Kumar Ranjeet, Kumar A, Singh G K
PDPM Indian Institute of Information Technology, Design and Manufacturing Jabalpur, Jabalpur 482005, India.
Department of Electrical Engineering, Indian Institute of Technology Roorkee, Roorkee 247667, Uttarakhand, India.
Comput Methods Programs Biomed. 2016 Jun;129:135-48. doi: 10.1016/j.cmpb.2016.01.006. Epub 2016 Jan 18.
In the field of biomedical, it becomes necessary to reduce data quantity due to the limitation of storage in real-time ambulatory system and telemedicine system. Research has been underway since very beginning for the development of an efficient and simple technique for longer term benefits.
This paper, presents an algorithm based on singular value decomposition (SVD), and embedded zero tree wavelet (EZW) techniques for ECG signal compression which deals with the huge data of ambulatory system. The proposed method utilizes the low rank matrix for initial compression on two dimensional (2-D) ECG data array using SVD, and then EZW is initiated for final compression. Initially, 2-D array construction has key issue for the proposed technique in pre-processing. Here, three different beat segmentation approaches have been exploited for 2-D array construction using segmented beat alignment with exploitation of beat correlation. The proposed algorithm has been tested on MIT-BIH arrhythmia record, and it was found that it is very efficient in compression of different types of ECG signal with lower signal distortion based on different fidelity assessments.
The evaluation results illustrate that the proposed algorithm has achieved the compression ratio of 24.25:1 with excellent quality of signal reconstruction in terms of percentage-root-mean square difference (PRD) as 1.89% for ECG signal Rec. 100 and consumes only 162bps data instead of 3960bps uncompressed data.
The proposed method is efficient and flexible with different types of ECG signal for compression, and controls quality of reconstruction. Simulated results are clearly illustrate the proposed method can play a big role to save the memory space of health data centres as well as save the bandwidth in telemedicine based healthcare systems.
在生物医学领域,由于实时动态监测系统和远程医疗系统存储的限制,减少数据量变得很有必要。从一开始就一直在进行研究,以开发一种高效且简单的技术,以获得长期效益。
本文提出了一种基于奇异值分解(SVD)和嵌入式零树小波(EZW)技术的心电图信号压缩算法,用于处理动态监测系统中的海量数据。该方法利用低秩矩阵对二维(2-D)心电图数据阵列进行初始压缩,然后启动EZW进行最终压缩。最初,二维阵列构建是该技术预处理中的关键问题。在这里,利用三种不同的心跳分割方法,通过利用心跳相关性进行分割心跳对齐来构建二维阵列。该算法已在麻省理工学院-比哈尔心律失常记录上进行了测试,结果发现,基于不同的保真度评估,该算法在压缩不同类型的心电图信号时非常有效,且信号失真较低。
评估结果表明,该算法实现了24.25:1的压缩比,在心电图信号Rec. 100的百分比均方根差(PRD)方面,信号重建质量优异,为1.89%,并且仅消耗162bps的数据,而不是3960bps的未压缩数据。
所提出的方法对于不同类型的心电图信号压缩高效且灵活,并能控制重建质量。模拟结果清楚地表明,该方法在节省健康数据中心的存储空间以及基于远程医疗的医疗系统中的带宽方面可以发挥重要作用。