Physiological motion, such as cardiac and respiratory motion, during Magnetic Resonance (MR) image acquisition can cause image artifacts. Motion correction techniques have been proposed to compensate for these types of motion during thoracic scans, relying on accurate motion estimation from undersampled motion-resolved reconstruction. A particular interest and challenge lie in the derivation of reliable non-rigid motion fields from the undersampled motion-resolved data. Motion estimation is usually formulated in image space via diffusion, parametric-spline, or optical flow methods. However, image-based registration can be impaired by remaining aliasing artifacts due to the undersampled motion-resolved reconstruction. In this work, we describe a formalism to perform non-rigid registration directly in the sampled Fourier space, i.e. k-space. We propose a deep-learning based approach to perform fast and accurate non-rigid registration from the undersampled k-space data. The basic working principle originates from the Local All-Pass (LAP) technique, a recently introduced optical flow-based registration. The proposed LAPNet is compared against traditional and deep learning image-based registrations and tested on fully-sampled and highly-accelerated (with two undersampling strategies) 3D respiratory motion-resolved MR images in a cohort of 40 patients with suspected liver or lung metastases and 25 healthy subjects. The proposed LAPNet provided consistent and superior performance to image-based approaches throughout different sampling trajectories and acceleration factors.
翻译:磁共振(MR)图像采集过程中的心脏和呼吸运动等生理运动,在磁共振(MR)图像采集过程中,可以产生图像制品。但是,在透光扫描过程中,建议采用运动校正技术来弥补这些类型的运动,这依靠的是未充分抽样的运动破解重建的准确运动估计。从未充分抽样的运动解析数据中衍生出可靠的非硬运动场,尤其令人感兴趣和棘手的挑战。运动估计通常是在图像空间中,通过扩散、参数吸附或光学流方法进行。然而,由于模拟运动破解重建,图像的注册可能因在别名中留下的艺术品而受损。在这项工作中,我们描述了一种在抽样的Fourier空间(即K-空间)直接进行非硬化的注册的非硬化运动场准确运动场。我们提议了一种基于深层学习的方法,从未充分抽样的K-空间数据中进行快速和准确的非硬化的注册。基本工作原则来自全层Pass(LAP)的图像学系技术,最近引入了以光化的平平流和高压流流测试的图像注册。