Faulty Data Detection in mMTC Based E-health Data Collection Networks

Yacong Liang, Xiaodong Xu, Shujun Han, Ziting Zhang, Y. Sun
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Abstract

In the fifth generation mobile communication (5G) and beyond, massive machine type communication (mMTC) is regarded as a key technology to support the universal Internet of Things (IoT) devices. As a promising vertical application area of IoT, e-health received many attentions from academic, medical and industry. To provide reliable suggestions for doctor, guaranteeing the authenticity of the sensory data during the data collection procedure is the first and fundamental step. Focusing on the mMTC based e-health data collection scenario, we propose the threshold-based decision faulty sensory data detection (FSDD) scheme by analyzing the correlation among several physiological parameters to guarantee the authenticity of the collected data. In the proposed FSDD scheme, machine learning algorithm is exploited to predict the ground truth value of a certain physiological parameter. By searching the dynamic optimized threshold to optimize the performance of the system, the FSDD scheme provides great performance improvement in high detection accuracy and low false alarm. Furthermore, the proposed FSDD scheme can recognize the deteriorated health condition. The effectiveness of proposed FSDD scheme is verified by simulating on a real medical database.
基于mMTC的电子卫生数据采集网络故障数据检测
在第五代移动通信(5G)及以后,大规模机器类型通信(mMTC)被视为支持通用物联网(IoT)设备的关键技术。电子健康作为物联网的垂直应用领域,受到了学术界、医学界和产业界的广泛关注。为了给医生提供可靠的建议,在数据采集过程中保证感官数据的真实性是第一步也是最基本的一步。针对基于mMTC的电子健康数据采集场景,通过分析多个生理参数之间的相关性,提出了基于阈值的决策错误感知数据检测(FSDD)方案,以保证采集数据的真实性。在提出的FSDD方案中,利用机器学习算法来预测某一生理参数的基础真值。FSDD方案通过搜索动态优化阈值来优化系统性能,在检测精度高、虚警率低等方面有较大的性能提升。此外,所提出的FSDD方案可以识别健康状况的恶化。通过对真实医学数据库的仿真,验证了该方案的有效性。
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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