Cao Yuanchao, Yuan Hang, Guo Yang, Li Bin, Wang Xinning, Wang Xinsheng, Li Yanjiang, Jiao Wei
Department of Urology, Affiliated Hospital of Qingdao University, 266000 Qingdao, Shandong, China.
School of Computer Science and Engineering, Beihang University, 100191 Beijing, China.
Arch Esp Urol. 2024 Nov;77(9):1017-1025. doi: 10.56434/j.arch.esp.urol.20247709.144.
Urinary stones composed of uric acid can be treated with medicine. Computed tomography (CT) can diagnose urinary stone disease, but it is difficult to predict the type of uric stones. This study aims to develop a method to distinguish pure uric acid (UA) stones from non-uric acid (non-UA) stones by describing quantitative CT parameters of single-energy slices of urinary stones related to chemical stone types.
Clinical data, CT images, and stone composition analysis results of patients with urinary stones clinically diagnosed at The Department of Urology, Affiliated Hospital of Qingdao University between 1 January 2018 and 31 December 2020 were collected and retrospectively analyzed. The above data were preprocessed and fed into a convolutional neural network to perform deep learning (DL) of the model, and the dataset was validated at a ratio of 4:1. The area under the curve (AUC) value of the receiver operating characteristic (ROC) curve and the confusion matrix were utilized to evaluate the predictive effect of the model.
A retrospective analysis of 918 non-enhanced thin-slice single-energy CT images of known chemical stone types (124 with UA stones and 794 with non-UA stones) was conducted using a DL model. Compared with the results of analysis by infrared spectroscopy, the prediction model obtained an AUC of 0.83 for the dichotomous classification of UA stones and non-UA stones. The accuracy of the model was 97.01%, with an F1 score of 89.04%, sensitivity of 84.62%, and specificity of 82.28%.
This DL model constructed based on convolutional neural network analysis of thin-slice single-energy CT images is highly accurate in predicting the composition of pure UA and non-UA stones, providing a simple and rapid diagnosis method.
尿酸组成的尿路结石可用药物治疗。计算机断层扫描(CT)可诊断尿路结石病,但难以预测尿酸结石的类型。本研究旨在通过描述与化学结石类型相关的尿路结石单能切片的定量CT参数,开发一种区分纯尿酸(UA)结石与非尿酸(非UA)结石的方法。
收集并回顾性分析2018年1月1日至2020年12月31日在青岛大学附属医院泌尿外科临床诊断的尿路结石患者的临床资料、CT图像和结石成分分析结果。对上述数据进行预处理后输入卷积神经网络进行模型深度学习(DL),并以4:1的比例对数据集进行验证。利用受试者操作特征(ROC)曲线的曲线下面积(AUC)值和混淆矩阵评估模型的预测效果。
使用DL模型对918张已知化学结石类型的非增强薄层单能CT图像(124例为UA结石,794例为非UA结石)进行回顾性分析。与红外光谱分析结果相比,该预测模型对UA结石和非UA结石的二分分类获得的AUC为0.83。模型的准确率为97.01%,F1分数为89.04%,灵敏度为84.62%,特异性为82.28%。
基于卷积神经网络分析薄层单能CT图像构建的该DL模型在预测纯UA和非UA结石的成分方面具有很高的准确性,提供了一种简单快速的诊断方法。