An efficient technique for automated diagnosis of cardiac rhythms using electrocardiogram

Usha Desai, G. Nayak, G. Seshikala
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引用次数: 11

Abstract

Electrocardiogram (ECG) is the most reliable and low-cost diagnostic tool to evaluate the patients with cardiac arrhythmias. Manual diagnosis of arrhythmia beats is very tedious due to the nonlinear and complex nature of ECG. The current paper, describes pattern recognition and machine learning-based approach for computer-aided detection of five classes of ECG arrhythmia beats using Discrete Cosine Transform (DCT) coefficients. Further, methodology comprises dimensionality reduction using Independent Component Analysis (ICA), ten-fold cross-validation and diagnosis using Support Vector Machine (SVM) quadratic kernel function. Using ANOVA clinically (p<;0.05) and statistically (F-value) significant features are selected and reliability of accuracy is measured by Cohen's kappa (κ) statistic. Large database of 110,093 heartbeats from 48 records of MIT-BIH Arrhythmia Database recommended by ANSI/AAMI EC57:1998, which are grouped into five classes of arrhythmia beats viz. Non-ectopic (N), Ventricular ectopic (V), Supraventricular ectopic (S), Fusion (F) and Unknown (U) are classified with class-specific accuracy of 98.75%, 89.38%, 82.2% 47.04% and 90.57%, respectively and an overall accuracy of 95.98% The developed methodology is an efficient tool, which has intensive applications in early diagnosis, mass screening of cardiac health and in cardiac theoretic devices such as pacemaker systems.
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一种利用心电图自动诊断心律的有效技术
心电图(ECG)是评估心律失常患者最可靠、成本最低的诊断工具。由于心电图的非线性和复杂性,人工诊断心律失常非常繁琐。本文描述了基于模式识别和机器学习的方法,用于使用离散余弦变换(DCT)系数对五类心电心律失常的计算机辅助检测。此外,方法包括使用独立成分分析(ICA)的降维,十倍交叉验证和使用支持向量机(SVM)二次核函数的诊断。采用方差分析(ANOVA)选择临床显著特征(p<;0.05)和统计学显著特征(f值),采用Cohen’s kappa (κ)统计量衡量准确性的可靠性。基于ANSI/AAMI EC57:1998推荐的MIT-BIH心律失常数据库48条记录的110093次心跳,将心律失常分为5类,即:非异位(N)、室性异位(V)、室上异位(S)、融合(F)和未知(U),分类准确率分别为98.75%、89.38%、82.2%、47.04%和90.57%,总体准确率为95.98%。它在早期诊断、心脏健康的大规模筛查和心脏理论设备(如起搏器系统)中有着广泛的应用。
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