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Phase-domain Deep Patient-ECG Image Learning for Zero-effort Smart Health Security*

机译:相位域深度患者ECG图像学习可实现零努力智能健康安全*

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Smart health is quickly boosted by technological advancements: smart sensors, body sensor network, internet of medical things and big data. Vast amounts of smart health big data from ubiquitous sensors pose unprecedented challenges to the security and privacy protection, which is extremely critical in healthcare applications. The vital signs, user daily behaviors, medicine recommendations, and so many other health data are vulnerable to different attacks, due to the fact that wearable/mobile monitors have very strict performance/power constraints, which limit the complexity of security protocols. In this paper, we study how to leverage a natural vital signal (Electrocardiogram – ECG) for user identification purpose, without introducing new hardware sensing devices. ECG is not only a gold standard cardiac signal, but also unique to each individual. We investigate a phase-domain deep patient-ECG image learning framework, to tackle key challenges in ECG biometric user identification: high diversities of ECG morphologies due to heart diseases, and time-consuming/ineffective heartbeat localization methods & manual feature engineering. The ultimate goal is to make the smart health security zero-effort: use ‘phase-domain transformation’ to enable blind signal segmentation without localizing heartbeats; create a computer image processing-like task by ‘pixelating’ phase-domain ECG trajectories to ECG images; and enable automatic (non-manual) ‘deep feature learning’ using a deep convolutional neural network. Evaluated on two patient-ECG databases, this zero-effort framework achieves an accuracy as high as 97.2%, and greatly outperforms state-of-the-art studies in terms of the generalization ability and/or performance. This study is expected to enable highly challenging patient-ECG biometric user identification, by generalizable blind signal segmentation and deep feature learning strategies, in the era of smart health boosted by internet of medical things and big medical data.
机译:技术进步迅速推动了智能健康:智能传感器,人体传感器网络,医疗物联网和大数据。来自无处不在的传感器的大量智能健康大数据对安全性和隐私保护提出了前所未有的挑战,这在医疗保健应用中至关重要。由于可穿戴式/移动式监护仪具有非常严格的性能/功率限制,这限制了安全协议的复杂性,因此生命体征,用户的日常行为,用药建议以及许多其他健康数据容易受到不同的攻击。在本文中,我们研究了如何利用自然生命信号(心电图– ECG)进行用户识别,而无需引入新的硬件感应设备。心电图不仅是心脏信号的金标准,而且对于每个人来说都是唯一的。我们研究了一个相域深层的患者心电图图像学习框架,以应对心电图生物识别用户识别中的关键挑战:由于心脏病导致的心电图形态多样性高,以及耗时/无效的心跳定位方法和手动特征工程。最终目标是使智能健康安全性做到零努力:使用“相域变换”来实现盲信号分割而无需定位心跳;通过将相域ECG轨迹“像素化”到ECG图像来创建类似于计算机图像处理的任务;并使用深度卷积神经网络启用自动(非手动)“深度特征学习”。在两个患者心电图数据库上进行评估,该零努力框架实现了高达97.2%的准确性,并且在泛化能力和/或性能方面大大优于最新研究。这项研究有望在医疗物联网和大医疗数据推动的智能健康时代,通过可推广的盲信号分割和深度特征学习策略,实现极具挑战性的患者心电图生物识别用户身份识别。

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