Early esophagus cancer segmentation from gastrointestinal endoscopic images based on U-Net++ model

Q1 Engineering
Zenebe Markos Lonseko , Cheng-Si Luo , Wen-Ju Du , Tao Gan , Lin-Lin Zhu , Prince Ebenezer Adjei , Ni-Ni Rao
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引用次数: 0

Abstract

Automatic segmentation of early esophagus cancer (EEC) in gastrointestinal endoscopy (GIE) images is a critical and challenging task in clinical settings, which relies primarily on labor-intensive and time-consuming routines. EEC has often been diagnosed at the late stage since early signs of cancer are not obvious, resulting in low survival rates. This work proposes a deep learning approach based on the U-Net++ method to segment EEC in GIE images. A total of 2690 GIE images collected from 617 patients at the Digestive Endoscopy Center, West China Hospital of Sichuan University, China, have been utilized. The experimental result shows that our proposed method achieved promising results. Furthermore, the comparison has been made between the proposed and other U-Net-related methods using the same dataset. The mean and standard deviation (SD) of the dice similarity coefficient (DSC), intersection over union (IoU), precision (Pre), and recall (Rec) achieved by the proposed framework were DSC (%) ​= ​94.62 ​± ​0.02, IoU (%) ​= ​90.99 ​± ​0.04, Pre ​(%) = ​94.61 ​± ​0.04, and Rec (%) ​= ​95.00 ​± ​0.02, respectively, outperforming the others. The proposed method has the potential to be applied in EEC automatic diagnoses.

基于U-Net++模型的胃肠道内窥镜图像早期食管癌症分割
胃肠道内窥镜(GIE)图像中早期食管癌(EEC)的自动分割是临床环境中一项关键且具有挑战性的任务,主要依赖于劳动密集型和耗时的常规。由于早期癌症症状不明显,因此经常在晚期诊断出EEC,导致生存率低。本文提出了一种基于U-Net++方法的深度学习方法来分割GIE图像中的EEC。本研究使用了四川大学华西医院消化内镜中心617例患者的2690张GIE图像。实验结果表明,该方法取得了良好的效果。此外,还将所提出的方法与使用相同数据集的其他u - net相关方法进行了比较。该框架的骰子相似系数(DSC)、相交/联合系数(IoU)、精度(Pre)和召回率(Rec)的均值和标准差分别为DSC(%) = 94.62±0.02,IoU(%) = 90.99±0.04,Pre(%) = 94.61±0.04,Rec(%) = 95.00±0.02,均优于其他框架。该方法具有应用于脑电图自动诊断的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Electronic Science and Technology
Journal of Electronic Science and Technology Engineering-Electrical and Electronic Engineering
CiteScore
4.30
自引率
0.00%
发文量
1362
审稿时长
99 days
期刊介绍: JEST (International) covers the state-of-the-art achievements in electronic science and technology, including the most highlight areas: ¨ Communication Technology ¨ Computer Science and Information Technology ¨ Information and Network Security ¨ Bioelectronics and Biomedicine ¨ Neural Networks and Intelligent Systems ¨ Electronic Systems and Array Processing ¨ Optoelectronic and Photonic Technologies ¨ Electronic Materials and Devices ¨ Sensing and Measurement ¨ Signal Processing and Image Processing JEST (International) is dedicated to building an open, high-level academic journal supported by researchers, professionals, and academicians. The Journal has been fully indexed by Ei INSPEC and has published, with great honor, the contributions from more than 20 countries and regions in the world.
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