首页 | 本学科首页   官方微博 | 高级检索  
     检索      


Connectivity‐informed adaptive regularization for generalized outcomes
Authors:Damian Brzyski  Marta Karas  Beau M Ances  Mario Dzemidzic  Joaquín Goi  Timothy W Randolph  Jaroslaw Harezlak
Institution:Damian Brzyski,Marta Karas,Beau M Ances,Mario Dzemidzic,Joaquín Goñi,Timothy W Randolph,Jaroslaw Harezlak
Abstract:One of the challenging problems in neuroimaging is the principled incorporation of information from different imaging modalities. Data from each modality are frequently analyzed separately using, for instance, dimensionality reduction techniques, which result in a loss of mutual information. We propose a novel regularization method, generalized ridgified Partially Empirical Eigenvectors for Regression (griPEER), to estimate associations between the brain structure features and a scalar outcome within the generalized linear regression framework. griPEER improves the regression coefficient estimation by providing a principled approach to use external information from the structural brain connectivity. Specifically, we incorporate a penalty term, derived from the structural connectivity Laplacian matrix, in the penalized generalized linear regression. In this work, we address both theoretical and computational issues and demonstrate the robustness of our method despite incomplete information about the structural brain connectivity. In addition, we also provide a significance testing procedure for performing inference on the estimated coefficients. Finally, griPEER is evaluated both in extensive simulation studies and using clinical data to classify HIV+ and HIV? individuals.
Keywords:Brain connectivity  brain structure  generalized linear regression  Laplacian matrix  penalized regression  structured penalties
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号