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使用集成深度学习进行膀胱癌的准确诊断。

Accurate bladder cancer diagnosis using ensemble deep leaning.

作者信息

El-Atier Rana A, Saraya M S, Saleh Ahmed I, Rabie Asmaa H

机构信息

Computers and Control Department, Faculty of Engineering Department, Faculty of Engineering, Mansoura University, Mansoura, 35516, Egypt.

出版信息

Sci Rep. 2025 Apr 15;15(1):12880. doi: 10.1038/s41598-025-95002-0.

Abstract

There are an estimated 1.3 million cases of cancer globally each year, making it one of the most serious types of urinary tract cancer. The methods used today for diagnosing and monitoring bladder cancer are intrusive, costly, and time-consuming. In clinical practice, invasive biopsy followed by histological examination continues to be the gold standard for diagnosis. Bladder cancer biomarkers have been used in expensive diagnostic tests created recently, however their reliability is limited by their high rates of false positives and false negatives. The potential and use of artificial intelligence in urological diseases have been the subject of several research, as interest in artificial intelligence in medicine has grown recently. In this paper, a new bladder cancer model called Ensemble Deep Learning (EDL) will be provided to accurately diagnose patients. Outlier rejection is used to filter data using the interquartile range (IQR) then the image diagnosis. The proposed EDL consists of three deep learning algorithms, which are; Convolutional Neural Network (CNN), Generative Adversarial Network (GAN), and a new deep learning method called Explainable Deep Learning (XDL) that depends on Guided Gradient Weighted Class Activation Map (Guided Grad-CAM). In fact, Guided Grad-CAM enables doctor to understand the diagnose. A new voting mechanism will be used to integrate the results of all three methods to produce the final result to accurately diagnose bladder cancer cases. In fact, the used voting method depends on using majority voting based on two different scenarios according to the results of CNN, GAN, and XDL. If these three methods give the same class category, then the final diagnosis will be this class category. On the other hand, if the three methods give different class category, then the final result will be followed by the accuracy of each class. The proposed EDL model was tested after several trials. The results have proved that EDL model is more efficient and more accurate to diagnose bladder cancer disease. It introduced the highest accuracy results and the lowest error results as well as execution time.

摘要

全球每年估计有130万例癌症病例,使其成为最严重的泌尿系统癌症类型之一。如今用于诊断和监测膀胱癌的方法具有侵入性、成本高且耗时。在临床实践中,侵入性活检后进行组织学检查仍然是诊断的金标准。膀胱癌生物标志物已被用于最近开发的昂贵诊断测试中,然而其可靠性受到高假阳性率和假阴性率的限制。随着最近医学领域对人工智能的兴趣增加,人工智能在泌尿系统疾病中的潜力和应用已成为多项研究的主题。在本文中,将提供一种名为集成深度学习(EDL)的新膀胱癌模型,以准确诊断患者。异常值剔除用于使用四分位距(IQR)过滤数据,然后进行图像诊断。所提出的EDL由三种深度学习算法组成,即卷积神经网络(CNN)、生成对抗网络(GAN)和一种名为可解释深度学习(XDL)的新深度学习方法,该方法依赖于引导梯度加权类激活映射(Guided Grad-CAM)。事实上,Guided Grad-CAM使医生能够理解诊断结果。将使用一种新的投票机制来整合所有三种方法的结果,以产生最终结果,从而准确诊断膀胱癌病例。实际上,所使用的投票方法取决于根据CNN、GAN和XDL的结果基于两种不同场景使用多数投票。如果这三种方法给出相同的类别,则最终诊断将是该类别。另一方面,如果这三种方法给出不同的类别,则最终结果将取决于每个类别的准确性。所提出的EDL模型经过多次试验后进行了测试。结果证明,EDL模型在诊断膀胱癌疾病方面更高效、更准确。它给出了最高的准确率结果、最低的错误结果以及执行时间。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5101/12000456/65fe40ff360c/41598_2025_95002_Fig1_HTML.jpg

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