TL;DR
This paper introduces a supervised multi-topology network cross-diffusion framework for brain network atlas estimation, improving discriminativeness and representation by incorporating multiple topological measures and supervised learning.
Contribution
It proposes the first supervised network cross-diffusion method using multiple topological measures, enhancing brain network atlas quality and classification accuracy.
Findings
Produced more centered and representative brain network templates.
Boosted autistic subject classification accuracy by 5-15%.
Outperformed state-of-the-art methods in brain network atlas estimation.
Abstract
Estimating a representative and discriminative brain network atlas (BNA) is a nascent research field in mapping a population of brain networks in health and disease. Although limited, existing BNA estimation methods have several limitations. First, they primarily rely on a similarity network diffusion and fusion technique, which only considers node degree as a topological measure in the cross-network diffusion process, thereby overlooking rich topological measures of the brain network (e.g., centrality). Second, both diffusion and fusion techniques are implemented in fully unsupervised manner, which might decrease the discriminative power of the estimated BNAs. To fill these gaps, we propose a supervised multi-topology network cross-diffusion (SM-netFusion) framework for estimating a BNA satisfying : (i) well-representativeness (captures shared traits across subjects), (ii)…
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Taxonomy
MethodsFeature Selection · Diffusion
