Implementation of foetal e-health monitoring system through biotelemetry.

Vijay S Chourasia, Anil Kumar Tiwari
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引用次数: 3

Abstract

Continuous foetal monitoring of physiological signals is of particular importance for early detection of complexities related to the foetus or the mother's health. The available conventional methods of monitoring mostly perform off-line analysis and restrict the mobility of subjects within a hospital or a room. Hence, the aim of this paper is to develop a foetal e-health monitoring system using mobile phones and wireless sensors for providing advanced healthcare services in the home environment. The system is tested by recording the real-time Foetal Phonocardiography (fPCG) signals from 15 subjects with different gestational periods. The performance of the developed system is compared with the existing ultrasound based Doppler shift technique, ensuring an overall accuracy of 98% of the developed system. The developed framework is non-invasive, cost-effective and simple enough to be used in home care application. It offers advanced healthcare facilities even to the pregnant women living in rural areas and avoids their unnecessary visits at the healthcare centres.

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利用生物遥测技术实现胎儿电子健康监测系统。
对胎儿生理信号的持续监测对于早期发现与胎儿或母亲健康有关的复杂性尤为重要。现有的传统监测方法大多进行离线分析,限制受试者在医院或房间内的活动。因此,本文的目的是开发一种使用移动电话和无线传感器的胎儿电子健康监测系统,以便在家庭环境中提供先进的医疗保健服务。该系统通过记录15名不同妊娠期受试者的实时胎儿心音图(fPCG)信号进行测试。将所开发系统的性能与现有的基于超声的多普勒频移技术进行了比较,确保所开发系统的总体精度达到98%。所开发的框架无创、经济、简单,可用于家庭护理应用。它甚至为生活在农村地区的孕妇提供先进的保健设施,并避免她们不必要地前往保健中心。
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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
25
期刊介绍: The IJEH is an authoritative, fully-refereed international journal which presents current practice and research in the area of e-healthcare. It is dedicated to design, development, management, implementation, technology, and application issues in e-healthcare.
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