Tubule-U-Net: a novel dataset and deep learning-based tubule segmentation framework in whole slide images of breast cancer

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作者
Eren Tekin
Çisem Yazıcı
Huseyin Kusetogullari
Fatma Tokat
Amir Yavariabdi
Leonardo Obinna Iheme
Sercan Çayır
Engin Bozaba
Gizem Solmaz
Berkan Darbaz
Gülşah Özsoy
Samet Ayaltı
Cavit Kerem Kayhan
Ümit İnce
Burak Uzel
机构
[1] Virasoft Corporation,Artificial Intelligence Research Team
[2] Virasoft Corporation,Research and Development Team
[3] Blekinge Institute of Technology,Department of Computer Science
[4] Heriot-Watt University,Department of Computer Science
[5] Acibadem University Teaching Hospital,Pathology Department
[6] KTO Karatay University,Department of Mechatronics Engineering
[7] Nisantasi University,Department of Biotechnology
[8] Çamlık Hospital,Internal Medicine Department
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摘要
The tubule index is a vital prognostic measure in breast cancer tumor grading and is visually evaluated by pathologists. In this paper, a computer-aided patch-based deep learning tubule segmentation framework, named Tubule-U-Net, is developed and proposed to segment tubules in Whole Slide Images (WSI) of breast cancer. Moreover, this paper presents a new tubule segmentation dataset consisting of 30820 polygonal annotated tubules in 8225 patches. The Tubule-U-Net framework first uses a patch enhancement technique such as reflection or mirror padding and then employs an asymmetric encoder-decoder semantic segmentation model. The encoder is developed in the model by various deep learning architectures such as EfficientNetB3, ResNet34, and DenseNet161, whereas the decoder is similar to U-Net. Thus, three different models are obtained, which are EfficientNetB3-U-Net, ResNet34-U-Net, and DenseNet161-U-Net. The proposed framework with three different models, U-Net, U-Net++, and Trans-U-Net segmentation methods are trained on the created dataset and tested on five different WSIs. The experimental results demonstrate that the proposed framework with the EfficientNetB3 model trained on patches obtained using the reflection padding and tested on patches with overlapping provides the best segmentation results on the test data and achieves 95.33%, 93.74%, and 90.02%, dice, recall, and specificity scores, respectively.
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