Hierarchical Deep Convolutional Neural Networks for Multi-category
Diagnosis of Gastrointestinal Disorders on Histopathological Images
- URL: http://arxiv.org/abs/2005.03868v2
- Date: Fri, 7 Aug 2020 01:28:59 GMT
- Title: Hierarchical Deep Convolutional Neural Networks for Multi-category
Diagnosis of Gastrointestinal Disorders on Histopathological Images
- Authors: Rasoul Sali, Sodiq Adewole, Lubaina Ehsan, Lee A. Denson, Paul Kelly,
Beatrice C. Amadi, Lori Holtz, Syed Asad Ali, Sean R. Moore, Sana Syed,
Donald E. Brown
- Abstract summary: We propose to apply the hierarchical classification of biopsy images from different parts of the GI tract and the receptive diseases within each.
The proposed model was evaluated using an independent set of image patches from 373 whole slide images.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deep convolutional neural networks(CNNs) have been successful for a wide
range of computer vision tasks, including image classification. A specific area
of the application lies in digital pathology for pattern recognition in the
tissue-based diagnosis of gastrointestinal(GI) diseases. This domain can
utilize CNNs to translate histopathological images into precise diagnostics.
This is challenging since these complex biopsies are heterogeneous and require
multiple levels of assessment. This is mainly due to structural similarities in
different parts of the GI tract and shared features among different gut
diseases. Addressing this problem with a flat model that assumes all classes
(parts of the gut and their diseases) are equally difficult to distinguish
leads to an inadequate assessment of each class. Since the hierarchical model
restricts classification error to each sub-class, it leads to a more
informative model than a flat model. In this paper, we propose to apply the
hierarchical classification of biopsy images from different parts of the GI
tract and the receptive diseases within each. We embedded a class hierarchy
into the plain VGGNet to take advantage of its layers' hierarchical structure.
The proposed model was evaluated using an independent set of image patches from
373 whole slide images. The results indicate that the hierarchical model can
achieve better results than the flat model for multi-category diagnosis of GI
disorders using histopathological images.
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