Mei Haonan, Wang Zhishun, Zheng Qingyuan, Jiao Panpan, Lv Shengqi, Liu Xiuheng, Chen Hui, Yang Rui
Department of Urology, Renmin Hospital of Wuhan University, Wuhan, China.
Institute of Urologic Disease, Renmin Hospital of Wuhan University, Wuhan, China.
Neurourol Urodyn. 2025 Feb;44(2):512-519. doi: 10.1002/nau.25665. Epub 2025 Jan 13.
To automatically identify and diagnose bladder outflow obstruction (BOO) and detrusor underactivity (DUA) in male patients with lower urinary tract symptoms through urodynamics exam.
We performed a retrospective review of 1949 male patients who underwent a urodynamic study at two institutions. Deep Convolutional Neural Networks scheme combined with a short-time Fourier transform algorithm was trained to perform an accurate diagnosis of BOO and DUA, utilizing five-channel urodynamic data (consisting of uroflowmetry, urine volume, intravesical pressure, abdominal pressure, and detrusor pressure). We used fivefold cross-validation, constructing training and internal test sets from 1725 patients from Renmin Hospital of Wuhan University (RHWU) at a 4:1 ratio, and used an independent external validation set consisting of 224 patients from The Central Hospital of Wuhan (TCHO) to build and evaluate the DI model. We further conducted subgroup analyses to provide a more detailed description of the AI model's interpretability regarding urodynamics.
The AUC scores of BOO and DUA, which were measured through the STFT-based deep learning method, were 0.945 ± 0.020 and 0.929 ± 0.039 in RHWU and 0.881 and 0.850 in TCHO, respectively. The diagnostic efficiency of other subgroup analyses and indicators was also effective.
In this study, the proposed deep neural network combined with the short-time Fourier transform method is robust and feasible for interpreting the results of urodynamics in men and has the potential for application to assist clinicians in real clinical settings.
通过尿动力学检查自动识别和诊断男性下尿路症状患者的膀胱出口梗阻(BOO)和逼尿肌活动减退(DUA)。
我们对在两家机构接受尿动力学研究的1949例男性患者进行了回顾性研究。利用五通道尿动力学数据(包括尿流率、尿量、膀胱内压、腹压和逼尿肌压),训练结合短时傅里叶变换算法的深度卷积神经网络方案,以准确诊断BOO和DUA。我们采用五折交叉验证,以4:1的比例从武汉大学人民医院(RHWU)的1725例患者中构建训练集和内部测试集,并使用由武汉市中心医院(TCHO)的224例患者组成的独立外部验证集来构建和评估DI模型。我们进一步进行亚组分析,以更详细地描述人工智能模型对尿动力学的解释能力。
通过基于短时傅里叶变换的深度学习方法测得的BOO和DUA的AUC分数,在RHWU分别为0.945±0.020和0.929±0.039,在TCHO分别为0.881和0.850。其他亚组分析和指标的诊断效率也很高。
在本研究中,所提出的深度神经网络结合短时傅里叶变换方法在解释男性尿动力学结果方面是稳健且可行的,并且有潜力应用于实际临床环境中辅助临床医生。