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初步探索减法心电图在院前环境中检测心肌缺血的应用。

An initial exploration of subtraction electrocardiography to detect myocardial ischemia in the prehospital setting.

机构信息

Department of Cardiology, Heart Center, Amsterdam UMC, University of Amsterdam, Amsterdam, The Netherlands.

Department of Cardiology, Heart-Lung Center, Leiden University Medical Center, Leiden, The Netherlands.

出版信息

Ann Noninvasive Electrocardiol. 2020 May;25(3):e12722. doi: 10.1111/anec.12722. Epub 2019 Nov 10.

Abstract

BACKGROUND

In the prehospital triage of patients presenting with symptoms suggestive of acute myocardial ischemia, reliable myocardial ischemia detection in the electrocardiogram (ECG) is pivotal. Due to large interindividual variability and overlap between ischemic and nonischemic ECG-patterns, incorporation of a previous elective (reference) ECG may improve accuracy. The aim of the current study was to explore the potential value of serial ECG analysis using subtraction electrocardiography.

METHODS

SUBTRACT is a multicenter retrospective observational study, including patients who were prehospitally evaluated for acute myocardial ischemia. For each patient, an elective previously recorded reference ECG was subtracted from the ambulance ECG. Patients were classified as myocardial ischemia cases or controls, based on the in-hospital diagnosis. The diagnostic performance of subtraction electrocardiography was tested using logistic regression of 28 variables describing the differences between the reference and ambulance ECGs. The Uni-G ECG Analysis Program was used for state-of-the-art single-ECG interpretation of the ambulance ECG.

RESULTS

In 1,229 patients, the mean area-under-the-curve of subtraction electrocardiography was 0.80 (95%CI: 0.77-0.82). The performance of our new method was comparable to single-ECG analysis using the Uni-G algorithm: sensitivities were 66% versus 67% (p-value > .05), respectively; specificities were 80% versus 81% (p-value > .05), respectively.

CONCLUSIONS

In our initial exploration, the diagnostic performance of subtraction electrocardiography for the detection of acute myocardial ischemia proved equal to that of state-of-the-art automated single-ECG analysis by the Uni-G algorithm. Possibly, refinement of both algorithms, or even integration of the two, could surpass current electrocardiographic myocardial ischemia detection.

摘要

背景

在表现出急性心肌缺血症状的患者的院前分诊中,心电图(ECG)中可靠的心肌缺血检测至关重要。由于个体间差异较大,以及缺血和非缺血 ECG 模式之间存在重叠,因此结合之前的选择性(参考)ECG 可能会提高准确性。本研究的目的是探索使用减法心电图进行连续 ECG 分析的潜在价值。

方法

SUBTRACT 是一项多中心回顾性观察性研究,纳入了因急性心肌缺血而接受院前评估的患者。对于每个患者,将之前记录的选择性参考 ECG 从救护车 ECG 中减去。根据住院诊断,将患者分为心肌缺血病例或对照组。使用逻辑回归分析 28 个描述参考 ECG 和救护车 ECG 之间差异的变量,测试减法心电图的诊断性能。使用 Uni-G ECG 分析程序对救护车 ECG 进行最先进的单 ECG 解读。

结果

在 1229 例患者中,减法心电图的平均曲线下面积为 0.80(95%CI:0.77-0.82)。我们的新方法的性能与 Uni-G 算法的单 ECG 分析相当:敏感性分别为 66%和 67%(p 值>.05);特异性分别为 80%和 81%(p 值>.05)。

结论

在我们的初步探索中,减法心电图检测急性心肌缺血的诊断性能与 Uni-G 算法的最先进的自动单 ECG 分析相当。可能,两种算法的改进,甚至是两种算法的整合,都可以超越当前的心电图心肌缺血检测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/00af/7358788/ffdd33808346/ANEC-25-e12722-g001.jpg

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