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基于机器学习的可区分和可预测汗液传感的可穿戴接口。

Machine learning-powered wearable interface for distinguishable and predictable sweat sensing.

机构信息

College of Chemistry and Environmental Engineering, School of Biomedical Engineering of Health Science Center, The Institute for Advanced Study (IAS), Shenzhen University, Shenzhen, Guangdong, 518060, China.

College of Materials Science and Engineering, Shenzhen University, Shenzhen, Guangdong, 518060, China.

出版信息

Biosens Bioelectron. 2024 Dec 1;265:116712. doi: 10.1016/j.bios.2024.116712. Epub 2024 Aug 28.

Abstract

The constrained resources on wearable devices pose a challenge in meeting the demands for comprehensive sensing information, and current wearable non-enzymatic sensors face difficulties in achieving specific detection in biofluids. To address this issue, we have developed a highly selective non-enzymatic sweat sensor that seamlessly integrates with machine learning, ensuring reliable sensing and physiological monitoring of sweat biomarkers during exercise. The sensor consists of two electrodes supported by a microsystem that incorporates signal processing and wireless communication. The device generates four explainable features that can be used to accurately predict tyrosine and tryptophan concentrations, as well as sweat pH. The reliability of this device has been validated through rigorous statistical analysis, and its performance has been tested in subjects with and without supplemental amino acid intake during cycling trials. Notably, a robust linear relationship has been identified between tryptophan and tyrosine concentrations in the collected samples, irrespective of the pH dimension. This innovative sensing platform is highly portable and has significant potential to advance the biomedical applications of non-enzymatic sensors. It can markedly improve accuracy while decreasing costs.

摘要

可穿戴设备的资源有限,难以满足全面传感信息的需求,而当前的可穿戴非酶传感器在生物流体中的特定检测方面存在困难。为了解决这个问题,我们开发了一种高度选择性的非酶汗液传感器,它与机器学习无缝集成,可确保在运动过程中对汗液生物标志物进行可靠的传感和生理监测。该传感器由两个电极组成,由一个微系统支撑,该微系统集成了信号处理和无线通信。该设备生成了四个可解释的特征,可用于准确预测酪氨酸和色氨酸的浓度以及汗液 pH 值。该设备的可靠性已经通过严格的统计分析进行了验证,并在进行骑行试验时对有和没有补充氨基酸摄入的受试者进行了性能测试。值得注意的是,在收集的样本中,无论 pH 值如何,色氨酸和酪氨酸浓度之间都存在稳健的线性关系。这种创新的传感平台具有高度便携性,有很大潜力推动非酶传感器在生物医学中的应用。它可以显著提高准确性,同时降低成本。

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