用简化特征和极限学习机检测冠状动脉疾病。

Clujul medical (1957) Pub Date : 2018-01-01 Epub Date: 2018-04-25 DOI:10.15386/cjmed-882
Ram Sewak Singh, Barjinder Singh Saini, Ramesh Kumar Sunkaria
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引用次数: 31

摘要

目的:心血管疾病是全球人口中死亡率最高的疾病,主要由心律失常、心肌梗死和心力衰竭等冠状动脉疾病(CAD)引起。因此,早期识别和诊断CAD是至关重要的。为此,我们提出了一种利用心率变异性(HRV)信号检测冠心病患者的新方法。该方法利用多尺度小波包(MSWP)变换对HRV信号进行子空间分解,并从分解后的HRV信号中提取熵特征。采用Fisher排序法、广义判别分析(GDA)和二元分类器作为极限学习机(ELM)对检测性能进行分析。排序策略对从分解的心率变异性信号中提取的可用特征进行排序,并根据其临床重要性进行排序。GDA减少了排序特征的维数。此外,它还可以通过选择排序特征的最佳识别率来提高分类精度。ELM的主要优点是隐藏层不需要调整,并且具有快速的检测速率。方法:检测CAD患者时,从标准数据库中获取健康正常窦性心律(NSR)和CAD患者的HRV数据。本研究也采用健康受试者自记录的正常窦性心律(Self_NSR)数据。首先,利用MSWP变换将HRV时间序列分解为4个层次。采用非线性方法对分解后的HRV信号提取62个特征进行HRV分析、模糊熵(FZE)和Kraskov近邻熵(K-NNE)。其中,FZE法提取了31个熵特征,K-NNE法提取了31个熵特征。选择这些特征是因为每个特征都有不同的物理前提,并以这种方式集中和使用混合技术中的HRV信号信息。从62个特征中选出前10个特征,通过一种称为Fisher评分的排名方法进行排名。将前10个特征应用于所提出的模型,即高斯或RBF核的GDA +隐藏节点为s型或多重二次型的ELM。GDA方法将前10个特征转化为1个特征,并使用ELM进行分类。结果:结合数据集作为NSR-CAD和Self_NSR- CAD受试者进行了数值实验。该方法使用排名前十位的熵特征显示出更好的性能。与ELM和线性判别分析(LDA)+ELM相比,RBF核+ELM以隐藏节点为多重二次型方法的GDA和高斯核+ELM以隐藏节点为s型或多重二次型方法的GDA在两种数据集上的检测精度都接近100%。利用MSWP变换对HRV信号进行4级和3级子空间分解,可以对CAD患者进行检测和分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Detection of coronary artery disease by reduced features and extreme learning machine.

Detection of coronary artery disease by reduced features and extreme learning machine.

Detection of coronary artery disease by reduced features and extreme learning machine.

Detection of coronary artery disease by reduced features and extreme learning machine.

Objective: Cardiovascular diseases generate the highest mortality in the globe population, mainly due to coronary artery disease (CAD) like arrhythmia, myocardial infarction and heart failure. Therefore, an early identification of CAD and diagnosis is essential. For this, we have proposed a new approach to detect the CAD patients using heart rate variability (HRV) signals. This approach is based on subspaces decomposition of HRV signals using multiscale wavelet packet (MSWP) transform and entropy features extracted from decomposed HRV signals. The detection performance was analyzed using Fisher ranking method, generalized discriminant analysis (GDA) and binary classifier as extreme learning machine (ELM). The ranking strategies designate rank to the available features extracted by entropy methods from decomposed heart rate variability (HRV) signals and organize them according to their clinical importance. The GDA diminishes the dimension of ranked features. In addition, it can enhance the classification accuracy by picking the best discerning of ranked features. The main advantage of ELM is that the hidden layer does not require tuning and it also has a fast rate of detection.

Methodology: For the detection of CAD patients, the HRV data of healthy normal sinus rhythm (NSR) and CAD patients were obtained from a standard database. Self recorded data as normal sinus rhythm (Self_NSR) of healthy subjects were also used in this work. Initially, the HRV time-series was decomposed to 4 levels using MSWP transform. Sixty two features were extracted from decomposed HRV signals by non-linear methods for HRV analysis, fuzzy entropy (FZE) and Kraskov nearest neighbour entropy (K-NNE). Out of sixty-two features, 31 entropy features were extracted by FZE and 31 entropy features were extracted by K-NNE method. These features were selected since every feature has a different physical premise and in this manner concentrates and uses HRV signals information in an assorted technique. Out of 62 features, top ten features were selected, ranked by a ranking method called as Fisher score. The top ten features were applied to the proposed model, GDA with Gaussian or RBF kernal + ELM having hidden node as sigmoid or multiquadric. The GDA method transforms top ten features to only one feature and ELM has been used for classification.

Results: Numerical experimentations were performed on the combination of datasets as NSR-CAD and Self_NSR- CAD subjects. The proposed approach has shown better performance using top ten ranked entropy features. The GDA with RBF kernel + ELM having hidden node as multiquadric method and GDA with Gaussian kernel + ELM having hidden node as sigmoid or multiquadric method achieved an approximate detection accuracy of 100% compared to ELM and linear discriminant analysis (LDA)+ELM for both datasets. The subspaces level-4 and level-3 decomposition of HRV signals by MSWP transform can be used for detection and analysis of CAD patients.

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