An Efficient Electrocardiography Data Compression

Passakorn Luanloet, Watcharapan Suwansantisuk, Pinit Kumhom
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Abstract

In healthcare, electrocardiography (ECG) sensors generate a large amount of heart electrical signal that must be efficiently compressed to enable fast data transfer and reduce storage costs. Existing methods for ECG data compression do not fully exploit the characteristics of ECG signals, leading to suboptimal compression. This study proposes a data compression technique for ECG data by exploiting the known characteristics of ECG signals. Our approach combines Savitzky-Golay filtering, detrending, discrete cosine transform, scalar quantization, run-length encoding, and Huffman coding for the effective compression. To optimize the compression performance, we generated quantization intervals tailored to the ECG data characteristics. The proposed method experimentally produces a high compression ratio of 127.61 for a design parameter K = 8, a minimum percentage root mean square difference of 1.03% for K = 128, and a maximum quality score (QS) of 39.78, where K is the number of quantization intervals. Moreover, we compared the proposed method to state-of-the-art methods on a widely used ECG benchmark dataset. We found that the proposed method outperforms the others in terms of the QS, which measures the overall compression-decompression ability. By enabling more storage and faster data transfer, the proposed method can facilitate the widespread use and analysis of large volumes of ECG data, thereby contributing to advances in healthcare.
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一种有效的心电图数据压缩方法
在医疗保健领域,心电图(ECG)传感器产生大量的心脏电信号,必须对这些信号进行有效压缩,以实现快速数据传输并降低存储成本。现有的心电数据压缩方法没有充分利用心电信号的特性,导致压缩效果不理想。本研究提出一种利用已知心电信号特征的心电数据压缩技术。我们的方法结合了Savitzky-Golay滤波、去趋势、离散余弦变换、标量量化、游程编码和霍夫曼编码来实现有效的压缩。为了优化压缩性能,我们根据心电数据的特征生成量化区间。实验结果表明,当设计参数K = 8时,该方法的压缩比为127.61;当设计参数K = 128时,该方法的最小均方根差百分比为1.03%;当设计参数K = 128时,该方法的最大质量分数(QS)为39.78,其中K为量化区间数。此外,我们将所提出的方法与广泛使用的ECG基准数据集上的最新方法进行了比较。我们发现该方法在QS方面优于其他方法,QS是衡量整体压缩解压能力的指标。通过实现更多的存储和更快的数据传输,所提出的方法可以促进大量心电数据的广泛使用和分析,从而促进医疗保健的进步。
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来源期刊
ECTI Transactions on Computer and Information Technology
ECTI Transactions on Computer and Information Technology Engineering-Electrical and Electronic Engineering
CiteScore
1.20
自引率
0.00%
发文量
52
审稿时长
15 weeks
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