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  4. Medulloblastoma tumor classification using deep transfer learning with multi-scale EfficientNets
 
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Medulloblastoma tumor classification using deep transfer learning with multi-scale EfficientNets

Publikationstyp
Conference Paper
Date Issued
2021-02
Sprache
English
Author(s)
Bengs, Marcel  
Bockmayr, Michael  
Schüller, Ulrich  
Schlaefer, Alexander  
Institut
Medizintechnische und Intelligente Systeme E-1  
TORE-URI
http://hdl.handle.net/11420/9201
First published in
Progress in Biomedical Optics and Imaging - Proceedings of SPIE  
Number in series
11603
Volume
11603
Article Number
116030D
Citation
Medical Imaging: Digital Pathology (2021)
Publisher DOI
10.1117/12.2580717
Scopus ID
2-s2.0-85103300797
Medulloblastoma (MB) is the most common malignant brain tumor in childhood. The diagnosis is generally based on the microscopic evaluation of histopathological tissue slides. However, visual-only assessment of histopathological patterns is a tedious and time-consuming task and is also affected by observer variability. Hence, automated MB tumor classification could assist pathologists by promoting consistency and robust quantification. Recently, convolutional neural networks (CNNs) have been proposed for this task, while transfer learning has shown promising results. In this work, we propose an end-to-end MB tumor classification and explore transfer learning with various input sizes and matching network dimensions. We focus on differentiating between the histological subtypes classic and desmoplastic/nodular. For this purpose, we systematically evaluate recently proposed EfficientNets, which uniformly scale all dimensions of a CNN. Using a data set with 161 cases, we demonstrate that pre-trained EfficientNets with larger input resolutions lead to significant performance improvements compared to commonly used pre-trained CNN architectures. Also, we highlight the importance of transfer learning, when using such large architectures. Overall, our best performing method achieves an F1-Score of 80.1%.
DDC Class
000: Allgemeines, Wissenschaft
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