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Interpretable classification of Alzheimer’s disease pathologies with a convolutional neural network pipeline

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  • Ziqi Tang

    (University of California, San Francisco
    Tsinghua University)

  • Kangway V. Chuang

    (University of California, San Francisco)

  • Charles DeCarli

    (University of California-Davis School of Medicine)

  • Lee-Way Jin

    (University of California-Davis School of Medicine)

  • Laurel Beckett

    (University of California-Davis, Medical Science)

  • Michael J. Keiser

    (University of California, San Francisco)

  • Brittany N. Dugger

    (University of California-Davis School of Medicine)

Abstract

Neuropathologists assess vast brain areas to identify diverse and subtly-differentiated morphologies. Standard semi-quantitative scoring approaches, however, are coarse-grained and lack precise neuroanatomic localization. We report a proof-of-concept deep learning pipeline that identifies specific neuropathologies—amyloid plaques and cerebral amyloid angiopathy—in immunohistochemically-stained archival slides. Using automated segmentation of stained objects and a cloud-based interface, we annotate > 70,000 plaque candidates from 43 whole slide images (WSIs) to train and evaluate convolutional neural networks. Networks achieve strong plaque classification on a 10-WSI hold-out set (0.993 and 0.743 areas under the receiver operating characteristic and precision recall curve, respectively). Prediction confidence maps visualize morphology distributions at high resolution. Resulting network-derived amyloid beta (Aβ)-burden scores correlate well with established semi-quantitative scores on a 30-WSI blinded hold-out. Finally, saliency mapping demonstrates that networks learn patterns agreeing with accepted pathologic features. This scalable means to augment a neuropathologist’s ability suggests a route to neuropathologic deep phenotyping.

Suggested Citation

  • Ziqi Tang & Kangway V. Chuang & Charles DeCarli & Lee-Way Jin & Laurel Beckett & Michael J. Keiser & Brittany N. Dugger, 2019. "Interpretable classification of Alzheimer’s disease pathologies with a convolutional neural network pipeline," Nature Communications, Nature, vol. 10(1), pages 1-14, December.
  • Handle: RePEc:nat:natcom:v:10:y:2019:i:1:d:10.1038_s41467-019-10212-1
    DOI: 10.1038/s41467-019-10212-1
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    Cited by:

    1. Yi Bao & Zhou Huang & Han Wang & Ganmin Yin & Xiao Zhou & Yong Gao, 2023. "High‐resolution quantification of building stock using multi‐source remote sensing imagery and deep learning," Journal of Industrial Ecology, Yale University, vol. 27(1), pages 350-361, February.

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