Using machine learning to construct the diagnosis model of female bladder outlet obstruction based on urodynamic study data.

IF 2.5 3区 医学 Q2 UROLOGY & NEPHROLOGY
Quan Zhou, Guang Li, Kai Cui, Weilin Mao, Dongxu Lin, Zhenglong Yang, Zhong Chen, Youmin Hu, Xin Zhang
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引用次数: 0

Abstract

Purpose: To intelligently diagnose whether there is bladder outlet obstruction (BOO) in female with decent detrusor contraction ability by focusing on urodynamic study (UDS) data.

Materials and methods: We retrospectively reviewed the UDS data of female patients during urination. Eleven easily accessible urinary flow indicators were calculated according to the UDS data of each patient during voiding period. Eight diagnosis models based on back propagation neural network with different input feature combination were constructed by analyzing the correlations between indicators and lower urinary tract dysfunction labels. Subsequently, the stability of diagnostic models was evaluated by five-fold cross-validation based on training data, while the performance was compared on test dataset.

Results: UDS data from 134 female patients with a median age of 51 years (range, 27-78 years) were selected for our study. Among them, 66 patients suffered BOO and the remaining were normal. Applying the 5-fold cross-validation method, the model with the best performance achieved an area under the receiver operating characteristic curve (AUC) value of 0.949±0.060 using 9 UDS input features. The accuracy, sensitivity, and specificity for BOO diagnosis model in the testing process are 94.4%, 100%, and 89.3%, respectively.

Conclusions: The 9 significant indicators in UDS were employed to construct a diagnostic model of female BOO based on machine learning algorithm, which performs preferable classification accuracy and stability.

基于尿动力学研究数据,利用机器学习构建女性膀胱出口梗阻诊断模型。
目的:通过关注尿动力学研究(UDS)数据,智能诊断具有良好逼尿肌收缩能力的女性是否存在膀胱出口梗阻(BOO):我们回顾性地查看了女性患者排尿时的 UDS 数据。根据每位患者排尿期间的 UDS 数据,计算出 11 个易于获得的尿流指标。通过分析指标与下尿路功能障碍标签之间的相关性,构建了八个基于反向传播神经网络、不同输入特征组合的诊断模型。随后,通过基于训练数据的五倍交叉验证评估了诊断模型的稳定性,并对测试数据集的性能进行了比较:研究选取了 134 名女性患者的 UDS 数据,中位年龄为 51 岁(27-78 岁)。其中,66 名患者患有 BOO,其余为正常人。采用 5 倍交叉验证法,使用 9 个 UDS 输入特征,性能最佳的模型的接收器工作特征曲线下面积(AUC)值为 0.949±0.060。在测试过程中,BOO 诊断模型的准确率、灵敏度和特异性分别为 94.4%、100% 和 89.3%:结论:利用 UDS 中的 9 个重要指标构建了基于机器学习算法的女性 BOO 诊断模型,该模型的分类准确性和稳定性较好。
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来源期刊
CiteScore
4.10
自引率
4.30%
发文量
82
审稿时长
4 weeks
期刊介绍: Investigative and Clinical Urology (Investig Clin Urol, ICUrology) is an international, peer-reviewed, platinum open access journal published bimonthly. ICUrology aims to provide outstanding scientific and clinical research articles, that will advance knowledge and understanding of urological diseases and current therapeutic treatments. ICUrology publishes Original Articles, Rapid Communications, Review Articles, Special Articles, Innovations in Urology, Editorials, and Letters to the Editor, with a focus on the following areas of expertise: • Precision Medicine in Urology • Urological Oncology • Robotics/Laparoscopy • Endourology/Urolithiasis • Lower Urinary Tract Dysfunction • Female Urology • Sexual Dysfunction/Infertility • Infection/Inflammation • Reconstruction/Transplantation • Geriatric Urology • Pediatric Urology • Basic/Translational Research One of the notable features of ICUrology is the application of multimedia platforms facilitating easy-to-access online video clips of newly developed surgical techniques from the journal''s website, by a QR (quick response) code located in the article, or via YouTube. ICUrology provides current and highly relevant knowledge to a broad audience at the cutting edge of urological research and clinical practice.
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