Department of Radiology, University of California, San Diego, California.
Magn Reson Med. 2013 Nov;70(5):1460-9. doi: 10.1002/mrm.24563. Epub 2012 Dec 27.
Diffusion-weighted images of the liver exhibit signal dropout from cardiac and respiratory motion, particularly in the left lobe. These artifacts cause bias and variance in derived parameters that quantify intravoxel incoherent motion. Many models of diffusion have been proposed, but few separate attenuation from diffusion or perfusion from that of bulk motion. The error model proposed here (BetaLogNormal) is intended to accomplish that separation by modeling stochastic attenuation from bulk motion as multiplication by a Beta-distributed random variate. Maximum likelihood estimation with this error model can be used to derive intravoxel incoherent motion parameters separate from signal dropout, and does not require a priori specification of parameters to do so. Liver intravoxel incoherent motion parameters were derived for six healthy subjects under this error model and compared with least-squares estimates. Least-squares estimates exhibited bias due to cardiac and respiratory gating and due to location within the liver. Bias from these factors was significantly reduced under the BetaLogNormal model, as was within-organ parameter variance. Similar effects were appreciable in diffusivity maps in two patients with focal liver lesions. These results suggest that, relative to least-squares estimation, the Beta*LogNormal model accomplishes the intended reduction of bias and variance from bulk motion in liver diffusion imaging.
肝脏的弥散加权图像表现出心脏和呼吸运动引起的信号丢失,特别是在左叶。这些伪影导致定量分析体素内不相干运动的衍生参数产生偏差和方差。已经提出了许多弥散模型,但很少将衰减与弥散或灌注从整体运动中分离出来。这里提出的误差模型(BetaLogNormal)旨在通过将来自整体运动的随机衰减建模为乘以 Beta 分布的随机变量来实现这种分离。使用该误差模型的最大似然估计可用于导出与信号丢失分开的体素内不相干运动参数,而无需为此进行参数的先验指定。根据该误差模型,对六名健康受试者的肝脏体素内不相干运动参数进行了推导,并与最小二乘估计进行了比较。最小二乘估计由于心脏和呼吸门控以及肝脏内的位置而存在偏差。在 BetaLogNormal 模型下,这些因素引起的偏差显着降低,器官内参数方差也是如此。在两名患有局灶性肝病变的患者的弥散图中可以明显看出类似的效果。这些结果表明,与最小二乘估计相比,Beta*LogNormal 模型在肝脏弥散成像中实现了预期的减少来自整体运动的偏差和方差。