Abstract
Endoscopic diagnosis of early neoplasia in Barrett's Esophagus is generally a two-step process of primary detection in overview, followed by detailed inspection of any visible abnormalities using Narrow Band Imaging (NBI). However, endoscopists struggle with evaluating NBI-zoom imagery of subtle abnormalities. In this work, we propose the first results of a deep learning system for the characterization of NBI-zoom imagery of Barrett's Esophagus with an accuracy, sensitivity, and specificity of 83.6%, 83.1%, and 84.0%, respectively. We also show that endoscopy-driven pretraining outperforms two models, one without pretraining as well as a model with ImageNet initialization. The final model outperforms absence of pretraining by approximately 10% and the performance is 2% higher in terms of accuracy compared to ImageNet pretraining. Furthermore, the practical deployment of our model is not hampered by ImageNet licensing, thereby paving the way for clinical application.
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CITATION STYLE
van der Putten, J., Struyvenberg, M., de Groof, J., Curvers, W., Schoon, E., Baldaque-Silva, F., … de With, P. H. N. (2020). Endoscopy-driven pretraining for classification of dysplasia in barrett’s esophagus with endoscopic narrow-band imaging zoom videos. Applied Sciences (Switzerland), 10(10). https://doi.org/10.3390/APP10103407
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