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A Wavelet-Based Approach for Automatic Diagnosis of Strict Left Bundle Branch Block

机译:基于小波的严格左束支传导阻滞自动诊断方法

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Cardiac resynchronization therapy (CRT) is widely used in heart failure patients with left bundle branch block (LBBB). However, the high false-positive rates obtained with the conventional LBBB criteria limit the effectiveness of this therapy. This has yielded to the definition of a new stricter criteria for diagnosis. The aim of this work was to develop and assess a fully-automatic algorithm for strict LBBB diagnosis. Twelve-lead, high-resolution, 10-second ECGs from 602 patients enrolled in the MADIT-CRT trial were available. Data were labelled for strict LBBB by 2 experts and divided into training (n=300) and validation (n=302, blind annotations to the investigators) sets for assessing algorithm performance. After QRS detection, a wavelet-based delineator was used to detect individual Q-R-S waves, QRS onsets and ends, and identify the type of QRS pattern on each standard lead. Then, multilead QRS boundaries were determined in order to compute the QRS width. Finally, an automatic algorithm for notch/slur detection within the QRS complex was applied based on the same wavelet approach used for delineation. In the validation set, LBBB was diagnosed with a sensitivity and specificity of Se=92.9% and Sp=65% (Acc=79%, PPV=73.9% and NPV=89.6%). Results confirmed an accurate diagnosis of strict LBBB based on a fully-automatic extraction of temporal and morphological QRS features.
机译:心脏再同步治疗(CRT)被广泛用于左束支传导阻滞(LBBB)的心力衰竭患者。然而,用常规LBBB标准获得的高假阳性率限制了该疗法的有效性。这就产生了新的更严格的诊断标准。这项工作的目的是开发和评估用于严格LBBB诊断的全自动算法。已有来自MADIT-CRT试验的602名患者的十二导联高分辨率10秒心电图。由2位专家将数据标记为严格的LBBB,并分为训练(n = 300)和验证(n = 302,对研究者的盲注)集合,以评估算法性能。在QRS检测之后,使用基于小波的轮廓线来检测单个Q-R-S波,QRS的起止点,并识别每个标准导线上QRS模式的类型。然后,确定多导QRS边界以计算QRS宽度。最后,基于用于划定的小波方法,应用了QRS复杂区域内的陷波/浆液检测的自动算法。在验证集中,诊断为LBBB的敏感性和特异性为Se = 92.9%和Sp = 65%(Acc = 79%,PPV = 73.9%和NPV = 89.6%)。结果基于对时间和形态QRS特征的全自动提取,证实了对严格LBBB的准确诊断。

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