2024
DOI: 10.7717/peerj-cs.2502
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Normalized group activations based feature extraction technique using heterogeneous data for Alzheimer’s disease classification

Krishnakumar Vaithianathan,
Julian Benadit Pernabas,
Latha Parthiban
et al.

Abstract: Several deep learning networks are developed to identify the complex atrophic patterns of Alzheimer's disease (AD). Among various activation functions used in deep neural networks, the rectifier linear unit is the most used one. Even though these functions are analyzed individually, group activations and their interpretations are still not explored for neuroimaging analysis. In this study, a unique feature extraction technique based on normalized group activations that can be applied to both structural MRI and… Show more

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