Reconfigurable Point-of-Care System for Hemoglobin Estimation From Photoplethysmogram

IF 2.2 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Sensors Letters Pub Date : 2024-11-21 DOI:10.1109/LSENS.2024.3504333
Aditta Chowdhury;Mehdi Hasan Chowdhury;M. Ali Akber Dewan;Ray C.C. Cheung
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Abstract

Hemoglobin is an integral part of blood, and its abnormality indicates various diseases. Different noninvasive methods are developed to predict the concentration of hemoglobin. Previous studies verified the potential of photoplethysmogram (PPG) signals in estimating the health parameter. Although different hardware tools have been used to develop digital systems over the years, they lack the reconfigurability feature needed to develop a point-of-care (POC) system. In this study, a field programmable gate array (FPGA)-based reconfigurable hardware system, including preprocessor, memory and control, feature extractor and classifier subsystems, is designed targeting Zynq 7000 Zedboard. The system utilizes six features extracted from the PPG signals collected using DCM08 PPG sensor and linear regression classifier model for prediction. PPG signals based on four different wavelengths of light are tested, and the best result has been achieved with infrared light having a wavelength of 940 nm, which will help to design PPG sensors for wearable and medical devices. The mean absolute error with this wavelength is 2.55 g/L with an error rate of 1.78%. The power consumption analysis validates the designed system to be a low-power device. The designed processor can be used as a POC system, and due to its reconfigurable advantage, the system can be further improved by adding other health parameter predictions and disease detection.
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从光容积描记图估计血红蛋白的可重构护理点系统
血红蛋白是血液的重要组成部分,其异常预示着多种疾病。不同的非侵入性方法被开发来预测血红蛋白的浓度。以往的研究证实了光容积脉搏图(PPG)信号在估计健康参数方面的潜力。尽管多年来已经使用了不同的硬件工具来开发数字系统,但它们缺乏开发护理点(POC)系统所需的可重构性特征。本研究针对Zynq 7000 Zedboard设计了一个基于现场可编程门阵列(FPGA)的可重构硬件系统,包括预处理器、内存和控制、特征提取器和分类器子系统。该系统利用DCM08 PPG传感器采集的PPG信号中提取的6个特征,结合线性回归分类器模型进行预测。基于四种不同波长的光对PPG信号进行了测试,其中波长为940 nm的红外光获得了最好的结果,这将有助于设计用于可穿戴和医疗设备的PPG传感器。该波长的平均绝对误差为2.55 g/L,误差率为1.78%。功耗分析验证了所设计的系统是一个低功耗器件。所设计的处理器可以作为POC系统使用,并且由于其可重构的优点,系统可以通过添加其他健康参数预测和疾病检测来进一步改进。
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来源期刊
IEEE Sensors Letters
IEEE Sensors Letters Engineering-Electrical and Electronic Engineering
CiteScore
3.50
自引率
7.10%
发文量
194
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Table of Contents Front Cover IEEE Sensors Council Information IEEE Sensors Letters Subject Categories for Article Numbering Information IEEE Sensors Letters Publication Information
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