An Integrated Multi-Channel Deep Neural Network for Mesial Temporal Lobe Epilepsy Identification Using Multi-Modal Medical Data
Abstract
:1. Introduction
2. Materials and Methods
2.1. Subjects
2.2. MRI System and Image Pre-Processing
2.3. PET System and Image Pre-Processing
3. Experimental Design
3.1. Multi-Modal Data Integration
3.2. Multi-Channel Deep Neural Network
4. Results
4.1. Identification Result in Different Algorithms
4.2. Model Improvement
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Conflicts of Interest
References
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Inputs | PET Images Along | Structural T1 MRI Along | PET Images and T1 MRI | All Information |
---|---|---|---|---|
Neural Network | Image-Data Channel | Image-Data Channel | Image-Data Channel | Whole Network |
Accuracy | 48% ± 19.85% | 54.33% ± 7.67% | 67.33% ± 50.25% | 77.33% ± 14% |
Specificity | 49.33% ± 20.01% | 48.35% ± 6.63% | 66.35% ± 7.32% | 78.44% ± 19.35% |
Sensitivity | 47.85% ± 15.73% | 55.67% ± 3.38% | 70.68% ± 19.34% | 81.51% ± 15.86% |
F1-measure | 50.74% ± 13.21% | 60.30% ± 11.59% | 71.65% ± 11.94% | 80.71% ± 2.21% |
AUC | 0.50 | 0.57 | 0.65 | 0.78 |
Model | Accuracy | Specificity | Sensitivity | F1 Measure | AUC |
---|---|---|---|---|---|
Before improvement | 77.33% ± 14% | 78.44% ± 19.35% | 81.51% ± 15.86% | 80.71% ± 2.21% | 0.78 |
After improvement | 81.67% ± 10.33% | 84.33% ± 16.58% | 80.33% ± 50.25% | 81.33% ± 14% | 0.80 |
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Qu, R.; Ji, X.; Wang, S.; Wang, Z.; Wang, L.; Yang, X.; Yin, S.; Gu, J.; Wang, A.; Xu, G. An Integrated Multi-Channel Deep Neural Network for Mesial Temporal Lobe Epilepsy Identification Using Multi-Modal Medical Data. Bioengineering 2023, 10, 1234. https://doi.org/10.3390/bioengineering10101234
Qu R, Ji X, Wang S, Wang Z, Wang L, Yang X, Yin S, Gu J, Wang A, Xu G. An Integrated Multi-Channel Deep Neural Network for Mesial Temporal Lobe Epilepsy Identification Using Multi-Modal Medical Data. Bioengineering. 2023; 10(10):1234. https://doi.org/10.3390/bioengineering10101234
Chicago/Turabian StyleQu, Ruowei, Xuan Ji, Shifeng Wang, Zhaonan Wang, Le Wang, Xinsheng Yang, Shaoya Yin, Junhua Gu, Alan Wang, and Guizhi Xu. 2023. "An Integrated Multi-Channel Deep Neural Network for Mesial Temporal Lobe Epilepsy Identification Using Multi-Modal Medical Data" Bioengineering 10, no. 10: 1234. https://doi.org/10.3390/bioengineering10101234
APA StyleQu, R., Ji, X., Wang, S., Wang, Z., Wang, L., Yang, X., Yin, S., Gu, J., Wang, A., & Xu, G. (2023). An Integrated Multi-Channel Deep Neural Network for Mesial Temporal Lobe Epilepsy Identification Using Multi-Modal Medical Data. Bioengineering, 10(10), 1234. https://doi.org/10.3390/bioengineering10101234