Anita Aminoshariae DDS, MS , Ali Nosrat DDS, MS, MDS , Venkateshbabu Nagendrababu BDS, MFDS RCPS(Glasg), MDS, FDS RCSP(Glasg), PhD , Omid Dianat DDS, MS , Hossein Mohammad-Rahimi DDS , Abbey W. O'Keefe , Frank C. Setzer DMD, PhD, MS
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引用次数: 0
Abstract
Aims
The future dental and endodontic education must adapt to the current digitalized healthcare system in a hyper-connected world. The purpose of this scoping review was to investigate the ways an endodontic education curriculum could benefit from the implementation of artificial intelligence (AI) and overcome the limitations of this technology in the delivery of healthcare to patients.
Methods
An electronic search was carried out up to December 2023 using MEDLINE, Web of Science, Cochrane Library, and a manual search of reference literature. Grey literature, ongoing clinical trials were also searched using ClinicalTrials.gov.
Results
The search identified 251 records, of which 35 were deemed relevant to artificial intelligence (AI) and Endodontic education. Areas in which AI might aid students with their didactic and clinical endodontic education were identified as follows: 1) radiographic interpretation; 2) differential diagnosis; 3) treatment planning and decision-making; 4) case difficulty assessment; 5) preclinical training; 6) advanced clinical simulation and case-based training, 7) real-time clinical guidance; 8) autonomous systems and robotics; 9) progress evaluation and personalized education; 10) calibration and standardization.
Conclusions
AI in endodontic education will support clinical and didactic teaching through individualized feedback; enhanced, augmented, and virtually generated training aids; automated detection and diagnosis; treatment planning and decision support; and AI-based student progress evaluation, and personalized education. Its implementation will inarguably change the current concept of teaching Endodontics. Dental educators would benefit from introducing AI in clinical and didactic pedagogy; however, they must be aware of AI's limitations and challenges to overcome.
目的未来的牙科和牙髓病学教育必须适应当前超级互联世界中的数字化医疗保健系统。本范围综述旨在研究牙髓病教育课程如何从人工智能(AI)的实施中获益,并克服该技术在为患者提供医疗保健服务方面的局限性。方法使用MEDLINE、Web of Science、Cochrane Library进行电子检索,并手动检索参考文献,检索时间截至2023年12月。此外,还使用ClinicalTrials.gov检索了灰色文献和正在进行的临床试验。结果检索发现了251条记录,其中35条被认为与人工智能(AI)和牙髓病学教育相关。人工智能可帮助学生进行牙髓病学教学和临床教育的领域确定如下:结论 人工智能在牙髓病学教育中的应用将通过以下方式支持临床和教学:个性化反馈;增强型、增量型和虚拟生成的培训辅助工具;自动检测和诊断;治疗计划和决策支持;以及基于人工智能的学生进度评估和个性化教育。毫无疑问,它的实施将改变当前牙髓病学的教学理念。牙科教育者将受益于在临床和教学法中引入人工智能,但他们必须意识到人工智能的局限性和需要克服的挑战。
期刊介绍:
The Journal of Endodontics, the official journal of the American Association of Endodontists, publishes scientific articles, case reports and comparison studies evaluating materials and methods of pulp conservation and endodontic treatment. Endodontists and general dentists can learn about new concepts in root canal treatment and the latest advances in techniques and instrumentation in the one journal that helps them keep pace with rapid changes in this field.