Automatic detection and classification of radiolucent lesions in the mandible on panoramic radiographs using a deep learning object detection technique

被引:128
作者
Ariji, Yoshiko [1 ]
Yanashita, Yudai [2 ]
Kutsuna, Syota [2 ]
Muramatsu, Chisako [2 ,3 ]
Fukuda, Motoki [1 ]
Kise, Yoshitaka [1 ]
Nozawa, Michihito [1 ]
Kuwada, Chiaki [1 ]
Fujita, Hiroshi [2 ]
Katsumata, Akitoshi [4 ]
Ariji, Eiichiro [1 ]
机构
[1] Aichi Gakuin Univ, Sch Dent, Dept Oral & Maxillofacial Radiol, Nagoya, Aichi, Japan
[2] Gifu Univ, Dept Elect Elect & Comp, Fac Engn, Gifu, Japan
[3] Shiga Univ, Fac Data Sci, Hikone, Shiga, Japan
[4] Asahi Univ, Sch Dent, Dept Oral Radiol, Mizuho, Japan
来源
ORAL SURGERY ORAL MEDICINE ORAL PATHOLOGY ORAL RADIOLOGY | 2019年 / 128卷 / 04期
关键词
MASSES;
D O I
10.1016/j.oooo.2019.05.014
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 investigate whether a deep learning object detection technique can automatically detect and classify radiolucent lesions in the mandible on panoramic radiographs. Study Design. Panoramic radiographs of patients with mandibular radiolucent lesions of 10 mm or greater, including amelo-blastomas, odontogenic keratocysts, dentigerous cysts, radicular cysts, and simple bone cysts, were included. Lesion labels, including region of interest coordinates, were created in text format. In total, 210 training images and labels were imported into the deep learning GPU training system (DIGITS). A learning model was created using the deep neural network DetectNet. Two testing data sets (testing 1 and 2) were applied to the learning model. Similarities and differences between the prediction and ground-truth images were evaluated using Intersection over Union (IoU). Sensitivity and false-positive rate per image were calculated using an IoU threshold of 0.6. The detection performance for each disease was assessed using multiclass learning. Results. Sensitivity was 0.88 for both testing 1 and 2. The false-positive rate per image was 0.00 for testing 1 and 0.04 for testing 2. The best combination of detection and classification sensitivity occurred with dentigerous cysts. Conclusions. Radiolucent lesions of the mandible can be detected with high sensitivity using deep learning.
引用
收藏
页码:424 / 430
页数:7
相关论文
共 26 条
[1]   Simultaneous detection and classification of breast masses in digital mammograms via a deep learning YOLO-based CAD system [J].
Al-masni, Mohammed A. ;
Al-antari, Mugahed A. ;
Park, Jeong-Min ;
Gi, Geon ;
Kim, Tae-Yeon ;
Rivera, Patricio ;
Valarezo, Edwin ;
Choi, Mun-Taek ;
Han, Seung-Moo ;
Kim, Tae-Seong .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2018, 157 :85-94
[2]  
[Anonymous], 2017, Object detection using deep CNNs trained on synthetic images
[3]   Automatic lesion detection and segmentation of 18F-FET PET in gliomas: A full 3D U-Net convolutional neural network study [J].
Blanc-Durand, Paul ;
Van der Gucht, Axel ;
Schaefer, Niklaus ;
Itti, Emmanuel ;
Prior, John O. .
PLOS ONE, 2018, 13 (04)
[4]  
Chu P, 2018, IEEE ENG MED BIO, P2579, DOI 10.1109/EMBC.2018.8512755
[5]  
De Tobel J, 2017, J Forensic Odontostomatol, V35, P42
[6]   Trabecular structure designation using fractal analysis technique on panoramic radiographs of patients with bisphosphonate intake: a preliminary study [J].
Demiralp, Kemal Ozguer ;
Kursun-Cakmak, Emine Sebnem ;
Bayrak, Seval ;
Akbulut, Nihat ;
Atakan, Cemal ;
Orhan, Kaan .
ORAL RADIOLOGY, 2019, 35 (01) :23-28
[7]   Hierarchical combinatorial deep learning architecture for pancreas segmentation of medical computed tomography cancer images [J].
Fu, Min ;
Wu, Wenming ;
Hong, Xiafei ;
Liu, Qiuhua ;
Jiang, Jialin ;
Ou, Yaobin ;
Zhao, Yupei ;
Gong, Xinqi .
BMC SYSTEMS BIOLOGY, 2018, 12
[8]   A deep-learning artificial intelligence system for assessment of root morphology of the mandibular first molar on panoramic radiography [J].
Hiraiwa, Teruhiko ;
Ariji, Yoshiko ;
Fukuda, Motoki ;
Kise, Yoshitaka ;
Nakata, Kazuhiko ;
Katsumata, Akitoshi ;
Fujita, Hiroshi ;
Ariji, Eiichiro .
DENTOMAXILLOFACIAL RADIOLOGY, 2019, 48 (03)
[9]   Deep Learning Renal Segmentation for Fully Automated Radiation Dose Estimation in Unsealed Source Therapy [J].
Jackson, Price ;
Hardcastle, Nicholas ;
Dawe, Noel ;
Kron, Tomas ;
Hofman, Michael S. ;
Hicks, Rodney J. .
FRONTIERS IN ONCOLOGY, 2018, 8
[10]   Ossification area localization in pediatric hand radiographs using deep neural networks for object detection [J].
Koitka, Sven ;
Demircioglu, Aydin ;
Kim, Moon S. ;
Friedrich, Christoph M. ;
Nensa, Felix .
PLOS ONE, 2018, 13 (11)