Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer Learning

Medulloblastoma (MB) is a primary central nervous system tumor and the most common malignant brain cancer among children. Neuropathologists perform microscopic inspection of histopathological tissue slides under a microscope to assess the severity of the tumor. This is a timeconsuming task and often...

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Main Authors: Bengs M., Pant S., Bockmayr M., Schüller U., Schlaefer A.
Format: Article
Language:English
Published: De Gruyter 2021-08-01
Series:Current Directions in Biomedical Engineering
Subjects:
Online Access:https://doi.org/10.1515/cdbme-2021-1014
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spelling doaj-712c060f978b427eae6d0c94280d8c782021-10-03T07:42:27ZengDe GruyterCurrent Directions in Biomedical Engineering2364-55042021-08-0171636610.1515/cdbme-2021-1014Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer LearningBengs M.0Pant S.1Bockmayr M.2Schüller U.3Schlaefer A.4Institute of Medical Technology and Intelligent Systems, Hamburg University of Technology,Hamburg, GermanyInstitute of Medical Technology and Intelligent Systems, Hamburg University of Technology,Hamburg, GermanyDepartment of Pediatric Hematology and Oncology, University Medical Center Hamburg-Eppendorf, Martinistraße 52,Hamburg20246, GermanyDepartment of Pediatric Hematology and Oncology, University Medical Center Hamburg-Eppendorf, Martinistraße 52,Hamburg20246, GermanyInstitute of Medical Technology and Intelligent Systems, Hamburg University of Technology,Hamburg, GermanyMedulloblastoma (MB) is a primary central nervous system tumor and the most common malignant brain cancer among children. Neuropathologists perform microscopic inspection of histopathological tissue slides under a microscope to assess the severity of the tumor. This is a timeconsuming task and often infused with observer variability. Recently, pre-trained convolutional neural networks (CNN) have shown promising results for MB subtype classification. Typically, high-resolution images are divided into smaller tiles for classification, while the size of the tiles has not been systematically evaluated. We study the impact of tile size and input strategy and classify the two major histopathological subtypes-Classic and Desmoplastic/Nodular. To this end, we use recently proposed EfficientNets and evaluate tiles with increasing size combined with various downsampling scales. Our results demonstrate using large input tiles pixels followed by intermediate downsampling and patch cropping significantly improves MB classification performance. Our top-performing method achieves the AUC-ROC value of 90.90% compared to 84.53% using the previous approach with smaller input tiles.https://doi.org/10.1515/cdbme-2021-1014transfer learningconvolutional neural networksdigital pathologyhistopathologymedulloblastoma
collection DOAJ
language English
format Article
sources DOAJ
author Bengs M.
Pant S.
Bockmayr M.
Schüller U.
Schlaefer A.
spellingShingle Bengs M.
Pant S.
Bockmayr M.
Schüller U.
Schlaefer A.
Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer Learning
Current Directions in Biomedical Engineering
transfer learning
convolutional neural networks
digital pathology
histopathology
medulloblastoma
author_facet Bengs M.
Pant S.
Bockmayr M.
Schüller U.
Schlaefer A.
author_sort Bengs M.
title Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer Learning
title_short Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer Learning
title_full Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer Learning
title_fullStr Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer Learning
title_full_unstemmed Multi-Scale Input Strategies for Medulloblastoma Tumor Classification using Deep Transfer Learning
title_sort multi-scale input strategies for medulloblastoma tumor classification using deep transfer learning
publisher De Gruyter
series Current Directions in Biomedical Engineering
issn 2364-5504
publishDate 2021-08-01
description Medulloblastoma (MB) is a primary central nervous system tumor and the most common malignant brain cancer among children. Neuropathologists perform microscopic inspection of histopathological tissue slides under a microscope to assess the severity of the tumor. This is a timeconsuming task and often infused with observer variability. Recently, pre-trained convolutional neural networks (CNN) have shown promising results for MB subtype classification. Typically, high-resolution images are divided into smaller tiles for classification, while the size of the tiles has not been systematically evaluated. We study the impact of tile size and input strategy and classify the two major histopathological subtypes-Classic and Desmoplastic/Nodular. To this end, we use recently proposed EfficientNets and evaluate tiles with increasing size combined with various downsampling scales. Our results demonstrate using large input tiles pixels followed by intermediate downsampling and patch cropping significantly improves MB classification performance. Our top-performing method achieves the AUC-ROC value of 90.90% compared to 84.53% using the previous approach with smaller input tiles.
topic transfer learning
convolutional neural networks
digital pathology
histopathology
medulloblastoma
url https://doi.org/10.1515/cdbme-2021-1014
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AT schulleru multiscaleinputstrategiesformedulloblastomatumorclassificationusingdeeptransferlearning
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