@inproceedings{241d739b4952421db0507589365b4d78,
title = "Mutual information-based evolution of hypernetworks for brain data analysis",
abstract = "Cortical analysis becomes increasingly important for brain research and clinical diagnosis. This problem involves a combinatorial search to find the essential modules among a large number of brain regions. Despite several statistical approaches, cortical analysis remains a formidable challenge due to high-dimensionality and sparsity of data. Here we describe an evolutionary method for finding significant modules from cortical data. The method uses a hypernetwork which is encoded as a population of hyperedges, where hyperedges represent building blocks or potential modules. We develop an efficient method for evolving the hypernetwork using mutual information to generate essential hyperedges. We evaluate the method on predicting intelligence quotient (IQ) levels and finding potential significant modules on IQ from brain MRI data consisting of 62 healthy adults with over 80,000 measured points (variables). The experimental results show that our information-theoretic evolutionary hypernetworks improve the classification accuracy by 515%. Moreover, it extracts significant cortical modules that distinguish high IQ from low IQ groups.",
keywords = "classifier, cortical thickness, human intelligence, hypernetworks, mutual information",
author = "Kim, {Eun Sol} and Ha, {Jung Woo} and Jung, {Wi Hoon} and Jang, {Joon Hwan} and Kwon, {Jun Soo} and Zhang, {Byoung Tak}",
year = "2011",
doi = "10.1109/CEC.2011.5949944",
language = "English",
isbn = "9781424478347",
series = "2011 IEEE Congress of Evolutionary Computation, CEC 2011",
pages = "2611--2617",
booktitle = "2011 IEEE Congress of Evolutionary Computation, CEC 2011",
note = "null ; Conference date: 05-06-2011 Through 08-06-2011",
}