Department of Computer Science and Engineering, University of South Florida, Tampa, FL, USA.
Department of Biomedical Engineering, Lerner Research Institute, Cleveland Clinic, Cleveland, OH, USA.
Proc Inst Mech Eng H. 2024 Jun;238(6):608-618. doi: 10.1177/09544119241264304. Epub 2024 Aug 6.
Lower urinary tract dysfunction (LUTD) is a debilitating condition that affects millions of individuals worldwide, greatly diminishing their quality of life. The use of wireless, catheter-free implantable devices for long-term ambulatory bladder monitoring, combined with a single-sensor system capable of detecting various bladder events, has the potential to significantly enhance the diagnosis and treatment of LUTD. However, these systems produce large amounts of bladder data that may contain physiological noise in the pressure signals caused by motion artifacts and sudden movements, such as coughing or laughing, potentially leading to false positives during bladder event classification and inaccurate diagnosis/treatment. Integration of activity recognition (AR) can improve classification accuracy, provide context regarding patient activity, and detect motion artifacts by identifying contractions that may result from patient movement. This work investigates the utility of including data from inertial measurement units (IMUs) in the classification pipeline, and considers various digital signal processing (DSP) and machine learning (ML) techniques for optimization and activity classification. In a case study, we analyze simultaneous bladder pressure and IMU data collected from an ambulating female Yucatan minipig. We identified 10 important, yet relatively inexpensive to compute signal features, with which we achieve an average 91.5% activity classification accuracy. Moreover, when classified activities are included in the bladder event analysis pipeline, we observe an improvement in classification accuracy, from 81% to 89.0%. These results suggest that certain IMU features can improve bladder event classification accuracy with low computational overhead.: This work establishes that activity recognition may be used in conjunction with single-channel bladder event detection systems to distinguish between contractions and motion artifacts for reducing the incorrect classification of bladder events. This is relevant for emerging sensors that measure intravesical pressure alone or for data analysis of bladder pressure in ambulatory subjects that contain significant abdominal pressure artifacts.
下尿路功能障碍(LUTD)是一种使人虚弱的疾病,影响着全球数以百万计的人,大大降低了他们的生活质量。使用无线、无导管的可植入设备进行长期可移动膀胱监测,结合能够检测各种膀胱事件的单传感器系统,有可能显著改善 LUTD 的诊断和治疗。然而,这些系统产生了大量的膀胱数据,其中可能包含由运动伪影和突然运动(如咳嗽或大笑)引起的压力信号中的生理噪声,这可能导致在膀胱事件分类中出现假阳性和不准确的诊断/治疗。活动识别(AR)的集成可以提高分类准确性,提供有关患者活动的上下文,并通过识别可能由于患者运动引起的收缩来检测运动伪影。这项工作研究了在分类管道中包含来自惯性测量单元(IMU)的数据的实用性,并考虑了各种数字信号处理(DSP)和机器学习(ML)技术以进行优化和活动分类。在一个案例研究中,我们分析了从可移动的雌性尤卡坦迷你猪收集的同时膀胱压力和 IMU 数据。我们确定了 10 个重要但计算成本相对较低的信号特征,我们使用这些特征实现了平均 91.5%的活动分类准确性。此外,当将分类活动包含在膀胱事件分析管道中时,我们观察到分类准确性有所提高,从 81%提高到 89.0%。这些结果表明,某些 IMU 特征可以在计算开销较低的情况下提高膀胱事件分类准确性。这项工作表明,活动识别可以与单通道膀胱事件检测系统结合使用,以区分收缩和运动伪影,从而减少膀胱事件的错误分类。这对于单独测量膀胱内压力的新兴传感器或包含显著腹部压力伪影的可移动对象的膀胱压力数据分析都具有重要意义。