Automated Caries Screening Using Ensemble Deep Learning on Panoramic Radiographs

dc.contributor.authorToan Huy Bui
dc.contributor.authorKazuhiko Hamamoto
dc.contributor.authorMay Phu Paing
dc.date.accessioned2025-07-21T06:07:43Z
dc.date.issued2022-09-24
dc.description.abstractCaries prevention is essential for oral hygiene. A fully automated procedure that reduces human labor and human error is needed. This paper presents a fully automated method that segments tooth regions of interest from a panoramic radiograph to diagnose caries. A patient's panoramic oral radiograph, which can be taken at any dental facility, is first segmented into several segments of individual teeth. Then, informative features are extracted from the teeth using a pre-trained deep learning network such as VGG, Resnet, or Xception. Each extracted feature is learned by a classification model such as random forest, k-nearest neighbor, or support vector machine. The prediction of each classifier model is considered as an individual opinion that contributes to the final diagnosis, which is decided by a majority voting method. The proposed method achieved an accuracy of 93.58%, a sensitivity of 93.91%, and a specificity of 93.33%, making it promising for widespread implementation. The proposed method, which outperforms existing methods in terms of reliability, and can facilitate dental diagnosis and reduce the need for tedious procedures.
dc.identifier.doi10.3390/e24101358
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/11680
dc.subjectPanoramic radiograph
dc.subjectFeature (linguistics)
dc.subject.classificationDental Radiography and Imaging
dc.titleAutomated Caries Screening Using Ensemble Deep Learning on Panoramic Radiographs
dc.typeArticle

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