利用超完全字典中的最优投影进行心电拍分类

A. Pantelopoulos, N. Bourbakis
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引用次数: 3

摘要

可穿戴健康监测系统(WHMS)可以无创地对各种生命体征进行无所不在且不显眼的监测。这些系统有可能通过早期发现关键的健康变化,从而实现疾病或危险事件的预防,从而彻底改变医疗保健服务。充血性心力衰竭(CHF)患者可以从WHMS中获益。心律失常的检测对CHF的治疗至关重要。然而,由于WHMS的计算和存储资源有限,诊断算法需要在计算上便宜。为了实现这一目标,我们在本文中研究了匹配算法在获得心电数据的紧凑时频表示方面的效率,然后可以从人工神经网络(ANN)中使用匹配算法来实现心跳分类。为了选择最合适的分解结构,我们研究了所使用的字典类型(平稳小波,余弦包,小波包)在获得最佳分类特征方面的影响。结果表明,通过贪心算法确定与心电形态学相关性最大的字典原子,可以得到一种准确、高效、实时的心跳分类方案。这样的算法可以在资源受限的便携式设备(如手机)上廉价运行,甚至可以直接在更小的基于微控制器的电路板上运行。使用MIT-BIH心律失常数据库评估我们的方法的性能。提供的结果表明,所提出的方法的准确性(94.9%),再加上它的简单性(特征提取需要单个线性变换)证明了它用于便携式心脏监测系统上异常心跳的实时分类。
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ECG Beat Classification Using Optimal Projections in Overcomplete Dictionaries
Wearable health monitoring systems (WHMS) enable ubiquitous and unobtrusive monitoring of a variety of vital signs that can be measured non-invasively. These systems have the potential to revolutionize healthcare delivery by achieving early detection of critical health changes and thus possibly even disease or hazardous event prevention. Amongst the patient populations that can greatly benefit from WHMS are Congestive Heart Failure (CHF) patients. For CHF management the detection of heart arrhythmias is of crucial importance. However, since WHMS have limited computing and storage resources, diagnostic algorithms need to be computationally inexpensive. Towards this goal, we investigate in this paper the efficiency of the Matching algorithm in deriving compact time-frequency representations of ECG data, which can then be utilized from an Artificial Neural Network (ANN) to achieve beat classification. In order to select the most appropriate decomposition structure, we examine the effect of the type of dictionary utilized (stationary wavelets, cosine packets, wavelet packets) in deriving optimal features for classfication. Our results show that by applying a greedy algorithm to determine the dictionary atoms that show the greatest correlation with the ECG morphologies, an accurate, efficient and real-time beat classification scheme can be derived. Such an algorithm can then be inexpensively run on a resource-constrained portable device such as a cell phone or even directly on a smaller microcontroller-based board. The performance of our approach is evaluated using the MIT-BIH Arrhythmia database. Provided results illustrate the accuracy of the proposed method (94.9%), which together with its simplicity (a single linear transform is required for feature extraction) justify its use for real-time classification of abnormal heartbeats on a portable heart monitoring system.
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