A self-driven multifunctional microfluidic sweat analysis system for efficient sweat collection and real-time monitoring

Wenfeng Wang,Yuankai Jin, Yiduo Huang, Zihong Zhao,Mao Li,Haiyang Mao,Ruirui Li,Jijun Xiong

Sensors and Actuators B: Chemical(2024)

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摘要
Wearable sweat sensors offer the opportunity for non-invasive and real-time monitoring of metabolite information in sweat, enabling individuals to dynamically monitor their physiology states at the molecular level. However, sweat possesses characteristics such as small volume, volatility, susceptibility to epidermal contamination, and low analyte concentrations, making its reliable collection and detection challenge for wearable sweat sensors. In this work, we develop a self-driven multifunctional microfluidic sweat analysis system (SMMSAS) for efficient sweat collection and detection. The SMMSAS features with a wetting contrast for the sweat, which comprises superhydrophobic inlet, superhydrophilic microchannel enriched with nanofiber, and an absorbent test paper. Such a feature enables the spontaneous sweat transports in the form of dropwise due to the exertion of “Laplace force-capillary force-capillary force” on sweat, thereby facilitating the real-time sweat detection. SMMSAS integrated with the functions of impedance and colorimetry analysis is able to simultaneously record the multiple information in sweat, including sweat volume, sweating rate, total electrolyte concentration, glucose concentration, and pH value, all of which are important to reflect the physiological state of the human body. We also demonstrate the capability of SMMSAS in real-time monitoring the sweating conditions of the human body, which is attributed to its fast responsiveness (~ 100 ms) for the wide range sweating rate (0.5−15μL/min) and various total electrolyte concentration (0−80mM), paving the way for next-generation personalized healthcare.
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关键词
Wearable sweat sensors,Nanofibers,Microfluidic sensors,Sweat analysis,Personalized healthcare
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