研究目的
To propose a personalized network training method for medical image reconstruction that does not require prior training pairs, utilizing only the patient's own prior information.
研究成果
The proposed DIPRecon framework outperforms Gaussian post-smoothing and anatomically-guided reconstructions using the kernel method or the neural network penalty, demonstrating better contrast recovery vs. noise trade-offs in both simulation and real brain data sets.
研究不足
The study is limited by the need for patient-specific prior information and the computational intensity of the proposed method. Future work includes testing the robustness to registration errors and evaluations with more clinical data sets.
1:Experimental Design and Method Selection:
The study employs a personalized network training method inspired by the deep image prior framework, using the patient's own prior information for PET image reconstruction. The maximum likelihood estimation is formulated as a constrained optimization problem and solved using the ADMM algorithm.
2:Sample Selection and Data Sources:
The methodology is demonstrated using MRI-guided PET reconstruction, with data from simulation and real brain datasets.
3:List of Experimental Equipment and Materials:
The study uses a Siemens mCT scanner for simulation and a Siemens Brain MR-PET scanner for real data, with TensorFlow 1.4 for neural network implementation.
4:4 for neural network implementation.
Experimental Procedures and Operational Workflow:
4. Experimental Procedures and Operational Workflow: The network is updated during the iterative reconstruction process using the patient's specific prior information and measured data. The L-BFGS algorithm is used for network training.
5:Data Analysis Methods:
Quantitative comparison is made using contrast recovery coefficient (CRC) vs. standard deviation (STD) curves for different methods.
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