研究目的
Investigating the effect of spatial inconsistency between MR and PET images in hot and cold regions of the PET image on the kernel method from machine learning, particularly the hybrid kernelized expectation maximization (HKEM).
研究成果
The findings suggest that including PET information in the kernel enhances the flexibility of reconstruction in case of spatial inconsistency. Accurate registration and choice of the appropriate MR image are essential to avoid artifacts and bias. The hybrid kernel method shows improved performance over the non-hybrid method in handling PET-MR inconsistencies.
研究不足
The study highlights the importance of accurate registration and choice of the appropriate MR image for kernel creation to avoid artifacts, blurring, and bias. It also points out the limitations of anatomically-driven kernel methods in cases of spatial inconsistency between MR and PET images.
1:Experimental Design and Method Selection
The study focuses on the kernel method, specifically the hybrid kernelized expectation maximization (HKEM), to investigate the effects of PET-MR spatial inconsistencies on PET image reconstruction.
2:Sample Selection and Data Sources
Jaszczak phantom and patient data acquired with the Biograph Siemens mMR scanner were used. The phantom experiment involved cold spheres with different diameters filled with 18F-fludeoxyglucose (FDG). Patient data involved dynamic data of the head and neck region of a patient injected with [18F]FDG.
3:List of Experimental Equipment and Materials
Siemens Biograph mMR scanner, Jaszczak phantom, 18F-fludeoxyglucose (FDG), [18F]FDG for patient study.
4:Experimental Procedures and Operational Workflow
Data were reconstructed using HKEM and KEM with 21 subsets and 3 iterations. The MR image was translated by 1, 2, 3, 5, and 10 voxels along the x direction to study the effect of inaccurate registration between PET and MR images.
5:Data Analysis Methods
Quantitative comparison between algorithms was performed using mean activity concentration in regions of interest (ROIs). The coefficient of variation (CoV) was used to assess noise and repeatability.
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