Title of article :
Deep Convolutional Neural Network for Ulcer Recognition in Wireless Capsule Endoscopy: Experimental Feasibility and Optimization
Author/Authors :
Wang, Sen Department of Engineering Physics - Tsinghua University - Beijing, China , Xing, Yuxiang Department of Engineering Physics - Tsinghua University - Beijing, China , Zhang, Li Department of Engineering Physics - Tsinghua University - Beijing, China , Gao, Hewei Department of Engineering Physics - Tsinghua University - Beijing, China , Zhang, Hao Department of Engineering Physics - Tsinghua University - Beijing, China
Abstract :
Wireless capsule endoscopy (WCE) has developed rapidly over the last several years and now enables physicians to examine the
gastrointestinal tract without surgical operation. However, a large number of images must be analyzed to obtain a diagnosis. Deep
convolutional neural networks (CNNs) have demonstrated impressive performance in different computer vision tasks. ,us, in
this work, we aim to explore the feasibility of deep learning for ulcer recognition and optimize a CNN-based ulcer recognition
architecture for WCE images. By analyzing the ulcer recognition task and characteristics of classic deep learning networks, we
propose a HAnet architecture that uses ResNet-34 as the base network and fuses hyper features from the shallow layer with deep
features in deeper layers to provide final diagnostic decisions. 1,416 independent WCE videos are collected for this study. The
overall test accuracy of our HAnet is 92.05%, and its sensitivity and specificity are 91.64% and 92.42%, respectively. According to
our comparisons of F1, F2, and ROC-AUC, the proposed method performs better than several off-the-shelf CNN models,
including VGG, DenseNet, and Inception-ResNet-v2, and classical machine learning methods with handcrafted features for WCE
image classification. Overall, this study demonstrates that recognizing ulcers in WCE images via the deep CNN method is feasible
and could help reduce the tedious image reading work of physicians. Moreover, our HAnet architecture tailored for this problem
gives a fine choice for the design of network structure.
Keywords :
Deep , Feasibility , Optimization , WCE
Journal title :
Computational and Mathematical Methods in Medicine