4.7 Article

Disease prediction based on functional connectomes using a scalable and spatially-informed support vector machine

期刊

NEUROIMAGE
卷 96, 期 -, 页码 183-202

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2014.03.067

关键词

Classification; Feature selection; Structured sparsity; Resting state fMRI; Functional connectivity; Support vector machine

资金

  1. NIH [P01CA087634, K23-AA-020297]
  2. NSF [CCF 1217880]
  3. Center for Computational Medicine Pilot Grant
  4. John Templeton Foundation
  5. Direct For Computer & Info Scie & Enginr [1217880] Funding Source: National Science Foundation
  6. Division of Computing and Communication Foundations [1217880] Funding Source: National Science Foundation

向作者/读者索取更多资源

Substantial evidence indicates that major psychiatric disorders are associated with distributed neural dysconnectivity, leading to a strong interest in using neuroimaging methods to accurately predict disorder status. In this work, we are specifically interested in a multivariate approach that uses features derived from whole-brain resting state functional connectomes. However, functional connectomes reside in a high dimensional space, which complicates model interpretation and introduces numerous statistical and computational challenges. Traditional feature selection techniques are used to reduce data dimensionality, but are blind to the spatial structure of the connectomes. We propose a regularization framework where the 6-D structure of the functional connectome (defined by pairs of points in 3-D space) is explicitly taken into account via the fused Lasso or the GraphNet regularizer. Our method only restricts the loss function to be convex and margin-based, allowing non-differentiable loss functions such as the hinge-loss to be used. Using the fused Lasso or GraphNet regularizer with the hinge-loss leads to a structured sparse support vector machine (SVM) with embedded feature selection. We introduce a novel efficient optimization algorithm based on the augmented Lagrangian and the classical alternating direction method, which can solve both fused Lasso and GraphNet regularized SVM with very little modification. We also demonstrate that the inner subproblems of the algorithm can be solved efficiently in analytic form by coupling the variable splitting strategy with a data augmentation scheme. Experiments on simulated data and resting state scans from a large schizophrenia dataset show that our proposed approach can identify predictive regions that are spatially contiguous in the 6-D connectome space, offering an additional layer of interpretability that could provide new insights about various disease processes. (C) 2014 Elsevier Inc. All rights reserved.

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