Department of Teleinformatics Engineering, Laboratory of Computer Systems Engineering, Federal University of Ceará, Brazil.
Med Eng Phys. 2012 Nov;34(9):1236-46. doi: 10.1016/j.medengphy.2011.12.011. Epub 2012 Jan 9.
The QRS detection and segmentation processes constitute the first stages of a greater process, e.g., electrocardiogram (ECG) feature extraction. Their accuracy is a prerequisite to a satisfactory performance of the P and T wave segmentation, and also to the reliability of the heart rate variability analysis. This work presents an innovative approach of QRS detection and segmentation and the detailed results of the proposed algorithm based on First-Derivative, Hilbert and Wavelet Transforms, adaptive threshold and an approach of surface indicator. The method combines the adaptive threshold, Hilbert and Wavelet Transforms techniques, avoiding the whole ECG signal preprocessing. After each QRS detection, the computation of an indicator related to the area covered by the QRS complex envelope provides the detection of the QRS onset and offset. The QRS detection proposed technique is evaluated based on the well-known MIT-BIH Arrhythmia and QT databases, obtaining the average sensitivity of 99.15% and the positive predictability of 99.18% for the first database, and 99.75% and 99.65%, respectively, for the second one. The QRS segmentation approach is evaluated on the annotated QT database with the average segmentation errors of 2.85±9.90ms and 2.83±12.26ms for QRS onset and offset, respectively. Those results demonstrate the accuracy of the developed algorithm for a wide variety of QRS morphology and the adaptation of the algorithm parameters to the existing QRS morphological variations within a single record.
QRS 检测和分割过程构成了更大过程的第一阶段,例如心电图(ECG)特征提取。其准确性是 P 和 T 波分割以及心率变异性分析可靠性的前提。这项工作提出了一种 QRS 检测和分割的创新方法,以及基于一阶导数、希尔伯特变换和小波变换、自适应阈值和曲面指示器的详细算法结果。该方法结合了自适应阈值、希尔伯特变换和小波变换技术,避免了整个 ECG 信号预处理。在每次 QRS 检测后,计算与 QRS 复合包络覆盖区域相关的指标,可用于检测 QRS 的起始和结束。所提出的 QRS 检测技术基于著名的 MIT-BIH 心律失常和 QT 数据库进行评估,对于第一个数据库,平均灵敏度为 99.15%,阳性预测率为 99.18%,对于第二个数据库,平均灵敏度为 99.75%,阳性预测率为 99.65%。QRS 分割方法在带注释的 QT 数据库上进行评估,QRS 起始和结束的平均分割误差分别为 2.85±9.90ms 和 2.83±12.26ms。这些结果表明,该算法能够准确地处理各种 QRS 形态,并且能够适应单个记录中存在的算法参数的 QRS 形态变化。