Lin Tai-Jung, Lin Yen-Ting, Lin Yuan-Jin, Tseng Ai-Yun, Lin Chien-Yu, Lo Li-Ting, Chen Tsung-Yi, Chen Shih-Lun, Chen Chiung-An, Li Kuo-Chen, Abu Patricia Angela R
Department of Periodontics, Division of Dentistry, Taoyuan Chang Gung Memorial Hospital, Taoyuan City 32023, Taiwan.
Department of Program on Semiconductor Manufacturing Technology, Academy of Innovative Semiconductor and Sustainable Manufacturing, National Cheng Kung University, Tainan City 701401, Taiwan.
Bioengineering (Basel). 2024 Jul 2;11(7):675. doi: 10.3390/bioengineering11070675.
In the field of dentistry, the presence of dental calculus is a commonly encountered issue. If not addressed promptly, it has the potential to lead to gum inflammation and eventual tooth loss. Bitewing (BW) images play a crucial role by providing a comprehensive visual representation of the tooth structure, allowing dentists to examine hard-to-reach areas with precision during clinical assessments. This visual aid significantly aids in the early detection of calculus, facilitating timely interventions and improving overall outcomes for patients. This study introduces a system designed for the detection of dental calculus in BW images, leveraging the power of YOLOv8 to identify individual teeth accurately. This system boasts an impressive precision rate of 97.48%, a recall (sensitivity) of 96.81%, and a specificity rate of 98.25%. Furthermore, this study introduces a novel approach to enhancing interdental edges through an advanced image-enhancement algorithm. This algorithm combines the use of a median filter and bilateral filter to refine the accuracy of convolutional neural networks in classifying dental calculus. Before image enhancement, the accuracy achieved using GoogLeNet stands at 75.00%, which significantly improves to 96.11% post-enhancement. These results hold the potential for streamlining dental consultations, enhancing the overall efficiency of dental services.
在牙科领域,牙结石的存在是一个常见问题。如果不及时处理,它有可能导致牙龈炎症并最终导致牙齿脱落。咬合翼片(BW)图像通过提供牙齿结构的全面视觉呈现发挥着关键作用,使牙医在临床评估期间能够精确检查难以触及的区域。这种视觉辅助工具极大地有助于早期发现牙结石,促进及时干预并改善患者的整体治疗效果。本研究介绍了一种为检测BW图像中的牙结石而设计的系统,利用YOLOv8的强大功能准确识别单个牙齿。该系统拥有令人印象深刻的精确率97.48%、召回率(敏感度)96.81%和特异度98.25%。此外,本研究引入了一种通过先进的图像增强算法来增强牙间隙边缘的新方法。该算法结合使用中值滤波器和双边滤波器来提高卷积神经网络在牙结石分类中的准确性。在图像增强之前,使用GoogLeNet实现的准确率为75.00%,增强后显著提高到96.11%。这些结果有可能简化牙科咨询流程,提高牙科服务的整体效率。