Aksoy Murat, Liu Chunlei, Moseley Michael E, Bammer Roland
Lucas Center, Department of Radiology, Stanford University, 1201 Welch Road, Stanford, CA 94305, USA.
Magn Reson Med. 2008 May;59(5):1138-50. doi: 10.1002/mrm.21558.
Patient motion can cause serious artifacts in diffusion tensor imaging (DTI), diminishing the reliability of the estimated diffusion tensor information. Studies in this field have so far been limited mainly to the correction of miniscule physiological motion. In order to correct for gross patient motion it is not sufficient to correct for misregistration between successive shots; the change in the diffusion-encoding direction must also be accounted for. This becomes particularly important for multishot sequences, whereby-in the presence of motion-each shot is encoded with a different diffusion weighting. In this study a general mathematical framework to correct for gross patient motion present in a multishot and multicoil DTI scan is presented. A signal model is presented that includes the effect of rotational and translational motion in the patient frame of reference. This model was used to create a nonlinear least-squares formulation, from which the diffusion tensors were obtained using a nonlinear conjugate gradient algorithm. Applications to both phantom simulations and in vivo studies showed that in the case of gross motion the proposed algorithm performs superiorly compared to conventional methods used for tensor estimation.
患者的运动可在扩散张量成像(DTI)中导致严重伪影,降低估计的扩散张量信息的可靠性。该领域的研究迄今主要限于对微小生理运动的校正。为了校正明显的患者运动,仅校正连续扫描间的配准误差是不够的;还必须考虑扩散编码方向的变化。这对于多激发序列尤为重要,在存在运动的情况下,每个激发采用不同的扩散加权进行编码。在本研究中,提出了一种用于校正多激发和多线圈DTI扫描中明显患者运动的通用数学框架。提出了一个信号模型,该模型包括患者参考系中旋转和平移运动的影响。该模型用于创建非线性最小二乘公式,通过非线性共轭梯度算法从中获得扩散张量。在体模模拟和体内研究中的应用表明,在存在明显运动的情况下,与用于张量估计的传统方法相比,所提出的算法表现更优。