Key Laboratory of Computational Biology, CAS-MPG Partner Institute for Computational Biology, Shanghai Institutes for Biological Sciences, Chinese Academy of Sciences, Shanghai, 200031, China; University of Chinese Academy of Sciences, Beijing, 100049, China; Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai, 200433, China.
Shanghai Center for Mathematical Sciences, Fudan University, Shanghai, 200433, China; Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai, 200433, China.
Neuroimage. 2019 Mar;188:628-641. doi: 10.1016/j.neuroimage.2018.12.032. Epub 2018 Dec 18.
We describe an approach to multivariate analysis, termed structured kernel principal component regression (sKPCR), to identify associations in voxel-level connectomes using resting-state functional magnetic resonance imaging (rsfMRI) data. This powerful and computationally efficient multivariate method can identify voxel-phenotype associations based on the whole-brain connectivity pattern of voxels, and it can detect linear and non-linear signals in both volume-based and surface-based rsfMRI data. For each voxel, sKPCR first extracts low-dimensional signals from the spatially smoothed connectivities by structured kernel principal component analysis, and then tests the voxel-phenotype associations by an adaptive regression model. The method's power is derived from appropriately modelling the spatial structure of the data when performing dimension reduction, and then adaptively choosing an optimal dimension for association testing using the adaptive regression strategy. Simulations based on real connectome data have shown that sKPCR can accurately control the false-positive rate and that it is more powerful than many state-of-the-art approaches, such as the connectivity-wise generalized linear model (GLM) approach, multivariate distance matrix regression (MDMR), adaptive sum of powered score (aSPU) test, and least-square kernel machine (LSKM). Moreover, since sKPCR can reduce the computational cost of non-parametric permutation tests, its computation speed is much faster. To demonstrate the utility of sKPCR for real data analysis, we have also compared sKPCR with the above methods based on the identification of voxel-wise differences between schizophrenic patients and healthy controls in four independent rsfMRI datasets. The results showed that sKPCR had better between-sites reproducibility and a larger proportion of overlap with existing schizophrenia meta-analysis findings. Code for our approach can be downloaded from https://github.com/weikanggong/sKPCR.
我们描述了一种用于多元分析的方法,称为结构核主成分回归(sKPCR),以使用静息态功能磁共振成像(rsfMRI)数据识别体素水平连接组中的关联。这种强大且计算效率高的多元方法可以根据体素的全脑连接模式识别体素-表型关联,并且可以检测基于体积和基于表面的 rsfMRI 数据中的线性和非线性信号。对于每个体素,sKPCR 首先通过结构核主成分分析从空间平滑的连接中提取低维信号,然后通过自适应回归模型测试体素-表型关联。该方法的优势源自在进行降维时适当建模数据的空间结构,然后使用自适应回归策略自适应地选择最佳维度进行关联测试。基于真实连接组数据的模拟表明,sKPCR 可以准确控制假阳性率,并且比许多最先进的方法(如连接方式广义线性模型(GLM)方法、多元距离矩阵回归(MDMR)、自适应求和功率得分(aSPU)检验和最小二乘核机器(LSKM))更有效。此外,由于 sKPCR 可以降低非参数置换检验的计算成本,因此其计算速度更快。为了展示 sKPCR 在真实数据分析中的实用性,我们还基于四个独立的 rsfMRI 数据集,将 sKPCR 与上述方法进行了比较,以识别精神分裂症患者和健康对照组之间的体素差异。结果表明,sKPCR 具有更好的跨站点可重复性,并且与现有的精神分裂症荟萃分析结果重叠的比例更大。我们的方法的代码可以从 https://github.com/weikanggong/sKPCR 下载。