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Predic{c}~ao da Idade Cerebral a partir de Imagens de Resson^ancia Magn'etica utilizando Redes Neurais Convolucionais

2021-12-23 14:51:45
Victor H. R. Oliveira, Augusto Antunes, Alexandre S. Soares, Arthur D. Reys, Robson Z. Júnior, Saulo D. S. Pedro, Danilo Silva

Abstract

In this work, deep learning techniques for brain age prediction from magnetic resonance images are investigated, aiming to assist in the identification of biomarkers of the natural aging process. The identification of biomarkers is useful for detecting an early-stage neurodegenerative process, as well as for predicting age-related or non-age-related cognitive decline. Two techniques are implemented and compared in this work: a 3D Convolutional Neural Network applied to the volumetric image and a 2D Convolutional Neural Network applied to slices from the axial plane, with subsequent fusion of individual predictions. The best result was obtained by the 2D model, which achieved a mean absolute error of 3.83 years. -- Neste trabalho são investigadas técnicas de aprendizado profundo para a predição da idade cerebral a partir de imagens de ressonância magnética, visando auxiliar na identificação de biomarcadores do processo natural de envelhecimento. A identificação de biomarcadores é útil para a detecção de um processo neurodegenerativo em estágio inicial, além de possibilitar prever um declínio cognitivo relacionado ou não à idade. Duas técnicas são implementadas e comparadas neste trabalho: uma Rede Neural Convolucional 3D aplicada na imagem volumétrica e uma Rede Neural Convolucional 2D aplicada a fatias do plano axial, com posterior fusão das predições individuais. O melhor resultado foi obtido pelo modelo 2D, que alcançou um erro médio absoluto de 3.83 anos.

Abstract (translated)

URL

https://arxiv.org/abs/2112.12609

PDF

https://arxiv.org/pdf/2112.12609.pdf


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