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Convolutional-neural-network-based radiographs evaluation assisting in early diagnosis of the periodontal bone loss via periapical radiograph.
Chen, I-Hui; Lin, Chia-Hua; Lee, Min-Kang; Chen, Tsung-En; Lan, Ting-Hsun; Chang, Chia-Ming; Tseng, Tsai-Yu; Wang, Tsaipei; Du, Je-Kang.
Afiliação
  • Chen IH; Division of Periodontology, Department of Dentistry, Kaohsiung Medical University Hospital, Kaohsiung, Taiwan.
  • Lin CH; Department of Dentistry, Kaohsiung Medical University Hospital, Kaohsiung, Taiwan.
  • Lee MK; Division of Family Dentistry, Department of Dentistry, Kaohsiung Medical University Hospital, Kaohsiung, Taiwan.
  • Chen TE; Department of Dentistry, Kaohsiung Municipal Ta-Tung Hospital, Kaohsiung, Taiwan.
  • Lan TH; Division of Prosthodontics, Department of Dentistry, Kaohsiung Medical University Hospital, Kaohsiung, Taiwan.
  • Chang CM; School of Dentistry, College of Dental Medicine, Kaohsiung Medical University, Kaohsiung, Taiwan.
  • Tseng TY; Department of Computer Science, National Yang Ming Chiao Tung University, Hsinchu, Taiwan.
  • Wang T; Department of Computer Science, National Yang Ming Chiao Tung University, Hsinchu, Taiwan.
  • Du JK; Department of Computer Science, National Yang Ming Chiao Tung University, Hsinchu, Taiwan.
J Dent Sci ; 19(1): 550-559, 2024 Jan.
Article em En | MEDLINE | ID: mdl-38303886
ABSTRACT
Background/

Purpose:

The preciseness of detecting periodontal bone loss is examiners dependent, and this leads to low reliability. The need for automated assistance systems on dental radiographic images has been increased. To the best of our knowledge, no studies have quantitatively and automatically staged periodontitis using dental periapical radiographs. The purpose of this study was to evaluate periodontal bone loss and periodontitis stage on dental periapical radiographs using deep convolutional neural networks (CNNs). Materials and

methods:

336 periapical radiographic images (teeth 390) between January 2017 and December 2019 were collected and de-identified. All periapical radiographic image datasets were divided into training dataset (n = 82, teeth 123) and test dataset (n = 336, teeth 390). For creating an optimal deep CNN algorithm model, the training datasets were directly used for the segmentation and individual tooth detection. To evaluate the diagnostic power, we calculated the degree of alveolar bone loss deviation between our proposed method and ground truth, the Pearson correlation coefficients (PCC), and the diagnostic accuracy of the proposed method in the test datasets.

Results:

The periodontal bone loss degree deviation between our proposed method and the ground truth drawn by the three periodontists was 6.5 %. In addition, the overall PCC value of our proposed system and the periodontists' diagnoses was 0.828 (P < 0.01). The total diagnostic accuracy of our proposed method was 72.8 %. The diagnostic accuracy was highest for stage III (97.0 %).

Conclusion:

This tool helps with diagnosis and prevents omission, and this may be especially helpful for inexperienced younger doctors and doctors in underdeveloped countries. It could also dramatically reduce the workload of clinicians and timely access to periodontist care for people requiring advanced periodontal treatment.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article