Journal Article DZNE-2022-00280

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

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2021
BioMed Central London

Alzheimer's research & therapy 13(1), 191 () [10.1186/s13195-021-00924-2]

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Abstract: Although convolutional neural networks (CNNs) achieve high diagnostic accuracy for detecting Alzheimer's disease (AD) dementia based on magnetic resonance imaging (MRI) scans, they are not yet applied in clinical routine. One important reason for this is a lack of model comprehensibility. Recently developed visualization methods for deriving CNN relevance maps may help to fill this gap as they allow the visualization of key input image features that drive the decision of the model. We investigated whether models with higher accuracy also rely more on discriminative brain regions predefined by prior knowledge.We trained a CNN for the detection of AD in N = 663 T1-weighted MRI scans of patients with dementia and amnestic mild cognitive impairment (MCI) and verified the accuracy of the models via cross-validation and in three independent samples including in total N = 1655 cases. We evaluated the association of relevance scores and hippocampus volume to validate the clinical utility of this approach. To improve model comprehensibility, we implemented an interactive visualization of 3D CNN relevance maps, thereby allowing intuitive model inspection.Across the three independent datasets, group separation showed high accuracy for AD dementia versus controls (AUC ≥ 0.91) and moderate accuracy for amnestic MCI versus controls (AUC ≈ 0.74). Relevance maps indicated that hippocampal atrophy was considered the most informative factor for AD detection, with additional contributions from atrophy in other cortical and subcortical regions. Relevance scores within the hippocampus were highly correlated with hippocampal volumes (Pearson's r ≈ -0.86, p < 0.001).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.

Keyword(s): Alzheimer Disease: diagnostic imaging (MeSH) ; Cognitive Dysfunction: diagnostic imaging (MeSH) ; Humans (MeSH) ; Magnetic Resonance Imaging: methods (MeSH) ; Neural Networks, Computer (MeSH) ; Neuroimaging: methods (MeSH) ; Alzheimer’s disease ; Convolutional neural network ; Deep learning ; Layer-wise relevance propagation ; MRI

Classification:

Contributing Institute(s):
  1. Clinical Dementia Research (Rostock /Greifswald) (AG Teipel)
  2. Interdisciplinary Dementia Research (AG Endres)
  3. Neuropsychology (AG Wagner)
  4. Interventional Trials and Biomarkers in Neurodegenerative Diseases (Biomarker)
  5. Linking imaging projects iNET (AG Speck)
  6. Molecular Neurobiology (AG Simons)
  7. Patient Studies Bonn (Patient Studies Bonn)
  8. Biomarker-Assisted Early Detection of Dementias (AG Peters)
  9. Core ICRU (Core ICRU)
  10. Clinical Neurophysiology and Memory (AG Düzel)
  11. Magdeburg common (Magdeburg common)
  12. Parkinson Genetics (AG Gasser)
  13. Molecular biomarkers for predictive diagnostics of neurodegenerative diseases (AG Wiltfang)
  14. Clinical Alzheimer’s Disease Research (AG Jessen)
  15. Patient Studies (AG Klockgether)
  16. Clinical Research (Munich) (Clinical Research (Munich))
  17. Translational Neuropsychiatry (AG Priller)
  18. Vascular Cognitive Impairment & Post-Stroke Dementia (AG Dichgans)
  19. Translational Dementia Research (Bonn) (AG Schneider)
  20. Delcode (Delcode)
Research Program(s):
  1. 353 - Clinical and Health Care Research (POF4-353) (POF4-353)
  2. 351 - Brain Function (POF4-351) (POF4-351)
  3. 352 - Disease Mechanisms (POF4-352) (POF4-352)
Experiment(s):
  1. Longitudinal Cognitive Impairment and Dementia Study

Appears in the scientific report 2021
Database coverage:
Medline ; Creative Commons Attribution CC BY (No Version) ; DOAJ ; OpenAccess ; Article Processing Charges ; Clarivate Analytics Master Journal List ; Current Contents - Clinical Medicine ; DOAJ Seal ; Ebsco Academic Search ; Essential Science Indicators ; Fees ; IF >= 5 ; JCR ; SCOPUS ; Science Citation Index Expanded ; Web of Science Core Collection
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The record appears in these collections:
Institute Collections > BN DZNE > BN DZNE-Clinical Research (Bonn)
Institute Collections > M DZNE > M DZNE-Clinical Research (Munich)
Institute Collections > BN DZNE > BN DZNE-Patient Studies (Bonn)
Institute Collections > MD DZNE > MD DZNE-Magdeburg common
Document types > Articles > Journal Article
Institute Collections > GÖ DZNE > GÖ DZNE-AG Wiltfang
Institute Collections > BN DZNE > BN DZNE-AG Schneider
Institute Collections > ROS DZNE > ROS DZNE-AG Teipel
Institute Collections > TÜ DZNE > TÜ DZNE-AG Gasser
Institute Collections > BN DZNE > BN DZNE-AG Jessen
Institute Collections > MD DZNE > MD DZNE-AG Düzel
Institute Collections > BN DZNE > BN DZNE-AG Wagner
Institute Collections > BN DZNE > BN DZNE-Biomarker
Institute Collections > M DZNE > M DZNE-AG Dichgans
Institute Collections > B DZNE > B DZNE-AG Priller
Institute Collections > MD DZNE > MD DZNE-AG Speck
Institute Collections > M DZNE > M DZNE-AG Simons
Institute Collections > B DZNE > B DZNE-AG Peters
Institute Collections > B DZNE > B DZNE-AG Endres
Institute Collections > TÜ DZNE > TÜ DZNE-ICRU
Institute Collections > M DZNE > M DZNE-Delcode
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 Record created 2022-04-06, last modified 2024-08-26