接收机工作特性
射线照相术
牙科
医学
牙周炎
临床附着丧失
口腔正畸科
分类
召回
二元分类
人工智能
计算机科学
心理学
支持向量机
放射科
内科学
认知心理学
作者
Balázs Fehér,Andreas A. Werdich,Chun‐Jung Chen,Jane Barrow,Su Jin Lee,N. Palmer,Magda Feres
标识
DOI:10.1177/00220345251316514
摘要
Periodontitis is a severe infection affecting oral and systemic health and is traditionally diagnosed through clinical probing—a process that is time-consuming, uncomfortable for patients, and subject to variability based on the operator’s skill. We hypothesized that computer vision can be used to estimate periodontal stability from radiographs alone. At the tooth level, we used intraoral radiographs to detect and categorize individual teeth according to their periodontal stability and corresponding treatment needs: healthy (prevention), stable (maintenance), and unstable (active treatment). At the patient level, we assessed full-mouth series and classified patients as stable or unstable by the presence of at least 1 unstable tooth. Our 3-way tooth classification model achieved an area under the receiver operating characteristic curve of 0.71 for healthy teeth, 0.56 for stable, and 0.67 for unstable. The model achieved an F 1 score of 0.45 for healthy teeth, 0.57 for stable, and 0.54 for unstable (recall, 0.70). Saliency maps generated by gradient-weighted class activation mapping primarily showed highly activated areas corresponding to clinically probed regions around teeth. Our binary patient classifier achieved an area under the receiver operating characteristic curve of 0.68 and an F 1 score of 0.74 (recall, 0.70). Taken together, our results suggest that it is feasible to estimate periodontal stability, which traditionally requires clinical and radiographic examination, from radiographic signal alone using computer vision. Variations in model performance across different classes at the tooth level indicate the necessity of further refinement.
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