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Improving 3D convolutional neural network comprehensibility via interactive visualization of relevance maps: evaluation in Alzheimer's disease.

Martin DyrbaMoritz HanzigSlawek AltensteinSebastian BaderTommaso BallariniFrederic BrosseronKatharina BuergerDaniel CantréPeter DechentLaura DobischEmrah DüzelMichael EwersKlaus FliessbachWenzel GlanzJohn-Dylan HaynesMichael T HenekaDaniel JanowitzDeniz B KelesIngo KilimannChristoph LaskeFranziska MaierCoraline D MetzgerMatthias H MunkRobert PerneczkyOliver PetersLukas PreisJosef PrillerBoris RauchmannNina RoyKlaus SchefflerAnja SchneiderBjörn H SchottAnnika SpottkeEike J SpruthMarc-André WeberBirgit Ertl-WagnerMichael WagnerJens WiltfangFrank JessenStefan J Teipelnull null
Published in: Alzheimer's research & therapy (2021)
The relevance maps highlighted atrophy in regions that we had hypothesized a priori. This strengthens the comprehensibility of the CNN models, which were trained in a purely data-driven manner based on the scans and diagnosis labels. The high hippocampus relevance scores as well as the high performance achieved in independent samples support the validity of the CNN models in the detection of AD-related MRI abnormalities. The presented data-driven and hypothesis-free CNN modeling approach might provide a useful tool to automatically derive discriminative features for complex diagnostic tasks where clear clinical criteria are still missing, for instance for the differential diagnosis between various types of dementia.
Keyphrases
  • convolutional neural network
  • deep learning
  • contrast enhanced
  • cognitive impairment
  • mild cognitive impairment
  • working memory
  • cognitive decline
  • machine learning