4.6 Article

Diagnosis of Alzheimer Disease and Tauopathies on Whole-Slide Histopathology Images Using a Weakly Supervised Deep Learning Algorithm

Journal

LABORATORY INVESTIGATION
Volume 103, Issue 6, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.labinv.2023.100127

Keywords

Alzheimer disease; CLAM; neuropathology; tauopathy; Grad-CAM; weakly supervised deep learning

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Neuropathologic assessment during autopsy is the gold standard for diagnosing neurodegenerative disorders. In this study, a weakly supervised deep learning-based approach called clustering-constrained-attention multiple-instance learning (CLAM) was used to develop a pipeline for diagnosing Alzheimer's disease (AD) and other tauopathies. The multiattention-branch CLAM model achieved the highest diagnostic accuracy for classifying neurodegenerative disorders. This study supports the feasibility of deep learning-based approaches for the classification of neurodegenerative disorders on whole-slide images (WSIs).
Neuropathologic assessment during autopsy is the gold standard for diagnosing neurodegenerative disorders. Neurodegenerative conditions, such as Alzheimer disease (AD) neuropathological change, are a continuous process from normal aging rather than categorical; therefore, diagnosing neurodegenerative disorders is a complicated task. We aimed to develop a pipeline for diagnosing AD and other tauopathies, including corticobasal degeneration (CBD), globular glial tauopathy, Pick disease, and progressive supranuclear palsy. We used a weakly supervised deep learning-based approach called clustering-constrained-attention multiple-instance learning (CLAM) on the whole-slide images (WSIs) of patients with AD (n = 30), CBD (n = 20), globular glial tauopathy (n = 10), Pick disease (n = 20), and progressive supranuclear palsy (n = 20), as well as nontauopathy controls (n = 21). Three sections (A: motor cortex; B: cingulate gyrus and superior frontal gyrus; and C: corpus striatum) that had been immunostained for phosphorylated tau were scanned and converted to WSIs. We evaluated 3 models (classic multiple-instance learning, singleattention-branch CLAM, and multiattention-branch CLAM) using 5-fold cross-validation. Attention-based interpretation analysis was performed to identify the morphologic features contributing to the classification. Within highly attended regions, we also augmented gradient-weighted class activation mapping to the model to visualize cellular-level evidence of the model's decisions. The multiattention-branch CLAM model using section B achieved the highest area under the curve (0.970 +/- 0.037) and diagnostic accuracy (0.873 +/- 0.087). A heatmap showed the highest attention in the gray matter of the superior frontal gyrus in patients with AD and the white matter of the cingulate gyrus in patients with CBD. Gradient-weighted class activation mapping showed the highest attention in characteristic tau lesions for each disease (eg, numerous tau-positive threads in the white matter inclusions for CBD). Our findings support the feasibility of deep learning-based approaches for the classification of neurodegenerative disorders on WSIs. Further investigation of this method, focusing on clinicopathologic correlations, is warranted. (c) 2023 United States & Canadian Academy of Pathology. Published by Elsevier Inc. All rights reserved.

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