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Quality Evaluation via PPG on the AVFs of Hemodialysis Patients Based on Both Blood Flow Volume and Degree of Stenosis

机译:基于血流量和狭窄程度的血液透析患者的PPG质量评价

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The classifier of support vector machine (SVM) learning for assessing quality of arteriovenous fistula (AVF) at hemodialysis (HD) patients using a new photoplethysmography (PPG) sensor are presented in this work. Based on current medical standard, there are two important indices for assessing AVF quality, the blood flow volume (BFV) and the degree of stenosis (DOS). In current clinical practice, BFV and DOS of AVFs are assessed by using an ultrasound Doppler machine, which is bulky, expensive, hard-to-use and time-consuming. Therefore, a new PPG sensor module is designed to provide patients and doctors an inexpensive and small-sized solution to assess AVF quality. The readout of the sensor is successfully optimized to increase the signal to noise ratio (SNR) and reduce the environment interference, the readout circuitries are designed to fit the full dynamic range of analog-digital converter (ADC) and to filter out the noise. To assess quality of AVF, three different machine learning classifiers are developed, where the input features are selected based on optical Beer Lambert's law and hemodynamic model. Finally, the clinical experiment results show that the proposed PPG sensor successfully achieves an accuracy of 87.838% in assessing AVF quality based on satisfactory DOS and BFV measured.
机译:在这项工作中提出了在血液透析(HD)传感器(PPG)传感器的血液透析(HD)患者的血液透析(HD)患者中评估动静脉瘘(AVF)质量的支持向量机(SVM)学习的分类器。基于目前的医疗标准,评估AVF质量的两个重要指标,血流量(BFV)和狭窄程度(DOS)。在目前的临床实践中,通过使用超声多普勒机来评估BFV和AVFS的DOS,这是庞大,昂贵,难以使用和耗时的。因此,新的PPG传感器模块旨在为患者和医生提供一种廉价且小型的解决方案来评估AVF质量。成功优化传感器的读数以增加信噪比(SNR)并降低环境干扰,读出电路设计成适用于模拟数字转换器(ADC)的全动态范围,并滤除噪声。为了评估AVF的质量,开发了三种不同的机器学习分类器,其中基于光学兰伯特定律和血液动力学模型选择输入特征。最后,临床实验结果表明,基于令人满意的DOS和BFV,所提出的PPG传感器在评估AVF质量方面成功地实现了87.838%的准确性。

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