Ramezani Ali, Silverton Natalie, Kuck Kai
Department of Anesthesiology, University of Utah, Salt Lake City, UT, USA.
Department of Biomedical Engineering, University of Utah, Salt Lake City, UT, USA.
J Clin Monit Comput. 2025 May 5. doi: 10.1007/s10877-025-01298-8.
Acute kidney injury (AKI) affects 40-50% of cardiac surgery patients and is closely linked to renal medullary hypoxia. Although urinary oxygen partial pressure (PuO) offers real-time insight into renal oxygenation, variable urine transit times through the urinary catheter can impair measurement accuracy. This study aimed to develop an algorithm that calculates transit time by modeling urine flow as discrete particles and to assess whether it improves PuO estimation. The proposed algorithm models urine flow as discrete particles, tracking transit time through the urinary catheter. The transit time allows correcting oxygen measurements at the catheter exit, mitigating distortions from variable flow rates. Validation used a bench-top system with a flow sensor, a 30-cm glass tube simulating a catheter, and optode-based oxygen sensors positioned inside a flask and at the catheter entry and exit. Flow rates spanned 20-450 mL/h, and flask oxygen 15-120 mmHg, with exit compared to entrance values. Without adjustment, the root mean square error (RMSE) between entrance and exit oxygen measurements was 15.71 mmHg. Incorporating the transit time correction reduced the RMSE to 5.82 mmHg. This marked improvement indicates that the corrected measurements more accurately reflect the true oxygen levels entering the catheter across various flow conditions. By accounting for dynamic urine transit times, the proposed algorithm substantially enhances the accuracy of urinary oxygen monitoring. This improvement in estimating renal oxygenation may facilitate noninvasive detection of renal hypoxia and allow for timely interventions to reduce the incidence and severity of AKI in cardiac surgery patients.
急性肾损伤(AKI)影响40%-50%的心脏手术患者,且与肾髓质缺氧密切相关。尽管尿氧分压(PuO)能实时反映肾脏氧合情况,但尿液通过导尿管的传输时间变化会影响测量准确性。本研究旨在开发一种算法,通过将尿流建模为离散颗粒来计算传输时间,并评估其是否能提高PuO估计的准确性。所提出的算法将尿流建模为离散颗粒,跟踪尿液通过导尿管的传输时间。该传输时间可用于校正导尿管出口处的氧测量值,减轻流速变化带来的偏差。验证使用了一个台式系统,该系统配备流量传感器、一根模拟导尿管的30厘米玻璃管,以及置于烧瓶内、导尿管入口和出口处的基于光极的氧传感器。流速范围为20-450毫升/小时,烧瓶内的氧分压为15-120毫米汞柱,将出口处的测量值与入口处的值进行比较。未经校正时,入口和出口氧测量值之间的均方根误差(RMSE)为15.71毫米汞柱。纳入传输时间校正后,RMSE降至5.82毫米汞柱。这一显著改善表明,校正后的测量值能更准确地反映在各种流速条件下进入导尿管的真实氧水平。通过考虑动态尿液传输时间,所提出的算法大幅提高了尿氧监测的准确性。这种在估计肾脏氧合方面的改进可能有助于无创检测肾脏缺氧,并能及时进行干预,以降低心脏手术患者AKI的发生率和严重程度。