Comparison of 3 deep learning neural networks for classifying the relationship between the mandibular third molar and the mandibular canal on panoramic radiographs

被引:58
作者
Fukuda, Motoki [1 ]
Ariji, Yoshiko [1 ]
Kise, Yoshitaka [1 ]
Nozawa, Michihito [1 ]
Kuwada, Chiaki [1 ]
Funakoshi, Takuma [1 ]
Muramatsu, Chisako [2 ]
Fujita, Hiroshi [3 ]
Katsumata, Akitoshi [4 ]
Ariji, Eiichiro [1 ]
机构
[1] Aichi Gakuin Univ, Dept Oral & Maxillofacial Radiol, Sch Dent, Nagoya, Aichi, Japan
[2] Shiga Univ, Fac Data Sci, Hikone, Shiga, Japan
[3] Gifu Univ, Dept Elect Elect & Comp, Fac Engn, Gifu, Japan
[4] Asahi Univ, Dept Oral Radiol, Sch Dent, Mizuho Ku, Gifu, Japan
来源
ORAL SURGERY ORAL MEDICINE ORAL PATHOLOGY ORAL RADIOLOGY | 2020年 / 130卷 / 03期
关键词
D O I
10.1016/j.oooo.2020.04.005
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objective. The aim of this study was to compare time and storage space requirements, diagnostic performance, and consistency among 3 image recognition convolutional neural networks (CNNs) in the evaluation of the relationships between the mandibular third molar and the mandibular canal on panoramic radiographs. Study design. Of 600 panoramic radiographs, 300 each were assigned to noncontact and contact groups based on the relationship between the mandibular third molar and the mandibular canal. The CNNs were trained twice by using cropped image patches with sizes of 70 x 70 pixels and 140 x 140 pixels. Time and storage space were measured for each system. Accuracy, sensitivity, specificity, and the area under the receiver operating characteristic curve (AUC) were determined. Intra-CNN and inter-CNN consistency values were calculated. Results. Time and storage space requirements depended on the depth of CNN layers and number of learned parameters, respectively. The highest AUC values ranged from 0.88 to 0.93 in the CNNs created by 70 x 70 pixel patches, but there were no significant differences in diagnostic performance among any of the models with smaller patches. Intra-CNN and inter-CNN consistency values were good or very good for all CNNs. Conclusions, The size of the image patches should be carefully determined to ensure acquisition of high diagnostic performance and consistency.
引用
收藏
页码:336 / 343
页数:8
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