Assiri Hassan Ahmed, Hameed Mohammad Shahul, Alqarni Abdullah, Dawasaz Ali Azhar, Arem Saeed Abdullah, Assiri Khalil Ibrahim
Department of Diagnostic Science and Oral Biology, College of Dentistry, King Khalid University, P.O. Box 960, Abha City 61421, Saudi Arabia.
J Clin Med. 2024 Jul 29;13(15):4431. doi: 10.3390/jcm13154431.
This systematic review aims to summarize the evidence on the use and applicability of AI in impacted mandibular third molars. Searches were performed in the following databases: PubMed, Scopus, and Google Scholar. The study protocol is registered at the International Platform of Registered Systematic Review and Meta-analysis Protocols (INPLASY202460081). The retrieved articles were subjected to an exhaustive review based on the inclusion and exclusion criteria for the study. Articles on the use of AI for diagnosis, treatment, and treatment planning in patients with impacted mandibular third molars were included. Twenty-one articles were selected and evaluated using the Scottish Intercollegiate Guidelines Network (SIGN) evidence quality scale. Most of the analyzed studies dealt with using AI to determine the relationship between the mandibular canal and the impacted mandibular third molar. The average quality of the articles included in this review was 2+, which indicated that the level of evidence, according to the SIGN protocol, was B. Compared to human observers, AI models have demonstrated decent performance in determining the morphology, anatomy, and relationship of the impaction with the inferior alveolar nerve canal. However, the prediction of eruptions and future horizons of AI models are still in the early developmental stages. Additional studies estimating the eruption in mixed and permanent dentition are warranted to establish a comprehensive model for identifying, diagnosing, and predicting third molar eruptions and determining the treatment outcomes in the case of impacted teeth. This will help clinicians make better decisions and achieve better treatment outcomes.
本系统评价旨在总结人工智能在下颌阻生第三磨牙中的应用及适用性的证据。检索了以下数据库:PubMed、Scopus和谷歌学术。该研究方案已在国际注册系统评价和Meta分析方案平台(INPLASY202460081)注册。根据研究的纳入和排除标准,对检索到的文章进行了详尽的审查。纳入了关于使用人工智能对下颌阻生第三磨牙患者进行诊断、治疗和治疗计划的文章。选择了21篇文章,并使用苏格兰校际指南网络(SIGN)证据质量量表进行评估。大多数分析研究涉及使用人工智能来确定下颌管与下颌阻生第三磨牙之间的关系。本综述纳入文章的平均质量为2+,这表明根据SIGN方案,证据水平为B级。与人类观察者相比,人工智能模型在确定阻生齿的形态、解剖结构以及与下牙槽神经管的关系方面表现出了不错的性能。然而,人工智能模型对萌出情况和未来发展的预测仍处于早期发展阶段。有必要进行更多估计混合牙列和恒牙列中萌出情况的研究,以建立一个用于识别、诊断和预测第三磨牙萌出以及确定阻生齿治疗结果的综合模型。这将有助于临床医生做出更好的决策并取得更好的治疗效果。