Methylxanthine Drug Monitoring with Wearable Sweat Sensors

Li‐Chia Tai(Lawrence Berkeley National Laboratory), Wei Gao(Lawrence Berkeley National Laboratory), Minghan Chao(Lawrence Berkeley National Laboratory), Mallika Bariya(Lawrence Berkeley National Laboratory), Quynh Phuong Ngo(Lawrence Berkeley National Laboratory), Ziba Shahpar(Lawrence Berkeley National Laboratory), Hnin Yin Yin Nyein(Lawrence Berkeley National Laboratory), Hyejin Park(Sunchon National University), Junfeng Sun(Sunchon National University), Younsu Jung(Sunchon National University), Eric Wu(Lawrence Berkeley National Laboratory), Hossain M. Fahad(Lawrence Berkeley National Laboratory), Der‐Hsien Lien(Lawrence Berkeley National Laboratory), Hiroki Ota(Lawrence Berkeley National Laboratory), Gyoujin Cho(Sunchon National University), Ali Javey(Lawrence Berkeley National Laboratory)
Advanced Materials
April 16, 2018
Cited by 302Open Access
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Abstract

Drug monitoring plays crucial roles in doping control and precision medicine. It helps physicians tailor drug dosage for optimal benefits, track patients' compliance to prescriptions, and understand the complex pharmacokinetics of drugs. Conventional drug tests rely on invasive blood draws. While urine and sweat are attractive alternative biofluids, the state-of-the-art methods require separate sample collection and processing steps and fail to provide real-time information. Here, a wearable platform equipped with an electrochemical differential pulse voltammetry sensing module for drug monitoring is presented. A methylxanthine drug, caffeine, is selected to demonstrate the platform's functionalities. Sweat caffeine levels are monitored under various conditions, such as drug doses and measurement time after drug intake. Elevated sweat caffeine levels upon increasing dosage and confirmable caffeine physiological trends are observed. This work leverages a wearable sweat sensing platform toward noninvasive and continuous point-of-care drug monitoring and management.


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