Antink Christoph Hoog, Brüser Christoph, Leonhardt Steffen
Philips Chair for Medical Information Technology (MedIT), Helmholtz-Institute for Biomedical Engineering, RWTH Aachen University, Aachen, Germany.
Physiol Meas. 2015 Aug;36(8):1679-90. doi: 10.1088/0967-3334/36/8/1679. Epub 2015 Jul 28.
The heart rate and its variability play a vital role in the continuous monitoring of patients, especially in the critical care unit. They are commonly derived automatically from the electrocardiogram as the interval between consecutive heart beat. While their identification by QRS-complexes is straightforward under ideal conditions, the exact localization can be a challenging task if the signal is severely contaminated with noise and artifacts. At the same time, other signals directly related to cardiac activity are often available. In this multi-sensor scenario, methods of multimodal sensor-fusion allow the exploitation of redundancies to increase the accuracy and robustness of beat detection.In this paper, an algorithm for the robust detection of heart beats in multimodal data is presented. Classic peak-detection is augmented by robust multi-channel, multimodal interval estimation to eliminate false detections and insert missing beats. This approach yielded a score of 90.70 and was thus ranked third place in the PhysioNet/Computing in Cardiology Challenge 2014: Robust Detection of Heart Beats in Muthmodal Data follow-up analysis.In the future, the robust beat-to-beat interval estimator may directly be used for the automated processing of multimodal patient data for applications such as diagnosis support and intelligent alarming.
心率及其变异性在患者的持续监测中起着至关重要的作用,尤其是在重症监护病房。它们通常从心电图中自动获取,作为连续心跳之间的间隔。虽然在理想条件下通过QRS复合波识别它们很简单,但如果信号受到严重噪声和伪迹污染,精确的定位可能是一项具有挑战性的任务。同时,通常还可以获得与心脏活动直接相关的其他信号。在这种多传感器场景中,多模态传感器融合方法允许利用冗余信息来提高心跳检测的准确性和鲁棒性。本文提出了一种用于在多模态数据中稳健检测心跳的算法。通过稳健的多通道、多模态间隔估计增强经典的峰值检测,以消除误检测并插入缺失的心跳。该方法在2014年生理网/心脏病学计算挑战赛:多模态数据中心跳的稳健检测后续分析中获得了90.70分,因此排名第三。未来,稳健的逐搏间隔估计器可直接用于多模态患者数据的自动化处理,用于诊断支持和智能报警等应用。