Comparison of deep learning methods for the radiographic detection of patients with different periodontitis stages

被引:7
作者
Ayyildiz, Berceste Guler [1 ]
Karakis, Rukiye [2 ]
Terzioglu, Busra [1 ,3 ]
Ozdemir, Durmus [4 ]
机构
[1] Kutahya Hlth Sci Univ, Fac Dent, Dept Periodontol, Lalahuseyinpasa St 271, TR-43100 Kutahya, Turkiye
[2] Sivas Cumhuriyet Univ, Fac Technol, Dept Software Engn, TR-58140 Sivas, Turkiye
[3] Kutahya Hlth Sci Univ, Tavsanlo Vocat Sch, Oral Hlth Dept, TR-43410 Kutahya, Turkiye
[4] Kutahya Dumlupinar Univ, Fac Engn, Dept Comp Engn, TR-43020 Kutahya, Turkiye
关键词
alveolar bone loss; radiography; classification; deep learning; machine learning; FEATURE-SELECTION; CLASSIFICATION; DISEASES;
D O I
10.1093/dmfr/twad003
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objectives The objective of this study is to assess the accuracy of computer-assisted periodontal classification bone loss staging using deep learning (DL) methods on panoramic radiographs and to compare the performance of various models and layers.Methods Panoramic radiographs were diagnosed and classified into 3 groups, namely "healthy," "Stage1/2," and "Stage3/4," and stored in separate folders. The feature extraction stage involved transferring and retraining the feature extraction layers and weights from 3 models, namely ResNet50, DenseNet121, and InceptionV3, which were proposed for classifying the ImageNet dataset, to 3 DL models designed for classifying periodontal bone loss. The features obtained from global average pooling (GAP), global max pooling (GMP), or flatten layers (FL) of convolutional neural network (CNN) models were used as input to the 8 different machine learning (ML) models. In addition, the features obtained from the GAP, GMP, or FL of the DL models were reduced using the minimum redundancy maximum relevance (mRMR) method and then classified again with 8 ML models.Results A total of 2533 panoramic radiographs, including 721 in the healthy group, 842 in the Stage1/2 group, and 970 in the Stage3/4 group, were included in the dataset. The average performance values of DenseNet121 + GAP-based and DenseNet121 + GAP + mRMR-based ML techniques on 10 subdatasets and ML models developed using 2 feature selection techniques outperformed CNN models.Conclusions The new DenseNet121 + GAP + mRMR-based support vector machine model developed in this study achieved higher performance in periodontal bone loss classification compared to other models in the literature by detecting effective features from raw images without the need for manual selection.
引用
收藏
页码:32 / 42
页数:11
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