4.3 Article

Embedding Anatomical or Functional Knowledge in Whole-Brain Multiple Kernel Learning Models

期刊

NEUROINFORMATICS
卷 16, 期 1, 页码 117-143

出版社

HUMANA PRESS INC
DOI: 10.1007/s12021-017-9347-8

关键词

Machine learning; Multiple Kernel Learning; Neuroimaging; MATLAB software; Model interpretation; Anatomically defined regions

资金

  1. F.R.S-F.N.R.S Belgian National Research Funds
  2. Belgian American Educational Foundation (Henri Benedictus award)
  3. Medical Foundation of the Liege Rotary Club
  4. Laboratory of Behavioral and Cognitive Neuroscience at Stanford University
  5. Portuguese Foundation for Science and Technology [SFRH/BD/88345/2012]
  6. CNPq/Brazil
  7. CAPES/Brazil
  8. FAPERJ/Brazil
  9. Wellcome Trust [WT086565/Z/08/Z, WT102845/Z/13/Z]
  10. [P50 AG05681]
  11. [P01 AG03991]
  12. [R01 AG021910]
  13. [P50 MH071616]
  14. [U24 RR021382]
  15. [R01 MH56584]
  16. Fundação para a Ciência e a Tecnologia [SFRH/BD/88345/2012] Funding Source: FCT

向作者/读者索取更多资源

Pattern recognition models have been increasingly applied to neuroimaging data over the last two decades. These applications have ranged from cognitive neuroscience to clinical problems. A common limitation of these approaches is that they do not incorporate previous knowledge about the brain structure and function into the models. Previous knowledge can be embedded into pattern recognition models by imposing a grouping structure based on anatomically or functionally defined brain regions. In this work, we present a novel approach that uses group sparsity to model the whole brain multivariate pattern as a combination of regional patterns. More specifically, we use a sparse version of Multiple Kernel Learning (MKL) to simultaneously learn the contribution of each brain region, previously defined by an atlas, to the decision function. Our application of MKL provides two beneficial features: (1) it can lead to improved overall generalisation performance when the grouping structure imposed by the atlas is consistent with the data; (2) it can identify a subset of relevant brain regions for the predictive model. In order to investigate the effect of the grouping in the proposed MKL approach we compared the results of three different atlases using three different datasets. The method has been implemented in the new version of the open-source Pattern Recognition for Neuroimaging Toolbox (PRoNTo).

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