首页|基于区域判别生成对抗网络的宫颈癌放射治疗锥形束CT影像质量提升研究

基于区域判别生成对抗网络的宫颈癌放射治疗锥形束CT影像质量提升研究

Research on the improvement of CBCT image quality based on region-discriminative generative adversarial networks in radiotherapy for cervical cancer

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目的:提出基于区域判别生成对抗网络(GAN)的改善宫颈癌放射治疗锥形束CT(CBCT)图像质量模型,以满足自适应放疗图像质量的需求.方法:采用基于区域判别的策略与生成对抗网络思想,构建一种能够关注宫颈癌放疗影像局部细节的CBCT图像质量提升模型,其判别器可提高图像局部细节的生成质量.将该图像质量模型应用于宫颈癌放疗中的CBCT图像,通过量化指标和可视化评价图像处理效果.结果:CBCT图像质量提升后其纹理清晰度与对比度皆得到明显提升.图像峰值信噪比提高47.2%,结构相似性指标提升至0.838以上.相对于其他模型,在可视化和指标角度皆表现出更好的模型效能,结构相似性与U-Net网络和CycleGAN网络比较分别提高11.88%和19.54%;峰值信噪比分别提高19.75%和25.99%.结论:基于区域判别的GAN可有效提升宫颈癌放疗CBCT图像整体与细节上的生成质量,能够为提升低剂量CBCT图像质量提供新的技术路径,为提高放疗安全性和有效性发挥重要作用,并对制定和执行放疗计划具有重要临床价值.
Objective:To propose a model that could improve image quality of cone-beam computed tomography(CBCT),which based on region-discriminative generative adversarial networks(GAN),in radiotherapy for cervical cancer,so as to meet the requirements of self-adaptive radiotherapy for image quality.Methods:We employed a region-discriminative strategy and a generative adversarial networks idea to construct a model of improving CBCT image quality that could focus on local details of the images of radiotherapy for cervical cancer,which discriminator could improve the quality of generating local details of images.This model of image quality was applied to CBCT images of radiotherapy for cervical cancer.And then,the effects of processing image were evaluated through quantitative indicators and visualization.Results:Both texture clarity and contrast were significantly enhanced after CBCT image quality was improved.The signal to noise ratio of peak value of images was increased by 47.2%,and the indicator of similarity of structure was enhanced to>0.838.Compared with other model,both visualization and indicators can appear better efficiency of model.Compared with Unet network and CycleGAN network,the similarities of structure were respectively increased by 11.88% and 19.54%,and the signal to noise ratios were respectively increased by 19.75% and 25.99%.Conclusion:The GAN bases on region-discrimination can significantly improve the quality of generating integral and detailed CBCT image of radiotherapy for cervical cancer,which can provide new technical pathway for image quality of CBCT with low dose,and can play an important role for improving safety and effectiveness of radiotherapy.It has importantly clinical value for formulating and executing radiotherapy plan.

Generative adversarial network(GAN)Image enhancementCervical cancerCone beam computed tomography(CBCT)Radiotherapy

郝晓硕、黄东、郑尧、冯跃飞、贺宇涛、杨华、刘洋

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空军军医大学军事生物医学工程学系军事信息技术教研室 西安 710032

生物电磁检测与智能感知陕西省重点实验室 西安 710032

空军军医大学西京医院放疗科 西安 710032

生成对抗网络 图像增强 宫颈癌 锥形束CT(CBCT) 放射治疗

陕西省自然科学基础研究计划

2023-JC-QN-0704

2024

中国医学装备
中国医学装备协会

中国医学装备

CSTPCD
影响因子:0.882
ISSN:1672-8270
年,卷(期):2024.21(2)
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