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Interpretable brain disease classification and relevance-guided deep learning.
Tinauer, Christian; Heber, Stefan; Pirpamer, Lukas; Damulina, Anna; Schmidt, Reinhold; Stollberger, Rudolf; Ropele, Stefan; Langkammer, Christian.
Affiliation
  • Tinauer C; Department of Neurology, Medical University of Graz, Graz, Austria.
  • Heber S; Department of Neurology, Medical University of Graz, Graz, Austria.
  • Pirpamer L; Department of Neurology, Medical University of Graz, Graz, Austria.
  • Damulina A; Medical Image Analysis Center (MIAC) and Department of Biomedical Engineering, University of Basel, Basel, Switzerland.
  • Schmidt R; Department of Neurology, Medical University of Graz, Graz, Austria.
  • Stollberger R; Department of Neurology, Medical University of Graz, Graz, Austria.
  • Ropele S; Institute of Biomedical Imaging, Graz University of Technology, Graz, Austria.
  • Langkammer C; BioTechMed-Graz, Graz, Austria.
Sci Rep ; 12(1): 20254, 2022 11 24.
Article in En | MEDLINE | ID: mdl-36424437
Deep neural networks are increasingly used for neurological disease classification by MRI, but the networks' decisions are not easily interpretable by humans. Heat mapping by deep Taylor decomposition revealed that (potentially misleading) image features even outside of the brain tissue are crucial for the classifier's decision. We propose a regularization technique to train convolutional neural network (CNN) classifiers utilizing relevance-guided heat maps calculated online during training. The method was applied using T1-weighted MR images from 128 subjects with Alzheimer's disease (mean age = 71.9 ± 8.5 years) and 290 control subjects (mean age = 71.3 ± 6.4 years). The developed relevance-guided framework achieves higher classification accuracies than conventional CNNs but more importantly, it relies on less but more relevant and physiological plausible voxels within brain tissue. Additionally, preprocessing effects from skull stripping and registration are mitigated. With the interpretability of the decision mechanisms underlying CNNs, these results challenge the notion that unprocessed T1-weighted brain MR images in standard CNNs yield higher classification accuracy in Alzheimer's disease than solely atrophy.
Subject(s)

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Alzheimer Disease / Deep Learning Limits: Aged / Aged80 / Humans / Middle aged Language: En Journal: Sci Rep Year: 2022 Document type: Article Affiliation country: Austria Country of publication: United kingdom

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Alzheimer Disease / Deep Learning Limits: Aged / Aged80 / Humans / Middle aged Language: En Journal: Sci Rep Year: 2022 Document type: Article Affiliation country: Austria Country of publication: United kingdom