Thompson P M, Toga A W
Department of Neurology, UCLA School of Medicine 90095-1769, USA.
Med Image Anal. 1997 Sep;1(4):271-94. doi: 10.1016/s1361-8415(97)85002-5.
This paper describes the design, implementation and preliminary results of a technique for creating a comprehensive probabilistic atlas of the human brain based on high-dimensional vector field transformations. The goal of the atlas is to detect and quantify distributed patterns of deviation from normal anatomy, in a 3-D brain image from any given subject. The algorithm analyzes a reference population of normal scans and automatically generates color-coded probability maps of the anatomy of new subjects. Given a 3-D brain image of a new subject, the algorithm calculates a set of high-dimensional volumetric maps (with typically 384(2) x 256 x 3 approximately 10(8) degrees of freedom) elastically deforming this scan into structural correspondence with other scans, selected one by one from an anatomic image database. The family of volumetric warps thus constructed encodes statistical properties and directional biases of local anatomical variation throughout the architecture of the brain. A probability space of random transformations, based on the theory of anisotropic Gaussian random fields, is then developed to reflect the observed variability in stereotaxic space of the points whose correspondences are found by the warping algorithm. A complete system of 384(2) x 256 probability density functions is computed, yielding confidence limits in stereotaxic space for the location of every point represented in the 3-D image lattice of the new subject's brain. Color-coded probability maps are generated, densely defined throughout the anatomy of the new subject. These indicate locally the probability of each anatomic point being unusually situated, given the distributions of corresponding points in the scans of normal subjects. 3-D MRI and high-resolution cryosection volumes are analyzed from subjects with metastatic tumors and Alzheimer's disease. Gradual variations and continuous deformations of the underlying anatomy are simulated and their dynamic effects on regional probability maps are animated in video format (on the accompanying CD-ROM). Applications of the deformable probabilistic atlas include the transfer of multi-subject 3-D functional, vascular and histologic maps onto a single anatomic template, the mapping of 3-D atlases onto the scans of new subjects, and the rapid detection, quantification and mapping of local shape changes in 3-D medical images in disease and during normal or abnormal growth and development.
本文描述了一种基于高维向量场变换创建人脑综合概率图谱的技术的设计、实现及初步结果。该图谱的目标是在来自任何给定受试者的三维脑图像中检测并量化与正常解剖结构的分布偏差模式。该算法分析一组正常扫描的参考样本,并自动生成新受试者解剖结构的彩色编码概率图。给定新受试者的三维脑图像,该算法计算一组高维体积图(通常具有384(2)×256×3约10(8)个自由度),将此扫描弹性变形为与从解剖图像数据库中逐一选择的其他扫描具有结构对应关系。由此构建的体积变形族编码了整个脑结构中局部解剖变异的统计特性和方向偏差。然后基于各向异性高斯随机场理论开发一个随机变换的概率空间,以反映经变形算法找到对应关系的点在立体定向空间中的观测变异性。计算出一个由384(2)×256个概率密度函数组成的完整系统,为新受试者脑的三维图像格中表示的每个点的位置在立体定向空间中产生置信限。生成彩色编码概率图,在新受试者的整个解剖结构中密集定义。这些图局部显示了在正常受试者扫描中对应点分布的情况下,每个解剖点处于异常位置的概率。对患有转移性肿瘤和阿尔茨海默病的受试者的三维磁共振成像和高分辨率冷冻切片体积进行了分析。模拟了基础解剖结构的逐渐变化和连续变形,并以视频格式(在随附的光盘上)动态展示它们对区域概率图的影响。可变形概率图谱的应用包括将多受试者的三维功能、血管和组织学图谱转移到单个解剖模板上,将三维图谱映射到新受试者的扫描图像上,以及在疾病以及正常或异常生长发育过程中快速检测、量化和映射三维医学图像中的局部形状变化。