特征归一化有助于早期发现心脏疾病

Swati Negi, C. S. Kumar, A. A. Kumar
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引用次数: 8

摘要

早期发现心脏疾病有助于挽救许多生命。利用支持向量机(SVM)后端分类器对心电图(ECG)信号的RR区间序列进行时域和频域统计特征提取,可用于区分充血性心力衰竭(CHF)和心源性猝死(SCD)患者与正常窦性心律(NSR)患者。通过对不同心率变异性(HRV)持续时间的探索,我们发现90分钟的持续时间可以获得最佳的分类结果。我们使用线性支持向量机核获得了92.85%的分类准确率。在这项工作中,输入统计特征包括患者独立和患者特定的变化。患者特异性变化被认为是输入特征向量中的噪声,而患者独立变化被认为是信息。在这项工作中,我们尝试了两种方法。第一种方法是主成分分析(PCA),以获得最大的信息存储的降维特征。与基线系统相比,我们获得了0.65%的绝对性能改进。在第二种方法中,使用协方差归一化(CVN)来消除/最小化患者特定变异的影响。与基准系统相比,系统整体性能提高了1.96%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature normalization for enhancing early detection of cardiac disorders
Early detection of cardiac disorders can help save many lives. Time and frequency domain statistical features derived from RR interval series of electrocardiogram (ECG) signals with a support vector machine (SVM) backend classifier can be used for distinguishing congestive heart failure (CHF) and sudden cardiac death (SCD) patients from the normal sinus rhythm (NSR) patients. We empirically found that ninety minutes of duration gave the optimal classification results after exploring with different heart rate variability (HRV) time durations. We obtained a classification accuracy of 92.85% for our baseline system using linear SVM kernel. In this work, the input statistical features consists of patient independent and patient specific variations. The patient specific variations were considered as noise in the input feature vector, while patient independent variations as informative. In this work, we experimented with two approaches. The first approach used was principal component analysis (PCA) to obtain dimensionality reduced features with maximum information stored. We obtained a performance improvement of 0.65% absolute over the baseline system. In the second approach, covariance normalization (CVN) was used to remove/minimize the effect of patient specific variations. The overall system performance was improved by 1.96% absolute over the baseline system.
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