作者
Christian Tinauer, Anna Damulina, Maximilian Sackl, Martin Soellradl, Reduan Achtibat, Maximilian Dreyer, Frederik Pahde, Sebastian Lapuschkin, Reinhold Schmidt, Stefan Ropele, Wojciech Samek, Christian Langkammer
发表日期
2024/4/16
期刊
arXiv preprint arXiv:2404.10433
简介
Motivation
While recent studies show high accuracy in the classification of Alzheimer's disease using deep neural networks, the underlying learned concepts have not been investigated.
Goals
To systematically identify changes in brain regions through concepts learned by the deep neural network for model validation.
Approach
Using quantitative R2* maps we separated Alzheimer's patients (n=117) from normal controls (n=219) by using a convolutional neural network and systematically investigated the learned concepts using Concept Relevance Propagation and compared these results to a conventional region of interest-based analysis.
Results
In line with established histological findings and the region of interest-based analyses, highly relevant concepts were primarily found in and adjacent to the basal ganglia.
Impact
The identification of concepts learned by deep neural networks for disease classification enables validation of the models and could potentially improve reliability.
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