An explainability framework for cortical surface-based deep learning
Fernanda L. Ribeiro, Steffen Bollmann, Ross Cunnington, and Alexander, M. Puckett

TL;DR
This paper introduces a new explainability framework for cortical surface-based deep learning, enabling better understanding of brain data models, particularly for complex tasks like modality transfer, through adapted perturbation methods.
Contribution
It develops a surface-based explainability approach for geometric deep learning models, specifically addressing complex brain imaging tasks like vertex-wise regression.
Findings
Identifies key brain regions influencing model predictions.
Demonstrates the framework's reliability and validity.
Provides insights into model decision-making on cortical surfaces.
Abstract
The emergence of explainability methods has enabled a better comprehension of how deep neural networks operate through concepts that are easily understood and implemented by the end user. While most explainability methods have been designed for traditional deep learning, some have been further developed for geometric deep learning, in which data are predominantly represented as graphs. These representations are regularly derived from medical imaging data, particularly in the field of neuroimaging, in which graphs are used to represent brain structural and functional wiring patterns (brain connectomes) and cortical surface models are used to represent the anatomical structure of the brain. Although explainability techniques have been developed for identifying important vertices (brain areas) and features for graph classification, these methods are still lacking for more complex tasks,…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Explainable Artificial Intelligence (XAI) · Cell Image Analysis Techniques
