Schwarz Daniel, Kasparek Tomas, Provaznik Ivo, Jarkovsky Jiri
Masaryk University, Institute of Biostatistics and Analyses, 625 00 Brno, Czech Republic.
IEEE Trans Med Imaging. 2007 Apr;26(4):452-61. doi: 10.1109/TMI.2007.892512.
Image registration methods play a crucial role in computational neuroanatomy. This paper mainly contributes to the field of image registration with the use of nonlinear spatial transformations. Particularly, problems connected to matching magnetic resonance imaging (MRI) brain image data obtained from various subjects and with various imaging conditions are solved here. Registration is driven by local forces derived from multimodal point similarity measures which are estimated with the use of joint intensity histogram and tissue probability maps. A spatial deformation model imitating principles of continuum mechanics is used. Five similarity measures are tested in an experiment with image data obtained from the Simulated Brain Database and a quantitative evaluation of the algorithm is presented. Results of application of the method in automated spatial detection of anatomical abnormalities in first-episode schizophrenia are presented.
图像配准方法在计算神经解剖学中起着至关重要的作用。本文主要通过使用非线性空间变换为图像配准领域做出贡献。特别是,这里解决了与匹配从不同受试者和不同成像条件下获得的磁共振成像(MRI)脑图像数据相关的问题。配准由从多模态点相似性度量导出的局部力驱动,这些相似性度量是通过联合强度直方图和组织概率图来估计的。使用了一种模仿连续介质力学原理的空间变形模型。在一项使用从模拟脑数据库获得的图像数据的实验中测试了五种相似性度量,并给出了该算法的定量评估。还展示了该方法在首发精神分裂症解剖学异常自动空间检测中的应用结果。