Jiang Zhuoran, Zhang Zeyu, Chang Yushi, Ge Yun, Yin Fang-Fang, Ren Lei
Medical Physics Graduate Program, Duke University, 2424 Erwin Road Suite 101, Durham, NC, 27705, USA.
Department of Radiation Oncology, Hospital of University of Pennsylvania, Philadelphia, PA, 19104, USA.
IEEE Trans Radiat Plasma Med Sci. 2022 Feb;6(2):222-230. doi: 10.1109/trpms.2021.3133510. Epub 2021 Dec 7.
4D-CBCT is a powerful tool to provide respiration-resolved images for the moving target localization. However, projections in each respiratory phase are intrinsically under-sampled under the clinical scanning time and imaging dose constraints. Images reconstructed by compressed sensing (CS)-based methods suffer from blurred edges. Introducing the average-4D-image constraint to the CS-based reconstruction, such as prior-image-constrained CS (PICCS), can improve the edge sharpness of the stable structures. However, PICCS can lead to motion artifacts in the moving regions. In this study, we proposed a dual-encoder convolutional neural network (DeCNN) to realize the average-image-constrained 4D-CBCT reconstruction. The proposed DeCNN has two parallel encoders to extract features from both the under-sampled target phase images and the average images. The features are then concatenated and fed into the decoder for the high-quality target phase image reconstruction. The reconstructed 4D-CBCT using of the proposed DeCNN from the real lung cancer patient data showed (1) qualitatively, clear and accurate edges for both stable and moving structures; (2) quantitatively, low-intensity errors, high peak signal-to-noise ratio, and high structural similarity compared to the ground truth images; and (3) superior quality to those reconstructed by several other state-of-the-art methods including the back-projection, CS total-variation, PICCS, and the single-encoder CNN. Overall, the proposed DeCNN is effective in exploiting the average-image constraint to improve the 4D-CBCT image quality.
4D-CBCT是一种用于为移动目标定位提供呼吸分辨图像的强大工具。然而,在临床扫描时间和成像剂量限制下,每个呼吸阶段的投影本质上都是欠采样的。基于压缩感知(CS)方法重建的图像存在边缘模糊的问题。将平均4D图像约束引入基于CS的重建中,如先验图像约束CS(PICCS),可以提高稳定结构的边缘清晰度。然而,PICCS会在移动区域导致运动伪影。在本研究中,我们提出了一种双编码器卷积神经网络(DeCNN)来实现平均图像约束的4D-CBCT重建。所提出的DeCNN有两个并行编码器,分别从欠采样的目标相位图像和平均图像中提取特征。然后将这些特征连接起来并送入解码器,以重建高质量的目标相位图像。使用所提出的DeCNN从真实肺癌患者数据重建的4D-CBCT显示:(1)定性地,稳定和移动结构的边缘清晰准确;(2)定量地,与真实图像相比,强度误差低、峰值信噪比高且结构相似性高;(3)质量优于包括反投影、CS全变差、PICCS和单编码器CNN在内的其他几种先进方法重建的图像。总体而言,所提出的DeCNN在利用平均图像约束来提高4D-CBCT图像质量方面是有效的。