Precision Medicine Unit, Department of Gastroenterology, São João University Hospital, Alameda Professor Hernâni Monteiro, Porto, Portugal.
WGO Gastroenterology and Hepatology Training Center, Porto, Portugal.
Clin Transl Gastroenterol. 2023 Oct 1;14(10):e00609. doi: 10.14309/ctg.0000000000000609.
Capsule endoscopy (CE) is a minimally invasive examination for evaluating the gastrointestinal tract. However, its diagnostic yield for detecting gastric lesions is suboptimal. Convolutional neural networks (CNNs) are artificial intelligence models with great performance for image analysis. Nonetheless, their role in gastric evaluation by wireless CE (WCE) has not been explored.
Our group developed a CNN-based algorithm for the automatic classification of pleomorphic gastric lesions, including vascular lesions (angiectasia, varices, and red spots), protruding lesions, ulcers, and erosions. A total of 12,918 gastric images from 3 different CE devices (PillCam Crohn's; PillCam SB3; OMOM HD CE system) were used from the construction of the CNN: 1,407 from protruding lesions; 994 from ulcers and erosions; 822 from vascular lesions; and 2,851 from hematic residues and the remaining images from normal mucosa. The images were divided into a training (split for three-fold cross-validation) and validation data set. The model's output was compared with a consensus classification by 2 WCE-experienced gastroenterologists. The network's performance was evaluated by its sensitivity, specificity, accuracy, positive predictive value and negative predictive value, and area under the precision-recall curve.
The trained CNN had a 97.4% sensitivity; 95.9% specificity; and positive predictive value and negative predictive value of 95.0% and 97.8%, respectively, for gastric lesions, with 96.6% overall accuracy. The CNN had an image processing time of 115 images per second.
Our group developed, for the first time, a CNN capable of automatically detecting pleomorphic gastric lesions in both small bowel and colon CE devices.
胶囊内镜(CE)是一种用于评估胃肠道的微创检查方法。然而,其诊断胃病变的效果并不理想。卷积神经网络(CNN)是一种在图像分析方面表现出色的人工智能模型。尽管如此,它们在无线 CE(WCE)胃评估中的作用尚未得到探索。
我们的团队开发了一种基于 CNN 的算法,用于自动分类多种胃病变,包括血管病变(血管扩张、静脉曲张和红点)、隆起性病变、溃疡和糜烂。总共使用了来自 3 种不同 CE 设备(PillCam Crohn's;PillCam SB3;OMOM HD CE 系统)的 12918 张胃图像来构建 CNN:1407 张来自隆起性病变;994 张来自溃疡和糜烂;822 张来自血管病变;2851 张来自血性残留物,其余图像来自正常黏膜。这些图像被分为训练集(用于三折交叉验证的分割)和验证数据集。将模型的输出与 2 位具有 WCE 经验的胃肠病学家的共识分类进行比较。通过灵敏度、特异性、准确性、阳性预测值和阴性预测值以及精度-召回曲线下面积来评估网络的性能。
经过训练的 CNN 对胃病变的敏感性为 97.4%;特异性为 95.9%;阳性预测值和阴性预测值分别为 95.0%和 97.8%,总体准确率为 96.6%。CNN 的图像处理速度为每秒 115 张图像。
我们的团队首次开发了一种能够自动检测小肠和结肠 CE 设备中多种胃病变的 CNN。