Detecting “Strict” Left Bundle Branch Block from 12-lead Electrocardiogram using Support Vector Machine Classification and Derivative Analysis

N. Perera, C. Daluwatte
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引用次数: 3

Abstract

Cardiac Resynchronization Therapy (CRT) is generally indicated for heart failure patients with a left bundle branch block (LBBB). “Strict” LBBB criteria have been proposed as a better predictor of benefit from CRT. Automatic detection of “strict” LBBB criteria may improve outcomes for heart failure patients by reducing high false positive rates in LBBB detection. This study proposes an algorithm to automatically detect “strict” LBBB, developed and tested using ECGs made available via the International Society of Computerized Electrocardiology (ISCE) LBBB initiative. The dataset consists of 12-lead Holter ECGs recorded before the therapy from the MADIT-CRT clinical trial. The algorithm consists of multi-lead QRS complex detection using length transform, a support vector machine (SVM) classifier to identify QS- or rS- configurations and identification of mid-QRS notching and slurring by analyzing the variation of first and second derivatives of the signals respectively. The algorithm achieved an accuracy of 80%, sensitivity of 86%, specificity of 73%, positive predictive value (PPV) of 81% and negative predictive value of 79% on the training set. It achieved accuracy, sensitivity, specificity, PPV and NPV of 81%, 88%, 75%, 79% and 85% on the test set. High sensitivity to minor slurring and errors in QRS detection result in low specificity for LBBB detection.
基于支持向量机分类和导数分析的12导联心电图“严格”左束支传导阻滞检测
心脏再同步化治疗(CRT)通常适用于左束支传导阻滞(LBBB)心衰患者。“严格的”LBBB标准被提议作为CRT获益的更好预测指标。自动检测“严格的”LBBB标准可以通过降低LBBB检测的高假阳性率来改善心力衰竭患者的预后。本研究提出了一种自动检测“严格”LBBB的算法,该算法使用通过国际计算机心电学会(ISCE) LBBB倡议提供的心电图进行开发和测试。数据集包括MADIT-CRT临床试验治疗前记录的12导联动态心电图。该算法包括利用长度变换进行多导QRS复形检测,利用支持向量机(SVM)分类器识别QS-或rS-构型,以及分别通过分析信号一阶导数和二阶导数的变化来识别中间QRS陷波和模糊。该算法在训练集上的准确率为80%,灵敏度为86%,特异性为73%,阳性预测值(PPV)为81%,阴性预测值为79%。在测试集上,其准确性、敏感性、特异性、PPV和NPV分别为81%、88%、75%、79%和85%。QRS检测对轻微模糊和错误的高灵敏度导致LBBB检测的特异性较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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