Pai Akshay, Sporring Jon, Darkner Sune, Dam Erik B, Lillholm Martin, Jørgensen Dan, Oh Joonmi, Chen Gennan, Suhy Joyce, Sørensen Lauge, Nielsen Mads
University of Copenhagen , Department of Computer Science, DIKU, Sigursgade 41, Copenhagen 2100, Denmark.
Biomediq A/S , Fruebjergvej 3, Copenhagen 2100, Denmark.
J Med Imaging (Bellingham). 2016 Jan;3(1):014005. doi: 10.1117/1.JMI.3.1.014005. Epub 2016 Mar 16.
Obtaining regional volume changes from a deformation field is more precise when using simplex counting (SC) compared with Jacobian integration (JI) due to the numerics involved in the latter. Although SC has been proposed before, numerical properties underpinning the method and a thorough evaluation of the method against JI is missing in the literature. The contributions of this paper are: (a) we propose surface propagation (SP)-a simplification to SC that significantly reduces its computational complexity; (b) we will derive the orders of approximation of SP which can also be extended to SC. In the experiments, we will begin by empirically showing that SP is indeed nearly identical to SC, and that both methods are more stable than JI in presence of moderate to large deformation noise. Since SC and SP are identical, we consider SP as a representative of both the methods for a practical evaluation against JI. In a real application on Alzheimer's disease neuroimaging initiative data, we show the following: (a) SP produces whole brain and medial temporal lobe atrophy numbers that are significantly better than JI at separating between normal controls and Alzheimer's disease patients; (b) SP produces disease group atrophy differences comparable to or better than those obtained using FreeSurfer, demonstrating the validity of the obtained clinical results. Finally, in a reproducibility study, we show that the voxel-wise application of SP yields significantly lower variance when compared to JI.
与雅可比积分(JI)相比,使用单纯形计数(SC)从变形场中获取区域体积变化更为精确,这是由于后者涉及的数值计算问题。尽管之前已经有人提出了SC,但该方法的数值特性以及针对JI对该方法进行的全面评估在文献中尚付阙如。本文的贡献在于:(a)我们提出了表面传播(SP)——一种对SC的简化方法,可显著降低其计算复杂度;(b)我们将推导SP的近似阶数,该阶数也可扩展到SC。在实验中,我们首先通过实证表明SP实际上与SC几乎相同,并且在存在中度至大变形噪声的情况下,这两种方法都比JI更稳定。由于SC和SP相同,我们将SP视为这两种方法的代表,以便针对JI进行实际评估。在对阿尔茨海默病神经影像学倡议数据的实际应用中,我们展示了以下内容:(a)在区分正常对照和阿尔茨海默病患者方面,SP产生的全脑和内侧颞叶萎缩数值明显优于JI;(b)SP产生的疾病组萎缩差异与使用FreeSurfer获得的差异相当或更好,证明了所获得临床结果的有效性。最后,在一项可重复性研究中,我们表明与JI相比,SP在体素层面的应用产生的方差显著更低。