Department of Urology, University of Tsukuba Hospital, Tsukuba, Japan.
Artificial Intelligence Research Center, National Institute of Advanced Industrial Science and Technology, Tsukuba, Japan.
J Endourol. 2020 Mar;34(3):352-358. doi: 10.1089/end.2019.0509. Epub 2020 Jan 14.
Nonmuscle-invasive bladder cancer has a relatively high postoperative recurrence rate despite the implementation of conventional treatment methods. Cystoscopy is essential for diagnosing and monitoring bladder cancer, but lesions are overlooked while using white-light imaging. Using cystoscopy, tumors with a small diameter; flat tumors, such as carcinoma ; and the extent of flat lesions associated with the elevated lesions are difficult to identify. In addition, the accuracy of diagnosis and treatment using cystoscopy varies according to the skill and experience of physicians. Therefore, to improve the quality of bladder cancer diagnosis, we aimed to support the cystoscopic diagnosis of bladder cancer using artificial intelligence (AI). A total of 2102 cystoscopic images, consisting of 1671 images of normal tissue and 431 images of tumor lesions, were used to create a dataset with an 8:2 ratio of training and test images. We constructed a tumor classifier based on a convolutional neural network (CNN). The performance of the trained classifier was evaluated using test data. True-positive rate and false-positive rate were plotted when the threshold was changed as the receiver operating characteristic (ROC) curve. In the test data (tumor image: 87, normal image: 335), 78 images were true positive, 315 true negative, 20 false positive, and 9 false negative. The area under the ROC curve was 0.98, with a maximum Youden index of 0.837, sensitivity of 89.7%, and specificity of 94.0%. By objectively evaluating the cystoscopic image with CNN, it was possible to classify the image, including tumor lesions and normality. The objective evaluation of cystoscopic images using AI is expected to contribute to improvement in the accuracy of the diagnosis and treatment of bladder cancer.
尽管采用了常规治疗方法,非肌肉浸润性膀胱癌术后仍有较高的复发率。膀胱镜检查对于诊断和监测膀胱癌至关重要,但在使用白光成像时会忽略病变。使用膀胱镜,直径较小的肿瘤;扁平肿瘤,如癌;以及与隆起病变相关的扁平病变的范围都难以识别。此外,膀胱镜检查的诊断和治疗准确性因医生的技能和经验而异。因此,为了提高膀胱癌诊断的质量,我们旨在利用人工智能(AI)支持膀胱镜诊断膀胱癌。
共使用了 2102 张膀胱镜图像,包括 1671 张正常组织图像和 431 张肿瘤病变图像,创建了一个 8:2 训练和测试图像比例的数据集。我们基于卷积神经网络(CNN)构建了肿瘤分类器。使用测试数据评估训练后的分类器的性能。随着接收器工作特征(ROC)曲线的阈值变化绘制真阳性率和假阳性率。
在测试数据中(肿瘤图像:87,正常图像:335),78 张图像为真阳性,315 张图像为真阴性,20 张图像为假阳性,9 张图像为假阴性。ROC 曲线下的面积为 0.98,最大 Youden 指数为 0.837,灵敏度为 89.7%,特异性为 94.0%。
通过使用 CNN 客观评估膀胱镜图像,可以对包括肿瘤病变和正常性在内的图像进行分类。使用 AI 对膀胱镜图像进行客观评估有望提高膀胱癌诊断和治疗的准确性。