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Deep Convolutional Neural Network-Based Automated Lesion Detection In Wireless Capsule Endoscopy

Yejin Jeon, Eunbyul Cho,Sehwa Moon,Seung-Hoon Chae, Hae Young Jo,Tae Oh Kim, Chang Mo Moon,Jang-Hwan Choi

INTERNATIONAL FORUM ON MEDICAL IMAGING IN ASIA 2019(2019)

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摘要
Because most of the capsule-endoscopic images contain normal mucous membranes, physicians spend most of their reading time observing normal areas. Thus, a significant reduction in their reading time would be possible if only the portion of the image frame for which a particular lesion is suspected can be read intensively. This study aims to develop a deep convolutional neural-network-based model capable of automatically detecting lesions in the capsule-endoscopic images of a small bowel. The proposed model consists of two deep neural networks in parallel, each of which takes in images in RGB and CIELab color spaces, respectively. The neural-networks model is based on transfer-learned GoogLeNet architecture. Our proposed algorithm showed promising results in classifying endoscopic images where lesions exist (98.56% accuracy). If the proposed algorithm is used to screen abnormal images, it is expected to reduce a physician's reading time and to improve his/her reading accuracy.
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关键词
Deep neural networks, Convolutional neural Networks, Wireless capsule endoscopy, Lesion detection, Small bowel tumor, Small-bowel Wireless Capsule Endoscopy
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