Yan, Y., Fujii, F., & Shiinoki, T. (2024). Denoising study of fluoroscopic images in real-time tumor tracking system based on statistical model of noise. arXiv preprint arXiv:2411.00199.
This research paper investigates the noise characteristics of intraoperative X-ray fluoroscopic images used in real-time tumor tracking for IGRT and proposes a novel denoising method based on a statistical model of the identified noise.
The researchers analyzed noise in fluoroscopic images from a SyncTraX system using a gelatin phantom. They developed a statistical model to characterize the noise's spatial probability and amplitude distribution. This model was used to generate synthetic noisy images from noise-free digitally reconstructed radiographs (DRRs). A pre-trained SwinIR model was then fine-tuned using these synthetic images for denoising. The performance of the trained model was compared against models trained with Gaussian noise and without transfer learning using phantom images.
The study demonstrates that a denoising approach based on a statistical model tailored to the specific noise characteristics of fluoroscopic images in IGRT can significantly improve image quality. This, in turn, can enhance the accuracy of real-time tumor tracking during radiotherapy.
This research contributes to the field of medical imaging by providing a deeper understanding of noise patterns in fluoroscopic images used for IGRT. The proposed denoising method has the potential to improve the effectiveness and accuracy of real-time tumor tracking, leading to better treatment outcomes for cancer patients.
The study was limited to a specific IGRT system (SyncTraX) with fixed geometry and parameters. Future research should investigate the generalizability of the proposed method across different IGRT systems and imaging conditions. Further exploration of the model's robustness and potential for adaptation in various clinical settings is warranted.
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by Yongxuan Yan... a las arxiv.org 11-04-2024
https://arxiv.org/pdf/2411.00199.pdfConsultas más profundas