Early detection of esophagitis is important because this condition can progress to cancer if left untreated. However, the accuracies of different deep learning models in detecting esophagitis have yet to be compared. Thus, this study aimed to compare the accuracies of convolutional neural network models (GoogLeNet, ResNet-50, MobileNet V2, and MobileNet V3) in detecting esophagitis from the open Kvasir dataset of endoscopic images. Results showed that among the models, GoogLeNet achieved the highest F1-scores. Based on the average of true positive rate, MobileNet V3 predicted esophagitis more confidently than the other models. The results obtained using the models were also compared with those obtained using SHapley Additive exPlanations and Gradient-weighted Class Activation Mapping.
翻译:早期发现食道炎很重要,因为这一病症如果得不到治疗,会发展为癌症,不过,尚未比较发现食道炎的不同深层学习模型的精度,因此,这项研究旨在比较在从内分泌图象的开阔Kvasir数据集中检测食道炎的神经神经网络模型(GoogLeNet、ResNet-50、移动网络V2和移动网络V3)的精度,结果显示,在模型中,GoogLeNet取得了最高的F1芯。根据真实正率的平均值,MiveNet V3预测食道炎比其他模型更加有信心。使用这些模型获得的结果也与使用Shapley Adivision Explation和加权分级活性绘图的结果进行了比较。