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2019 16th International Bhurban Conference on Applied Sciences and Technology (IBCAST) 2019
DOI: 10.1109/ibcast.2019.8667221
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Classification of Breast Cancer Histology Images Using Transfer Learning

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Cited by 49 publications
(28 citation statements)
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“…Many of our predecessors in digital histopathologic image analysis have used transfer learning techniques, mostly by using weights from CNN architectures pre-trained on large generalized image datasets such as ImageNet [ 13 ], to reduce training time and to benefit from potential performance benefits [ 7 , 14 , 15 , 34 ]. Although there was a significant reduction in training time, the performance results were highly variable, even with the same pre-trained CNN architectures [ 4 ].…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…Many of our predecessors in digital histopathologic image analysis have used transfer learning techniques, mostly by using weights from CNN architectures pre-trained on large generalized image datasets such as ImageNet [ 13 ], to reduce training time and to benefit from potential performance benefits [ 7 , 14 , 15 , 34 ]. Although there was a significant reduction in training time, the performance results were highly variable, even with the same pre-trained CNN architectures [ 4 ].…”
Section: Discussionmentioning
confidence: 99%
“…Weights previously trained on large-scale datasets such as ImageNet [ 13 ] can be used to initiate training of the model on a different task. Such strategy known as transfer learning have reportedly shown to facilitate faster convergence and better prediction performance for CNNs in digital pathology [ 7 , 14 ]. For example, Nishio et al [ 15 ] have shown that VGG16 [ 16 ] with transfer learning performed better overall than same models trained without transfer learning.…”
Section: Introductionmentioning
confidence: 99%
“…In [129], transfer learning based on AlexNet, GoogleNet, and ResNet is used to classify the histopathological images of breast cancer. The result shows that ResNet has the highest accuracy, achieving 83.60% and 85.0% accuracy at the patch level and image level, respectively.…”
Section: ) ''Bioimaging 2015 Breast Histology Classification Challenmentioning
confidence: 99%
“…Ahmad et al [31] investigated the effect of transfer learning on a multiclass histopathology dataset, using three CNN architectures, namely the AlexNet, GoogleNet, and ResNet architectures. The dataset used was the BioImaging dataset, and the authors used image augmentation to increase the size of the dataset from 260 images to 72,800 images.…”
Section: Literature Reviewmentioning
confidence: 99%
“…As for other authors who used different histopathology datasets, Ahmad et al [31] reported an accuracy of 85% for the BioImaging dataset using a fine-tuned ResNet architecture, but the authors did not report the transfer learning technique they used to achieve this result. Sharma et al [17] achieved an accuracy of 92.6% and an AUC of 95.65% by using the VGG16 network with logistic regression as a classifier, but the authors did not investigate the role each block plays in the network performance.…”
mentioning
confidence: 96%