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使用带有银纳米三脚架的便携式微流控表面增强拉曼散射传感器和一维卷积神经网络模型分析对汗液中的尿素和葡萄糖进行双重检测。

Dual Detection of Urea and Glucose in Sweat Using a Portable Microfluidic SERS Sensor with Silver Nano-Tripods and 1D-CNN Model Analysis.

作者信息

Xiong Siyue, Wang Chengxuan, Zhu Chushu, Dong Peitao, Wu Xuezhong

机构信息

College of Intelligence Science and Technology, National University of Defense Technology, Changsha, Hunan 410073, China.

出版信息

ACS Appl Mater Interfaces. 2024 Dec 4;16(48):65918-65926. doi: 10.1021/acsami.4c14962. Epub 2024 Nov 21.

Abstract

Sweat, a noninvasive metabolic product of normal physiological responses, offers valuable clinical insights into body conditions without causing harm. Key components in sweat, such as urea and glucose, are closely linked to kidney function and blood glucose levels. Portable sweat sensors, equipped with diverse sensing systems, can monitor fluctuations in urea and glucose concentrations, thus providing methods for assessing kidney function and monitoring diabetes. This study presents a flexible, portable microfluidic surface-enhanced Raman scattering (SERS) sensor designed to detect the unique fingerprint of target biomarkers. This flexible, self-adhesive microfluidic chip, constructed from modified polydimethylsiloxane, features silver nanotripods (AgNTs) with densely distributed "hotspots" created via the oblique angle deposition technique. These AgNTs act as active substrates for SERS within the microfluidic platform, enabling direct skin contact to collect, transport, store, and analyze sweat. The chip functions as a quantitative urea sensor with a limit of detection (LOD) of 10 M. For enhanced sensitivity for glucose detection, the SERS substrate is modified with 4-mercaptophenylboronic acid, achieving a LOD of 10 M. This satisfies the measurement requirements for both urea and glucose in sweat under physiological conditions. Furthermore, the one-dimensional convolutional neural network model significantly enhances the accuracy of biomarker detection, facilitating the quantitative analysis of urea and glucose. This advancement contributes to the development of a controlled, convenient, and dynamic biosensing system for personalized point-of-care testing and supports the creation of intelligent wearable and nondestructive devices.

摘要

汗液作为正常生理反应的一种非侵入性代谢产物,能在不造成伤害的情况下为身体状况提供有价值的临床见解。汗液中的关键成分,如尿素和葡萄糖,与肾功能和血糖水平密切相关。配备各种传感系统的便携式汗液传感器可以监测尿素和葡萄糖浓度的波动,从而为评估肾功能和监测糖尿病提供方法。本研究提出了一种灵活、便携式的微流控表面增强拉曼散射(SERS)传感器,旨在检测目标生物标志物的独特指纹。这种灵活的自粘性微流控芯片由改性聚二甲基硅氧烷构建而成,具有通过倾斜角沉积技术制造的、带有密集分布“热点”的银纳米三脚架(AgNTs)。这些AgNTs在微流控平台内充当SERS的活性底物,能够直接与皮肤接触以收集、运输、储存和分析汗液。该芯片作为一种定量尿素传感器,检测限(LOD)为10 M。为提高葡萄糖检测的灵敏度,SERS底物用4-巯基苯硼酸进行了修饰,实现了10 M的LOD。这满足了生理条件下汗液中尿素和葡萄糖的测量要求。此外,一维卷积神经网络模型显著提高了生物标志物检测的准确性,便于对尿素和葡萄糖进行定量分析。这一进展有助于开发一种用于个性化即时检测的可控、便捷和动态生物传感系统,并支持创建智能可穿戴和非破坏性设备。

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