研究目的
Developing a deep residual learning framework for scatter correction in spectral CT systems to address the issues of computational simplicity and object dependency.
研究成果
The proposed deep residual learning framework for scatter correction in spectral CT systems provides similar performance to Monte Carlo simulation-based methods but with significantly lower computational costs. This approach effectively addresses the issues of computational simplicity and object dependency in scatter correction.
研究不足
The study is limited by the computational resources required for Monte Carlo simulations to generate training sets and the need for a sufficiently large and diverse dataset to train the CNN effectively.
1:Experimental Design and Method Selection:
A deep convolutional neural network (CNN) architecture was developed for scatter correction, adopting residual learning formulation and incorporating batch normalization for improved performance.
2:Sample Selection and Data Sources:
Training sets were generated using model-based Monte Carlo simulations mimicking the Philips IQon Spectral CT system, with data from water, anthropomorphic liver, and obese phantoms.
3:List of Experimental Equipment and Materials:
Philips IQon Spectral CT system, Dell T7600 workstation with a Titan X GPU for training.
4:Experimental Procedures and Operational Workflow:
The CNN was trained to estimate scatter from air-normalized raw signals, with scatter correction performed by subtracting the CNN-estimated scatter from the raw data.
5:Data Analysis Methods:
The performance of the CNN-based scatter correction was evaluated by comparing scatter profiles and monochromatic images with those obtained from Monte Carlo simulations and without scatter correction.
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