Hill D L, Maurer C R, Studholme C, Fitzpatrick J M, Hawkes D J
Department of Radiological Sciences, UMDS, Guy's & St. Thomas' Hospitals, London, England.
J Comput Assist Tomogr. 1998 Mar-Apr;22(2):317-23. doi: 10.1097/00004728-199803000-00031.
Clinical imaging systems, especially MR scanners, frequently have errors of a few percent in their voxel dimensions. We evaluate a nine degree of freedom registration algorithm that maximizes mutual information for determining scaling errors. We evaluate it by registering MR and CT images for each of five patients (patient scaling) and by registering MR images of a phantom to a computer model of the phantom (phantom scaling).
Each scaling method was validated using bone-implanted markers localized in the patient images and also intraoperatively. The root mean square residual in the alignment of the fiducial markers [fiducial registration error (FRE)] was determined without scale correction, with patient scaling, and with phantom scaling.
Each scaling method significantly reduced the average FRE (p < 0.05) for MR to CT registration and for MR to physical space registration, indicating that voxel scaling errors were reduced. The greater reduction in scaling errors was achieved using the phantom scaling method.
We have demonstrated that a nine degree of freedom registration algorithm that maximizes mutual information can significantly reduce scaling errors in MR.
临床成像系统,尤其是磁共振成像扫描仪,其体素尺寸常常存在百分之几的误差。我们评估了一种九自由度配准算法,该算法通过最大化互信息来确定缩放误差。我们通过对五名患者的磁共振图像和计算机断层扫描(CT)图像进行配准(患者缩放)以及将体模的磁共振图像与体模的计算机模型进行配准(体模缩放)来评估该算法。
每种缩放方法均使用植入患者图像以及术中定位的骨标记进行验证。在不进行比例校正、采用患者缩放和体模缩放的情况下,确定基准标记对齐中的均方根残差[基准配准误差(FRE)]。
每种缩放方法均显著降低了磁共振图像与CT图像配准以及磁共振图像与物理空间配准的平均FRE(p < 0.05),表明体素缩放误差有所降低。采用体模缩放方法可实现更大程度的缩放误差降低。
我们已经证明,一种通过最大化互信息的九自由度配准算法能够显著降低磁共振成像中的缩放误差。