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首页> 外文期刊>Journal of cardiovascular electrophysiology >The VT Prediction Model: A simplified means to differentiate wide complex tachycardias
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The VT Prediction Model: A simplified means to differentiate wide complex tachycardias

机译:VT预测模型:用于区分宽复杂性直觉的简化手段

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摘要

Background The accurate separation of undifferentiated wide complex tachycardias (WCTs) into ventricular tachycardia (VT) or supraventricular wide complex tachycardia (SWCT) using conventional, manually-applied 12-lead electrocardiogram (ECG) interpretation methods is difficult. Purpose We sought to devise a new WCT differentiation method that operates solely on automated measurements routinely provided by computerized ECG interpretation software. Methods In a two-part analysis, we developed and validated a logistic regression model (ie, VT Prediction Model) that utilizes routinely available computerized measurements derived from patients' paired WCT and baseline ECGs. Results The derivation cohort consisted of 601 paired WCT (273 VT, 328 SWCT) and baseline ECGs from 421 patients. The VT Prediction Model, composed of WCT QRS duration (ms) (P < .0001), QRS duration change (ms) (P < .0001), QRS axis change (degrees) (P < .0001) and T axis change (degrees) (P < .0001), yielded effective VT and SWCT differentiation (area under the curve [AUC]: 0.924; confidence interval [CI]: 0.903-0.944) for the derivation cohort. The validation cohort comprised 241 paired WCT (97 VT, 144 SWCT) and baseline ECGs from 177 patients. The VT Prediction Model's implementation on the validation cohort yielded effective WCT differentiation (AUC: 0.900; CI: 0.862-0.939) with overall accuracy, sensitivity, and specificity of 85.0%, 80.4%, and 88.2%, respectively. Conclusion The VT Prediction Model is an example of how readily available ECG measurements may be used to distinguish VT and SWCT effectively. Further study is needed to develop and refine newer WCT differentiation approaches that utilize computerized measurements provided by ECG interpretation software.
机译:背景技术难以使用常规,手动施加的12引导心电图(ECG)解释方法将无差异化的宽复杂性直升机(VT)进入心室性心动过速(VT)或SUMPRISCOLINGS宽复杂的心动过速(SWCT)。目的,我们寻求设计一种新的WCT差异化方法,该方法完全通过计算机化的ECG解释软件定期提供的自动测量。方法在两个部分分析中,我们开发并验证了利用患者配对的WCT和基线ECG的常规可用的计算机化测量的逻辑回归模型(即VT预测模型)。结果推导队参数由601个成对的WCT(273 VT,328 SWCT)和来自421名患者的基线ECG组成。 VT预测模型由WCT QRS持续时间(MS)(P <.0001),QRS持续时间变化(MS)(P <.0001),QRS轴变化(度)(P <.0001)和T轴变化(度)(P <.0001),产生有效的VT和SWCT分化(曲线下的区域[AUC]:0.924;达到衍生队的置信区间[CI]:0.903-0.944)。验证队列由177名患者组成241个成对的WCT(97 VT,144 SWCT)和基线ECG。 VT预测模型在验证队列中的实现产生了有效的WCT分化(AUC:0.900; CI:0.862-0.939),其总体精度,敏感性和特异性分别为85.0%,80.4%和88.2%。结论VT预测模型是可容易有效的ECG测量值可有效地区分VT和SWCT的示例。需要进一步研究,以开发和改进利用ECG解释软件提供的计算机化测量的更新的WCT差异化方法。

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