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A cardiac sound characteristic waveform method for in-home heart disorder monitoring with electric stethoscope

机译:用电动听诊器监测家庭心脏病的心音特征波形方法

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An analytical model based on a single-DOF is proposed for extracting the characteristic waveforms (CSCW) from the cardiac sounds recorded by an electric stethoscope. Also, the diagnostic parameters [T1, T2, T11, T12], the time intervals between the crossed points of the CSCW and an adaptive threshold line (THV), were verified useful for identification of heart disorders. The easy-understanding graphical representation of the parameters was considered, in advance, even for an inexperienced user able to monitor his or her pathology progress. Since the diagnostic parameters were influenced much by a THV, the FCM clustering algorithm was introduced for determination of an adaptive THV in order to extract reliable diagnostic parameters. Further, the minimized J_m and [v_1, v_2, v_3, v_4] could be also efficient indicators for identifying the heart disorders. Finally, a case study on the abnormalormal cardiac sounds is demonstrated to validate the usefulness and efficiency of the cardiac sound characteristic waveform method with FCM clustering algorithm. NM1 and NM2 as the normal case have very small value in J_m (<0.02) and the centers [v_1, v_2, v_3, v_4] are about [0.1, 0.1, 0.8, 0.4]. For abnormal cases, in case of AR, its J_m is very small and the values of [v_1, v_3, v_4] are very high comparing to the normal cases. However, in cases of AF and MS have very big values in J_m (>0.38).
机译:提出了一种基于单自由度的分析模型,用于从电听诊器记录的心音中提取特征波形(CSCW)。此外,已验证诊断参数[T1,T2,T11,T12],CSCW交叉点与自适应阈值线(THV)之间的时间间隔,可用于识别心脏病。预先考虑了参数的易于理解的图形表示,即使对于没有经验的用户也可以监控其病理进展。由于诊断参数受THV的影响很大,因此引入了FCM聚类算法来确定自适应THV,以提取可靠的诊断参数。此外,最小化的J_m和[v_1,v_2,v_3,v_4]可能也是识别心脏病的有效指标。最后,以一个异常/正常心音为例,通过FCM聚类算法验证了心音特征波形法的有效性和有效性。正常情况下,NM1和NM2的J_m值很小(<0.02),并且中心[v_1,v_2,v_3,v_4]约为[0.1、0.1、0.8、0.4]。对于异常情况,在AR情况下,其J_m非常小,与正常情况相比[v_1,v_3,v_4]的值非常高。但是,在AF和MS的情况下,J_m的值非常大(> 0.38)。

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