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A survey of data mining algorithms used in cardiovascular disease diagnosis from multi-lead ECG data

机译:从多导心电图数据中进行心血管疾病诊断的数据挖掘算法研究

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Remote cardiovascular disease (CVD) diagnosis from ECG plays an important role in healthcare domain. Data mining, the major step in the process of the extraction of knowledge usingdescriptive and predictive algorithms that aid in making proactive decisions, has also been usedfor CVD diagnosis. Recently, diverse techniques have been developed for analyzing the ECGsignals. However, due to the diversity of techniques used, terminologies, performance measuresused in different techniques makes analysis and comparing of results thwarting. The aim of thiswork is to essentially explore and present the analysis of different data mining algorithmsproposed earlier in literature for CVD diagnosis, their advantages and limitations. This paperpresents various techniques for CVD diagnosis using data mining from an ECG signal underfour major phases a€“ ECG Acquisition, ECG Compression, ECG Feature Extraction and ECGdiagnosis. The primary aim of this paper is to categorize the various researches done in thisregard to provide a glossary for interested researchers and to aid in identifying their potentialresearch direction.
机译:ECG的远程心血管疾病(CVD)诊断在医疗保健领域起着重要作用。数据挖掘是使用有助于做出主动决策的描述性和预测性算法提取知识的主要步骤,也已用于CVD诊断。最近,已开发出多种技术来分析ECG信号。但是,由于所使用技术的多样性,不同技术中使用的术语,性能指标使结果的分析和比较受阻。这项工作的目的是从本质上探讨和介绍分析较早的文献中提出的用于CVD诊断的不同数据挖掘算法及其优势和局限性。本文介绍了在心电图采集,心电图压缩,心电图特征提取和心电图诊断四个主要阶段从心电图信号数据挖掘中进行CVD诊断的各种技术。本文的主要目的是对在此方面进行的各种研究进行分类,以便为感兴趣的研究人员提供术语表,并帮助确定他们的潜在研究方向。

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