生物医学信号特征在心脏健康监测中的意义

SPG biomed Pub Date : 2022-11-10 DOI:10.3390/biomed2040031
M. Mamun
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引用次数: 2

摘要

心血管疾病需要广泛的诊断测试和频繁的医生检查。随着信号处理和传感器技术的进步,现在可以从人体中获取生命体征,并对信号进行处理,提取必要的特征,早期初步诊断心血管疾病的症状。这有助于预防致命的健康事件,如心脏病发作和/或中风,并减少前往卫生保健机构的次数。早期正确检测心电图ST段升高,可避免患者日后心脏病发作或ST段升高的心肌梗死。使用多种互补的生物医学传感器可以比使用单一传感器更好地进行诊断。本文提出了一个MATLAB图形用户界面,它可以检测心电图ST段升高,并利用各种生物医学传感器的信息,提出了一种评估心脏健康的技术,以预测潜在的心力衰竭情况。该方法利用生物医学传感器之间的融合来减少诊断中的误报。来自在线数据集的数据被用来显示使用GUI的ST段升高检测和诊断技术的有效性和前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Significance of Features from Biomedical Signals in Heart Health Monitoring
Cardiovascular diseases require extensive diagnostic tests and frequent physician visits. With the advance in signal processing and sensor technology, now it is possible to acquire vital signs from the human body and process the signal to extract features necessary to primarily diagnose symptoms of cardiovascular disease early. This can help prevent deadly health incidents such as heart attack and or stroke, as well as reduce the number of visits to a health care facility. The proper detection of an elevated ST segment of ECG wave at an early stage may save the patient from having a heart attack or ST elevated myocardial infarction later. The use of a variety of complementary biomedical sensors can lead to a better diagnosis than what is possible when a single sensor is used. This paper proposes a MATLAB GUI which can detect elevated ST segments of ECG waves and use information from a variety of biomedical sensors to bring forth a technique to assess heart health to predict potential heart failure conditions. The proposed technique used fusion among multiple biomedical sensors to reduce the false alarm in diagnosis. Data from the online dataset were used to show the effectiveness and promise of the proposed detection of elevated ST segments and diagnosis techniques using the GUI.
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