Ultra-Sparse-View Cone-Beam CT Reconstruction-Based Strictly Structure-Preserved Deep Neural Network in Image-Guided Radiation Therapy

Ying Song;Weikang Zhang;Tianxiong Wu;Yong Luo;Jiangyuan Shi;Xinjian Yang;Zhonghua Deng;Xu Qi;Guangjun Li;Sen Bai;Jun Zhao;Renming Zhong
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Abstract

Radiation therapy is regarded as the mainstay treatment for cancer in clinic. Kilovoltage cone-beam CT (CBCT) images have been acquired for most treatment sites as the clinical routine for image-guided radiation therapy (IGRT). However, repeated CBCT scanning brings extra irradiation dose to the patients and decreases clinical efficiency. Sparse CBCT scanning is a possible solution to the problems mentioned above but at the cost of inferior image quality. To decrease the extra dose while maintaining the CBCT quality, deep learning (DL) methods are widely adopted. In this study, planning CT was used as prior information, and the corresponding strictly structure-preserved CBCT was simulated based on the attenuation information from the planning CT. We developed a hyper-resolution ultra-sparse-view CBCT reconstruction model, known as the planning CT-based strictly-structure-preserved neural network (PSSP-NET), using a generative adversarial network (GAN). This model utilized clinical CBCT projections with extremely low sampling rates for the rapid reconstruction of high-quality CBCT images, and its clinical performance was evaluated in head-and-neck cancer patients. Our experiments demonstrated enhanced performance and improved reconstruction speed.
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基于严格保留结构的超稀疏锥束CT重建深度神经网络在图像引导放射治疗中的应用
放射治疗在临床上被认为是治疗癌症的主要手段。作为图像引导放射治疗(IGRT)的临床常规,千伏锥束CT (CBCT)图像已被用于大多数治疗部位。然而,反复的CBCT扫描给患者带来了额外的照射剂量,降低了临床效率。稀疏CBCT扫描是解决上述问题的一种可能的方法,但代价是图像质量较差。为了在保持CBCT质量的同时减少额外剂量,深度学习(DL)方法被广泛采用。本研究采用规划CT作为先验信息,根据规划CT的衰减信息模拟出严格保留结构的CBCT。我们开发了一种超分辨率超稀疏视图CBCT重建模型,称为基于规划ct的严格结构保留神经网络(PSSP-NET),使用生成对抗网络(GAN)。该模型利用临床CBCT投影,以极低的采样率快速重建高质量的CBCT图像,并在头颈癌患者中进行临床性能评价。我们的实验证明了增强的性能和改进的重建速度。
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