1. Stepwise Local Synthetic Pseudo-CT Imaging Based on Anatomical Semantic Guidance
- Author
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Hongfei Sun, Kun Zhang, Rongbo Fan, Wenjun Xiong, and Jianhua Yang
- Subjects
Neural style transfer ,pseudo-CT ,radiotherapy ,ultrasound ,Electrical engineering. Electronics. Nuclear engineering ,TK1-9971 - Abstract
In this study, an anatomic semantic guided neural style transfer (ASGNST) algorithm was developed and pseudo-computed tomography (CT) images synthesized in steps. CT images and ultrasound (US) images of 20 cervical cancer patients to be treated were selected. The foreground (FG) and background (BG) regions of the US images were segmented by the region growth method, and three objective functions for content, style, and contour loss were defined. Based on the two types of regions, a local pseudo-CT image synthesis model based on a convolution neural network was established. Then, global 2D pseudo-CT images were obtained using the weighted average fusing algorithm, and the final pseudo-CT images were obtained through 3D reconstruction. US phantom and data of five additional cervical cancer patients were used for prediction. Furthermore, three image synthesis algorithms-global deformation field (GDF), stepwise local deformation field (SLDF), and neural style transfer (NST)-were selected for comparative verification. The pseudo-CT images synthesized by the four algorithms were compared with the ground-truth CT images obtained during treatment. The structural similarity index between the ground-truth CT and pseudo-CT synthesized by the improved algorithm significantly differed from those synthesized by the other three algorithms (tGDF_bg = 7.175, tSLDF_bg = 4.513, tNST_bg = 3.228, tGDF_fg = 10.518, tSLDF_fg = 5.522, tNST_fg = 2.869, p
- Published
- 2019
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