Fang Yu-Jen, Mukundan Arvind, Tsao Yu-Ming, Huang Chien-Wei, Wang Hsiang-Chen
Department of Internal Medicine, National Taiwan University Hospital, Yun-Lin Branch, No. 579, Sec. 2, Yunlin Rd., Dou-Liu 64041, Taiwan.
Department of Internal Medicine, National Taiwan University College of Medicine, No. 1 Jen Ai Rd. Sec. 1, Taipei 10051, Taiwan.
J Pers Med. 2022 Jul 25;12(8):1204. doi: 10.3390/jpm12081204.
Early detection of esophageal cancer has always been difficult, thereby reducing the overall five-year survival rate of patients. In this study, semantic segmentation was used to predict and label esophageal cancer in its early stages. U-Net was used as the basic artificial neural network along with Resnet to extract feature maps that will classify and predict the location of esophageal cancer. A total of 75 white-light images (WLI) and 90 narrow-band images (NBI) were used. These images were classified into three categories: normal, dysplasia, and squamous cell carcinoma. After labeling, the data were divided into a training set, verification set, and test set. The training set was approved by the encoder-decoder model to train the prediction model. Research results show that the average time of 111 ms is used to predict each image in the test set, and the evaluation method is calculated in pixel units. Sensitivity is measured based on the severity of the cancer. In addition, NBI has higher accuracy of 84.724% when compared with the 82.377% accuracy rate of WLI, thereby making it a suitable method to detect esophageal cancer using the algorithm developed in this study.
食管癌的早期检测一直都很困难,从而降低了患者的总体五年生存率。在本研究中,语义分割被用于预测和标记早期食管癌。U-Net与Resnet一起被用作基本的人工神经网络,以提取将对食管癌的位置进行分类和预测的特征图。总共使用了75张白光图像(WLI)和90张窄带图像(NBI)。这些图像被分为三类:正常、发育异常和鳞状细胞癌。标记后,数据被分为训练集、验证集和测试集。训练集由编码器-解码器模型批准以训练预测模型。研究结果表明,在测试集中预测每张图像平均用时111毫秒,评估方法以像素为单位计算。敏感性是根据癌症的严重程度来衡量的。此外,与白光图像82.377%的准确率相比,窄带图像的准确率更高,为84.724%,因此使其成为使用本研究开发的算法检测食管癌的合适方法。