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

Ziqi Tang, View ORCID ProfileKangway V. Chuang, Charles DeCarli, View ORCID ProfileLee-Way Jin, View ORCID ProfileLaurel Beckett, View ORCID ProfileMichael J. Keiser, View ORCID ProfileBrittany N. Dugger
doi: https://doi.org/10.1101/454793
Ziqi Tang
1Department of Pharmaceutical Chemistry, Department of Bioengineering and Therapeutic Sciences, Institute for Neurodegenerative Diseases, and Bakar Institute for Computational Health Sciences, University of California, San Francisco, San Francisco, CA, USA
2School of Pharmaceutical Sciences, Tsinghua University, Beijing, China
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Kangway V. Chuang
1Department of Pharmaceutical Chemistry, Department of Bioengineering and Therapeutic Sciences, Institute for Neurodegenerative Diseases, and Bakar Institute for Computational Health Sciences, University of California, San Francisco, San Francisco, CA, USA
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Charles DeCarli
3Department of Neurology, University of California - Davis School of Medicine, Davis, CA, USA
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Lee-Way Jin
4Department of Pathology and Laboratory Medicine, University of California - Davis School of Medicine, Davis, CA, USA
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Laurel Beckett
5Department of Public Health Sciences, University of California - Davis, Davis, CA, USA
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Michael J. Keiser
1Department of Pharmaceutical Chemistry, Department of Bioengineering and Therapeutic Sciences, Institute for Neurodegenerative Diseases, and Bakar Institute for Computational Health Sciences, University of California, San Francisco, San Francisco, CA, USA
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  • For correspondence: keiser@keiserlab.org bndugger@ucdavis.edu
Brittany N. Dugger
4Department of Pathology and Laboratory Medicine, University of California - Davis School of Medicine, Davis, CA, USA
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  • For correspondence: keiser@keiserlab.org bndugger@ucdavis.edu
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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 identifying 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 annotated >70,000 plaque candidates from 43 whole slide images (WSIs) to train and evaluate convolutional neural networks. Networks achieved 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 visualized morphology distributions for WSIs at high resolution. Resulting plaque-burden scores correlated well with established semi-quantitative scores on a 30-WSI blinded hold-out. Finally, saliency mapping demonstrated that networks learned patterns agreeing with accepted pathologic features. This scalable means to augment a neuropathologist’s ability may suggest a route to neuropathologic deep phenotyping.

  • List of Abbreviations

    Aβ
    Amyloid-beta
    AD
    Alzheimer’s disease
    AUPRC
    area under the precision-recall curve
    AUROC
    area under the receiver operator characteristic
    CERAD
    Consortium to Establish a Registry for Alzheimer’s Disease
    CNN
    convolutional neural network
    CAA
    cerebral amyloid angiopathy
    Guided Grad-CAM
    Guided Gradient-weighted Class Activation Mapping
    HSV
    hue-saturation-value
    IHC
    immunohistochemical
    IQR
    interquartile range
    LCH
    lightness-chroma-hue
    MPP
    microns per pixel
    RGB
    red-green-blue
    SQL
    standardized query language
    WSI
    whole slide image
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    Posted March 11, 2019.
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    Interpretable classification of Alzheimer’s disease pathologies with a convolutional neural network pipeline
    Ziqi Tang, Kangway V. Chuang, Charles DeCarli, Lee-Way Jin, Laurel Beckett, Michael J. Keiser, Brittany N. Dugger
    bioRxiv 454793; doi: https://doi.org/10.1101/454793
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    Interpretable classification of Alzheimer’s disease pathologies with a convolutional neural network pipeline
    Ziqi Tang, Kangway V. Chuang, Charles DeCarli, Lee-Way Jin, Laurel Beckett, Michael J. Keiser, Brittany N. Dugger
    bioRxiv 454793; doi: https://doi.org/10.1101/454793

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