基于直接梳状数据挖掘升级的紧凑型量子级联激光无创葡萄糖传感器。

IF 3.5 3区 综合性期刊 Q2 CHEMISTRY, ANALYTICAL Sensors Pub Date : 2025-01-20 DOI:10.3390/s25020587
Liying Song, Zhiqiang Han, Hengyong Nie, Woon-Ming Lau
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引用次数: 0

摘要

中红外光谱分析一直被认为是最准确的无创血糖测量方法,但目前还没有实用的紧密型中红外血糖传感器达到美国食品和药物管理局(FDA)设定的精度基准:要取代市场上的针刺式血糖仪,一种新的传感器必须首先显示其95%的血糖测量误差低于这些血糖仪的15%。尽管最近成熟的傅里叶变换红外(FTIR)光谱的创新开发已经达到了FDA这样的精度基准,但FTIR光谱仪太笨重了。量子级联激光器(qcl)的进步可以使FTIR光谱仪的尺寸减小,但紧凑的基于qcl的无创血糖传感器尚不可用。这项工作报告了两个紧凑的传感器系统设计,都达到了FDA的精度基准。每种设计通常包括一个用于发射的中红外QCL,一个用于数据采集的多重衰减全反射棱镜(MATR)和一个用于数据分析的计算机控制红外探测器。第一种设计将梳状信号转换为常规光谱,然后对所得光谱进行数据挖掘以产生血糖浓度。当使用压力执行器将患者的鱼底压在MATR上时,传感器精度被认为达到FDA精度基准。第二种设计放弃了将梳到谱转换的数据处理步骤,直接对“第一手”梳信号进行数据挖掘。除了将测量精度提高到FDA精度基准之外,即使没有压力执行器,直接梳状数据挖掘也可以提高传感器系统的速度和数据完整性,这可能会影响糖尿病患者的医疗保健。具体来说,传感器的性能通过492次葡萄糖吸收扫描在时域上得到验证,每次扫描有2000万个数据点,这些数据点来自4个葡萄糖浓度为3.9-7.9 mM的受试者。传感器数据挖掘了164组临界奇异强度,每组由4个关键奇异强度直接从9840万个原始信号数据点中组成,656个临界奇异强度进行了机器学习回归模型分析。产生164个葡萄糖浓度。这些浓度与用标准手指刺入式血糖仪测得的浓度相关。164次测量的准确度为99.6%,与标准血糖仪的误差不超过15%。
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Compact Quantum Cascade Laser-Based Noninvasive Glucose Sensor Upgraded with Direct Comb Data-Mining.

Mid-infrared spectral analysis has long been recognized as the most accurate noninvasive blood glucose measurement method, yet no practical compact mid-infrared blood glucose sensor has ever passed the accuracy benchmark set by the USA Food and Drug Administration (FDA): to substitute for the finger-pricking glucometers in the market, a new sensor must first show that 95% of their glucose measurements have errors below 15% of these glucometers. Although recent innovative exploitations of the well-established Fourier-transform infrared (FTIR) spectroscopy have reached such FDA accuracy benchmarks, an FTIR spectrometer is too bulky. The advancements of quantum cascade lasers (QCLs) can lead to FTIR spectrometers of reduced size, but compact QCL-based noninvasive blood glucose sensors are not yet available. This work reports on two compact sensor system designs, both reaching the FDA accuracy benchmark. Each design commonly comprises a mid-infrared QCL for emission, a multiple attenuation total reflection prism (MATR) for data acquisition, and a computer-controlled infrared detector for data analysis. The first design translates the comb-like signals into conventional spectra, and then data-mines the resultant spectra to yield blood glucose concentrations. When a pressure actuator is employed to press the patient's hypothenar against the MATR, the sensor accuracy is considered to reach the FDA accuracy benchmark. The second design abandons the data processing step of translating combs-to-spectra and directly data-mines the "first-hand" comb signal. Beyond increasing the measurement accuracy to the FDA accuracy benchmark, even without a pressure actuator, direct comb data-mining upgrades the sensor system with speed and data integrity, which can impact the healthcare of diabetic patients. Specifically, the sensor performance is validated with 492 glucose absorption scans in the time domain, each with 20 million datapoints measured from four subjects with glucose concentrations of 3.9-7.9 mM. The sensor data-mines 164 sets of critical singularity strengths, each comprising 4 critical singularity strengths directly from the 9840 million raw signal datapoints, and the 656 critical singularity strengths are subjected to a machine-learning regression model analysis, which yields 164 glucose concentrations. These concentrations are correlated with those measured with a standard finger-pricking glucometer. An accuracy of 99.6% is confirmed from the 164 measurements with errors not more than 15% from the reference of the standard glucometer.

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来源期刊
Sensors
Sensors 工程技术-电化学
CiteScore
7.30
自引率
12.80%
发文量
8430
审稿时长
1.7 months
期刊介绍: Sensors (ISSN 1424-8220) provides an advanced forum for the science and technology of sensors and biosensors. It publishes reviews (including comprehensive reviews on the complete sensors products), regular research papers and short notes. Our aim is to encourage scientists to publish their experimental and theoretical results in as much detail as possible. There is no restriction on the length of the papers. The full experimental details must be provided so that the results can be reproduced.
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