Zhao Yuxue, Hu Bo, Wang Ying, Yin Xiaomeng, Jiang Yuanyuan, Zhu Xiuli
School of Nursing, Department of Medicine, Qingdao University, No. 15, Ningde Road, Shinan District, Qingdao, 266073 China.
Department of Thoracic Surgery, Qingdao Municipal Hospital, Qingdao, China.
Multimed Tools Appl. 2022;81(8):11717-11736. doi: 10.1007/s11042-022-12258-8. Epub 2022 Feb 18.
The identification of diseases is inseparable from artificial intelligence. As an important branch of artificial intelligence, convolutional neural networks play an important role in the identification of gastric cancer. We conducted a systematic review to summarize the current applications of convolutional neural networks in the gastric cancer identification. The original articles published in Embase, Cochrane Library, PubMed and Web of Science database were systematically retrieved according to relevant keywords. Data were extracted from published papers. A total of 27 articles were retrieved for the identification of gastric cancer using medical images. Among them, 19 articles were applied in endoscopic images and 8 articles were applied in pathological images. 16 studies explored the performance of gastric cancer detection, 7 studies explored the performance of gastric cancer classification, 2 studies reported the performance of gastric cancer segmentation and 2 studies analyzed the performance of gastric cancer delineating margins. The convolutional neural network structures involved in the research included AlexNet, ResNet, VGG, Inception, DenseNet and Deeplab, etc. The accuracy of studies was 77.3 - 98.7%. Good performances of the systems based on convolutional neural networks have been showed in the identification of gastric cancer. Artificial intelligence is expected to provide more accurate information and efficient judgments for doctors to diagnose diseases in clinical work.
疾病的识别离不开人工智能。作为人工智能的一个重要分支,卷积神经网络在胃癌识别中发挥着重要作用。我们进行了一项系统综述,以总结卷积神经网络在胃癌识别中的当前应用。根据相关关键词,系统检索了发表在Embase、Cochrane图书馆、PubMed和Web of Science数据库中的原始文章。从已发表的论文中提取数据。共检索到27篇使用医学图像识别胃癌的文章。其中,19篇应用于内镜图像,8篇应用于病理图像。16项研究探讨了胃癌检测的性能,7项研究探讨了胃癌分类的性能,2项研究报告了胃癌分割的性能,2项研究分析了胃癌边界描绘的性能。研究中涉及的卷积神经网络结构包括AlexNet、ResNet、VGG、Inception、DenseNet和Deeplab等。研究的准确率为77.3%-98.7%。基于卷积神经网络的系统在胃癌识别中表现出良好的性能。预计人工智能将为医生在临床工作中诊断疾病提供更准确的信息和高效的判断。