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Machine Learning Classification for Assessing the Degree of Stenosis and Blood Flow Volume at Arteriovenous Fistulas of Hemodialysis Patients Using a New Photoplethysmography Sensor Device

机译:使用新型光体积描记器传感器设备评估血液透析患者动静脉瘘管狭窄程度和血流量的机器学习分类

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摘要

The classifier of support vector machine (SVM) learning for assessing the quality of arteriovenous fistulae (AVFs) in hemodialysis (HD) patients using a new photoplethysmography (PPG) sensor device is presented in this work. In clinical practice, there are two important indices for assessing the quality of AVF: the blood flow volume (BFV) and the degree of stenosis (DOS). In hospitals, the BFV and DOS of AVFs are nowadays assessed using an ultrasound Doppler machine, which is bulky, expensive, hard to use, and time consuming. In this study, a newly-developed PPG sensor device was utilized to provide patients and doctors with an inexpensive and small-sized solution for ubiquitous AVF assessment. The readout in this sensor was custom-designed to increase the signal-to-noise ratio (SNR) and reduce the environment interference via maximizing successfully the full dynamic range of measured PPG entering an analog–digital converter (ADC) and effective filtering techniques. With quality PPG measurements obtained, machine learning classifiers including SVM were adopted to assess AVF quality, where the input features are determined based on optical Beer–Lambert’s law and hemodynamic model, to ensure all the necessary features are considered. Finally, the clinical experiment results showed that the proposed PPG sensor device successfully achieved an accuracy of 87.84% based on SVM analysis in assessing DOS at AVF, while an accuracy of 88.61% was achieved for assessing BFV at AVF.
机译:这项工作介绍了一种用于评估血液透析(HD)患者动静脉瘘(AVF)的质量的支持向量机(SVM)学习的分类器。在临床实践中,有两个重要的指标可评估AVF的质量:血流量(BFV)和狭窄程度(DOS)。如今,在医院中,AVF的BFV和DOS是使用超声波多普勒仪进行评估的,该仪体积大,价格昂贵,难以使用且耗时。在这项研究中,使用了最新开发的PPG传感器设备,为患者和医生提供了一种廉价,小型的解决方案,可用于无处不在的AVF评估。该传感器的读数是定制设计的,可通过成功最大化进入模拟数字转换器(ADC)的被测PPG的全部动态范围和有效的滤波技术来增加信噪比(SNR)并减少环境干扰。通过获得高质量的PPG测量,采用了包括SVM在内的机器学习分类器来评估AVF质量,其中,根据光学比尔-兰伯特定律和血液动力学模型确定输入特征,以确保考虑了所有必要特征。最终,临床实验结果表明,基于SVM分析的PPG传感器设备在AVF的DOS评估中成功实现了87.84%的准确度,而在AVF的BFV的评估中则达到了88.61%的准确度。

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