| Literature DB >> 34046649 |
William Adorno1, Alexis Catalano2,3, Lubaina Ehsan3, Hans Vitzhum von Eckstaedt3, Barrett Barnes4, Emily McGowan5, Sana Syed4, Donald E Brown6.
Abstract
Eosinophilic Esophagitis (EoE) is an inflammatory esophageal disease which is increasing in prevalence. The diagnostic gold-standard involves manual review of a patient's biopsy tissue sample by a clinical pathologist for the presence of 15 or greater eosinophils within a single high-power field (400× magnification). Diagnosing EoE can be a cumbersome process with added difficulty for assessing the severity and progression of disease. We propose an automated approach for quantifying eosinophils using deep image segmentation. A U-Net model and post-processing system are applied to generate eosinophil-based statistics that can diagnose EoE as well as describe disease severity and progression. These statistics are captured in biopsies at the initial EoE diagnosis and are then compared with patient metadata: clinical and treatment phenotypes. The goal is to find linkages that could potentially guide treatment plans for new patients at their initial disease diagnosis. A deep image classification model is further applied to discover features other than eosinophils that can be used to diagnose EoE. This is the first study to utilize a deep learning computer vision approach for EoE diagnosis and to provide an automated process for tracking disease severity and progression.Entities:
Keywords: Convolutional Neural Networks; Eosinophilic Esophagitis; Eosinophils; Image Segmentation; U-Net
Year: 2021 PMID: 34046649 PMCID: PMC8144887 DOI: 10.5220/0010241900440055
Source DB: PubMed Journal: Biomed Eng Syst Technol Int Jt Conf BIOSTEC Revis Sel Pap