Artificial Intelligence-Powered Training Database for Clinical Thinking: App Development Study.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES JMIR Formative Research Pub Date : 2025-01-03 DOI:10.2196/58426
Heng Wang, Danni Zheng, Mengying Wang, Hong Ji, Jiangli Han, Yan Wang, Ning Shen, Jie Qiao
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Abstract

Background: With the development of artificial intelligence (AI), medicine has entered the era of intelligent medicine, and various aspects, such as medical education and talent cultivation, are also being redefined. The cultivation of clinical thinking abilities poses a formidable challenge even for seasoned clinical educators, as offline training modalities often fall short in bridging the divide between current practice and the desired ideal. Consequently, there arises an imperative need for the expeditious development of a web-based database, tailored to empower physicians in their quest to learn and hone their clinical reasoning skills.

Objective: This study aimed to introduce an app named "XueYiKu," which includes consultations, physical examinations, auxiliary examinations, and diagnosis, incorporating AI and actual complete hospital medical records to build an online-learning platform using human-computer interaction.

Methods: The "XueYiKu" app was designed as a contactless, self-service, trial-and-error system application based on actual complete hospital medical records and natural language processing technology to comprehensively assess the "clinical competence" of residents at different stages. Case extraction was performed at a hospital's case data center, and the best-matching cases were differentiated through natural language processing, word segmentation, synonym conversion, and sorting. More than 400 teaching cases covering 65 kinds of diseases were released for students to learn, and the subjects covered internal medicine, surgery, gynecology and obstetrics, and pediatrics. The difficulty of learning cases was divided into four levels in ascending order. Moreover, the learning and teaching effects were evaluated using 6 dimensions covering systematicness, agility, logic, knowledge expansion, multidimensional evaluation indicators, and preciseness.

Results: From the app's first launch on the Android platform in May 2019 to the last version updated in May 2023, the total number of teacher and student users was 6209 and 1180, respectively. The top 3 subjects most frequently learned were respirology (n=606, 24.1%), general surgery (n=506, 20.1%), and urinary surgery (n=390, 15.5%). For diseases, pneumonia was the most frequently learned, followed by cholecystolithiasis (n=216, 14.1%), benign prostate hyperplasia (n=196, 12.8%), and bladder tumor (n=193, 12.6%). Among 479 students, roughly a third (n=168, 35.1%) scored in the 60 to 80 range, and half of them scored over 80 points (n=238, 49.7%). The app enabled medical students' learning to become more active and self-motivated, with a variety of formats, and provided real-time feedback through assessments on the platform. The learning effect was satisfactory overall and provided important precedence for establishing scientific models and methods for assessing clinical thinking skills in the future.

Conclusions: The integration of AI and medical education will undoubtedly assist in the restructuring of education processes; promote the evolution of the education ecosystem; and provide new convenient ways for independent learning, interactive communication, and educational resource sharing.

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临床思维的人工智能训练数据库:应用程序开发研究。
背景:随着人工智能(AI)的发展,医学进入了智能医学时代,医学教育、人才培养等各个方面也在被重新定义。即使对经验丰富的临床教育工作者来说,临床思维能力的培养也是一项艰巨的挑战,因为线下培训模式往往无法弥合当前实践与理想之间的鸿沟。因此,迫切需要快速开发基于网络的数据库,以使医生能够在他们的探索中学习和磨练他们的临床推理技能。目的:本研究旨在引入一款集会诊、体检、辅助检查、诊断为一体的app“学医库”,结合人工智能和医院实际完整病历,构建一个人机交互的在线学习平台。方法:“学医库”app基于医院实际完整病历,结合自然语言处理技术,设计一款非接触式、自助式、试错式的系统应用,对住院医师不同阶段的“临床能力”进行综合评估。在医院的病例数据中心进行病例提取,并通过自然语言处理、分词、同义词转换和排序来区分最匹配的病例。发布教学案例400余例,涉及疾病65种,学科涵盖内科、外科学、妇产科、儿科学。学习案例的难度由高到低分为四个层次。并从系统性、敏捷性、逻辑性、知识拓展性、多维度评价指标、严谨性6个维度对学与教效果进行评价。结果:从2019年5月在安卓平台首次上线到2023年5月最后一次更新,教师和学生用户总数分别为6209和1180。学习频次最高的前3名分别是呼吸内科(n=606, 24.1%)、普外科(n=506, 20.1%)和泌尿外科(n=390, 15.5%)。肺炎是最常见的疾病,其次是胆囊结石(216例,14.1%)、良性前列腺增生(196例,12.8%)和膀胱肿瘤(193例,12.6%)。在479名学生中,大约三分之一(n=168, 35.1%)的分数在60 ~ 80分之间,一半(n=238, 49.7%)的分数在80分以上。该应用程序使医学生的学习变得更加积极主动,具有多种形式,并通过平台上的评估提供实时反馈。学习效果总体满意,为今后建立科学的临床思维能力评估模型和方法提供了重要的借鉴。结论:人工智能与医学教育的整合无疑将有助于教育流程的重组;促进教育生态系统的演进;为自主学习、互动交流、教育资源共享提供新的便捷途径。
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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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