Endoscopy 2019; 51(04): S6
DOI: 10.1055/s-0039-1681187
ESGE Days 2019 oral presentations
Friday, April 5, 2019 08:30 – 10:30: Artificial intelligence Club A
Georg Thieme Verlag KG Stuttgart · New York

ARTIFICIAL INTELLIGENCE IN EARLY BARRETT'S CANCER: THE SEGMENTATION TASK

A Ebigbo
1   Klinikum Augsburg, Augsburg, Germany
,
R Mendel
2   Ostbayerische Technische Hochschule, Regensburg, Germany
,
A Probst
1   Klinikum Augsburg, Augsburg, Germany
,
J Manzeneder
1   Klinikum Augsburg, Augsburg, Germany
,
LA de Souza
3   Department of Computing, São Paulo State University, São Paulo, Brazil
,
J Papa
3   Department of Computing, São Paulo State University, São Paulo, Brazil
,
C Palm
2   Ostbayerische Technische Hochschule, Regensburg, Germany
,
H Messmann
1   Klinikum Augsburg, Augsburg, Germany
› Author Affiliations
Further Information

Publication History

Publication Date:
18 March 2019 (online)

 

Aims:

The delineation of outer margins of early Barrett's cancer can be challenging even for experienced endoscopists. Artificial intelligence (AI) could assist endoscopists faced with this task. As of date, there is very limited experience in this domain. In this study, we demonstrate the measure of overlap (Dice coefficient = D) between highly experienced Barrett endoscopists and an AI system in the delineation of cancer margins (segmentation task).

Methods:

An AI system with a deep convolutional neural network (CNN) was trained and tested on high-definition endoscopic images of early Barrett's cancer (n = 33) and normal Barrett's mucosa (n = 41). The reference standard for the segmentation task were the manual delineations of tumor margins by three highly experienced Barrett endoscopists. Training of the AI system included patch generation, patch augmentation and adjustment of the CNN weights. Then, the segmentation results from patch classification and thresholding of the class probabilities. Segmentation results were evaluated using the Dice coefficient (D).

Results:

The Dice coefficient (D) which can range between 0 (no overlap) and 1 (complete overlap) was computed only for images correctly classified by the AI-system as cancerous. At a threshold of t = 0.5, a mean value of D = 0.72 was computed.

Conclusions:

AI with CNN performed reasonably well in the segmentation of the tumor region in Barrett's cancer, at least when compared with expert Barrett's endoscopists. AI holds a lot of promise as a tool for better visualization of tumor margins but may need further improvement and enhancement especially in real-time settings.