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A real-time data mining technique applied for critical ECG rhythm on handheld device

机译:一种应用于手持设备关键心电节律的实时数据挖掘技术

摘要

Sudden cardiac arrest is often caused by ventricular arrhythmias and these episodes can lead to death for patients with chronic heart disease. Hence, detection of such arrhythmia is crucial in mobile ECG monitoring. In this research, a systematic study is carried out to investigate the possible limitations that are preventing the realisation of a real-time ECG arrhythmia data-mining algorithm suitable for application on mobile devices. Based on the findings, a computationally lightweight algorithm is devised and tested. Ventricular tachycardia (VT) is the most common type of ventricular arrhythmias and is also the deadliest.. A ventricular tachycardia (VT) episode is due to a disorder ofthe regular contractions ofthe heart. It occurs when the human heart ventricles generate a rapid heartbeat which disrupts the regular physiology cycle. The normal sinus rhythm (NSR) of a regular human heart beat signal has its signature PQRST waveform and in regular pattern. Whereas, the characteristics of a ventricular tachycardia (VT) signal waveforms are short R-R intervals, widen QRS duration and the absence of P-waves. Each type of ECG arrhythmia previously mentioned has a unique waveform signature that can be exploited as features to be used for the realization of an automated ECG analysis application. In order to extract this known ECG waveform feature, a time-domain analysis is proposed for feature extraction. Cross-correlation allows the computation of a co-efficient that quantifies the similarity between two times-series. Hence, by cross-correlating known ECG waveform templates with an unknown ECG signal, the coefficient can indicate the similarities. In previous published work, a preliminary study was carried out. The cross-correlation coefficient wave (CCW) technique was introduced for feature extraction. The outcome ofthis work presents CCW as a promising feature to differentiate between NSR, VT and Vfib signals. Moreover, cross-correlation computation does not require high computational overhead. Next, an automated detection algorithm requires a classification mechanism to make sense of the feature extracted. A further study is conducted and published, a fuzzy set k-NN classifier was introduced for the classification of CCW feature extracted from ECG signal segments. A training set of size 180 is used. The outcome of the study indicates that the computationally light-weight fuzzy k-NN classifier can reliably classify between NSR and VT signals, the class detection rate is low for classifying Vfib signal using the fuzzy k-NN classifier. Hence, a modified algorithm known as fuzzy hybrid classifier is proposed. By implementing an expert knowledge based fuzzy inference system for classification of ECG signal; the Vfib signal detection rate was improved. The comparison outcome was that the hybrid fuzzy classifier is able to achieve 91.1% correct rate, 100% sensitivity and 100% specificity. The previously mentioned result outperforms the compared classifiers. The proposed detection and classification algorithm is able to achieve high accuracy in analysing ECG signal feature of NSR, VT and Vfib nature. Moreover, the proposed classifier is successfully implemented on a smart mobile device and it is able to perform data-mining of the ECG signal with satisfiable results.
机译:突然的心脏骤停通常是由室性心律失常引起的,这些发作可导致慢性心脏病患者死亡。因此,这种心律不齐的检测对于移动心电图监测至关重要。在这项研究中,进行了系统的研究以调查可能的限制,这些限制阻止了适合在移动设备上应用的实时ECG心律失常数据挖掘算法的实现。基于这些发现,设计并测试了一种计算轻量级的算法。室性心动过速(VT)是最常见的室性心律失常,也是最致命的。.室性心动过速(VT)发作是由于心脏规则收缩所致。当人的心室产生快速的心跳,破坏正常的生理周期时,就会发生这种情况。正常人的心跳信号的正常窦性心律(NSR)具有其标志性PQRST波形并呈规律模式。而室性心动过速(VT)信号波形的特征是较短的R-R间隔,较宽的QRS持续时间和不存在P波。前面提到的每种类型的ECG心律不齐都具有独特的波形特征,可以将其用作用于实现自动ECG分析应用程序的功能。为了提取该已知的ECG波形特征,提出了用于特征提取的时域分析。互相关允许计算量化两个时间序列之间相似度的系数。因此,通过使已知的ECG波形模板与未知的ECG信号互相关,该系数可以指示相似性。在以前发表的工作中,进行了初步研究。引入互相关系数波(CCW)技术进行特征提取。这项工作的结果表明CCW是区分NSR,VT和Vfib信号的有前途的功能。而且,互相关计算不需要高的计算开销。接下来,自动检测算法需要分类机制来理解提取的特征。进行并发表了进一步的研究,引入了模糊集k-NN分类器,用于分类从ECG信号片段中提取的CCW特征。使用大小为180的训练集。研究结果表明,计算轻量级模糊k-NN分类器可以可靠地在NSR和VT信号之间进行分类,使用模糊k-NN分类器对Vfib信号进行分类的分类检测率较低。因此,提出了一种改进的算法,称为模糊混合分类器。通过实施基于专家知识的模糊推理系统对心电信号进行分类; Vfib信号检测率提高。比较结果是,混合模糊分类器能够达到91.1%的正确率,100%的敏感性和100%的特异性。前面提到的结果优于比较的分类器。提出的检测和分类算法在分析NSR,VT和Vfib性质的ECG信号特征时能够获得较高的精度。此外,所提出的分类器已在智能移动设备上成功实现,并且能够执行ECG信号的数据挖掘,并且结果令人满意。

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    Chin F;

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  • 年度 2012
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