Rehman Tauseefur, Haber Eldad, Pohl Kilian M, Haker Steven, Halle Mike, Talos Florin, Wald Lawrence L, Kikinis Ron, Tannenbaum Allen
Schools of Electrical & Computer and Biomedical Engg., Georgia Institute of Technology, Atlanta, GA.
Department of Mathematics and Computer Science, Emory University, Atlanta, GA.
Midas J. 2008 Sep;2008:27-35.
The elastic registration of medical scans from different acquisition sequences is becoming an important topic for many research labs that would like to continue the post-processing of medical scans acquired via the new generation of high-field-strength scanners. In this note, we present a parameter-free registration algorithm that is well suited for this scenario as it requires no tuning to specific acquisition sequences. The algorithm encompasses a new numerical scheme for computing elastic registration maps based on the minimizing flow approach to optimal mass transport. The approach utilizes all of the gray-scale data in both images, and the optimal mapping from image to image is the inverse of the optimal mapping from to . Further, no landmarks need to be specified, and the minimizer of the distance functional involved is unique. We apply the algorithm to register the white matter folds of two different scans and use the results to parcellate the cortex of the target image. To the best of our knowledge, this is the first time that the optimal mass transport function has been applied to register large 3D multimodal data sets.
对于许多希望对通过新一代高场强扫描仪获取的医学扫描进行后续处理的研究实验室来说,来自不同采集序列的医学扫描的弹性配准正成为一个重要课题。在本笔记中,我们提出了一种无参数配准算法,该算法非常适合这种情况,因为它不需要针对特定采集序列进行调整。该算法包含一种基于最优质量传输的最小化流方法来计算弹性配准映射的新数值方案。该方法利用了两幅图像中的所有灰度数据,并且从图像 到图像 的最优映射是从 到 的最优映射的逆。此外,无需指定地标,并且所涉及的距离泛函的极小值是唯一的。我们应用该算法对两次不同扫描的白质褶皱进行配准,并使用结果对目标图像的皮质进行分割。据我们所知,这是最优质量传输函数首次应用于配准大型三维多模态数据集。