Smart-Cuff: A wearable bio-sensing platform with activity-sensitive information quality assessment for monitoring ankle edema

Ramin Fallahzadeh, Mahdi Pedram, Ramyar Saeedi, Bahman Sadeghi, Michael K. Ong, Hassan Ghasemzadeh
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引用次数: 21

Abstract

Leg swelling produced by retention of fluid in leg tissues is known as peripheral edema, which is regarded as a symptom for various systematic diseases such as heart or kidney failure. In current clinical practice, edema is manually assessed by clinical experts. Such an assessment can often be inaccurate and unreliable especially if it is made by different operators at different times. Despite the importance of monitoring edema for the purpose of evaluating the course of disease or the effect of treatment, quantifying peripheral edema in a continuous and accurate fashion has remained a challenge. In this paper, we propose a wearable real-time platform (namely, Smart-Cuff), which integrates advanced technologies in sensing, computation, and signal processing and machine learning for continuous and real-time edema monitoring in remote and in-home settings. Given that peripheral edema is highly dependent on various contextual attributes such as body posture, we present an activity-sensitive approach to discard erroneous or contextually invalid sensor data in order to meet the requirements of both energy efficiency and quality of information. Examination of our hardware prototype demonstrates the effectiveness of the proposed force-sensitive resistor-based edema sensor (with an R2 of 0.97 for our regression model) as well as the activity monitoring mechanism (over 99% accuracy) that provide the means to perform reliable data sanity check on ankle circumference measurements in a continuous manner.
Smart-Cuff:一种可穿戴的生物传感平台,具有活动敏感信息质量评估,用于监测踝关节水肿
由于腿部组织中液体潴留而产生的腿部肿胀被称为外周性水肿,这被认为是各种系统性疾病(如心脏或肾衰竭)的症状。在目前的临床实践中,水肿是由临床专家手工评估的。这种评估通常是不准确和不可靠的,特别是如果是由不同的操作人员在不同的时间进行的。尽管监测水肿对于评估疾病进程或治疗效果很重要,但以连续和准确的方式量化周围水肿仍然是一个挑战。在本文中,我们提出了一个可穿戴的实时平台(即Smart-Cuff),它集成了传感、计算、信号处理和机器学习方面的先进技术,用于远程和家庭环境中的连续和实时水肿监测。鉴于外周水肿高度依赖于各种上下文属性,如身体姿势,我们提出了一种活动敏感的方法来丢弃错误或上下文无效的传感器数据,以满足能源效率和信息质量的要求。硬件原型的测试证明了所提出的基于力敏电阻的水肿传感器的有效性(我们的回归模型的R2为0.97)以及活动监测机制(准确率超过99%),这些机制提供了以连续方式对脚踝周长测量进行可靠数据完整性检查的手段。
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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