A Joint-Parameter Estimation and Bayesian Reconstruction Approach to Low-Dose CT †
Abstract
:1. Introduction
2. Materials and Methods
2.1. Bayesian Image Reconstruction for CT
2.1.1. Multivariate Gaussian Distribution Data Model
2.1.2. Multivariate Gaussian MRF Prior Model
2.2. Unobservable Parameter Estimation by Joint-Parameter-Bayes
Algorithm 1. Joint-MAP-Bayes | |
Initialization: | |
Initialize and by Equations (14) and (15) with | |
For each iteration: | |
While (Stopping criterion is not met) | |
For each voxel j: | |
end | |
Update and by Equations (14) and (15) |
2.3. Stopping Criterion Investigation
2.4. Stability Investigation
2.5. Phantom Simulation and Patient Data Acquisition
3. Results
3.1. Results of Numerical Simulation Data
3.1.1. Reconstruction Comparison
3.1.2. Stopping Criterion Investigation
3.1.3. Stability Investigation
- (a)
- Effect of Initialization
- (b)
- Effects of Variance Normalization
3.2. Results of Clinical Patient Data
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Conventional MAP (Baseline) | Joint-Parameter-Bayes | |||||||
---|---|---|---|---|---|---|---|---|
Scale Factor | RMSE | SSIM | PSNR | Iterations | RMSE | SSIM | PSNR | Iterations |
0.0643 | 0.9109 | 23.84 | 1000 * trial number | 0.0547 | 0.8249 | 25.24 | 81 | |
0.1844 | 0.6445 | 14.68 | 1000 * trial number | 0.1848 | 0.6358 | 14.67 | 1000 | |
0.2994 | 0.6091 | 10.48 | 1000 * trial number | 0.3073 | 0.5904 | 10.25 | 1000 |
Conventional MAP (Baseline) | Joint-Parameter-Bayes | |||||||
---|---|---|---|---|---|---|---|---|
Incident Flux | RMSE | SSIM | PSNR | Iterations | RMSE | SSIM | PSNR | Iterations |
0.0065 | 0.9744 | 43.69 | 1000 * trial number | 0.0067 | 0.9731 | 43.53 | 1000 | |
0.0048 | 0.9864 | 46.36 | 1000 * trial number | 0.0051 | 0.9853 | 45.83 | 1000 | |
0.0042 | 0.9898 | 47.46 | 1000 * trial number | 0.0046 | 0.9885 | 46.73 | 1000 | |
0.0033 | 0.9941 | 49.68 | 1000 * trial number | 0.0038 | 0.9931 | 48.25 | 1000 | |
0.0031 | 0.9946 | 50.04 | 1000 * trial number | 0.0037 | 0.9937 | 48.53 | 1000 |
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Conventional MAP (Baseline) | Joint-Parameter-Bayes | |||||||
---|---|---|---|---|---|---|---|---|
RMSE | SSIM | PSNR | Iterations | RMSE | SSIM | PSNR | Iterations | |
0.002397 | 0.9970 | 52.41 | 1000 * trial number | 0.002264 | 0.9972 | 52.90 | 1000 | |
0.003581 | 0.9911 | 48.92 | 1000 * trial number | 0.004125 | 0.9918 | 47.69 | 339 | |
0.004440 | 0.9894 | 47.05 | 1000 * trial number | 0.004778 | 0.9881 | 46.42 | 200 | |
0.004995 | 0.9867 | 46.03 | 1000 * trial number | 0.00518 | 0.9853 | 45.71 | 157 | |
0.005190 | 0.9844 | 45.67 | 1000 * trial number | 0.005501 | 0.9829 | 45.19 | 132 | |
0.005426 | 0.9815 | 45.31 | 1000 * trial number | 0.005786 | 0.9805 | 44.75 | 115 |
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Gao, Y.; Lu, S.; Shi, Y.; Chang, S.; Zhang, H.; Hou, W.; Li, L.; Liang, Z. A Joint-Parameter Estimation and Bayesian Reconstruction Approach to Low-Dose CT. Sensors 2023, 23, 1374. https://doi.org/10.3390/s23031374
Gao Y, Lu S, Shi Y, Chang S, Zhang H, Hou W, Li L, Liang Z. A Joint-Parameter Estimation and Bayesian Reconstruction Approach to Low-Dose CT. Sensors. 2023; 23(3):1374. https://doi.org/10.3390/s23031374
Chicago/Turabian StyleGao, Yongfeng, Siming Lu, Yongyi Shi, Shaojie Chang, Hao Zhang, Wei Hou, Lihong Li, and Zhengrong Liang. 2023. "A Joint-Parameter Estimation and Bayesian Reconstruction Approach to Low-Dose CT" Sensors 23, no. 3: 1374. https://doi.org/10.3390/s23031374