Sivari Esra, Senirkentli Guler Burcu, Bostanci Erkan, Guzel Mehmet Serdar, Acici Koray, Asuroglu Tunc
Department of Computer Engineering, Cankiri Karatekin University, Cankiri 18100, Turkey.
Department of Pediatric Dentistry, Baskent University, Ankara 06810, Turkey.
Diagnostics (Basel). 2023 Jul 27;13(15):2512. doi: 10.3390/diagnostics13152512.
Deep learning and diagnostic applications in oral and dental health have received significant attention recently. In this review, studies applying deep learning to diagnose anomalies and diseases in dental image material were systematically compiled, and their datasets, methodologies, test processes, explainable artificial intelligence methods, and findings were analyzed. Tests and results in studies involving human-artificial intelligence comparisons are discussed in detail to draw attention to the clinical importance of deep learning. In addition, the review critically evaluates the literature to guide and further develop future studies in this field. An extensive literature search was conducted for the 2019-May 2023 range using the Medline (PubMed) and Google Scholar databases to identify eligible articles, and 101 studies were shortlisted, including applications for diagnosing dental anomalies ( = 22) and diseases ( = 79) using deep learning for classification, object detection, and segmentation tasks. According to the results, the most commonly used task type was classification ( = 51), the most commonly used dental image material was panoramic radiographs ( = 55), and the most frequently used performance metric was sensitivity/recall/true positive rate ( = 87) and accuracy ( = 69). Dataset sizes ranged from 60 to 12,179 images. Although deep learning algorithms are used as individual or at least individualized architectures, standardized architectures such as pre-trained CNNs, Faster R-CNN, YOLO, and U-Net have been used in most studies. Few studies have used the explainable AI method ( = 22) and applied tests comparing human and artificial intelligence ( = 21). Deep learning is promising for better diagnosis and treatment planning in dentistry based on the high-performance results reported by the studies. For all that, their safety should be demonstrated using a more reproducible and comparable methodology, including tests with information about their clinical applicability, by defining a standard set of tests and performance metrics.
深度学习在口腔和牙齿健康诊断中的应用近年来受到了广泛关注。在本综述中,系统地收集了将深度学习应用于诊断牙科影像材料中的异常和疾病的研究,并分析了它们的数据集、方法、测试过程、可解释人工智能方法和研究结果。详细讨论了涉及人类与人工智能比较的研究中的测试和结果,以引起人们对深度学习临床重要性的关注。此外,本综述对文献进行了批判性评估,以指导和进一步推动该领域未来的研究。使用Medline(PubMed)和谷歌学术数据库对2019年至2023年5月期间的文献进行了广泛检索,以确定符合条件的文章,最终筛选出101项研究,包括使用深度学习进行分类、目标检测和分割任务来诊断牙齿异常(=22)和疾病(=79)的应用。结果显示,最常用的任务类型是分类(=51),最常用的牙科影像材料是全景X光片(=55),最常用的性能指标是灵敏度/召回率/真阳性率(=87)和准确率(=69)。数据集大小从60到12179张图像不等。虽然深度学习算法被用作个体或至少是个性化的架构,但在大多数研究中都使用了预训练的卷积神经网络、更快的区域卷积神经网络、你只需要看一次(YOLO)和U-Net等标准化架构。很少有研究使用可解释人工智能方法(=22)并进行比较人类和人工智能的测试(=21)。基于研究报告的高性能结果,深度学习在牙科更好的诊断和治疗计划方面具有广阔前景。尽管如此,应该使用更具可重复性和可比性的方法来证明其安全性,包括通过定义一套标准的测试和性能指标进行有关其临床适用性的测试。