Faculty of Dentistry, Department of Oral and Maxillofacial Radiology, Necmettin Erbakan University, Bağlarbaşı Street, 42090, Meram, Konya, Turkey.
Faculty of Technology, Department of Biomedical Engineering, Pamukkale University, Denizli, Turkey.
Sci Rep. 2024 Feb 23;14(1):4437. doi: 10.1038/s41598-024-55109-2.
Idiopathic osteosclerosis (IO) are focal radiopacities of unknown etiology observed in the jaws. These radiopacities are incidentally detected on dental panoramic radiographs taken for other reasons. In this study, we investigated the performance of a deep learning model in detecting IO using a small dataset of dental panoramic radiographs with varying contrasts and features. Two radiologists collected 175 IO-diagnosed dental panoramic radiographs from the dental school database. The dataset size is limited due to the rarity of IO, with its incidence in the Turkish population reported as 2.7% in studies. To overcome this limitation, data augmentation was performed by horizontally flipping the images, resulting in an augmented dataset of 350 panoramic radiographs. The images were annotated by two radiologists and divided into approximately 70% for training (245 radiographs), 15% for validation (53 radiographs), and 15% for testing (52 radiographs). The study employing the YOLOv5 deep learning model evaluated the results using precision, recall, F1-score, mAP (mean Average Precision), and average inference time score metrics. The training and testing processes were conducted on the Google Colab Pro virtual machine. The test process's performance criteria were obtained with a precision value of 0.981, a recall value of 0.929, an F1-score value of 0.954, and an average inference time of 25.4 ms. Although radiographs diagnosed with IO have a small dataset and exhibit different contrasts and features, it has been observed that the deep learning model provides high detection speed, accuracy, and localization results. The automatic identification of IO lesions using artificial intelligence algorithms, with high success rates, can contribute to the clinical workflow of dentists by preventing unnecessary biopsy procedure.
特发性骨硬化症(IO)是一种病因不明的颌骨局灶性放射性不透光区,在因其他原因拍摄的口腔全景片上偶然发现。在这项研究中,我们使用具有不同对比度和特征的口腔全景片的小数据集,研究了深度学习模型在检测 IO 中的性能。两名放射科医生从牙科学院数据库中收集了 175 张 IO 诊断的口腔全景片。由于 IO 的罕见性,数据集的大小有限,在土耳其人群中的发病率在研究中报道为 2.7%。为了克服这一限制,通过水平翻转图像进行了数据增强,从而得到了一个增强的 350 张全景片数据集。图像由两名放射科医生进行注释,并分为大约 70%的训练集(245 张)、15%的验证集(53 张)和 15%的测试集(52 张)。该研究采用了 YOLOv5 深度学习模型,使用精度、召回率、F1 分数、mAP(平均精度)和平均推理时间分数等指标来评估结果。训练和测试过程在 Google Colab Pro 虚拟机上进行。测试过程的性能标准是通过 0.981 的精度值、0.929 的召回率值、0.954 的 F1 分数值和 25.4 ms 的平均推理时间获得的。尽管 IO 诊断的射线照片数据集较小,并且具有不同的对比度和特征,但观察到深度学习模型提供了高的检测速度、准确性和定位结果。使用人工智能算法自动识别 IO 病变,可以通过防止不必要的活检程序,为牙医的临床工作流程做出贡献。