Department of Gastroenterology, Cancer Institute Hospital Ariake, Japanese Foundation for Cancer Research, 3-10-6 Ariake, Koto-ku, Tokyo, 135-8550, Japan.
Tada Tomohiro Institute of Gastroenterology and Proctology, Saitama, Japan.
Gastric Cancer. 2018 Jul;21(4):653-660. doi: 10.1007/s10120-018-0793-2. Epub 2018 Jan 15.
Image recognition using artificial intelligence with deep learning through convolutional neural networks (CNNs) has dramatically improved and been increasingly applied to medical fields for diagnostic imaging. We developed a CNN that can automatically detect gastric cancer in endoscopic images.
A CNN-based diagnostic system was constructed based on Single Shot MultiBox Detector architecture and trained using 13,584 endoscopic images of gastric cancer. To evaluate the diagnostic accuracy, an independent test set of 2296 stomach images collected from 69 consecutive patients with 77 gastric cancer lesions was applied to the constructed CNN.
The CNN required 47 s to analyze 2296 test images. The CNN correctly diagnosed 71 of 77 gastric cancer lesions with an overall sensitivity of 92.2%, and 161 non-cancerous lesions were detected as gastric cancer, resulting in a positive predictive value of 30.6%. Seventy of the 71 lesions (98.6%) with a diameter of 6 mm or more as well as all invasive cancers were correctly detected. All missed lesions were superficially depressed and differentiated-type intramucosal cancers that were difficult to distinguish from gastritis even for experienced endoscopists. Nearly half of the false-positive lesions were gastritis with changes in color tone or an irregular mucosal surface.
The constructed CNN system for detecting gastric cancer could process numerous stored endoscopic images in a very short time with a clinically relevant diagnostic ability. It may be well applicable to daily clinical practice to reduce the burden of endoscopists.
基于深度学习卷积神经网络(CNN)的人工智能图像识别技术在诊断成像领域得到了显著的发展和应用。我们开发了一种可以自动检测内镜图像中胃癌的 CNN。
基于单步多盒检测器(Single Shot MultiBox Detector)架构构建了一个基于 CNN 的诊断系统,并使用来自 69 例连续患者的 77 个胃癌病变的 13584 个内镜图像进行训练。为了评估诊断准确性,将来自 69 例连续患者的 77 个胃癌病变的 2296 个胃内镜图像的独立测试集应用于构建的 CNN。
CNN 分析 2296 个测试图像需要 47 秒。CNN 正确诊断了 77 个胃癌病变中的 71 个,总体敏感性为 92.2%,161 个非癌性病变被误诊为胃癌,阳性预测值为 30.6%。直径为 6mm 或以上的 70 个病变(98.6%)以及所有侵袭性癌症均被正确检测到。所有漏诊病变均为浅表凹陷性病变和分化型黏膜内癌,即使对于经验丰富的内镜医生也难以与胃炎区分。近一半的假阳性病变为伴有色调变化或不规则黏膜表面的胃炎。
构建的用于检测胃癌的 CNN 系统可以在非常短的时间内处理大量存储的内镜图像,具有临床相关的诊断能力。它可能非常适用于日常临床实践,以减轻内镜医生的负担。