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KMID : 1235020200140030015
Health Service Management Review
2020 Volume.14 No. 3 p.15 ~ p.28
Literature Analysis of Deep Learning Based Dental Imaging Readings
Choi Hyun-Chul

Kim Cho-Myong
Park Sang-Chan
Abstract
This study analyzes the papers, which studied to find the most adequate CNN based algorithms for segmentation, object detection in dentistry. According to our purpose, we created several keywords like ¡°Dental+Object Detection+Neural+Network.¡± We searched articles in ¡®PubMed¡¯, ¡®IEEE¡¯, using created 34 keywords. We found 458 papers and excluded under a study-purpose provision. So This paper had categorized those 23 papers by 11 of segmentation of tooth structure with dental filling and FDI numbering, 12 of detecting dental caries, periodontitis, or multiple lesions. To compare the performance of models, we organized the results by DICE/IoU index and accuracy, precision, recall, etc.. Various dataset was used for analyzing. The most common dataset was dental panoramic image, then periapical, CBCT, NILT, and intra-oral image. The algorithms were used according to the purpose. For example, VGG16, 19 was used for object detection algorithms were used according to the purpose. For example, VGG16, 19 was used for object detection, U-Net, and Mask R-CNN used for segmentation by study purpose.
For segmentation of teeth, Zhimming Cui(2019), used Mask R-CNN, and the accuracy was 0.9755. Vranck(2020) used ResNet for molar detection(IoU 0.9, precision 0.94, 0.93). To label the tooth numbering according to FDI rule, Tuzoff(2019) and Chen(2019), used Faster R-CNN, VGG16, and Faster R-CNN with DNN. Tuzoff¡¯s index was slightly better than Chen¡¯s. Casalegno(2019) investigated the detection of dental caries by using VGG16. The result was IoU 0.727. To find periodontitis, used VGG16 also, by Prajapaty(2017). And the accuracy was 0.8846. Using the Mask R-CNN, Jader(2018) could separate instances of multiple lesions, accuracy was 0.8846.
KEYWORD
Dentistry, Dental disease, Artificial intelligence, Convolutional neural network, Object detection, Segmentation
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