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Same same but different: a web-based deep learning application for the histopathologic distinction of cortical malformations

Authors :
Michael Scholz
Figen Soylemezoglu
I. Bluemcke
Seungjoon Kim
Rita Garbelli
Stefanie Kuerten
J. Kubach
Pitt Niehusmann
Roland Coras
Hajime Miyata
Sebastian S. Roeder
Mrinalini Honavar
Verena Schropp
Axel Brehmer
Alexander Popp
Philip Eichhorn
Samir Jabari
S. Vilz
N. Christoph
S. Walcher
M. Eckstein
Katja Kobow
A. Muhlebner-Fahrngruber
Eleonora Aronica
Fabio Rogerio
Publication Year :
2019
Publisher :
Cold Spring Harbor Laboratory, 2019.

Abstract

We trained a convolutional neural network (CNN) to classify H.E. stained microscopic images of focal cortical dysplasia type IIb (FCD IIb) and cortical tuber of tuberous sclerosis complex (TSC). Both entities are distinct subtypes of human malformations of cortical development that share histopathological features consisting of neuronal dyslamination with dysmorphic neurons and balloon cells. The microscopic review of routine stainings of such surgical specimens remains challenging. A digital processing pipeline was developed for a series of 56 FCD IIb and TSC cases to obtain 4000 regions of interest and 200.000 sub-samples with different zoom and rotation angles to train a CNN. Our best performing network achieved 91% accuracy and 0.88 AUCROC (area under the receiver operating characteristic curve) on a hold-out test-set. Guided gradient-weighted class activation maps visualized morphological features used by the CNN to distinguish both entities. We then developed a web application, which combined the visualization of whole slide images (WSI) with the possibility for classification between FCD IIb and TSC on demand by our pretrained and build-in CNN classifier. This approach might help to introduce deep learning applications for the histopathologic diagnosis of rare and difficult-to-classify brain lesions.

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....e39cfee577b2f884dd36ec04f7b053dd
Full Text :
https://doi.org/10.1101/804682