Sui An, Hu Zhaoyu, Xie Xuan, Deng Yinhui, Wang Yuanyuan, Yu Jinhua, Shen Li
Electronic Engineering Department, Fudan University, Shanghai, China.
Department of Ultrasound, Chongming Branch, Xinhua Hospital Affiliated to Shanghai Jiaotong University School of Medicine, Shanghai, China.
Front Oncol. 2021 Mar 29;11:627556. doi: 10.3389/fonc.2021.627556. eCollection 2021.
Gastric cancer is the second most lethal type of malignant tumor in the world. Early diagnosis of gastric cancer can reduce the transformation to advanced cancer and improve the early treatment rate. As a cheap, real-time, non-invasive examination method, oral contrast-enhanced ultrasonography (OCUS) is a more acceptable way to diagnose gastric cancer than interventional diagnostic methods such as gastroscopy. In this paper, we proposed a new method for the diagnosis of gastric diseases by automatically analyzing the hierarchical structure of gastric wall in gastric ultrasound images, which is helpful to quantify the diagnosis information of gastric diseases and is a useful attempt for early screening of gastric cancer. We designed a gastric wall detection network based on U-net. On this basis, anisotropic diffusion technology was used to extract the layered structure of the gastric wall. A simple and useful gastric cancer screening model was obtained by calculating and counting the thickness of the five-layer structure of the gastric wall. The experimental results showed that our model can accurately identify the gastric wall, and it was found that the layered parameters of abnormal gastric wall is significantly different from that of normal gastric wall. For the screening of gastric disease, a statistical model based on gastric wall stratification can give a screening accuracy of 95% with AUC of 0.92.
胃癌是全球第二大致命性恶性肿瘤类型。胃癌的早期诊断可减少向晚期癌症的转变并提高早期治疗率。作为一种廉价、实时、非侵入性的检查方法,口服超声造影(OCUS)比胃镜等介入性诊断方法更易被接受用于诊断胃癌。在本文中,我们提出了一种通过自动分析胃超声图像中胃壁的层次结构来诊断胃部疾病的新方法,这有助于量化胃部疾病的诊断信息,是早期筛查胃癌的一次有益尝试。我们设计了一种基于U-net的胃壁检测网络。在此基础上,利用各向异性扩散技术提取胃壁的分层结构。通过计算和统计胃壁五层结构的厚度,得到了一个简单且有用的胃癌筛查模型。实验结果表明,我们的模型能够准确识别胃壁,并且发现异常胃壁的分层参数与正常胃壁有显著差异。对于胃部疾病的筛查,基于胃壁分层的统计模型筛查准确率可达95%,曲线下面积(AUC)为0.92。