Submitted:
06 February 2025
Posted:
06 February 2025
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Abstract

Keywords:
1. Introduction
2. Artificial Intelligence and Deep Learning in Endodontics
3. Methodology

3.1. Sample Size Calculation Method.

3.2. Radiographic Data Extraction

3.4. AI Programming for Classification of C-Shaped and Non-C-Shaped Root Canals

3.5. Dataset and Preprocessing
- Removing excess backgrounds
- Standardizing backgrounds
- Rescaling to 300x300 pixels in most samples


3.6. Feature Extraction and Transfer Learning
3.7. Classification

3.8. Implementation
3.9. Evaluation Metrics
4. Results


4. Discussion
5. Conclusions

Author Contributions
Funding
Ethical consideration
Acknowledgments
Conflicts of Interest
References
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| Architectures | Number of layers | Number of parameters | Accuracy% | Confusion matrix | |
|---|---|---|---|---|---|
| True Class | |||||
| EfficientNetB1 | 340 | 8149640 | 82.1 | Predicted Class |
|
| EfficientNetB3 | 386 | 11177264 | 77.7 | Predicted Class |
|
| EfficientNetB5 | 571 | 29038328 | 82.1 | Predicted Class |
|
| ResNet | 152 | 58856449 | 80.6 | Predicted Class |
|
| ResNet | 101 | 43151361 | 85.1 | Predicted Class |
|
| ResNet | 50 | 24112513 | 85.1 | Predicted Class |
|
| VGG19 | 19 | 20155969 | 71.65 | Predicted Class |
|
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