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  4. Deep transfer learning methods for colon cancer classification in confocal laser microscopy images
 
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Deep transfer learning methods for colon cancer classification in confocal laser microscopy images

Publikationstyp
Journal Article
Date Issued
2019-11-01
Sprache
English
Author(s)
Gessert, Nils Thorben  
Bengs, Marcel  
Wittig, Lukas  
Drömann, Daniel  
Keck, Tobias  
Schlaefer, Alexander  
Ellebrecht, David B.  
Institut
Medizintechnische Systeme E-1  
TORE-URI
http://hdl.handle.net/11420/4302
Journal
International journal of computer assisted radiology and surgery  
Volume
14
Issue
11
Start Page
1837
End Page
1845
Citation
International Journal of Computer Assisted Radiology and Surgery 11 (14): 1837-1845 (2019-11-01)
Publisher DOI
10.1007/s11548-019-02004-1
Scopus ID
2-s2.0-85067664212
Purpose: The gold standard for colorectal cancer metastases detection in the peritoneum is histological evaluation of a removed tissue sample. For feedback during interventions, real-time in vivo imaging with confocal laser microscopy has been proposed for differentiation of benign and malignant tissue by manual expert evaluation. Automatic image classification could improve the surgical workflow further by providing immediate feedback. Methods: We analyze the feasibility of classifying tissue from confocal laser microscopy in the colon and peritoneum. For this purpose, we adopt both classical and state-of-the-art convolutional neural networks to directly learn from the images. As the available dataset is small, we investigate several transfer learning strategies including partial freezing variants and full fine-tuning. We address the distinction of different tissue types, as well as benign and malignant tissue. Results: We present a thorough analysis of transfer learning strategies for colorectal cancer with confocal laser microscopy. In the peritoneum, metastases are classified with an AUC of 97.1, and in the colon the primarius is classified with an AUC of 73.1. In general, transfer learning substantially improves performance over training from scratch. We find that the optimal transfer learning strategy differs for models and classification tasks. Conclusions: We demonstrate that convolutional neural networks and transfer learning can be used to identify cancer tissue with confocal laser microscopy. We show that there is no generally optimal transfer learning strategy and model as well as task-specific engineering is required. Given the high performance for the peritoneum, even with a small dataset, application for intraoperative decision support could be feasible.
Subjects
Colon cancer
Confocal laser microscopy
Convolution neural network
Transfer learning
DDC Class
000: Allgemeines, Wissenschaft
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