Diagnosis and Analysis of Celiac Disease and Environmental Enteropathy on Biopsy Images using Deep Learning Approaches
Kamran Kowsari

TL;DR
This study develops deep learning methods to diagnose celiac disease and environmental enteropathy from biopsy images, addressing staining variability and disease staging with a hierarchical classification approach.
Contribution
It introduces four diagnostic techniques, including a color balancing method, RMDL architecture, and hierarchical classification for disease staging, advancing automated biopsy analysis.
Findings
Effective color balancing improves model training across different staining standards.
RMDL architecture mitigates staining variability in biopsy image classification.
Hierarchical classification accurately distinguishes disease stages and normal biopsies.
Abstract
Celiac Disease (CD) and Environmental Enteropathy (EE) are common causes of malnutrition and adversely impact normal childhood development. Both conditions require a tissue biopsy for diagnosis and a major challenge of interpreting clinical biopsy images to differentiate between these gastrointestinal diseases is striking histopathologic overlap between them. In the current study, we propose four diagnosis techniques for these diseases and address their limitations and advantages. First, the diagnosis between CD, EE, and Normal biopsies is considered, but the main challenge with this diagnosis technique is the staining problem. The dataset used in this research is collected from different centers with different staining standards. To solve this problem, we use color balancing in order to train our model with a varying range of colors. Random Multimodel Deep Learning (RMDL) architecture…
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