Our paper on sparse regression for predicting cognitive performance from cortical thickness was published at Information Processing in Medical Imaging (IPMI) 2013. We developed a method for performing regression on brain images in a way that respects the natural structure of the images and is suited to the extremely high dimensionality of medical images. Read the whole paper here.
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