Craven Darren, McGinley Brian, Kilmartin Liam, Glavin Martin, Jones Edward
Electrical and Electronic Engineering Department, College of Engineering and Informatics, National University of Ireland, Galway, Ireland.
Electrical and Electronic Engineering Department, College of Engineering and Informatics, National University of Ireland, Galway, Ireland.
Comput Biol Med. 2016 Apr 1;71:1-13. doi: 10.1016/j.compbiomed.2016.01.013. Epub 2016 Jan 29.
Advances in Compressed Sensing (CS) are enabling promising low-energy implementation solutions for wireless Body Area Networks (BAN). While studies demonstrate the potential of CS in terms of overall energy efficiency compared to state-of-the-art lossy compression techniques, the performance of CS remains limited. The aim of this study is to improve the performance of CS-based compression for electrocardiogram (ECG) signals. This paper proposes a CS architecture that combines a novel redundancy removal scheme with quantization and Huffman entropy coding to effectively extend the Compression Ratio (CR). Reconstruction is performed using overcomplete sparse dictionaries created with Dictionary Learning (DL) techniques to exploit the highly structured nature of ECG signals. Performance of the proposed CS implementation is evaluated by analyzing energy-based distortion metrics and diagnostic metrics including QRS beat-detection accuracy across a range of CRs. The proposed CS approach offers superior performance to the most recent state-of-the-art CS implementations in terms of signal reconstruction quality across all CRs tested. Furthermore, QRS detection accuracy of the technique is compared with the well-known lossy Set Partitioning in Hierarchical Trees (SPIHT) compression technique. The proposed CS approach outperforms SPIHT in terms of achievable CR, using the area under the receiver operator characteristic (ROC) curve (AUC). For an application where a minimum AUC performance threshold of 0.9 is required, the proposed technique extends the CR from 64.6 to 90.45 compared with SPIHT, ensuring a 40% saving on wireless transmission costs. Therefore, the results highlight the potential of the proposed technique for ECG computer-aided diagnostic systems.
压缩感知(CS)技术的进步为无线体域网(BAN)带来了前景广阔的低能耗实现方案。虽然研究表明,与现有最先进的有损压缩技术相比,CS在整体能源效率方面具有潜力,但CS的性能仍然有限。本研究的目的是提高基于CS的心电图(ECG)信号压缩性能。本文提出了一种CS架构,该架构将一种新颖的冗余去除方案与量化和霍夫曼熵编码相结合,以有效提高压缩率(CR)。使用通过字典学习(DL)技术创建的过完备稀疏字典进行重构,以利用ECG信号的高度结构化特性。通过分析基于能量的失真指标和诊断指标(包括在一系列CR下的QRS波检测准确率)来评估所提出的CS实现的性能。在所测试的所有CR下,就信号重构质量而言,所提出的CS方法比最新的最先进CS实现具有更优的性能。此外,将该技术的QRS检测准确率与著名的有损分层树集分割(SPIHT)压缩技术进行了比较。在所实现的CR方面,使用接收者操作特征(ROC)曲线下的面积(AUC),所提出的CS方法优于SPIHT。对于要求最小AUC性能阈值为0.9的应用,与SPIHT相比,所提出的技术将CR从64.6提高到90.45,确保无线传输成本节省40%。因此,结果突出了所提出的技术在ECG计算机辅助诊断系统中的潜力。