BMC Gastroenterology (Dec 2021)

Identification of Barrett's esophagus in endoscopic images using deep learning

  • Wen Pan,
  • Xujia Li,
  • Weijia Wang,
  • Linjing Zhou,
  • Jiali Wu,
  • Tao Ren,
  • Chao Liu,
  • Muhan Lv,
  • Song Su,
  • Yong Tang

DOI
https://doi.org/10.1186/s12876-021-02055-2
Journal volume & issue
Vol. 21, no. 1
pp. 1 – 8

Abstract

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Abstract Background Development of a deep learning method to identify Barrett's esophagus (BE) scopes in endoscopic images. Methods 443 endoscopic images from 187 patients of BE were included in this study. The gastroesophageal junction (GEJ) and squamous-columnar junction (SCJ) of BE were manually annotated in endoscopic images by experts. Fully convolutional neural networks (FCN) were developed to automatically identify the BE scopes in endoscopic images. The networks were trained and evaluated in two separate image sets. The performance of segmentation was evaluated by intersection over union (IOU). Results The deep learning method was proved to be satisfying in the automated identification of BE in endoscopic images. The values of the IOU were 0.56 (GEJ) and 0.82 (SCJ), respectively. Conclusions Deep learning algorithm is promising with accuracies of concordance with manual human assessment in segmentation of the BE scope in endoscopic images. This automated recognition method helps clinicians to locate and recognize the scopes of BE in endoscopic examinations.

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