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A Low Complexity Architecture for Online On-chip Detection and Identification of f-QRS Feature for Remote Personalized Health Care Applications

机译:用于远程个性化医疗应用的在线复杂芯片检测和f-QRS功能识别的低复杂度体系结构

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This paper introduces a novel low complexity highly accurate on-chip architecture for the detection of fragmented QRS (f-QRS) feature including notches and local extrema in the QRS complexes and subsequently identifies its various morphologies (Notched S, rsR', RsR' without elevation etc.) under the real-time environment targeting remote personalized health care. The proposed architecture uses the outcome of recently proposed Hybrid feature extraction algorithm (HFEA) [1] Level 3 detailed coefficients and detects and identifies the fragmentation feature from the QRS complex based on the criteria of the positions, and the magnitudes of the extrema (maxima and minima) and notches from the wavelet coefficients with no extra cost in terms of arithmetic complexity. To verify the proposed architecture 100 patients were randomly selected from the MIT-BIH Physio Net PTB database and their ECG was examined by two experienced cardiologists individually and the results were compared with those obtained from the architecture output wherein we have achieved 95 % diagnostic matching.
机译:本文介绍了一种新颖的低复杂度,高精度的片上体系结构,用于检测碎片化QRS(f-QRS)特征,包括QRS复合体中的缺口和局部极值,并随后识别其各种形态(缺口S,rsR',RsR'实时环境下以远程个性化医疗为目标。提出的体系结构使用了最近提出的混合特征提取算法(HFEA)[1] 3级详细系数的结果,并根据位置的标准和极值的大小(最大值)从QRS复合体中检测和识别碎片特征。和最小值),并从小波系数切入缺口,而在算术复杂度方面没有额外的成本。为了验证拟议的架构,从MIT-BIH Physio Net PTB数据库中随机选择了100位患者,并由两名经验丰富的心脏病专家分别检查了他们的ECG,并将结果与​​从架构输出中获得的心电图进行了比较,其中我们实现了95%的诊断匹配。

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