A lightweight convolutional neural network model with receptive field block for C-shaped root canal detection in mandibular second molars

被引:0
作者
Lijuan Zhang
Feng Xu
Ying Li
Huimin Zhang
Ziyi Xi
Jie Xiang
Bin Wang
机构
[1] Shanxi Provincial People’s Hospital,Department of Oral Medicine
[2] Taiyuan University of Technology,College of Information and Computer
来源
Scientific Reports | / 12卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Rapid and accurate detection of a C-shaped root canal on mandibular second molars can assist dentists in diagnosis and treatment. Oral panoramic radiography is one of the most effective methods of determining the root canal of teeth. There are already some traditional methods based on deep learning to learn the characteristics of C-shaped root canal tooth images. However, previous studies have shown that the accuracy of detecting the C-shaped root canal still needs to be improved. And it is not suitable for implementing these network structures with limited hardware resources. In this paper, a new lightweight convolutional neural network is designed, which combined with receptive field block (RFB) for optimizing feature extraction. In order to optimize the hardware resource requirements of the model, a lightweight, multi-branch, convolutional neural network model was developed in this study. To improve the feature extraction ability of the model for C-shaped root canal tooth images, RFB has been merged with this model. RFB has achieved excellent results in target detection and classification. In the multiscale receptive field block, some small convolution kernels are used to replace the large convolution kernels, which allows the model to extract detailed features and reduce the computational complexity. Finally, the accuracy and area under receiver operating characteristics curve (AUC) values of C-shaped root canals on the image data of our mandibular second molars were 0.9838 and 0.996, respectively. The results show that the deep learning model proposed in this paper is more accurate and has lower computational complexity than many other similar studies. In addition, score-weighted class activation maps (Score-CAM) were generated to localize the internal structure that contributed to the predictions.
引用
收藏
相关论文
共 96 条
[21]  
Berbaum KS(2020)Inter-slice context residual learning for 3d medical image segmentation IEEE Trans. Med. Imaging 9 984-999
[22]  
Caldwell RT(2021)Medical image segmentation with limited supervision: A review of deep network models IEEE Access 91 910-282
[23]  
Schartz KM(2021)Rib segmentation algorithm for X-ray image based on unpaired sample augmentation and multi-scale network Neural Comput. Appl. 10 106-11
[24]  
Kim J(2019)Convolutional neural networks for dental image diagnostics: A scoping review J. Dent. 10 1-441
[25]  
LeCun Y(2020)Deep neural networks for dental implant system classification Biomolecules 77 84817-100
[26]  
Bengio Y(2020)A performance comparison between automated deep learning and dental professionals in classification of dental implant systems from dental imaging: A multi-center study Diagnostics 10 990-8
[27]  
Hinton G(2018)Detection and diagnosis of dental caries using a deep learning-based convolutional neural network algorithm J. Dent. 7 276-7
[28]  
Radoglou-Grammatikis P(2020)Deep learning method for mandibular canal segmentation in dental cone beam computed tomography volumes Sci. Rep. 144 20200513-956
[29]  
Toğaçar M(2019)Automatic classification and segmentation of teeth on 3D dental model using hierarchical deep learning networks IEEE Access 44 1-53065
[30]  
Ergen B(2021)Intelligent skin cancer detection applying autoencoder, MobileNetV2 and spiking neural networks Chaos Solitons Fract. 22 427-7