학술논문

Noninvasive Urinary Bladder Volume Estimation With Artifact-Suppressed Bioimpedance Measurements
Document Type
Periodical
Source
IEEE Sensors Journal IEEE Sensors J. Sensors Journal, IEEE. 24(2):1633-1643 Jan, 2024
Subject
Signal Processing and Analysis
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Robotics and Control Systems
Bladder
Volume measurement
Electrodes
Ultrasonic variables measurement
Sensors
Temperature measurement
Kidney
Bioimpedance (BI)
bladder monitoring
machine learning
noninvasive
wearables
Language
ISSN
1530-437X
1558-1748
2379-9153
Abstract
Urine output is a vital parameter to gauge kidney health. Current monitoring methods include manually written records, invasive urinary catheterization, or ultrasound measurements performed by highly skilled personnel. Catheterization bears high risks of infection while intermittent ultrasound measures and manual recording are time-consuming and might miss early signs of kidney malfunction. Bioimpedance (BI) measurements may serve as a noninvasive alternative for measuring urine volume in vivo. However, limited robustness has prevented its clinical translation. Here, a deep learning-based algorithm is presented that processes the local BI of the lower abdomen and suppresses artifacts to measure the bladder volume quantitatively, noninvasively, and without the continuous need for additional personnel. A tetrapolar BI wearable system was used to collect continuous bladder volume data from three healthy subjects to demonstrate the feasibility of operation, while clinical gold standards of urodynamic ( ${n}$ – 6) and uroflowmetry tests ( ${n}$ – 8) provided the ground truth. Optimized location for electrode placement and a model for the change in BI with changing bladder volume are deduced. The average error for full bladder volume estimation and for residual volume estimation was $-29\,\,\pm $ 87.6 mL, thus, comparable to commercial portable ultrasound devices (Bland Altman analysis showed a bias of −5.2 mL with LoA between 119.7 and −130.1 mL), while providing the additional benefit of hands-free, noninvasive, and continuous bladder volume estimation. The combination of the wearable BI sensor node and the presented algorithm provides an attractive alternative to current standard of care with potential benefits in providing insights into kidney function.