Liu Y, Collins R T, Rothfus W E
Robotics Institute, Carnegie Mellon University, Pittsburgh, PA 15213, USA.
IEEE Trans Med Imaging. 2001 Mar;20(3):175-92. doi: 10.1109/42.918469.
This paper focuses on extracting the ideal midsagittal plane (iMSP) from three-dimensional (3-D) normal and pathological neuroimages. The main challenges in this work are the structural asymmetry that may exist in pathological brains, and the anisotropic, unevenly sampled image data that is common in clinical practice. We present an edge-based, cross-correlation approach that decomposes the plane fitting problem into discovery of two-dimensional symmetry axes on each slice, followed by a robust estimation of plane parameters. The algorithm's tolerance to brain asymmetries, input image offsets and image noise is quantitatively evaluated. We find that the algorithm can extract the iMSP from input 3-D images with 1) large asymmetrical lesions; 2) arbitrary initial rotation offsets; 3) low signal-to-noise ratio or high bias field. The iMSP algorithm is compared with an approach based on maximization of mutual information registration, and is found to exhibit superior performance under adverse conditions. Finally, no statistically significant difference is found between the midsagittal plane computed by the iMSP algorithm and that estimated by two trained neuroradiologists.
本文着重于从三维(3-D)正常和病理神经图像中提取理想的正中矢状面(iMSP)。这项工作的主要挑战在于病理大脑中可能存在的结构不对称性,以及临床实践中常见的各向异性、采样不均匀的图像数据。我们提出了一种基于边缘的互相关方法,该方法将平面拟合问题分解为在每个切片上发现二维对称轴,然后对平面参数进行稳健估计。对该算法对脑不对称性、输入图像偏移和图像噪声的容忍度进行了定量评估。我们发现该算法可以从具有以下情况的输入3-D图像中提取iMSP:1)大的不对称病变;2)任意初始旋转偏移;3)低信噪比或高偏置场。将iMSP算法与基于互信息配准最大化的方法进行了比较,发现在不利条件下该算法表现出卓越的性能。最后,iMSP算法计算出的正中矢状面与两位训练有素的神经放射科医生估计的正中矢状面之间未发现统计学上的显著差异。