4.7 Article

Patch individual filter layers in CNNs to harness the spatial homogeneity of neuroimaging data

Journal

SCIENTIFIC REPORTS
Volume 11, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41598-021-03785-9

Keywords

-

Funding

  1. German Research Foundation (DFG) [389563835, 402170461-TRR 265, 414984028-CRC 1404]
  2. Deutsche Multiple Sklerose Gesellschaft (DMSG) Bundesverband e.V.
  3. Brain & Behavior Research Foundation (NARSAD Young Investigator Grant)
  4. Manfred and Ursula-Muller Stiftung
  5. Charite-Universitatsmedizin Berlin
  6. Alzheimer's Disease Neuroimaging Initiative (ADNI) (National Institutes of Health) [U01 AG024904]
  7. DOD ADNI (Department of Defense) [W81XWH-12-2-0012]
  8. National Institute on Aging
  9. National Institute of Biomedical Imaging and Bioengineering
  10. AbbVie
  11. Alzheimer's Association
  12. Alzheimer's Drug Discovery Foundation
  13. Araclon Biotech
  14. BioClinica, Inc.
  15. Biogen
  16. Bristol-Myers Squibb Company
  17. CereSpir, Inc.
  18. Cogstate
  19. Eisai Inc.
  20. Elan Pharmaceuticals, Inc.
  21. Eli Lilly and Company
  22. EuroImmun
  23. F. Hoffmann-La Roche Ltd and its affiliated company Genentech, Inc.
  24. Fujirebio
  25. GE Healthcare
  26. IXICO Ltd.
  27. Janssen Alzheimer Immunotherapy Research & Development, LLC.
  28. Johnson & Johnson Pharmaceutical Research & Development LLC.
  29. Lumosity
  30. Lundbeck
  31. Merck Co., Inc.
  32. Meso Scale Diagnostics, LLC.
  33. NeuroRx Research
  34. Neurotrack Technologies
  35. Novartis Pharmaceuticals Corporation
  36. Pfizer Inc.
  37. Piramal Imaging
  38. Servier
  39. Takeda Pharmaceutical Company
  40. Transition Therapeutics
  41. Canadian Institutes of Health Research

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A new CNN architecture is proposed to combine hierarchical abstraction idea with spatial homogeneity in neuroimaging data, introducing patch individual filters (PIF) for faster learning of abstract features specific to regions. Results show that CNNs with PIF layers converge faster and achieve better performance than standard CNNs and patch-based CNNs for sex classification, Alzheimer's disease detection, and multiple sclerosis detection tasks on different data sets.
Convolutional neural networks (CNNs)-as a type of deep learning-have been specifically designed for highly heterogeneous data, such as natural images. Neuroimaging data, however, is comparably homogeneous due to (1) the uniform structure of the brain and (2) additional efforts to spatially normalize the data to a standard template using linear and non-linear transformations. To harness spatial homogeneity of neuroimaging data, we suggest here a new CNN architecture that combines the idea of hierarchical abstraction in CNNs with a prior on the spatial homogeneity of neuroimaging data. Whereas early layers are trained globally using standard convolutional layers, we introduce patch individual filters (PIF) for higher, more abstract layers. By learning filters in individual latent space patches without sharing weights, PIF layers can learn abstract features faster and specific to regions. We thoroughly evaluated PIF layers for three different tasks and data sets, namely sex classification on UK Biobank data, Alzheimer's disease detection on ADNI data and multiple sclerosis detection on private hospital data, and compared it with two baseline models, a standard CNN and a patch-based CNN. We obtained two main results: First, CNNs using PIF layers converge consistently faster, measured in run time in seconds and number of iterations than both baseline models. Second, both the standard CNN and the PIF model outperformed the patch-based CNN in terms of balanced accuracy and receiver operating characteristic area under the curve (ROC AUC) with a maximal balanced accuracy (ROC AUC) of 94.21% (99.10%) for the sex classification task (PIF model), and 81.24% and 80.48% (88.89% and 87.35%) respectively for the Alzheimer's disease and multiple sclerosis detection tasks (standard CNN model). In conclusion, we demonstrated that CNNs using PIF layers result in faster convergence while obtaining the same predictive performance as a standard CNN. To the best of our knowledge, this is the first study that introduces a prior in form of an inductive bias to harness spatial homogeneity of neuroimaging data.

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