Stadler R W, Lu S N, Nelson S D, Stylos L
Medtronic, Inc, Cardiac Rhythm Management, Minneapolis, MN 55432, USA.
J Electrocardiol. 2001;34 Suppl:119-26. doi: 10.1054/jelc.2001.28837.
Continuous ST-segment monitoring by implantable devices may lead to clarification of the substrate of arrhythmias, clarification of the origin of nonspecific chest pain, and titration or preventative application of established anti-ischemic therapies. Although ST-segment monitoring algorithms are available for surface electrocardiogram, the computational demand of algorithms for implantable devices must be minimized for considerations of device longevity. The new algorithm first locates a fiducial point (FPT) at the dominant peak of each QRS complex. The ST-segment deviation (measured at 2 rate-adaptive delays after FPT, eg, FPT + 96 ms and FPT + 152 ms at 60 BPM) with respect to the isoelectric level (measured at the minimum slope preceding the QRS) is then measured. The following features are also quantified by simple operations: R-R interval, R-wave slope, R-wave amplitude, ST-segment slope, and noise content during the isoelectric segment. Inconsistencies in these features relative to their adaptive normal ranges are used to reject noisy or ectopic beats and sudden morphology changes. Finally, the ST-segment deviation over time is filtered to reject rates of change that are not likely attributable to human ischemia. Performance of the algorithm was evaluated on the European Society of Cardiology ST-T Database, which contains 180 hours of ambulatory electrocardiogram with 250 expert-annotated ischemic episodes. The sensitivity was 79% [74% 84%] (mean [95% CI]) and positive predictivity was 81% [76% 86%]. This performance is statistically equivalent to that of published electrocardiogram algorithms that were validated on the same dataset. Estimates of computational burden suggest that the algorithm could process two channels of electrogram continuously for more than 5 years with current implanted device technology. In conclusion, we have developed an algorithm for ST-segment monitoring that can be implemented in current implantable devices with sensitivity and positive predictivity that are comparable with the state-of-the-art.
通过植入式设备进行连续ST段监测可能有助于明确心律失常的基质、阐明非特异性胸痛的起源,以及对既定的抗缺血治疗进行滴定或预防性应用。虽然ST段监测算法可用于体表心电图,但出于设备寿命的考虑,植入式设备算法的计算需求必须降至最低。新算法首先在每个QRS波群的主峰处定位一个基准点(FPT)。然后测量相对于等电位线(在QRS波之前的最小斜率处测量)的ST段偏移(在FPT后的2个速率自适应延迟处测量,例如,在60次/分钟时为FPT + 96毫秒和FPT + 152毫秒)。以下特征也通过简单运算进行量化:R-R间期、R波斜率、R波振幅、ST段斜率以及等电位段期间的噪声含量。这些特征相对于其自适应正常范围的不一致性被用于排除噪声或异位搏动以及突然的形态变化。最后,对随时间变化的ST段偏移进行滤波,以排除不太可能由人为缺血引起的变化率。该算法的性能在欧洲心脏病学会ST-T数据库上进行了评估,该数据库包含180小时的动态心电图,有250次专家标注的缺血发作。敏感性为79% [74% 84%](均值 [95%置信区间]),阳性预测值为81% [76% 86%]。该性能在统计学上与在同一数据集上验证的已发表心电图算法相当。计算负担估计表明,使用当前的植入式设备技术,该算法可以连续处理两个通道的心电图超过5年。总之,我们开发了一种用于ST段监测的算法,该算法可以在当前的植入式设备中实现,其敏感性和阳性预测值与现有技术相当。