Staining Invariant Features for Improving Generalization of Deep Convolutional Neural Networks in Computational Pathology

被引:59
作者
Otalora, Sebastian [1 ,2 ]
Atzori, Manfredo [1 ]
Andrearczyk, Vincent [1 ]
Khan, Amjad [1 ,3 ]
Mueller, Henning [1 ,4 ]
机构
[1] HES SO Univ Appl Sci & Arts Western Switzerland, Inst Informat Syst, Sierre, Switzerland
[2] Univ Geneva, Comp Sci Ctr CUI, Geneva, Switzerland
[3] Univ Bern, Inst Pathol, Bern, Switzerland
[4] Univ Geneva, Med Fac, Geneva, Switzerland
基金
欧盟地平线“2020”;
关键词
staining normalization; adversarial neural networks; digital pathology; color augmentation; color normalization; domain shift; COLOR NORMALIZATION; IMAGES;
D O I
10.3389/fbioe.2019.00198
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
One of the main obstacles for the implementation of deep convolutional neural networks (DCNNs) in the clinical pathology workflow is their low capability to overcome variability in slide preparation and scanner configuration, that leads to changes in tissue appearance. Some of these variations may not be not included in the training data, which means that the models have a risk to not generalize well. Addressing such variations and evaluating them in reproducible scenarios allows understanding of when the models generalize better, which is crucial for performance improvements and better DCNN models. Staining normalization techniques (often based on color deconvolution and deep learning) and color augmentation approaches have shown improvements in the generalization of the classification tasks for several tissue types. Domain-invariant training of DCNN's is also a promising technique to address the problem of training a single model for different domains, since it includes the source domain information to guide the training toward domain-invariant features, achieving state-of-the-art results in classification tasks. In this article, deep domain adaptation in convolutional networks (DANN) is applied to computational pathology and compared with widely used staining normalization and color augmentation methods in two challenging classification tasks. The classification tasks rely on two openly accessible datasets, targeting Gleason grading in prostate cancer, and mitosis classification in breast tissue. The benchmark of the different techniques and their combination in two DCNN architectures allows us to assess the generalization abilities and advantages of each method in the considered classification tasks. The code for reproducing our experiments and preprocessing the data is publicly available(1). Quantitative and qualitative results show that the use of DANN helps model generalization to external datasets. The combination of several techniques to manage color heterogeneity suggests that several methods together, such as color augmentation methods with DANN training, can generalize even further. The results do not show a single best technique among the considered methods, even when combining them. However, color augmentation and DANN training obtain most often the best results (alone or combined with color normalization and color augmentation). The statistical significance of the results and the embeddings visualizations provide useful insights to design DCNN that generalizes to unseen staining appearances. Furthermore, in this work, we release for the first time code for DANN evaluation in open access datasets for computational pathology. This work opens the possibility for further research on using DANN models together with techniques that can overcome the tissue preparation differences across datasets to tackle limited generalization.
引用
收藏
页数:13
相关论文
共 39 条
[31]  
Shaban M. Tarek, 2018, ARXIV180401601, P1
[32]   Whole-Slide Mitosis Detection in H&E Breast Histology Using PHH3 as a Reference to Train Distilled Stain-Invariant Convolutional Networks [J].
Tellez, David ;
Balkenhol, Maschenka ;
Otte-Holler, Irene ;
van de Loo, Rob ;
Vogels, Rob ;
Bult, Peter ;
Wauters, Carla ;
Vreuls, Willem ;
Mol, Suzanne ;
Karssemeijer, Nico ;
Litjens, Geert ;
van der Laak, Jeroen ;
Ciompi, Francesco .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2018, 37 (09) :2126-2136
[33]   H&E stain augmentation improves generalization of convolutional networks for histopathological mitosis detection [J].
Tellez, David ;
Balkenhol, Maschenka ;
Karssemeijer, Nico ;
Litjens, Geert ;
van der Laak, Jeroen ;
Ciompi, Francesco .
