大穿透深度可穿戴单电极电容式传感器,用于智能深部组织和出血监测

Yu-Jen Cheng, Shawn Kim, Nathan White, Xu Wang, Kristyn Ringgold, Lauren Neidig, Younghoon Kwon, Jae-Hyun Chung
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摘要

监测深层组织生物特征在各种临床环境中至关重要,包括内出血。尽管光学和阻抗断层扫描技术可以在最小的医疗基础设施下提供实时监测,但它们仍然面临着在可穿戴格式中准确评估深层组织的挑战。本文介绍了一种新型的单电极电容传感器,用于测量介电常数和压力变化引起的深层组织电容变化。该传感器的特点是碳纳米管-纸复合材料(CPC)电极集成了多壁碳纳米管(MWCNT)嵌入泡沫。CPC电极具有大表面积和高纵横比的纤维,可产生高电场,穿透深层组织,提高深层组织监测性能。通过替代组织、心脏和肺模型来表征穿透深度。此外,压力敏感MWCNT泡沫的集成显着提高了灵敏度,能够精确检测区域血容量和组织位移。将该传感机制应用于猪内出血模型的检测。通过采用机器学习算法,传感器可以准确估计内出血的严重程度,为基于导管的系统提供了一种无创替代方案。这一进步为实时可穿戴系统奠定了基础,该系统可以监测深层组织健康指标,如血容量、血压以及心肺功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Wearable Single-Electrode Capacitive Sensor with Large Penetration Depth for Intelligent Deep Tissue and Hemorrhage Monitoring

Monitoring deep tissue biometrics is crucial in various clinical settings, including internal hemorrhage. Although optical and impedance tomography techniques offer real-time monitoring with minimal medical infrastructure, they still face challenges in accurately assessing deeper tissues in wearable formats. This study introduces a novel single-electrode capacitive sensor designed to measure deep tissue capacitance changes caused by variations in dielectric constant and pressure. The sensor features a carbon nanotube-paper composite (CPC) electrode integrated with a multi-walled carbon nanotube (MWCNT)-embedded foam. The CPC electrode, with its large surface area and high-aspect-ratio fibers, generates a high electric field for deeper tissue penetration, improving deep tissue monitoring performance. Penetration depth is characterized using surrogate tissue, heart, and lung models. Additionally, the integration of pressure-sensitive MWCNT foam significantly enhances the sensitivity, enabling precise detection of regional blood volume and tissue displacement. The novel sensing mechanism is applied to detect internal hemorrhage in a porcine model. By employing a machine learning algorithm, the sensor accurately estimates the severity of internal hemorrhage, offering a noninvasive alternative to catheter-based systems. This advancement lays the foundation for a real-time wearable system that monitors deep tissue health metrics, such as blood volume, blood pressure, as well as heart and lung functions.

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