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Early Diagnosis and Automated Analysis of Myocardial Infarction (STEMI) by Detection of ST Segment Elevation Using Wavelet Transform and Feature Extraction

机译:用小波变换检测ST段升高和特征提取的ST段抬高早期诊断和自动分析心肌梗死(Stemi)

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Myocardial Infarction(MI) has remained the predominant and most serious of all the cardiovascular diseases over the years. Myocardial Infarction also termed as heart attack, happens when the flow of blood decreases or ceases to the heart or a part of it, causing trauma to the muscles of the heart. Early diagnosis of heart attack, getting immediate medical help with remote monitoring and end user notification is aimed in this paper. Broad pathological Q- wave, inversion of T- wave, elevated ST-segment in electrocardiogram (ECG) are the predominant features that must be taken into consideration while foretelling MI. Morphological changes namely ST-segment diversion and T-wave changes are inspected for any potential threat of MI. This paper suggests a novel approach in identifying the variation in ST segment by Wavelet transform, gradient decent methods, and some custom algorithms. Wavelet transform of the live ECG signals obtained from these leads disintegrates recorded wave into sub-bands of different order. Wavelet transform is an efficient method in capturing time and frequency simultaneously. Baseline wandering reduction, denoising and filtering of the live ECG and detection of PQRST positions on the ECG is executed primarily. Identification of various segments namely ST, PT, PQ etc. and implementing various algorithms for any anomalies in ST-segment which deviates beyond a threshold with reference to the normal sinus rhythm is noticed. Having fewer leads and targeting lightweight mobile healthcare application, real-time analyses for remote recording, diagnosing and notifying is aimed in this paper.
机译:多年来,心肌梗塞(MI)仍然是主要的,最严重的心血管疾病。心肌梗死也被称为心脏病发作,当血液流量减少或停止心脏或一部分时会发生,导致心肌的肌肉。早期诊断心脏病发作,通过远程监控和最终用户通知获得立即医疗帮助。宽的病理Q波,T波的反转,心电图(ECG)中的ST段(ECG)的升高是必须考虑的主要特征,同时预防MI。形态学改变即,对任何潜在的MI潜在威胁检查了ST段转移和T波变化。本文建议采用小波变换,梯度体面方法和一些自定义算法识别ST段变化的新方法。从这些引线获得的现场ECG信号的小波变换将记录的波分解为不同顺序的子带。小波变换是捕获时间和频率的有效方法。基线徘徊,即LIVE ECG的去噪和过滤,并主要执行ECG上的PQRST位置。识别各种段,即ST,Pt,PQ等,并对ST段中的任何异常实施的各种算法,其偏离在基于正常的窦性节律的阈值之外。具有较少的引线和针对轻量级移动医疗保健应用,对本文的远程录制,诊断和通知的实时分析。

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