Department of Engineering and Computer Science, University of Michigan, Ann Arbor, MI 48109, USA.
IEEE Trans Med Imaging. 2012 Jul;31(7):1413-25. doi: 10.1109/TMI.2012.2192133. Epub 2012 Apr 3.
Many motion-compensated image reconstruction (MCIR) methods have been proposed to correct for subject motion in medical imaging. MCIR methods incorporate motion models to improve image quality by reducing motion artifacts and noise. This paper analyzes the spatial resolution properties of MCIR methods and shows that nonrigid local motion can lead to nonuniform and anisotropic spatial resolution for conventional quadratic regularizers. This undesirable property is akin to the known effects of interactions between heteroscedastic log-likelihoods (e.g., Poisson likelihood) and quadratic regularizers. This effect may lead to quantification errors in small or narrow structures (such as small lesions or rings) of reconstructed images. This paper proposes novel spatial regularization design methods for three different MCIR methods that account for known nonrigid motion. We develop MCIR regularization designs that provide approximately uniform and isotropic spatial resolution and that match a user-specified target spatial resolution. Two-dimensional PET simulations demonstrate the performance and benefits of the proposed spatial regularization design methods.
许多运动补偿图像重建(MCIR)方法已被提出用于校正医学成像中的受试者运动。MCIR 方法结合运动模型,通过减少运动伪影和噪声来提高图像质量。本文分析了 MCIR 方法的空间分辨率特性,并表明非刚性局部运动可能导致传统二次正则化的非均匀和各向异性空间分辨率。这种不理想的特性类似于异方差对数似然(例如泊松似然)和二次正则化之间已知的相互作用的影响。这种效应可能导致重建图像中小或窄结构(例如小病变或环)的定量误差。本文针对三种不同的 MCIR 方法提出了新的空间正则化设计方法,这些方法考虑了已知的非刚性运动。我们开发了 MCIR 正则化设计,提供了近似均匀和各向同性的空间分辨率,并与用户指定的目标空间分辨率相匹配。二维 PET 模拟证明了所提出的空间正则化设计方法的性能和优势。