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Detection of heartbeat sounds arrhythmia using automatic spectral methods and cardiac auscultatory

机译:使用自动光谱方法和心脏矫正检测心跳发出心律失常的心律失常

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Auscultation, the listening process for lung sound using acoustic stethoscope, is the first physical examination used to detect any disorder in heartbeat system. Unlike sophisticated tools, stethoscope is not beyond the reach of rural hospitals and clinics. However, the use of acoustic stethoscope needs specialized and well-experienced physicians. This is mainly due to limited sound amplification of the stethoscope to the extent that the human ears may fail to recognize the pathological sound, and hence, the diagnosis may be erroneously classified. Models that make use of screened digital, instead of acoustic, stethoscope, in which heart sound is digitized and stored, becomes one of the most popular techniques because it allows computer-aided software to perform automated analysis. In this paper, a complete algorithm for automatic heartbeat detection and disorder discrimination is presented. The technique takes the advantage of spectral analysis to separate the first and second heart sounds (S1 and S2) using a power threshold. The frame duration is dynamically estimated, according to duration of the sound to be analyzed (S1 or S2). As typical recordings of heart sounds are periodic with several cycles, two methods to combine MFCC estimates are proposed. Using 450 cardiac ausculatory with both pathological and normal heartbeats, the proposed methods were examined using a cross-validation strategy based on tenfold. More than 90%, at best, sensitivity and specificity, respectively, were obtained for the two methods using an artificial neural network classifier with multilayer perceptron. The solution takes the advantage of recent technology and digital advances, in which it is possible to connect the digital stethoscope to any digital device to conduct further analysis using computer-aided applications. The technique is practical as it can be available at different hospitals and clinics, including those in rural areas, with limited resources.
机译:使用声学听诊器的肺部听诊的听诊过程,是用于检测心跳系统中任何疾病的第一次体检。与复杂的工具不同,听诊器不仅仅是农村医院和诊所的范围。然而,使用声学听诊器需要专业且经验丰富的医生。这主要是由于听诊器的声音放大有限,在人体耳朵可能无法识别病理声音的程度上,因此,可能错误地分类诊断。利用筛选数字化而不是声学,听诊器的模型成为数字化和存储的,成为最受欢迎的技术之一,因为它允许计算机辅助软件进行自动分析。本文介绍了一种自动心跳检测和紊乱鉴别的完整算法。该技术采用光谱分析的优点,以使用功率阈值分离第一和第二心脏声音(S1和S2)。根据要分析的声音的持续时间(S1或S2),帧持续时间被动态地估计。随着心声的典型记录是多个周期的周期性,提出了两种结合MFCC估计的方法。使用450心脏刺激与病理和正常心跳,使用基于十倍的交叉验证策略来检查所提出的方法。对于使用具有多层erceptron的人工神经网络分类器的两种方法,可以获得超过90%,并且可以分别获得灵敏度和特异性。该解决方案采用最近的技术和数字进步的优点,其中可以将数字听诊器连接到任何数字设备,以使用计算机辅助应用进行进一步的分析。该技术实用,因为它可以在不同的医院和诊所提供,包括农村地区的诊所,资源有限。

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