Firoozabadi Reza, Nakagawa Michael, Helfenbein Eric D, Babaeizadeh Saeed
Advanced Algorithm Research Center, Philips Healthcare, Andover, MA, USA.
J Electrocardiol. 2013 Nov-Dec;46(6):473-9. doi: 10.1016/j.jelectrocard.2013.06.007. Epub 2013 Jul 19.
Although the importance of quality cardiopulmonary resuscitation (CPR) and its link to survival is still emphasized, there has been recent debate about the balance between CPR and defibrillation, particularly for long response times. Defibrillation shocks for ventricular fibrillation (VF) of recently perfused hearts have high success for the return of spontaneous circulation (ROSC), but hearts with depleted adenosine triphosphate (ATP) stores have low recovery rates. Since quality CPR has been shown to both slow the degradation process and restore cardiac viability, a measurement of patient condition to optimize the timing of defibrillation shocks may improve outcomes compared to time-based protocols. Researchers have proposed numerous predictive features of VF and shockable ventricular tachycardia (VT) which can be computed from the electrocardiogram (ECG) signal to distinguish between the rhythms which convert to spontaneous circulation and those which do not. We looked at the shock-success prediction performance of thirteen of these features on a single evaluation database including the recordings from 116 out-of-hospital cardiac arrest patients which were collected for a separate study using defibrillators in ambulances and medical centers in 4 European regions and the US between March 2002 and September 2004. A total of 469 shocks preceded by VF or shockable VT rhythm episodes were identified in the recordings. Based on the experts' annotation for the post-shock rhythm, the shocks were categorized to result in either pulsatile (ROSC) or non-pulsatile (no-ROSC) rhythm. The features were calculated on a 4-second ECG segment prior to the shock delivery. These features examined were: Mean Amplitude, Average Peak-Peak Amplitude, Amplitude Range, Amplitude Spectrum Analysis (AMSA), Peak Frequency, Centroid Frequency, Spectral Flatness Measure (SFM), Energy, Max Power, Centroid Power, Power Spectrum Analysis (PSA), Mean Slope, and Median Slope. Statistical hypothesis tests (two-tailed t-test and Wilcoxon with 5% significance level) were applied to determine if the means and medians of these features were significantly different between the ROSC and no-ROSC groups. The ROC curve was computed for each feature, and Area Under the Curve (AUC) was calculated. Specificity (Sp) with Sensitivity (Se) held at 90% as well as Se with Sp held at 90% was also computed. All features showed statistically different mean and median values between the ROSC and no-ROSC groups with all p-values less than 0.0001. The AUC was >76% for all features. For Sp = 90%, the Se range was 33-45%; for Se = 90%, the Sp range was 49-63%. The features showed good shock-success prediction performance. We believe that a defibrillator employing a clinical decision tool based on these features has the potential to improve overall survival from cardiac arrest.
尽管高质量心肺复苏(CPR)的重要性及其与生存率的关联仍备受强调,但近期关于CPR与除颤之间的平衡存在争议,尤其是对于较长的响应时间。对近期灌注心脏的心室颤动(VF)进行除颤电击,恢复自主循环(ROSC)的成功率较高,但三磷酸腺苷(ATP)储备耗尽的心脏恢复率较低。由于高质量CPR已被证明既能减缓降解过程又能恢复心脏活力,与基于时间的方案相比,测量患者状况以优化除颤电击的时机可能会改善治疗结果。研究人员提出了许多可从心电图(ECG)信号计算得出的VF和可电击性室性心动过速(VT)的预测特征,以区分能恢复自主循环的节律和不能恢复的节律。我们在一个单一评估数据库中研究了其中13种特征的电击成功预测性能,该数据库包括116名院外心脏骤停患者的记录,这些记录是在2002年3月至2004年9月期间,在欧洲4个地区和美国的救护车及医疗中心使用除颤器为一项单独研究收集的。在记录中总共识别出469次由VF或可电击性VT节律发作引发的电击。根据专家对电击后节律的注释,将电击分类为导致搏动性(ROSC)或非搏动性(无ROSC)节律。这些特征是在电击前4秒的ECG片段上计算得出的。所研究的这些特征包括:平均幅度、平均峰 - 峰值幅度、幅度范围、幅度谱分析(AMSA)、峰值频率、质心频率、谱平坦度测量(SFM)、能量、最大功率、质心功率、功率谱分析(PSA)、平均斜率和中位数斜率。应用统计假设检验(双侧t检验和显著性水平为5%的Wilcoxon检验)来确定这些特征在ROSC组和无ROSC组之间的均值和中位数是否存在显著差异。为每个特征计算ROC曲线,并计算曲线下面积(AUC)。还计算了特异性(Sp)保持在90%时的敏感性(Se)以及敏感性(Se)保持在90%时的特异性(Sp)。所有特征在ROSC组和无ROSC组之间均显示出统计学上不同的均值和中位数,所有p值均小于0.000。所有特征的AUC均>76%。当Sp = 90%时,Se范围为33 - 45%;当Se = 90%时,Sp范围为49 - 63%。这些特征显示出良好的电击成功预测性能。我们认为,采用基于这些特征的临床决策工具的除颤器有可能提高心脏骤停后的总体生存率。