Internet of Things and Machine Learning Enabled Smart e-Textile with Exceptional Breathability for Point-of-Care Diagnostics

IF 6.4 3区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY Advanced Materials Technologies Pub Date : 2024-07-12 DOI:10.1002/admt.202400206
Bidya Mondal, Dalip Saini, Hari Krishna Mishra, Dipankar Mandal
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Abstract

In recent years, the convergence of smart electronic textile (e-textile) and digital technology has emerged as a transformative shift in healthcare, offering innovative solutions for point-of-care diagnostics. However, the development of textile electronics with exceptional functionality and comfort still remains challenging. Here, all-electrospun piezoelectric smart e-textile empowered is reported by Internet of Things (IoT) and machine learning for advanced point-of-care diagnostics. The resulting e-textile exhibits exceptional breathability (b ≈ 4.13 kg m−2 d−1), flexibility, water-resistive properties (water contact angle ≈137°), and mechano-sensitivity of 1.5 V N−1 due to its mechanical-to-electrical energy conversion abilities. It can efficiently monitor different critical biomedical healthcare signals, such as, arterial pulse and respiration rate. Importantly, the e-textile sensor demonstrates remarkable attributes, generating an open circuit voltage of 10.5 V, a short circuit current of 7.7 µA, and power density of 4.2 µW cm−2. Moreover, the e-textile provides real-time, non-invasive monitoring of human physiological movements through IoT. It is worth highlighting that the machine learning showcases an impressive 96% of accuracy in detecting respiratory signals, representing a significant accomplishment. Thus, this e-textile has enormous potential in remote patient monitoring and early disease detection, aiming to reduce healthcare costs, enhance patient outcomes, and improve the overall quality of medical care.

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支持物联网和机器学习的智能电子纺织品具有卓越的透气性,可用于护理点诊断
近年来,智能电子纺织品(e-textile)与数字技术的融合已成为医疗保健领域的一次变革,为护理点诊断提供了创新解决方案。然而,开发具有卓越功能性和舒适性的电子纺织品仍然充满挑战。据报道,全电纺压电智能电子纺织品通过物联网(IoT)和机器学习实现了先进的护理点诊断功能。由此产生的电子纺织品具有优异的透气性(b ≈ 4.13 kg m-2 d-1)、柔韧性、防水性能(水接触角 ≈137°),以及因其机械-电能转换能力而达到的 1.5 V N-1 的机械灵敏度。它能有效监测各种关键的生物医学保健信号,如动脉脉搏和呼吸频率。重要的是,电子织物传感器具有卓越的性能,可产生 10.5 V 的开路电压、7.7 µA 的短路电流和 4.2 µW cm-2 的功率密度。此外,电子织物还能通过物联网对人体生理运动进行实时、无创监测。值得强调的是,机器学习在检测呼吸信号方面达到了令人印象深刻的 96% 的准确率,这是一项重大成就。因此,这种电子织物在远程患者监测和早期疾病检测方面具有巨大潜力,旨在降低医疗成本、提高患者疗效并改善整体医疗质量。
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来源期刊
Advanced Materials Technologies
Advanced Materials Technologies Materials Science-General Materials Science
CiteScore
10.20
自引率
4.40%
发文量
566
期刊介绍: Advanced Materials Technologies Advanced Materials Technologies is the new home for all technology-related materials applications research, with particular focus on advanced device design, fabrication and integration, as well as new technologies based on novel materials. It bridges the gap between fundamental laboratory research and industry.
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