An Explainable Deep Learning Model to Prediction Dental Caries Using Panoramic Radiograph Images
Abstract
:1. Introduction
- End-to-end caries detection is achieved without the need for any feature extraction.
- The proposed deep learning model has an explainable structure with the Grad-CAM method.
- Our explainable structure showed that caries markings on the tooth regions during the decision phase help experts during the diagnosis phase.
- The performance of the model is evaluated by various performance metrics, and individual results are explained through heat maps.
- It is provided to mark the caries regions without needing any segmentation process.
- Our explainable model performs as efficiently as expert dentists in detecting and localizing caries.
2. Materials and Methods
2.1. Dental Dataset
2.2. Proposed Classification Method
3. Experiments
3.1. Experimental Setup
3.2. Performance Evaluation Metrics
- The first case, True Positive (TP), occurs when the classifier’s deep learning network predicts that an image with a Caries label has Caries.
- The second case, False Positive (FP), occurs when the classifier’s deep learning network predicts that an image with no Caries label has Caries.
- The third case, False Negative (FN), is when the classifier deep learning model predicts an image with a Caries label as no Caries.
- The fourth case, called True Negative (TN), is when an image known to have no Caries label is predicted as no Caries by the classifier deep learning model.
3.3. Results
4. Discussion
- Due to its explainable structure, it is simple to determine which areas the model focuses on during the decision phase. As a result, it can assist dentists in their decision-making.
- Our developed automated system can assist junior or trainee dentists as an adjunct tool to make an accurate diagnosis.
- Caries areas can be accurately determined using heat maps without any segmentation techniques.
- Clinical application of the software that can detect caries areas on the input panoramic radiography image is achievable using the proposed approach, as illustrated in Figure 13.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Phase | Number of Original Data | Number of Augmented Data | ||
---|---|---|---|---|
Caries | Non-Caries | Caries | Non-Caries | |
Train | 860 | 740 | 6635 | 6635 |
Test | 300 | 300 | 300 | 300 |
Total | 2200 | 13,870 |
Deep Model | Accuracy (%) | Sensitivity (%) | Specificity (%) | Precision (%) | F1-Score (%) | MCC (%) |
---|---|---|---|---|---|---|
EfficientNet-B0 | 90.00 | 83.00 | 97.00 | 96.51 | 89.25 | 80.80 |
DenseNet-121 | 91.83 | 87.33 | 96.33 | 95.97 | 91.45 | 84.01 |
ResNet-50 | 92.00 | 87.33 | 96.67 | 96.32 | 91.61 | 84.37 |
Study | Number of Class | Number of Images | Classifier | Accuracy |
---|---|---|---|---|
Singh and Sehgal [32] | 6 (Class I-VI) | 1500 | CNN-LSTM | 96.00% |
Salehi et al. [33] | 3 (Non-caries, Enamel, Dentin) | 81 | CNN | 90.75% |
Wang et al. [37] | 4 (Sound, White-spot lesions, Smashed, Plaque) | 7200 | T-Net CNN | 95.45% |
Huang and Lee [34] | 3 (Non-caries, Enamel and Dentin) | 748 | ResNet-152 | 95.21% |
Lakshmi and Chitra [35] | 2 (Cavity, No cavity) | 1900 | AlexNet | 96.08% |
Leo and Reddy [36] | 2 (Non-caries, Caries) | 480 | DNN | 96.00% |
Zhu et al. [38] | 3 (Shallow caries, Moderate caries, Deep caries) | 3127 | CariesNet | 93.61% |
The proposed study | 2 (Caries, Non-caries) | 13,870 | ResNet-50 | 92.00% |
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Oztekin, F.; Katar, O.; Sadak, F.; Yildirim, M.; Cakar, H.; Aydogan, M.; Ozpolat, Z.; Talo Yildirim, T.; Yildirim, O.; Faust, O.; et al. An Explainable Deep Learning Model to Prediction Dental Caries Using Panoramic Radiograph Images. Diagnostics 2023, 13, 226. https://doi.org/10.3390/diagnostics13020226
Oztekin F, Katar O, Sadak F, Yildirim M, Cakar H, Aydogan M, Ozpolat Z, Talo Yildirim T, Yildirim O, Faust O, et al. An Explainable Deep Learning Model to Prediction Dental Caries Using Panoramic Radiograph Images. Diagnostics. 2023; 13(2):226. https://doi.org/10.3390/diagnostics13020226
Chicago/Turabian StyleOztekin, Faruk, Oguzhan Katar, Ferhat Sadak, Muhammed Yildirim, Hakan Cakar, Murat Aydogan, Zeynep Ozpolat, Tuba Talo Yildirim, Ozal Yildirim, Oliver Faust, and et al. 2023. "An Explainable Deep Learning Model to Prediction Dental Caries Using Panoramic Radiograph Images" Diagnostics 13, no. 2: 226. https://doi.org/10.3390/diagnostics13020226
APA StyleOztekin, F., Katar, O., Sadak, F., Yildirim, M., Cakar, H., Aydogan, M., Ozpolat, Z., Talo Yildirim, T., Yildirim, O., Faust, O., & Acharya, U. R. (2023). An Explainable Deep Learning Model to Prediction Dental Caries Using Panoramic Radiograph Images. Diagnostics, 13(2), 226. https://doi.org/10.3390/diagnostics13020226