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人工智能能帮助泌尿科医生检测膀胱癌吗?

Can artificial intelligence aid the urologists in detecting bladder cancer?

作者信息

Hengky Antoninus, Lionardi Stevan Kristian, Kusumajaya Christopher

机构信息

Department of General Medicine, Fatima Hospital, Ketapang Regency, West Kalimantan, Indonesia.

Center of Health Research, Atma Jaya Catholic University of Indonesia, Jakarta, Indonesia.

出版信息

Indian J Urol. 2024 Oct-Dec;40(4):221-228. doi: 10.4103/iju.iju_39_24. Epub 2024 Oct 1.

Abstract

INTRODUCTION

The emergence of artificial intelligence (AI)-based support system endoscopy, including cystoscopy, has shown promising results by training deep learning algorithms with large datasets of images and videos. This AI-aided cystoscopy has the potential to significantly transform the urological practice by assisting the urologists in identifying malignant areas, especially considering the diverse appearance of these lesions.

METHODS

Four databases, the PubMed, ProQuest, EBSCOHost, and ScienceDirect were searched, along with a manual hand search. Prospective and retrospective studies, experimental studies, cross-sectional studies, and case-control studies assessing the utilization of AI for the detection of bladder cancer through cystoscopy and comparing with the histopathology results as the reference standard were included. The following terms and their variants were used: "artificial intelligence," "cystoscopy," and "bladder cancer." The risk of bias was assessed using the Quality Assessment of Diagnostic Accuracy Studies-2 tool. A random effects model was used to calculate the pooled sensitivity and specificity. The Moses-Littenberg model was used to derive the Summary Receiver Operating Characteristics (SROC) curve.

RESULTS

Five studies were selected for the analysis. Pooled sensitivity and specificity were 0.953 (95% confidence interval [CI]: 0.908-0.976) and 0.957 (95% CI: 0.923-0.977), respectively. Pooled diagnostic odd ratio was 449.79 (95% CI: 12.42-887.17). SROC curve (area under the curve: 0.988, 95% CI: 0.982-0.994) indicated a strong discriminating power of AI-aided cystoscopy in differentiation normal or benign bladder lesions from the malignant ones.

CONCLUSIONS

Although the utilization of AI for aiding in the detection of bladder cancer through cystoscopy remains questionable, it has shown encouraging potential for enhancing the detection rates. Future studies should concentrate on identification of the patients groups which could derive maximum benefit from accurate identification of the bladder cancer, such as those with intermediate or high-risk invasive tumors.

摘要

引言

基于人工智能(AI)的支持系统内镜检查(包括膀胱镜检查)的出现,通过使用大量图像和视频数据集训练深度学习算法,已显示出令人鼓舞的结果。这种人工智能辅助膀胱镜检查有潜力通过协助泌尿科医生识别恶性区域,显著改变泌尿外科的实践,特别是考虑到这些病变的多样外观。

方法

检索了四个数据库,即PubMed、ProQuest、EBSCOHost和ScienceDirect,并进行了手工检索。纳入了前瞻性和回顾性研究、实验研究、横断面研究以及病例对照研究,这些研究评估了通过膀胱镜检查利用人工智能检测膀胱癌并与作为参考标准的组织病理学结果进行比较的情况。使用了以下术语及其变体:“人工智能”、“膀胱镜检查”和“膀胱癌”。使用诊断准确性研究质量评估-2工具评估偏倚风险。使用随机效应模型计算合并敏感性和特异性。使用Moses-Littenberg模型推导总结接收器操作特征(SROC)曲线。

结果

选择了五项研究进行分析。合并敏感性和特异性分别为0.953(95%置信区间[CI]:0.908 - 0.976)和0.957(95%CI:0.923 - 0.977)。合并诊断比值比为449.79(95%CI:12.42 - 887.17)。SROC曲线(曲线下面积:0.988,95%CI:0.982 - 0.994)表明人工智能辅助膀胱镜检查在区分正常或良性膀胱病变与恶性病变方面具有很强的鉴别能力。

结论

尽管通过膀胱镜检查利用人工智能辅助检测膀胱癌仍存在疑问,但它已显示出提高检测率的令人鼓舞的潜力。未来的研究应集中于确定哪些患者群体能从膀胱癌的准确识别中获得最大益处,例如那些患有中高危浸润性肿瘤的患者。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e77f/11567573/95dcdd89c55e/IJU-40-221-g001.jpg

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