Cerebral Small Vessel Disease Biomarkers Detection on MRI-Sensor-Based Image and Deep Learning
Abstract
:1. Introduction
2. Related Works
Convolutional Neural Network
3. The Proposed Method
3.1. Data Preprocessing
- Step 1:
- Image binarization: We made sure the cranium (head shell) with the maximum region in image (Figure 1b);
- Step 2:
- Step 3:
- Image inverse binarization: The image from step 1 was adopted the inversed-binarization method in order to obtain the cerebrum region (Figure 1d,e);
- Step 4:
- Identify the cerebrum region: The cerebrum region was obtained from step 3 and then compared with the region obtained by step 2. The union of the two step regions was calculated to identify the cerebrum region (Figure 1f);
- Step 5:
- Perform median filtering to remove noise (Figure 1g); and
- Step 6:
- Calculate the actual size and position of the brain (Figure 1h).
3.2. Training Model
4. Experiment Results
Comparison with Other Training Models
5. Conclusions and Future Work
Author Contributions
Funding
Acknowledgements
Conflicts of Interest
References
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Training mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 94/95 (TP) | 2/110 (FP) |
Non cerebral small vessel | 1/95 (FN) | 108/110 (TN) |
Testing mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 84/86 (TP) | 5/120 (FP) |
Non cerebral small vessel | 2/86 (FN) | 115/120 (TN) |
Training mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 90/95 (TP) | 6/110 (FP) |
Non cerebral small vessel | 5/95 (FN) | 104/110 (TN) |
Testing mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 80/86 (TP) | 8/120 (FP) |
Non cerebral small vessel | 6/86 (FN) | 112/120 (TN) |
Training mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 91/95 (TP) | 7/110 (FP) |
Non cerebral small vessel | 4/95 (FN) | 103/110 (TN) |
Testing mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 80/86 (TP) | 8/120 (FP) |
Non cerebral small vessel | 6/86 (FN) | 112/120 (TN) |
Training mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 89/95 (TP) | 9/110 (FP) |
Non cerebral small vessel | 6/95 (FN) | 101/110 (TN) |
Testing mAP | Cerebral Small Vessel | Non Cerebral Small Vessel |
---|---|---|
Cerebral small vessel | 79/86 (TP) | 10/120 (FP) |
Non cerebral small vessel | 7/86 (FN) | 110/120 (TN) |
Our Method | YOLO1 | YOLO2 | YOLO3 | |
---|---|---|---|---|
F1-score | 0.020829346 | 0.080591758 | 0.080591758 | 0.118198648 |
Precision rate | 0.981956315 | 0.937704918 | 0.937704918 | 0.919680601 |
Recall rate | 0.010526316 | 0.042105263 | 0.042105263 | 0.063157895 |
Our Method | YOLO1 | YOLO2 | YOLO3 | |
---|---|---|---|---|
F1-score | 0.045410519 | 0.129827978 | 0.129827978 | 0.149516707 |
Precision rate | 0.959086584 | 0.933125972 | 0.933125972 | 0.916827853 |
Recall rate | 0.023255814 | 0.069767442 | 0.069767442 | 0.081395349 |
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Hsieh, Y.-Z.; Luo, Y.-C.; Pan, C.; Su, M.-C.; Chen, C.-J.; Hsieh, K.L.-C. Cerebral Small Vessel Disease Biomarkers Detection on MRI-Sensor-Based Image and Deep Learning. Sensors 2019, 19, 2573. https://doi.org/10.3390/s19112573
Hsieh Y-Z, Luo Y-C, Pan C, Su M-C, Chen C-J, Hsieh KL-C. Cerebral Small Vessel Disease Biomarkers Detection on MRI-Sensor-Based Image and Deep Learning. Sensors. 2019; 19(11):2573. https://doi.org/10.3390/s19112573
Chicago/Turabian StyleHsieh, Yi-Zeng, Yu-Cin Luo, Chen Pan, Mu-Chun Su, Chi-Jen Chen, and Kevin Li-Chun Hsieh. 2019. "Cerebral Small Vessel Disease Biomarkers Detection on MRI-Sensor-Based Image and Deep Learning" Sensors 19, no. 11: 2573. https://doi.org/10.3390/s19112573
APA StyleHsieh, Y. -Z., Luo, Y. -C., Pan, C., Su, M. -C., Chen, C. -J., & Hsieh, K. L. -C. (2019). Cerebral Small Vessel Disease Biomarkers Detection on MRI-Sensor-Based Image and Deep Learning. Sensors, 19(11), 2573. https://doi.org/10.3390/s19112573