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Detection of Atrial Fibrillation Using 12-Lead ECG for Mobile Applications

机译:使用12引导ECG进行房颤检测移动应用的心房颤动

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Atrial Fibrillation(AF)is the most common arrhythmia and is associated with an increased risk of heart-related deaths and the development of conditions such as heart failure, dementia, and stroke.Affecting mostly elderly people, AF is associated with high comorbidity, increased mortality and is a major socio-economic impact in our society.Therefore, the detection of AF episodes in personalized health(p-Health)environments can be decisive in the prevention of major cardiac threats and in the reduction of health care costs.In this paper we present a new algorithm for detection of AF based on the assessment of the three main physiological characteristics of AF:(1)the irregularity of the heart rate;(2)the absence of the P-wave and(3)the presence of fibrillatory waves.Several features were extracted from the analysis of 12-lead electrocardiogram(ECG)signals, the best features were selected and a support vector machine classification model was adopted to discriminate AF and non-AF episodes.Our results show that the inclusion of features from the analysis of the recovered atrial activity was able to increase the performance of the algorithm: sensitivity of 88.5% and specificity of-92.9%. In the WELCOME project it is being designed a novel light vest with an integrated sensor system that collects several signals, including 12-lead ECG signals.The proposed algorithm is currently integrated in the WELCOME feature extraction module, which is responsible for receiving raw signals, extraction higher level features(e.g.occurrence of AF episodes)and provide them to the clinical decision process.
机译:心房颤动(AF)是最常见的心律失常,并与心脏有关的死亡的风险增加,如心脏衰竭,老年痴呆症,并stroke.Affecting大多是老人的发展状况有关,AF与高合并症相关,增加死亡率是我们society.Therefore一个重大的社会和经济影响,在个性化的健康(对健康)AF发作的检测环境可以预防心脏的主要威胁,并在医疗保健的减少costs.In这是决定性的本文中,我们提出了一种新算法基于对AF的三个主要生理特性的评估检测AF的:(1)心脏速率的不规则性;(2)不存在P波的和(3)存在下的纤维性颤动waves.Several特征是从12导联心电图(ECG)信号的分析中提取,选择最佳的功能和支持向量机分类模型获得通过区分AF和非AF episodes.O UR结果表明,从功能恢复的心房活动的分析纳入能够提高算法的性能:88.5%的敏感性和特异性,92.9%。在欢迎项目它正在设计一种新的光背心具有集成的传感器系统收集的几个信号,包括12导联心电图signals.The算法目前集成在WELCOME特征提取模块,其负责接收原始信号中,提取更高级的功能(AF发作egoccurrence),并提供它们到临床决策过程。

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