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Deep Learning for Visual Recognition of Environmental Enteropathy and Celiac Disease

8 August 2019
A. Shrivastava
K. Kant
S. Sengupta
Sung-Jun Kang
Marium N. Khan
Asad Ali
S. Moore
B. Amadi
P. Kelly
Donald E. Brown
Sana Syed
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Abstract

Physicians use biopsies to distinguish between different but histologically similar enteropathies. The range of syndromes and pathologies that could cause different gastrointestinal conditions makes this a difficult problem. Recently, deep learning has been used successfully in helping diagnose cancerous tissues in histopathological images. These successes motivated the research presented in this paper, which describes a deep learning approach that distinguishes between Celiac Disease (CD) and Environmental Enteropathy (EE) and normal tissue from digitized duodenal biopsies. Experimental results show accuracies of over 90% for this approach. We also look into interpreting the neural network model using Gradient-weighted Class Activation Mappings and filter activations on input images to understand the visual explanations for the decisions made by the model.

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