Division Imaging Sciences & Biomedical Engineering, King's College London, 4th Floor Lambeth Wing, St. Thomas' Hospital, London SE1 7EH, UK.
Med Image Anal. 2011 Aug;15(4):551-64. doi: 10.1016/j.media.2011.02.009. Epub 2011 Mar 2.
Non-rigid image registration techniques are commonly used to estimate complex tissue deformations in medical imaging. A range of non-rigid registration algorithms have been proposed, but they typically have high computational complexity. To reduce this complexity, combinations of multiple less complex deformations have been proposed such as hierarchical techniques which successively split the non-rigid registration problem into multiple locally rigid or affine components. However, to date the splitting has been regular and the underlying image content has not been considered in the splitting process. This can lead to errors and artefacts in the resulting motion fields. In this paper, we propose three novel adaptive splitting techniques, an image-based, a similarity-based, and a motion-based technique within a hierarchical framework which attempt to process regions of similar motion and/or image structure in single registration components. We evaluate our technique on free-breathing whole-chest 3D MRI data from 10 volunteers and two publicly available CT datasets. We demonstrate a reduction in registration error of up to 49.1% over a non-adaptive technique and compare our results with a commonly used free-form registration algorithm.
非刚性图像配准技术常用于医学成像中估计复杂的组织变形。已经提出了一系列的非刚性配准算法,但它们通常具有较高的计算复杂性。为了降低这种复杂性,已经提出了多种不太复杂的变形组合,例如层次技术,它将非刚性配准问题逐步分解为多个局部刚性或仿射分量。然而,到目前为止,这种分割是规则的,并且在分割过程中没有考虑到潜在的图像内容。这可能会导致运动场中出现错误和伪影。在本文中,我们提出了三种新颖的自适应分割技术,即在层次框架内基于图像、基于相似性和基于运动的技术,试图在单个配准分量中处理具有相似运动和/或图像结构的区域。我们在 10 名志愿者和两个公开的 CT 数据集的自由呼吸全胸 3D MRI 数据上评估了我们的技术。与非自适应技术相比,我们的技术可以将配准误差降低多达 49.1%,并将我们的结果与常用的自由形态配准算法进行比较。