Zhang Jiaming, Deng Shuzhi, Zou Ting, Jin Zuolin, Jiang Shan
Shenzhen Stomatology Hospital (Pingshan) of Southern Medical University, Shenzhen, Guangdong, China; Shenzhen Clinical College of Stomatology, School of Stomatology, Southern Medical University, Shenzhen, Guangdong, China.
State Key Laboratory of Military Stomatology and National Clinical Research Center for Oral Diseases and Shaanxi Clinical Research Center for Oral Diseases, Department of Orthodontics, School of Stomatology, Air Force Medical University, Xi ' an, Shaanxi, China.
J Dent. 2025 May;156:105690. doi: 10.1016/j.jdent.2025.105690. Epub 2025 Mar 17.
The graded diagnosis of periodontitis has always been a difficulty for dentists. This systematic review aimed to investigate the performance of artificial intelligence (AI) models for periodontitis classification.
This review includes original studies that explore the application of AI in periodontitis classification systems.
Two reviewers independently conducted a comprehensive search of literature published up to April 2024 in databases including PubMed, Web of Science, MEDLINE, Scopus, and Cochrane Library.
A total of 28 articles were eventually included in this study, from which 10 mapping parameters were extracted and evaluated separately for each article.
AI's diagnostic capabilities are comparable to those of a general dentist/periodontist, achieving an overall diagnostic accuracy rate of over 70 % for periodontitis classification, with some reaching 80-90 %. Variations in diagnosis accuracy rates were observed across different stages of periodontitis.
The AI model provides a novel and relatively reliable method for periodontitis classification. However, several key issues remain to be addressed, including access to and quality of data, interpretation of the decision-making process of the model, the ability of the model to generalize, and ethical and privacy considerations.
The development of AI models for periodontitis classification is expected to assist dentists in improving diagnostic efficiency and enhancing diagnostic accuracy, and further development is expected to assist telemedicine and home self-testing.
牙周炎的分级诊断一直是牙医面临的难题。本系统评价旨在研究人工智能(AI)模型在牙周炎分类中的性能。
本评价纳入了探索AI在牙周炎分类系统中应用的原始研究。
两名评价者独立对截至2024年4月在包括PubMed、科学网、MEDLINE、Scopus和Cochrane图书馆在内的数据库中发表的文献进行了全面检索。
本研究最终共纳入28篇文章,从中提取10个映射参数,并对每篇文章分别进行评估。
AI的诊断能力与普通牙医/牙周病医生相当,在牙周炎分类方面总体诊断准确率超过70%,部分达到80%-90%。在牙周炎的不同阶段观察到诊断准确率存在差异。
AI模型为牙周炎分类提供了一种新颖且相对可靠的方法。然而,仍有几个关键问题有待解决,包括数据的获取和质量、模型决策过程的解释、模型的泛化能力以及伦理和隐私考量。
牙周炎分类AI模型的开发有望帮助牙医提高诊断效率并增强诊断准确性,进一步发展有望助力远程医疗和家庭自我检测。