Zhang Jie, Bai Xue, Shan Guoping
Department of Radiation Physics, Zhejiang Cancer Hospital, Hangzhou, Zhejiang, China.
Med Phys. 2025 Jul;52(7):e17804. doi: 10.1002/mp.17804. Epub 2025 Apr 5.
Four-dimension computed tomography (4D-CT) provides important respiration-related information for thoracic radiotherapy. Its quality is challenged by various respiratory patterns. Its acquisition gives rise to the risk of higher radiation exposure. Based on a continuously estimated deformation, a 4D synthesis by warping a high-quality volumetric image is a possible solution.
To propose a non-patient-specific cascaded ensemble model (CEM) to estimate respiration-induced thoracic tissue deformation from surface motion.
The CEM is cascaded by three deep learning-based models. By inputting the surface motion, CEM outputs a deformation vector field (DVF) inside thorax. In our work, the surface motion was simulated using the body contours derived from 4D-CT. The CEM was trained on our private database including 62 4D-CT sets, and was tested on a public database encompassing 80 4D-CT sets. To evaluate CEM, we employed the model output DVF to generate a few series of synthesized CTs, and compared them with the ground truth. CEM was also compared with other published works.
CEM synthesized CT with an mRMSE (average root mean square error) of 61.06 ± 10.43HU (average ± standard deviation), an mSSIM (average structural similarity index measure) of 0.990 ± 0.004, and an mMAE (average mean absolute error) of 26.80 ± 5.65HU. Compared with other works, CEM showed the best result.
The results demonstrated the effectiveness of CEM on estimating tissue DVF inside thorax. CEM requires no patient-specific breathing data sampling and no additional training before treatment. It shows potential for broad applications.
四维计算机断层扫描(4D-CT)为胸部放疗提供了重要的呼吸相关信息。其质量受到各种呼吸模式的挑战。其采集会带来更高辐射暴露的风险。基于连续估计的变形,通过对高质量体积图像进行扭曲来进行4D合成是一种可能的解决方案。
提出一种非患者特异性的级联集成模型(CEM),以根据表面运动估计呼吸引起的胸部组织变形。
CEM由三个基于深度学习的模型级联而成。通过输入表面运动,CEM输出胸部内部的变形矢量场(DVF)。在我们的工作中,使用从4D-CT导出的身体轮廓模拟表面运动。CEM在我们包含62组4D-CT的私人数据库上进行训练,并在包含80组4D-CT的公共数据库上进行测试。为了评估CEM,我们使用模型输出的DVF生成一系列合成CT,并将它们与真实情况进行比较。CEM还与其他已发表的作品进行了比较。
CEM合成的CT的平均均方根误差(mRMSE)为61.06±10.43HU(平均值±标准差),平均结构相似性指数测量值(mSSIM)为0.990±0.004,平均平均绝对误差(mMAE)为26.80±5.65HU。与其他作品相比,CEM显示出最佳结果。
结果证明了CEM在估计胸部内部组织DVF方面的有效性。CEM不需要患者特异性呼吸数据采样,也不需要在治疗前进行额外训练。它显示出广泛应用的潜力。