用电压信号估计膀胱体积的线性回归

Eoghan Dunne, A. Santorelli, Brian McGinley, M. O’halloran, E. Porter
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引用次数: 3

摘要

尿失禁是一种常见的疾病,会严重影响患者的生活。利用骨盆中不同组织的电性差异的膀胱容量监测解决方案有可能帮助医务人员在尿失禁的决策过程中。在这项工作中,我们研究了线性回归作为一种将膀胱体积分配给测量电压值的方法。我们发现,线性回归的性能比之前研究的机器学习回归算法高出近4倍。与该领域以前的工作相比,这种线性回归方法也能够更有效地处理训练边界之外的卷。需要做更多的工作来进一步改进基于电压信号的膀胱体积估计,特别是在高噪声水平下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear Regression for Estimating Bladder Volume with Voltage Signals
Urinary incontinence is a common condition that can severely impact the lives of those who have it. Bladder volume monitoring solutions that exploit the electrical differences of different tissues in the pelvis have the potential to help medical personnel in the decision-making process with urinary incontinence. In this work, we investigate linear regression as a means of assigning bladder volume to the measured voltage values. We found that linear regression outperforms the previously studied machine learning regression algorithms by nearly a factor of 4. This linear regression approach is also more effectively able to handle volumes outside the training boundaries in comparison to previous work in the field. More work is needed to further improve the estimate of bladder volume based on the voltage signals, especially at high noise levels.
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