研究目的
To learn texture information from the NdCT images and leverage it for follow-up LdCT image reconstruction to preserve textures and structure features.
研究成果
The proposed RATP method effectively learns region-specific texture information from prior NdCT images for LdCT image reconstruction, demonstrating superior performance in noise suppression and texture preservation compared to existing methods. It avoids the need for registration and segmentation, offering a robust and adaptive solution for LdCT imaging.
研究不足
1. Optimal parameters were determined empirically, lacking automatic/adaptive parameter selection strategies. 2. Euclidean distance used for patch similarity may not be the most effective descriptor. 3. Gaussian mixture model used for patch clustering without comparison to other methods. 4. Interactions between system models and regularization not considered, potentially affecting spatial resolution. 5. Texture information from non-similar slices may compromise structure preservation. 6. Datasets were produced by retrospective low-dose simulation, requiring validation with practical patient data.