Predicting phenotypes of elderly from resting state fMRI
Barbara Verovnik,
Stefan Hajduk,
Marc Van Hulle
Abstract:Machine learning techniques are increasingly embraced in neuroimaging studies of healthy and diseased human brains. They have been used successfully in predicting phenotypes, or even clinical outcomes, and in turning functional connectome metrics into phenotype biomarkers of both healthy individuals and patients. In this study, we used functional connectivity characteristics based on resting state functional magnetic resonance imaging data to accurately classify healthy elderly in terms of their phenotype stat… Show more
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