Doctorate Program of Medical and Health Science, Gadjah Mada University Faculty of Medicine Public Health and Nursing, Yogyakarta, Indonesia.
Department of Dentomaxillofacial Radiology, Gadjah Mada University Faculty of Dentistry, Yogyakarta, Indonesia.
BMJ Open. 2023 Aug 8;13(8):e071324. doi: 10.1136/bmjopen-2022-071324.
The dentomaxillofacial (DMF) area, which includes the teeth, maxilla, mandible, zygomaticum, orbits and midface, plays a crucial role in the maintenance of the physiological functions despite its susceptibility to fractures, which are mostly caused by mechanical trauma. As a diagnostic tool, radiographic imaging helps clinicians establish a diagnosis and determine a treatment plan; however, the presence of human factors in image interpretation can result in missed detection of fractures. Therefore, an artificial intelligence (AI) computing system with the potential to help detect abnormalities on radiographic images is currently being developed. This scoping review summarises the literature and assesses the current status of AI in DMF fracture detection in diagnostic imaging.
This proposed scoping review will be conducted using the framework of Arksey and O'Malley, with each step incorporating the recommendations of Levac . By using relevant keywords based on the research questions. PubMed, Science Direct, Scopus, Cochrane Library, Springerlink, Institute of Electrical and Electronics Engineers, and ProQuest will be the databases used in this study. The included studies are published in English between 1 January 2000 and 30 June 2023. Two independent reviewers will screen titles and abstracts, followed by full-text screening and data extraction, which will comprise three components: research study characteristics, comparator and AI characteristics.
This study does not require ethical approval because it analyses primary research articles. The research findings will be distributed through international conferences and peer-reviewed publications.
牙颌面(DMF)区域包括牙齿、上颌骨、下颌骨、颧骨、眼眶和中面部,尽管易发生骨折,但它对维持生理功能起着至关重要的作用,这些骨折主要由机械创伤引起。作为一种诊断工具,放射影像学有助于临床医生做出诊断并制定治疗计划;然而,图像解释中存在人为因素可能导致骨折漏诊。因此,目前正在开发一种具有帮助检测放射图像异常潜力的人工智能(AI)计算系统。本范围综述总结了文献,并评估了 AI 在 DMF 骨折诊断成像中的现状。
本拟议的范围综述将使用 Arksey 和 O'Malley 的框架进行,每个步骤都包含 Levac 的建议。通过使用基于研究问题的相关关键词,将使用 PubMed、Science Direct、Scopus、Cochrane Library、Springerlink、电气和电子工程师协会和 ProQuest 等数据库进行研究。纳入的研究发表于 2000 年 1 月 1 日至 2023 年 6 月 30 日期间的英文期刊。两名独立评审员将筛选标题和摘要,然后进行全文筛选和数据提取,其中包括三个部分:研究特征、对照和 AI 特征。
本研究不需要伦理批准,因为它分析了原始研究文章。研究结果将通过国际会议和同行评审出版物进行传播。