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A Performance Comparison between Automated Deep Learning and Dental Professionals in Classification of Dental Implant Systems from Dental Imaging: A Multi-Center Study.
Lee, Jae-Hong; Kim, Young-Taek; Lee, Jong-Bin; Jeong, Seong-Nyum.
Affiliation
  • Lee JH; Department of Periodontology, Daejeon Dental Hospital, Institute of Wonkwang Dental Research, Wonkwang University College of Dentistry, Daejeon 35233, Korea.
  • Kim YT; Department of Periodontology, Ilsan Hospital, National Health Insurance Service, Goyang 10444, Korea.
  • Lee JB; Department of Periodontology, Mokdong Hospital, Ewha Woman's University School of Medicine, Seoul 07985, Korea.
  • Jeong SN; Department of Periodontology, Daejeon Dental Hospital, Institute of Wonkwang Dental Research, Wonkwang University College of Dentistry, Daejeon 35233, Korea.
Diagnostics (Basel) ; 10(11)2020 Nov 07.
Article in En | MEDLINE | ID: mdl-33171758
In this study, the efficacy of the automated deep convolutional neural network (DCNN) was evaluated for the classification of dental implant systems (DISs) and the accuracy of the performance was compared against that of dental professionals using dental radiographic images collected from three dental hospitals. A total of 11,980 panoramic and periapical radiographic images with six different types of DISs were divided into training (n = 9584) and testing (n = 2396) datasets. To compare the accuracy of the trained automated DCNN with dental professionals (including six board-certified periodontists, eight periodontology residents, and 11 residents not specialized in periodontology), 180 images were randomly selected from the test dataset. The accuracy of the automated DCNN based on the AUC, Youden index, sensitivity, and specificity, were 0.954, 0.808, 0.955, and 0.853, respectively. The automated DCNN outperformed most of the participating dental professionals, including board-certified periodontists, periodontal residents, and residents not specialized in periodontology. The automated DCNN was highly effective in classifying similar shapes of different types of DISs based on dental radiographic images. Further studies are necessary to determine the efficacy and feasibility of applying an automated DCNN in clinical practice.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Clinical_trials Language: En Journal: Diagnostics (Basel) Year: 2020 Document type: Article Country of publication:

Full text: 1 Collection: 01-internacional Database: MEDLINE Type of study: Clinical_trials Language: En Journal: Diagnostics (Basel) Year: 2020 Document type: Article Country of publication: