Steiner Aleksandra, Abbas Kausar, Brzyski Damian, Pączek Kewin, Randolph Timothy W, Goñi Joaquín, Harezlak Jaroslaw
Department of Mathematics, Institute of Mathematics, University of Wroclaw, Wroclaw, Poland.
Purdue Institute for Integrative Neuroscience, Purdue University, West Lafayette, IN, United States.
Front Neurosci. 2022 Sep 28;16:957282. doi: 10.3389/fnins.2022.957282. eCollection 2022.
Studying the association of the brain's structure and function with neurocognitive outcomes requires a comprehensive analysis that combines different sources of information from a number of brain-imaging modalities. Recently developed regularization methods provide a novel approach using information about brain structure to improve the estimation of coefficients in the linear regression models. Our proposed method, which is a special case of the Tikhonov regularization, incorporates structural connectivity derived with Diffusion Weighted Imaging and cortical distance information in the penalty term. Corresponding to previously developed methods that inform the estimation of the regression coefficients, we incorporate additional information a Laplacian matrix based on the proximity measure on the cortical surface. Our contribution consists of constructing a principled formulation of the penalty term and testing the performance of the proposed approach extensive simulation studies and a brain-imaging application. The penalty term is constructed as a weighted combination of structural connectivity and proximity between cortical areas. Simulation studies mimic the real brain-imaging settings. We apply our approach to the study of data collected in the Human Connectome Project, where the cortical properties of the left hemisphere are found to be associated with vocabulary comprehension.
研究大脑结构和功能与神经认知结果之间的关联需要进行全面分析,这种分析要结合来自多种脑成像模态的不同信息源。最近开发的正则化方法提供了一种新颖的途径,即利用大脑结构信息来改进线性回归模型中系数的估计。我们提出的方法是蒂霍诺夫正则化的一种特殊情况,它在惩罚项中纳入了通过扩散加权成像得出的结构连通性和皮质距离信息。与之前用于指导回归系数估计的方法相对应,我们纳入了额外信息——基于皮质表面邻近度测量的拉普拉斯矩阵。我们的贡献包括构建惩罚项的合理公式,并通过广泛的模拟研究和脑成像应用来测试所提出方法的性能。惩罚项被构建为结构连通性与皮质区域之间邻近度的加权组合。模拟研究模拟了真实的脑成像设置。我们将我们的方法应用于人类连接体项目收集的数据研究中,发现左半球的皮质特性与词汇理解相关。