叙事(ccn)来增强医学院临床药理学教学。方法:我们将一个标准的临床案例转化为一个引人入胜的交互式多媒体体验,称为“破碎的拖鞋”。这个CCN使用各种基因工具进行内容创作:GPT-4用于开发故事情节,Leonardo。ai和Stable Diffusion用于生成图像,Eleven Labs用于创建音频叙述,Suno用于编写主题曲。CCN整合了叙事风格和流行文化参考,以提高学生的参与度。应用于医一年级学生免疫系统药理学教学。通过多媒体情境兴趣调查和考试成绩评估学生的反应。目标受众包括一年级医学生(n=40),其中18人回应了多媒体调查的情境兴趣调查(n=18)。结果:研究显示,与传统教学方法相比,基因人工智能增强的CCNs明显受到偏爱。主要发现包括大多数被调查学生更喜欢CCN而不是传统的临床病例(14/18),以及触发情境兴趣(平均4.58,SD 0.53)、维持兴趣(平均4.40,SD 0.53)、维持感觉兴趣(平均4.38,SD 0.51)和维持价值兴趣(平均4.42,SD 0.54)的平均分较高。学生在CCN材料相关的考题中平均得分达到88%,表明学习和记忆成功。定性反馈强调了参与度的提高,记忆力的提高,以及对叙事风格和流行文化参考的欣赏。结论:本研究证明了在医学教育中使用多模式基因人工智能驱动方法创建ccn的潜力。“破碎的拖鞋”案例有效地提高了学生的参与度,并促进了复杂药理学主题的知识保留。这种创新的方法为课程开发提供了一个新的方向,可以提高医学教育的学习成果和学生满意度。未来的研究应该探索知识的长期保留和学习材料在临床环境中的适用性,以及在各种医学教育背景下更广泛地实施这种方法的潜力。
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来源期刊
JMIR Medical Education
JMIR Medical Education Social Sciences-Education
CiteScore
6.90
自引率
5.60%
发文量
54
审稿时长
8 weeks
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