Current brain-age prediction methods using magnetic resonance imaging (MRI) attempt to estimate the physiological brain age via some kind of machine learning of chronological brain age data to perform the classification task. Such a predictive approach imposes greater risk of either over-estimate or under-estimate, mainly due to limited training data. A new conceptual framework for more reliable MRI-based brain-age prediction is by systematic brain-age grouping via the implementation of the phylogenetic tree reconstruction and measures of information complexity. Experimental results carried out on a public MRI database suggest the feasibility of the proposed concept.
CITATION STYLE
Pham, T. D., Abe, T., Oka, R., & Chen, Y. F. (2015). Measures of morphological complexity of gray matter on magnetic resonance imaging for control age grouping. Entropy, 17(12), 8130–8151. https://doi.org/10.3390/e17127868
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