Centro Studi e Ricerche e Museo Storico della Fisica 'E. Fermi', P.le del Viminale 1, Roma I-00184, Italy.
Physiol Meas. 2013 Mar;34(3):L1-9. doi: 10.1088/0967-3334/34/3/L1. Epub 2013 Feb 12.
Heart sounds are a fundamental physiological variable that provide a unique insight into cardiac semiotics. However a deterministic and unambiguous association between noises in cardiac dynamics is far from being accomplished yet due to many and different overlapping events which contribute to the acoustic emission. The current computer-based capacities in terms of signal detection and processing allow one to move from the standard cardiac auscultation, even in its improved forms like electronic stethoscopes or hi-tech phonocardiography, to the extraction of information on the cardiac activity previously unexplored. In this report, we present a new equipment for the detection of heart sounds, based on a set of accelerometric sensors placed in contact with the chest skin on the precordial area, and are able to measure simultaneously the vibration induced on the chest surface by the heart's mechanical activity. By utilizing advanced algorithms for the data treatment, such as wavelet decomposition and principal component analysis, we are able to condense the spatially extended acoustic information and to provide a synthetical representation of the heart activity. We applied our approach to 30 adults, mixed per gender, age and healthiness, and correlated our results with standard echocardiographic examinations. We obtained a 93% concordance rate with echocardiography between healthy and unhealthy hearts, including minor abnormalities such as mitral valve prolapse.
心音是一种基本的生理变量,它为心脏符号学提供了独特的见解。然而,由于许多不同的重叠事件对声发射有贡献,因此在心脏动力学中的噪声之间还远未建立确定性和明确的关联。目前基于信号检测和处理的计算机能力允许我们从标准的心脏听诊,甚至从其改进形式(如电子听诊器或高科技心音图),转移到提取以前未知的心脏活动信息。在本报告中,我们提出了一种新的心音检测设备,该设备基于一组放置在胸前区域皮肤接触处的加速度计传感器,能够同时测量心脏机械活动引起的胸部表面振动。通过利用数据处理的先进算法,如小波分解和主成分分析,我们能够压缩空间扩展的声学信息,并提供心脏活动的综合表示。我们将我们的方法应用于 30 名成年人,包括性别、年龄和健康状况混合的成年人,并将我们的结果与标准超声心动图检查相关联。我们在健康和不健康的心脏之间获得了与超声心动图 93%的一致性率,包括二尖瓣脱垂等较小的异常。