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P-SVM Variable Selection for Discovering Dependencies Between Genetic and Brain Imaging Data
2006
The 2006 IEEE International Joint Conference on Neural Network Proceedings
The joint analysis of genetic and brain imaging data is the key to understand the genetic underpinnings of brain dysfunctions in several psychiatric diseases known to have a strong genetic component. The goal is to identify associations between genetic and functional or morphometric brain measurements. We here suggest a machine learning method to solve this task, which is based on the recently proposed Potential Support Vector Machine (P-SVM) for variable selection, a subsequent k-NN
doi:10.1109/ijcnn.2006.247207
dblp:conf/ijcnn/MohrPWHHO06
fatcat:lnqtapunfzfhrmtsfs6hf65chm