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Continuous digital ECG analysis over accurate R-peak detection using adaptive wavelet technique

机译:使用自适应小波技术在准确的R峰检测上进行连续数字ECG分析

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摘要

Worldwide, health care segment is under a severe challenge to achieve more accurate and intelligent biomedical systems in order to assist healthcare professionals with more accurate and consistent data as well as reliability. The role of ECG in healthcare is one of the paramount importances and it has got a multitude of abnormal relations and anomalies which characterizes intricate cardiovascular performance image. Until the recent past, ECG instruments and analysis played the role of providing the PQRST signal as raw observational output either on paper or on a console or in a file having many diagnostic clues embedded in the signal left to the expert cardiologist to look out for characteristic intervals and to detect the cardiovascular abnormality. Methods and practises are required more and more, to automate this process of cardiac expertise using knowledge engineering and an intelligent systems approach. This paper presents one of the challenging R-peak detections to classify diagnosis and estimate cardio disorders in a fully automated signal processing sequence. This study used an adaptive wavelet approach to generate an appropriate wavelet for R-signal identification under noise, baseband wandering and temporal variations of R-positions. This study designed an adaptive wavelet and successfully detected R- peak variations under various ECG signal conditions. The result and analysis of this method and the ways to use it for further purposes are presented here.
机译:在全球范围内,医疗保健部门面临着实现更准确和智能的生物医学系统的严峻挑战,以帮助医疗保健专业人员获得更准确和一致的数据以及可靠性。 ECG在医疗保健中的作用是最重要的因素之一,它具有众多异常关系和异常现象,这些异常特征和异常现象表征了复杂的心血管表现图像。直到最近,ECG仪器和分析一直扮演着将PQRST信号作为原始观察输出提供在纸上,控制台上或文件中的作用,该信号中嵌入了许多诊断线索,信号留给专业的心脏病专家以寻找特征间隔并检测心血管异常。为了使用知识工程和智能系统方法来自动化心脏专业知识的过程,越来越需要方法和实践。本文提出了一种具有挑战性的R峰检测,以全自动信号处理序列对诊断和评估心脏疾病进行分类。这项研究使用一种自适应小波方法来生成一个合适的小波,用于在噪声,基带漂移和R位置的时间变化下识别R信号。这项研究设计了一个自适应小波,并成功检测了各种ECG信号条件下的R峰变化。本文介绍了此方法的结果和分析,以及将其用于其他目的的方法。

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