IEEE Trans Med Imaging. 2021 Sep;40(9):2221-2232. doi: 10.1109/TMI.2021.3073815. Epub 2021 Aug 31.
Fully automatic X-ray to CT registration requires a solid initialization to provide an initial alignment within the capture range of existing intensity-based registrations. This work addresses that need by providing a novel automatic initialization, which enables end to end registration. First, a neural network is trained once to detect a set of anatomical landmarks on simulated X-rays. A domain randomization scheme is proposed to enable the network to overcome the challenge of being trained purely on simulated data and run inference on real X-rays. Then, for each patient CT, a fully-automatic patient-specific landmark extraction scheme is used. It is based on backprojecting and clustering the previously trained network's predictions on a set of simulated X-rays. Next, the network is retrained to detect the new landmarks. Finally the combination of network and 3D landmark locations is used to compute the initialization using a perspective-n-point algorithm. During the computation of the pose, a weighting scheme is introduced to incorporate the confidence of the network in detecting the landmarks. The algorithm is evaluated on the pelvis using both real and simulated x-rays. The mean (± standard deviation) target registration error in millimetres is 4.1 ± 4.3 for simulated X-rays with a success rate of 92% and 4.2 ± 3.9 for real X-rays with a success rate of 86.8%, where a success is defined as a translation error of less than 30 mm .
全自动 X 射线到 CT 配准需要可靠的初始化来提供现有基于强度配准的捕获范围内的初始对准。这项工作通过提供一种新颖的自动初始化方法来满足这一需求,从而实现端到端配准。首先,训练一个神经网络一次性检测模拟 X 射线上的一组解剖学标志点。提出了一种域随机化方案,使网络能够克服仅在模拟数据上进行训练的挑战,并在真实 X 射线上进行推理。然后,对于每个患者的 CT,使用全自动的患者特定的标志点提取方案。它基于反向投影和对一组模拟 X 射线上预先训练的网络预测的聚类。接下来,重新训练网络以检测新的标志点。最后,使用网络和 3D 标志点位置的组合,使用透视 N 点算法计算初始化。在计算姿势时,引入了一种加权方案,将网络检测标志点的置信度纳入其中。该算法在骨盆上使用真实和模拟 X 射线进行了评估。模拟 X 射线的平均(±标准差)目标配准误差为 4.1±4.3mm,成功率为 92%,真实 X 射线的平均(±标准差)目标配准误差为 4.2±3.9mm,成功率为 86.8%,其中成功定义为平移误差小于 30mm。