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Artificial intelligence in neuropathology: deep learning-based assessment of tauopathy

Authors :
Signaevsky, Maxim
Prastawa, Marcel
Farrell, Kurt
Tabish, Nabil
Baldwin, Elena
Han, Natalia
Iida, Megan A.
Koll, John
Bryce, Clare
Purohit, Dushyant
Haroutunian, Vahram
McKee, Ann C.
Stein, Thor D.
White, Charles L.
Walker, Jamie
Richardson, Timothy E.
Hanson, Russell
Donovan, Michael J.
Cordon-Cardo, Carlos
Zeineh, Jack
Fernandez, Gerardo
Crary, John F.
Source :
Laboratory Investigation; July 2019, Vol. 99 Issue: 7 p1019-1029, 11p
Publication Year :
2019

Abstract

Accumulation of abnormal tau in neurofibrillary tangles (NFT) occurs in Alzheimer disease (AD) and a spectrum of tauopathies. These tauopathies have diverse and overlapping morphological phenotypes that obscure classification and quantitative assessments. Recently, powerful machine learning-based approaches have emerged, allowing the recognition and quantification of pathological changes from digital images. Here, we applied deep learning to the neuropathological assessment of NFT in postmortem human brain tissue to develop a classifier capable of recognizing and quantifying tau burden. The histopathological material was derived from 22 autopsy brains from patients with tauopathies. We used a custom web-based informatics platform integrated with an in-house information management system to manage whole slide images (WSI) and human expert annotations as ground truth. We utilized fully annotated regions to train a deep learning fully convolutional neural network (FCN) implemented in PyTorch against the human expert annotations. We found that the deep learning framework is capable of identifying and quantifying NFT with a range of staining intensities and diverse morphologies. With our FCN model, we achieved high precision and recall in naive WSI semantic segmentation, correctly identifying tangle objects using a SegNet model trained for 200 epochs. Our FCN is efficient and well suited for the practical application of WSIs with average processing times of 45 min per WSI per GPU, enabling reliable and reproducible large-scale detection of tangles. We measured performance on test data of 50 pre-annotated regions on eight naive WSI across various tauopathies, resulting in the recall, precision, and an F1 score of 0.92, 0.72, and 0.81, respectively. Machine learning is a useful tool for complex pathological assessment of AD and other tauopathies. Using deep learning classifiers, we have the potential to integrate cell- and region-specific annotations with clinical, genetic, and molecular data, providing unbiased data for clinicopathological correlations that will enhance our knowledge of the neurodegeneration.

Details

Language :
English
ISSN :
00236837 and 15300307
Volume :
99
Issue :
7
Database :
Supplemental Index
Journal :
Laboratory Investigation
Publication Type :
Periodical
Accession number :
ejs62074425
Full Text :
https://doi.org/10.1038/s41374-019-0202-4