Deep Learning in Urological Images Using Convolutional Neural Networks: An Artificial Intelligence Study.

IF 1 Q4 UROLOGY & NEPHROLOGY Turkish journal of urology Pub Date : 2022-07-01 DOI:10.5152/tud.2022.22030
Ahmet Serel, Sefa Alperen Ozturk, Sedat Soyupek, Huseyin Bulut Serel
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Abstract

Objective: Using artificial intelligence and a deep learning algorithm can differentiate vesicoureteral reflux and hydronephrosis reliably.

Material and methods: An online dataset of vesicoureteral reflux and hydronephrosis images were abstracted. We developed image analysis and deep learning workflow. The images were trained to distinguish between vesicoureteral reflux and hydronephrosis. The discriminative capability was quantified using receiver-operating characteristic curve analysis. We used Scikit learn to interpret the model.

Results: Thirty-nine of the hydronephrosis and 42 of the vesicoureteral reflux images were abstracted from an online dataset. First, we randomly divided the images into training and validation. In this example, we put 68 cases into training and 13 into validation. We did inference on 2 cases and in return their predictions were predicted: [[0.00006]] hydronephrosis, predicted: [[0.99874]] vesicoureteral reflux on 2 test cases.

Conclusion: This study showed a high-level overview of building a deep neural network for urological image classification. It is concluded that using artificial intelligence with deep learning methods can be applied to differentiate all urological images.

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使用卷积神经网络在泌尿学图像中进行深度学习:一项人工智能研究。
目的:利用人工智能和深度学习算法可靠地鉴别膀胱输尿管反流和肾积水。材料和方法:提取膀胱输尿管反流和肾积水图像的在线数据集。我们开发了图像分析和深度学习工作流程。图像经过训练以区分膀胱输尿管反流和肾积水。采用受检者-工作特征曲线分析对其鉴别能力进行了量化。我们使用Scikit learn来解释模型。结果:39张肾积水图像和42张膀胱输尿管反流图像被从一个在线数据集中提取出来。首先,我们将图像随机分为训练图像和验证图像。在本例中,我们将68个案例放入训练中,13个案例放入验证中。我们对2例进行了推断,结果预测:[[0.00006]]肾积水,[[0.99874]]2例膀胱输尿管反流。结论:本研究对构建用于泌尿外科图像分类的深度神经网络进行了综述。结论:人工智能结合深度学习方法可用于所有泌尿系统图像的识别。
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来源期刊
Turkish journal of urology
Turkish journal of urology Medicine-Urology
CiteScore
2.10
自引率
0.00%
发文量
53
期刊介绍: The aim of the Turkish Journal of Urology is to contribute to the literature by publishing scientifically high-quality research articles as well as reviews, editorials, letters to the editor and case reports. The journal’s target audience includes, urology specialists, medical specialty fellows and other specialists and practitioners who are interested in the field of urology.
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