Daluwatte C, Johannesen L, Galeotti L, Vicente J, Strauss D G, Scully C G
Office of Science and Engineering Laboratories, CDRH, US FDA, Silver Spring, MD, USA.
Physiol Meas. 2016 Aug;37(8):1370-82. doi: 10.1088/0967-3334/37/8/1370. Epub 2016 Jul 25.
False and non-actionable alarms in critical care can be reduced by developing algorithms which assess the trueness of an arrhythmia alarm from a bedside monitor. Computational approaches that automatically identify artefacts in ECG signals are an important branch of physiological signal processing which tries to address this issue. Signal quality indices (SQIs) derived considering differences between artefacts which occur in ECG signals and normal QRS morphology have the potential to discriminate pathologically different arrhythmic ECG segments as artefacts. Using ECG signals from the PhysioNet/Computing in Cardiology Challenge 2015 training set, we studied previously reported ECG SQIs in the scientific literature to differentiate ECG segments with artefacts from arrhythmic ECG segments. We found that the ability of SQIs to discriminate between ECG artefacts and arrhythmic ECG varies based on arrhythmia type since the pathology of each arrhythmic ECG waveform is different. Therefore, to reduce the risk of SQIs classifying arrhythmic events as noise it is important to validate and test SQIs with databases that include arrhythmias. Arrhythmia specific SQIs may also minimize the risk of misclassifying arrhythmic events as noise.
通过开发评估床边监护仪心律失常警报真实性的算法,可以减少重症监护中的错误警报和不可操作警报。自动识别心电图信号中伪迹的计算方法是生理信号处理的一个重要分支,旨在解决这一问题。考虑到心电图信号中出现的伪迹与正常QRS形态之间的差异而得出的信号质量指标(SQIs),有可能将病理上不同的心律失常心电图段识别为伪迹。利用来自PhysioNet/2015年心脏病学计算挑战赛训练集的心电图信号,我们研究了科学文献中先前报道的心电图SQIs,以区分带有伪迹的心电图段和心律失常心电图段。我们发现,由于每种心律失常心电图波形的病理情况不同,SQIs区分心电图伪迹和心律失常心电图的能力因心律失常类型而异。因此,为降低SQIs将心律失常事件误分类为噪声的风险,使用包含心律失常的数据库对SQIs进行验证和测试很重要。特定于心律失常的SQIs也可以将心律失常事件误分类为噪声的风险降至最低。