Publication | Open Access
Localizing and Comparing Weight Maps Generated from Linear Kernel Machine Learning Models
33
Citations
13
References
2013
Year
Unknown Venue
EngineeringMachine LearningRanking DistanceBrain MappingMachine Learning ModelsLocalizationSocial SciencesSupport Vector MachineImage AnalysisData ScienceData MiningPattern RecognitionStatisticsSupervised LearningComputational AnatomyCognitive ScienceMachine VisionNeuroimaging ModalityNeuroinformaticsKnowledge DiscoveryNeuroimagingComputer ScienceStatistical Learning TheoryMedical Image ComputingComputer VisionDifficult LocalizationComputational NeuroscienceReproducing Kernel MethodNeuroscienceBrain ModelingKernel Method
Recently, machine learning models have been applied to neuroimaging data, allowing to make predictions about a variable of interest based on the pattern of activation or anatomy over a set of voxels. These pattern recognition based methods present undeniable assets over classical (univariate) techniques, by providing predictions for unseen data, as well as the weights of each voxel in the model. However, the obtained weight map cannot be thresholded to perform regionally specific inference, leading to a difficult localization of the variable of interest. In this work, we provide local averages of the weights according to regions defined by anatomical or functional atlases (e.g. Brodmann atlas). These averages can then be ranked, thereby providing a sorted list of regions that can be (to a certain extent) compared with univariate results. Furthermore, we defined a "ranking distance", allowing for the quantitative comparison between localized patterns. These concepts are illustrated with two datasets.
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