Department of Dental Materials, Dental Science Research Institute, School of Dentistry, Chonnam National University, Gwangju 61186, Republic of Korea.
Department of Artificial Intelligence Convergence, Chonnam National University, Gwangju 61186, Republic of Korea.
Medicina (Kaunas). 2023 Jul 13;59(7):1293. doi: 10.3390/medicina59071293.
: The tongue mucosa often changes due to various local and systemic diseases or conditions. This study aimed to investigate whether deep learning can help detect abnormal regions on the dorsal tongue surface in patients and healthy adults. : The study collected 175 clinical photographic images of the dorsal tongue surface, which were divided into 7782 cropped images classified into normal, abnormal, and non-tongue regions and trained using the VGG16 deep learning model. The 80 photographic images of the entire dorsal tongue surface were used for the segmentation of abnormal regions using point mapping segmentation. : The F1-scores of the abnormal and normal classes were 0.960 (precision: 0.935, recall: 0.986) and 0.968 (precision: 0.987, recall: 0.950), respectively, in the prediction of the VGG16 model. As a result of evaluation using point mapping segmentation, the average F1-scores were 0.727 (precision: 0.717, recall: 0.737) and 0.645 (precision: 0.650, recall: 0.641), the average intersection of union was 0.695 and 0.590, and the average precision was 0.940 and 0.890, respectively, for abnormal and normal classes. : The deep learning algorithm used in this study can accurately determine abnormal areas on the dorsal tongue surface, which can assist in diagnosing specific diseases or conditions of the tongue mucosa.
: 舌黏膜常因各种局部和全身疾病或情况而发生变化。本研究旨在探讨深度学习是否有助于检测患者和健康成年人的舌背表面异常区域。: 该研究收集了 175 张舌背临床摄影图像,将其分为 7782 张裁剪图像,分为正常、异常和非舌区域,并使用 VGG16 深度学习模型进行训练。使用点映射分割对整个舌背的 80 张摄影图像进行异常区域的分割。: VGG16 模型对异常和正常类别的预测的 F1 评分分别为 0.960(精度:0.935,召回率:0.986)和 0.968(精度:0.987,召回率:0.950)。通过点映射分割评估,异常和正常类别的平均 F1 评分分别为 0.727(精度:0.717,召回率:0.737)和 0.645(精度:0.650,召回率:0.641),平均交集分别为 0.695 和 0.590,平均精度分别为 0.940 和 0.890。: 本研究中使用的深度学习算法可以准确确定舌背表面的异常区域,有助于诊断舌黏膜的特定疾病或情况。