Zhang Wensi, Pannek Jurgen, Wollner Jens, Riener Robert, Paez-Granados Diego
Spinal Cord Injury & Artificial Intelligence (SCAI) Laboratory, D-HESTETH Zürich 8092 Zürich Switzerland.
Swiss Paraplegic Research (SPF) 6207 Nottwil Switzerland.
IEEE J Transl Eng Health Med. 2025 Feb 21;13:111-122. doi: 10.1109/JTEHM.2025.3544486. eCollection 2025.
Investigating consistent methods and metrics for classifying Detrusor Overactivity (DO) events and developing an automated robust method for clinical measurements calculation from cystometry data in persons with spinal cord injury (SCI).
A two-stage method for was proposed to detect DO events. In the first stage, DO peaks were detected using local linear models combined with thresholding criteria derived from clinical definitions and known artifacts. In the second stage, a segmentation method was proposed to detect the start and end time points of each DO event, marking the DO activity periods. As a result, complete clinical measurements, including bladder compliance, can be estimated automatically. The method was developed and tested on 77 anonymized urodynamic samples from SCI individuals (40 DO-positive, 37 DO-negative) with 158 annotated DO events.
On test data, in terms of the patient-level diagnosis of DO, the proposed method achieved an accuracy of 100%. Individual DO event detection achieved an average precision of 0.94 and recall of 0.72. Detrusor activity period identification showed a precision of 0.86 and a recall of 0.88. The task of automated bladder compliance estimation showed that the point-value-based method yields a lower median absolute error (MAE) compared to the proposed line-fitting-based method, with a MAE of 5.20 and 7.14 ml/cmH2O, respectively. Finally, for classifying bladder function into normal, low and severely low compliance, the proposed method had an accuracy of 88%.
Our proposed local model fitting with thresholding based on clinical knowledge, achieved accurate automated results for cytometry data, which will enable objective assessment of routinely performed examinations. This work proposes a fully automated detrusor overactivity diagnosis and feature extraction method. Empowering medical teams to consistently assess urodynamic studies while aiding disease characterization and enhancing clinical decision-making for SCI patients. Furthermore, it provides a mathematically defined method for extending the pipeline to other populations and standardizing clinical assessments.Category: Clinical Engineering, Medical Devices and Systems.
研究用于对逼尿肌过度活动(DO)事件进行分类的一致方法和指标,并开发一种从脊髓损伤(SCI)患者的膀胱测压数据中计算临床测量值的自动化稳健方法。
提出了一种两阶段方法来检测DO事件。在第一阶段,使用局部线性模型结合从临床定义和已知伪影得出的阈值标准来检测DO峰值。在第二阶段,提出了一种分割方法来检测每个DO事件的开始和结束时间点,标记DO活动期。结果,可以自动估计包括膀胱顺应性在内的完整临床测量值。该方法在来自SCI个体的77个匿名尿动力学样本(40个DO阳性,37个DO阴性)上进行了开发和测试,其中有158个带注释的DO事件。
在测试数据上,就DO的患者水平诊断而言,所提出的方法准确率达到100%。单个DO事件检测的平均精度为0.94,召回率为0.72。逼尿肌活动期识别的精度为0.86,召回率为0.88。自动膀胱顺应性估计任务表明,与所提出的基于线性拟合的方法相比,基于点值的方法产生的中位数绝对误差(MAE)更低,分别为5.20和7.14 ml/cmH2O。最后,对于将膀胱功能分类为正常、低顺应性和严重低顺应性,所提出的方法准确率为88%。
我们基于临床知识提出的带阈值的局部模型拟合,对膀胱测压数据实现了准确的自动化结果,这将使对常规检查进行客观评估成为可能。这项工作提出了一种全自动的逼尿肌过度活动诊断和特征提取方法。使医疗团队能够一致地评估尿动力学研究,同时有助于疾病特征描述并加强对SCI患者的临床决策。此外,它提供了一种数学定义的方法,可将流程扩展到其他人群并标准化临床评估。类别:临床工程、医疗设备与系统。