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A Portable Wireless Photoplethysomography Sensor for Assessing Health of Arteriovenous Fistula Using Class-Weighted Support Vector Machine

机译:使用类加权支持向量机评估动静脉瘘健康的便携式无线光电体积描记器传感器

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摘要

A portable, wireless photoplethysomography (PPG) sensor for assessing arteriovenous fistula (AVF) by using class-weighted support vector machines (SVM) was presented in this study. Nowadays, in hospital, AVF are assessed by ultrasound Doppler machines, which are bulky, expensive, complicated-to-operate, and time-consuming. In this study, new PPG sensors were proposed and developed successfully to provide portable and inexpensive solutions for AVF assessments. To develop the sensor, at first, by combining the dimensionless number analysis and the optical Beer Lambert’s law, five input features were derived for the SVM classifier. In the next step, to increase the signal-noise ratio (SNR) of PPG signals, the front-end readout circuitries were designed to fully use the dynamic range of analog-digital converter (ADC) by controlling the circuitries gain and the light intensity of light emitted diode (LED). Digital signal processing algorithms were proposed next to check and fix signal anomalies. Finally, the class-weighted SVM classifiers employed five different kernel functions to assess AVF quality. The assessment results were provided to doctors for diagonosis and detemining ensuing proper treatments. The experimental results showed that the proposed PPG sensors successfully achieved an accuracy of 89.11% in assessing health of AVF and with a type II error of only 9.59%.
机译:本研究提出了一种便携式无线光电体积描记术(PPG)传感器,该传感器通过使用类加权支持向量机(SVM)评估动静脉瘘(AVF)。如今,在医院中,AVF是通过超声多普勒仪进行评估的,该机器体积大,价格昂贵,操作复杂且耗时。在这项研究中,新的PPG传感器被提出并成功开发,以为AVF评估提供便携式和廉价的解决方案。为了开发传感器,首先,通过结合无量纲数分析和光学比尔·兰伯特定律,为SVM分类器导出了五个输入特征。下一步,为了增加PPG信号的信噪比(SNR),前端读出电路被设计为通过控制电路增益和光强度来充分利用模数转换器(ADC)的动态范围。发光二极管(LED)的数量。接下来提出了数字信号处理算法,以检查和修复信号异常。最后,类加权SVM分类器采用了五种不同的内核函数来评估AVF质量。评估结果已提供给医生以进行诊断和确定随后的适当治疗。实验结果表明,提出的PPG传感器在评估AVF的健康性方面成功达到89.11%的准确度,II型误差仅为9.59%。

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