Cleveland Clinic Lou Ruvo Center for Brain Health, Las Vegas, NV 89106, USA.
Department of Psychology and Neuroscience, University of Colorado, Boulder, CO 80309, USA.
Neuroimage. 2018 Apr 1;169:240-255. doi: 10.1016/j.neuroimage.2017.12.025. Epub 2017 Dec 14.
Local spatially-adaptive canonical correlation analysis (local CCA) with spatial constraints has been introduced to fMRI multivariate analysis for improved modeling of activation patterns. However, current algorithms require complicated spatial constraints that have only been applied to 2D local neighborhoods because the computational time would be exponentially increased if the same method is applied to 3D spatial neighborhoods. In this study, an efficient and accurate line search sequential quadratic programming (SQP) algorithm has been developed to efficiently solve the 3D local CCA problem with spatial constraints. In addition, a spatially-adaptive kernel CCA (KCCA) method is proposed to increase accuracy of fMRI activation maps. With oriented 3D spatial filters anisotropic shapes can be estimated during the KCCA analysis of fMRI time courses. These filters are orientation-adaptive leading to rotational invariance to better match arbitrary oriented fMRI activation patterns, resulting in improved sensitivity of activation detection while significantly reducing spatial blurring artifacts. The kernel method in its basic form does not require any spatial constraints and analyzes the whole-brain fMRI time series to construct an activation map. Finally, we have developed a penalized kernel CCA model that involves spatial low-pass filter constraints to increase the specificity of the method. The kernel CCA methods are compared with the standard univariate method and with two different local CCA methods that were solved by the SQP algorithm. Results show that SQP is the most efficient algorithm to solve the local constrained CCA problem, and the proposed kernel CCA methods outperformed univariate and local CCA methods in detecting activations for both simulated and real fMRI episodic memory data.
局部空间自适应典型相关分析(local CCA)结合空间约束已被引入 fMRI 多变量分析中,以改进激活模式的建模。然而,当前的算法需要复杂的空间约束,这些约束仅应用于 2D 局部邻域,因为如果将相同的方法应用于 3D 空间邻域,计算时间将会呈指数级增加。在这项研究中,开发了一种高效准确的线搜索序列二次规划(SQP)算法,用于有效地解决具有空间约束的 3D 局部 CCA 问题。此外,提出了一种空间自适应核典型相关分析(KCCA)方法,以提高 fMRI 激活图的准确性。在 fMRI 时间序列的 KCCA 分析中,使用定向 3D 空间滤波器可以估计各向异性形状。这些滤波器是自适应方向的,导致对旋转不变性,从而更好地匹配任意定向的 fMRI 激活模式,提高激活检测的灵敏度,同时显著减少空间模糊伪影。核方法在其基本形式中不需要任何空间约束,并且可以分析整个大脑的 fMRI 时间序列来构建激活图。最后,我们开发了一种惩罚核 CCA 模型,该模型涉及空间低通滤波器约束,以提高方法的特异性。将核 CCA 方法与标准单变量方法以及通过 SQP 算法解决的两种不同的局部 CCA 方法进行了比较。结果表明,SQP 是解决局部约束 CCA 问题最有效的算法,并且所提出的核 CCA 方法在检测模拟和真实 fMRI 情景记忆数据中的激活方面优于单变量和局部 CCA 方法。