Translational Medical Device Lab (tmdlab.ie), National University of Ireland Galway, Galway, Ireland.
Department of Electrical & Electronic Engineering, College of Engineering & Informatics, National University of Ireland Galway, Galway, Ireland.
Sci Rep. 2018 Mar 29;8(1):5363. doi: 10.1038/s41598-018-23786-5.
Urinary Incontinence affects over 200 million people worldwide, severely impacting the quality of life of individuals. Bladder state detection technology has the potential to improve the lives of people with urinary incontinence by alerting the user before voiding occurs. To this end, the objective of this study is to investigate the feasibility of using supervised machine learning classifiers to determine the bladder state of 'full' or 'not full' from electrical impedance measurements. Electrical impedance data was obtained from computational models and a realistic experimental pelvic phantom. Multiple datasets with increasing complexity were formed for varying noise levels in simulation. 10-Fold testing was performed on each dataset to classify 'full' and 'not full' bladder states, including phantom measurement data. Support vector machines and k-Nearest-Neighbours classifiers were compared in terms of accuracy, sensitivity, and specificity. The minimum and maximum accuracies across all datasets were 73.16% and 100%, respectively. Factors that contributed most to misclassification were the noise level and bladder volumes near the threshold of 'full' or 'not full'. This paper represents the first study to use machine learning for bladder state detection with electrical impedance measurements. The results show promise for impedance-based bladder state detection to support those living with urinary incontinence.
尿失禁影响着全球超过 2 亿人,严重影响了个人的生活质量。膀胱状态检测技术有潜力通过在排尿前向用户发出警报来改善尿失禁患者的生活。为此,本研究旨在探讨使用监督机器学习分类器从电阻抗测量中确定“满”或“不满”膀胱状态的可行性。从计算模型和现实的盆腔仿体实验中获得了电阻抗数据。针对模拟中不同噪声水平,形成了多个具有不同复杂性的数据集。对每个数据集进行 10 倍测试,以分类“满”和“不满”的膀胱状态,包括仿体测量数据。比较了支持向量机和 k-最近邻分类器的准确性、灵敏度和特异性。所有数据集的最小和最大准确率分别为 73.16%和 100%。导致分类错误的主要因素是噪声水平和接近“满”或“不满”阈值的膀胱容量。本文代表了首次使用机器学习进行基于电阻抗测量的膀胱状态检测的研究。结果表明,基于阻抗的膀胱状态检测有望为尿失禁患者提供支持。