Khanagar Sanjeev B, Alfadley Abdulmohsen, Alfouzan Khalid, Awawdeh Mohammed, Alaqla Ali, Jamleh Ahmed
Preventive Dental Science Department, College of Dentistry, King Saud Bin Abdulaziz University for Health Sciences, Riyadh 11426, Saudi Arabia.
King Abdullah International Medical Research Centre, Ministry of National Guard Health Affairs, Riyadh 11481, Saudi Arabia.
Diagnostics (Basel). 2023 Jan 23;13(3):414. doi: 10.3390/diagnostics13030414.
Technological advancements in health sciences have led to enormous developments in artificial intelligence (AI) models designed for application in health sectors. This article aimed at reporting on the application and performances of AI models that have been designed for application in endodontics. Renowned online databases, primarily PubMed, Scopus, Web of Science, Embase, and Cochrane and secondarily Google Scholar and the Saudi Digital Library, were accessed for articles relevant to the research question that were published from 1 January 2000 to 30 November 2022. In the last 5 years, there has been a significant increase in the number of articles reporting on AI models applied for endodontics. AI models have been developed for determining working length, vertical root fractures, root canal failures, root morphology, and thrust force and torque in canal preparation; detecting pulpal diseases; detecting and diagnosing periapical lesions; predicting postoperative pain, curative effect after treatment, and case difficulty; and segmenting pulp cavities. Most of the included studies ( = 21) were developed using convolutional neural networks. Among the included studies. datasets that were used were mostly cone-beam computed tomography images, followed by periapical radiographs and panoramic radiographs. Thirty-seven original research articles that fulfilled the eligibility criteria were critically assessed in accordance with QUADAS-2 guidelines, which revealed a low risk of bias in the patient selection domain in most of the studies (risk of bias: 90%; applicability: 70%). The certainty of the evidence was assessed using the GRADE approach. These models can be used as supplementary tools in clinical practice in order to expedite the clinical decision-making process and enhance the treatment modality and clinical operation.
健康科学领域的技术进步推动了旨在应用于医疗领域的人工智能(AI)模型的巨大发展。本文旨在报告已设计用于牙髓病学的AI模型的应用情况和性能。我们访问了著名的在线数据库,主要是PubMed、Scopus、科学网、Embase和Cochrane,其次是谷歌学术和沙特数字图书馆,以查找与研究问题相关的、在2000年1月1日至2022年11月30日期间发表的文章。在过去5年中,报告应用于牙髓病学的AI模型的文章数量显著增加。已经开发了AI模型用于确定工作长度、垂直根折、根管治疗失败、根管形态以及根管预备中的推力和扭矩;检测牙髓疾病;检测和诊断根尖周病变;预测术后疼痛、治疗后的疗效以及病例难度;以及分割牙髓腔。大多数纳入研究(n = 21)是使用卷积神经网络开发的。在纳入研究中,使用的数据集大多是锥形束计算机断层扫描图像,其次是根尖片和全景片。根据QUADAS-2指南对37篇符合纳入标准的原始研究文章进行了严格评估,结果显示大多数研究在患者选择领域的偏倚风险较低(偏倚风险:90%;适用性:70%)。使用GRADE方法评估证据的确定性。这些模型可作为临床实践中的辅助工具,以加快临床决策过程,增强治疗方式和临床操作。