Department of Gastroenterology, The First Affiliated Hospital of Anhui Medical University, Hefei, China.
Department of Electronic Engineering and Information Science, University of Science and Technology of China, Hefei, China.
Endoscopy. 2019 Apr;51(4):333-341. doi: 10.1055/a-0756-8754. Epub 2018 Nov 23.
We developed a computer-assisted diagnosis model to evaluate the feasibility of automated classification of intrapapillary capillary loops (IPCLs) to improve the detection of esophageal squamous cell carcinoma (ESCC).
We recruited patients who underwent magnifying endoscopy with narrow-band imaging for evaluation of a suspicious esophageal condition. Case images were evaluated to establish a gold standard IPCL classification according to the endoscopic diagnosis and histological findings. A double-labeling fully convolutional network (FCN) was developed for image segmentation. Diagnostic performance of the model was compared with that of endoscopists grouped according to years of experience (senior > 15 years; mid level 10 - 15 years; junior 5 - 10 years).
Of the 1383 lesions in the study, the mean accuracies of IPCL classification were 92.0 %, 82.0 %, and 73.3 %, for the senior, mid level, and junior groups, respectively. The mean diagnostic accuracy of the model was 89.2 % and 93.0 % at the lesion and pixel levels, respectively. The interobserver agreement between the model and the gold standard was substantial (kappa value, 0.719). The accuracy of the model for inflammatory lesions (92.5 %) was superior to that of the mid level (88.1 %) and junior (86.3 %) groups ( < 0.001). For malignant lesions, the accuracy of the model (B1, 87.6 %; B2, 93.9 %) was significantly higher than that of the mid level (B1, 79.1 %; B2, 90.0 %) and junior (B1, 69.2 %; B2, 79.3 %) groups ( < 0.001).
Double-labeling FCN automated IPCL recognition was feasible and could facilitate early detection of ESCC.
我们开发了一种计算机辅助诊断模型,以评估自动分类乳头内毛细血管环(IPCL)的可行性,从而提高食管鳞状细胞癌(ESCC)的检测率。
我们招募了接受放大内镜窄带成像检查以评估可疑食管病变的患者。根据内镜诊断和组织学发现,对病例图像进行评估,以建立 IPCL 分类的金标准。我们开发了一种双标签全卷积网络(FCN)用于图像分割。将模型的诊断性能与按经验年限分组的内镜医师(高级>15 年;中级 10-15 年;初级 5-10 年)进行比较。
在研究的 1383 个病变中,高级、中级和初级组 IPCL 分类的平均准确率分别为 92.0%、82.0%和 73.3%。模型的平均诊断准确率在病变和像素水平分别为 89.2%和 93.0%。模型与金标准之间的观察者间一致性较高(kappa 值为 0.719)。模型对炎症性病变(92.5%)的准确率优于中级(88.1%)和初级(86.3%)组(<0.001)。对于恶性病变,模型(B1,87.6%;B2,93.9%)的准确率明显高于中级(B1,79.1%;B2,90.0%)和初级(B1,69.2%;B2,79.3%)组(<0.001)。
双标签 FCN 自动 IPCL 识别是可行的,可以有助于早期发现 ESCC。