4.6 Article

An Interpretable Computer-Aided Diagnosis Method for Periodontitis From Panoramic Radiographs

期刊

FRONTIERS IN PHYSIOLOGY
卷 12, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fphys.2021.655556

关键词

teeth segmentation and numbering; periodontitis diagnosis; panoramic radiograph; computer-aided diagnostics; interpretable model

资金

  1. King Abdullah University of Science and Technology (KAUST) Office of Sponsored Research (OSR) [BAS/1/1624-01, FCC/1/1976-23-01, FCC/1/1976-26-01, REI/1/0018-01-01, REI/1/4216-01-01, REI/1/4437-01-01, REI/1/4473-01-01, URF/1/4098-01-01]
  2. Fundamental Research Funds for the Central Universities [20ykpy05]
  3. Sun Yatsen University 100 Top Talent Scholars Program-China [P20190217202203617]

向作者/读者索取更多资源

Periodontitis is a prevalent global disease, requiring an automatic diagnostic tool to prevent tooth loss. Therefore, a interpretable method called Deetal-Perio is proposed to predict the severity of periodontitis, which performs well and helps doctors understand its working mechanism.
Periodontitis is a prevalent and irreversible chronic inflammatory disease both in developed and developing countries, and affects about 20-50% of the global population. The tool for automatically diagnosing periodontitis is highly demanded to screen at-risk people for periodontitis and its early detection could prevent the onset of tooth loss, especially in local communities and health care settings with limited dental professionals. In the medical field, doctors need to understand and trust the decisions made by computational models and developing interpretable models is crucial for disease diagnosis. Based on these considerations, we propose an interpretable method called Deetal-Perio to predict the severity degree of periodontitis in dental panoramic radiographs. In our method, alveolar bone loss (ABL), the clinical hallmark for periodontitis diagnosis, could be interpreted as the key feature. To calculate ABL, we also propose a method for teeth numbering and segmentation. First, Deetal-Perio segments and indexes the individual tooth via Mask R-CNN combined with a novel calibration method. Next, Deetal-Perio segments the contour of the alveolar bone and calculates a ratio for individual tooth to represent ABL. Finally, Deetal-Perio predicts the severity degree of periodontitis given the ratios of all the teeth. The Macro F1-score and accuracy of the periodontitis prediction task in our method reach 0.894 and 0.896, respectively, on Suzhou data set, and 0.820 and 0.824, respectively on Zhongshan data set. The entire architecture could not only outperform state-of-the-art methods and show robustness on two data sets in both periodontitis prediction, and teeth numbering and segmentation tasks, but also be interpretable for doctors to understand the reason why Deetal-Perio works so well.

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