Department of Anesthesia, Massachusetts General Hospital-Harvard Medical School, Boston, MA 02115, USA.
IEEE Trans Biomed Eng. 2012 Oct;59(10):2828-37. doi: 10.1109/TBME.2012.2211356. Epub 2012 Aug 2.
The presence of recurring arrhythmic events (also known as cardiac dysrhythmia or irregular heartbeats), as well as erroneous beat detection due to low signal quality, significantly affects estimation of both time and frequency domain indices of heart rate variability (HRV). A reliable, real-time classification and correction of ECG-derived heartbeats is a necessary prerequisite for an accurate online monitoring of HRV and cardiovascular control. We have developed a novel point-process-based method for real-time R-R interval error detection and correction. Given an R-wave event, we assume that the length of the next R-R interval follows a physiologically motivated, time-varying inverse Gaussian probability distribution. We then devise an instantaneous automated detection and correction procedure for erroneous and arrhythmic beats by using the information on the probability of occurrence of the observed beat provided by the model. We test our algorithm over two datasets from the PhysioNet archive. The Fantasia normal rhythm database is artificially corrupted with known erroneous beats to test both the detection procedure and correction procedure. The benchmark MIT-BIH Arrhythmia database is further considered to test the detection procedure of real arrhythmic events and compare it with results from previously published algorithms. Our automated algorithm represents an improvement over previous procedures, with best specificity for the detection of correct beats, as well as highest sensitivity to missed and extra beats, artificially misplaced beats, and for real arrhythmic events. A near-optimal heartbeat classification and correction, together with the ability to adapt to time-varying changes of heartbeat dynamics in an online fashion, may provide a solid base for building a more reliable real-time HRV monitoring device.
心律失常事件的存在(也称为心律失常或不规则心跳)以及由于信号质量低而导致的错误节拍检测,会极大地影响心率变异性(HRV)的时间和频域指数的估计。可靠的、实时的心电图心跳分类和校正,是准确在线监测 HRV 和心血管控制的必要前提。我们开发了一种基于点过程的实时 R-R 间隔误差检测和校正的新方法。给定一个 R 波事件,我们假设下一个 R-R 间隔的长度遵循一个由生理驱动的、时变的逆高斯概率分布。然后,我们通过使用模型提供的观察到的节拍的发生概率的信息,设计了一种即时的自动检测和校正错误和心律失常节拍的方法。我们在 PhysioNet 档案中的两个数据集上测试了我们的算法。 Fantasia 正常节律数据库被人为地用已知的错误节拍损坏,以测试检测程序和校正程序。基准 MIT-BIH 心律失常数据库进一步用于测试真实心律失常事件的检测程序,并将其与以前发表的算法的结果进行比较。我们的自动算法代表了对以前的程序的改进,在检测正确节拍的特异性方面表现最佳,在检测错过和额外节拍、人为错位节拍以及真实心律失常事件方面的灵敏度最高。接近最优的心跳分类和校正,以及能够以在线方式适应心跳动力学的时变变化的能力,可能为构建更可靠的实时 HRV 监测设备提供坚实的基础。