2018
DOI: 10.1007/978-3-319-93000-8_103
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Assessment of Breast Cancer Histology Using Densely Connected Convolutional Networks

Abstract: Breast cancer is the most frequently diagnosed cancer and leading cause of cancer-related death among females worldwide. In this article, we investigate the applicability of densely connected convolutional neural networks to the problems of histology image classification and whole slide image segmentation in the area of computer-aided diagnoses for breast cancer. To this end, we study various approaches for transfer learning and apply them to the data set from the 2018 grand challenge on breast cancer histolog… Show more

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Cited by 39 publications
(31 citation statements)
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“…The resulting output map was then refined using a ResNet34 (He et al, 2016) to separate tissue regions from the background and regions with artifacts, reducing potential misclassifications due to ink and other artifacts in whole slide images. (Kohl et al, 2018) used an ImageNet pretrained DenseNet (Huang et al, 2017) to approach both parts of the challenge. For Part A, the 400 training images were downsampled by a factor 10 and normalized to zero mean and unit standard deviation.…”
Section: Marami Et Al (Team 16)mentioning
confidence: 99%
“…The resulting output map was then refined using a ResNet34 (He et al, 2016) to separate tissue regions from the background and regions with artifacts, reducing potential misclassifications due to ink and other artifacts in whole slide images. (Kohl et al, 2018) used an ImageNet pretrained DenseNet (Huang et al, 2017) to approach both parts of the challenge. For Part A, the 400 training images were downsampled by a factor 10 and normalized to zero mean and unit standard deviation.…”
Section: Marami Et Al (Team 16)mentioning
confidence: 99%
“…While digital pathology algorithms for lung-cancer WSIs are not deeply covered in literature, there is a variety of publications regarding breast cancer detection [9], grading [10, 11], and epithelial vs. stroma classification [12]. Besides the differences in organ, technical deviations exist, as [9] solves a binary classification problem (versus our eight-class problem) and [10, 11] work with ordinal data. Similar to our approach, [12] deploys a two-step processing involving deep learning feature generation and conventional classification.…”
Section: Discussionmentioning
confidence: 99%
“…Accuracy Methods Accuracy Vgg19 [10] 0.925 Inception-v3 [10] 0.913 DenseNet-161 [10] 0.940 Model Fusion [13] 0.925 AlexNet [12] 0.813 ResNet-152 [2] 0.830 RFSVM-All [2] 0.930 Ensemble [15] 0.825 Refined Ensemble [15] 0.875 Two-stage network [7] 0.850 Hybrid deep network [20] 0.913 Our method 0.970…”
Section: Methodsmentioning
confidence: 99%