首页> 外文期刊>Journal of Electrocardiology: An International Publication for the Study of the Electrical Activities of the Heart >Pattern recognition analysis of digital ECGs: Decreased QT measurement error and improved precision compared to semi-automated methods
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Pattern recognition analysis of digital ECGs: Decreased QT measurement error and improved precision compared to semi-automated methods

机译:数字ECG的模式识别分析:与半自动方法相比,QT测量误差减少并且精度提高

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Background and Purpose: Machine-read QT measurements employing T-wave detection algorithms (ALG) are not accepted by regulatory agencies for the primary analysis of thorough QT (TQT) studies. Newly developed pattern recognition software (PRO) which matches ECG waveforms to user-defined templates may improve this situation. Methods We compared RR, QT, QTc, QT variability, T-end measurement errors, and individual QT rate correction factors and their associated coefficients of determination (R2) following ALG and PRO analysis. Machine-read QTc values were compared with core laboratory semi-automated (SA) values for verification. Results: Compared to ALG, PRO reduced the frequency of T-end measurement errors (5.6% vs. 0.1%), reduced the intra-individual QT variability (12.6 ± 5.9 vs. 4.9 ± 1.1 ms) and allowed the recovery of 3/58 subjects that exhibited an unacceptable ( 0.9) R2. Conclusions: PRO adjusted for ALG-based T-end measurement errors and provided an accurate and precise automated method for continuous QT analysis, thus offering an alternative to resource-intensive semi-automated analyses currently performed by ECG core laboratories.
机译:背景与目的:监管机构不接受采用T波检测算法(ALG)的机器读取QT测量来进行全面QT(TQT)研究的初步分析。新开发的将ECG波形与用户定义模板匹配的模式识别软件(PRO)可能会改善这种情况。方法我们根据ALG和PRO分析,比较了RR,QT,QTc,QT变异性,T端测量误差以及各个QT速率校正因子及其相关的测定系数(R2)。将机器读取的QTc值与核心实验室半自动(SA)值进行比较以进行验证。结果:与ALG相比,PRO降低了T端测量错误的发生频率(5.6%比0.1%),降低了个体内部QT变异性(12.6±5.9 vs. 4.9±1.1 ms),并允许恢复3 / 58位受试者的R2不可接受(<0.9)。结论:PRO调整了基于ALG的T端测量误差,并为连续QT分析提供了准确而精确的自动化方法,从而为ECG核心实验室当前执行的资源密集型半自动化分析提供了替代方案。

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