MEDICAL IMAGING 2018: DIGITAL PATHOLOGY, 2018, 10581
[34]  
Tzeng E., 2017, P IEEE C COMPUTER VI, P7167
[35]   Structure-Preserving Color Normalization and Sparse Stain Separation for Histological Images [J].
Vahadane, Abhishek ;
Peng, Tingying ;
Sethi, Amit ;
Albarqouni, Shadi ;
Wang, Lichao ;
Baust, Maximilian ;
Steiger, Katja ;
Schlitter, Anna Melissa ;
Esposito, Irene ;
Navab, Nassir .
IEEE TRANSACTIONS ON MEDICAL IMAGING, 2016, 35 (08) :1962-1971
[36]   Segmentation of glandular epithelium in colorectal tumours to automatically compartmentalise IHC biomarker quantification: A deep learning approach [J].
Van Eycke, Yves-Remi ;
Balsat, Cedric ;
Verset, Laurine ;
Debeir, Olivier ;
Salmon, Isabelle ;
Decaestecker, Christine .
MEDICAL IMAGE ANALYSIS, 2018, 49 :35-45
[37]   Image processing in digital pathology: an opportunity to solve inter-batch variability of immunohistochemical staining [J].
Van Eycke, Yves-Remi ;
Allard, Justine ;
Salmon, Isabelle ;
Debeir, Olivier ;
Decaestecker, Christine .
SCIENTIFIC REPORTS, 2017, 7 :1-15
[38]   Predicting breast tumor proliferation from whole-slide images: The TUPAC16 challenge [J].
Veta, Mitko ;
Heng, Yujing J. ;
Stathonikos, Nikolas ;
Bejnordi, Babak Ehteshami ;
Beca, Francisco ;
Wollmann, Thomas ;
Rohr, Karl ;
Shah, Manan A. ;
Wang, Dayong ;
Rousson, Mikael ;
Hedlund, Martin ;
Tellez, David ;
Ciompi, Francesco ;
Zerhouni, Erwan ;
Lanyi, David ;
Viana, Matheus ;
Kovalev, Vassili ;
Liauchuk, Vitali ;
Phoulady, Hady Ahmady ;
Qaiser, Talha ;
Graham, Simon ;
Rajpoot, Nasir ;
Sjoblom, Erik ;
Molin, Jesper ;
Paeng, Kyunghyun ;
Hwang, Sangheum ;
Park, Sunggyun ;
Jia, Zhipeng ;
Chang, Eric I-Chao ;
Xu, Yan ;
Beck, Andrew H. ;
van Diest, Paul J. ;
Pluim, Josien P. W. .
MEDICAL IMAGE ANALYSIS, 2019, 54 :111-121
[39]   Assessment of algorithms for mitosis detection in breast cancer histopathology images [J].
Veta, Mitko ;
van Diest, Paul J. ;
Willems, Stefan M. ;
Wang, Haibo ;
Madabhushi, Anant ;
Cruz-Roa, Angel ;
Gonzalez, Fabio ;
Larsen, Anders B. L. ;
Vestergaard, Jacob S. ;
Dahl, Anders B. ;
Ciresan, Dan C. ;
Schmidhuber, Juergen ;
Giusti, Alessandro ;
Gambardella, Luca M. ;
Tek, F. Boray ;
Walter, Thomas ;
Wang, Ching-Wei ;
Kondo, Satoshi ;
Matuszewski, Bogdan J. ;
Precioso, Frederic ;
Snell, Violet ;
Kittler, Josef ;
de Campos, Teofilo E. ;
Khan, Adnan M. ;
Rajpoot, Nasir M. ;
Arkoumani, Evdokia ;
Lacle, Miangela M. ;
Viergever, Max A. ;
Pluim, Josien P. W. .
MEDICAL IMAGE ANALYSIS, 2015, 20 (01) :237-248