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基于 U-Net 与空洞卷积的人工智能在膀胱肿瘤膀胱镜图像分割中的应用

Artificial Intelligence for Segmentation of Bladder Tumor Cystoscopic Images Performed by U-Net with Dilated Convolution.

机构信息

Department of Urology, Kyushu University, Fukuoka City, Japan.

Department of Advanced Medical Initiatives, Faculty of Medical Sciences, Kyushu University, Fukuoka, Japan.

出版信息

J Endourol. 2022 Jun;36(6):827-834. doi: 10.1089/end.2021.0483. Epub 2022 May 17.

Abstract

Early intravesical recurrence after transurethral resection of bladder tumors (TURBT) is often caused by overlooking of tumors during TURBT. Although narrow-band imaging and photodynamic diagnosis were developed to detect more tumors than conventional white-light imaging, the accuracy of these systems has been subjective, along with poor reproducibility due to their dependence on the physician's experience and skills. To create an objective and reproducible diagnosing system, we aimed at assessing the utility of artificial intelligence (AI) with Dilated U-Net to reduce the risk of overlooked bladder tumors when compared with the conventional AI system, termed U-Net. We retrospectively obtained cystoscopic images by converting videos obtained from 120 patients who underwent TURBT into 1790 cystoscopic images. The Dilated U-Net, which is an extension of the conventional U-Net, analyzed these image datasets. The diagnostic accuracy of the Dilated U-Net and conventional U-Net were compared by using the following four measurements: pixel-wise sensitivity (PWSe); pixel-wise specificity (PWSp); pixel-wise positive predictive value (PWPPV), representing the AI diagnostic accuracy per pixel; and dice similarity coefficient (DSC), representing the overlap area between the bladder tumors in the ground truth images and segmentation maps. The cystoscopic images were divided as follows, according to the pathological T-stage: 944, Ta; 412, T1; 329, T2; and 116, carcinoma . The PWSe, PWSp, PWPPV, and DSC of the Dilated U-Net were 84.9%, 88.5%, 86.7%, and 83.0%, respectively, which had improved when compared to that with the conventional U-Net by 1.7%, 1.3%, 2.1%, and 2.3%, respectively. The DSC values were high for elevated lesions and low for flat lesions for both Dilated and conventional U-Net. Dilated U-Net, with higher DSC values than conventional U-Net, might reduce the risk of overlooking bladder tumors during cystoscopy and TURBT.

摘要

膀胱肿瘤经尿道切除术 (TURBT) 后早期膀胱内复发通常是由于 TURBT 中肿瘤漏诊所致。虽然窄带成像和光动力诊断技术的发展使得比传统的白光成像能够检测到更多的肿瘤,但由于这些系统依赖于医生的经验和技能,其准确性具有主观性,且重现性差。为了创建一个客观且可重现的诊断系统,我们旨在评估人工智能 (AI) 与 Dilated U-Net 的效用,以降低与传统 AI 系统(称为 U-Net)相比漏诊膀胱肿瘤的风险。我们通过将从 120 名接受 TURBT 治疗的患者获得的视频转换为 1790 个膀胱镜图像,来回顾性地获得膀胱镜图像。传统 U-Net 的扩展形式 Dilated U-Net 分析了这些图像数据集。通过使用以下四项测量指标来比较 Dilated U-Net 和传统 U-Net 的诊断准确性:像素级灵敏度 (PWSe);像素级特异性 (PWSp);像素级阳性预测值 (PWPPV),表示 AI 每像素的诊断准确性;和骰子相似系数 (DSC),表示地面真实图像和分割图中的膀胱肿瘤的重叠区域。根据病理 T 分期,将膀胱镜图像分为以下几类:944 例 Ta;412 例 T1;329 例 T2;和 116 例癌。Dilated U-Net 的 PWSe、PWSp、PWPPV 和 DSC 分别为 84.9%、88.5%、86.7%和 83.0%,与传统 U-Net 相比,分别提高了 1.7%、1.3%、2.1%和 2.3%。Dilated 和传统 U-Net 的 DSC 值对于隆起性病变较高,而对于平坦性病变较低。Dilated U-Net 的 DSC 值高于传统 U-Net,可能会降低膀胱镜和 TURBT 中漏诊膀胱肿瘤的风险。

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