Nrc Publications Archive (nparc) Archives Des Publications Du Cnrc (nparc) Computational Intelligence Techniques Applied to Magnetic Resonance Spectroscopy Data of Human Brain Cancers Computational Intelligence Techniques Applied to Magnetic Resonance Spectroscopy Data of Human Brain Cancers * Compu

Computational intelligence techniques were applied to human brain cancer magnetic resonance spectral data. In particular, two approaches, Rough Sets and a Genetic Programming-based Neural Network were investigated and then confirmed via a systematic Individual Dichotomization algorithm. Good preliminary results were obtained with 100% training and 100% testing accuracy that differentiate normal versus malignant samples.

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