Comparison of Hierarchical and Partitional Clustering in Multi-Source Phonocardiography

N. Giordano, S. Rosati, M. Knaflitz, G. Balestra
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引用次数: 1

Abstract

Phonocardiography (PCG) has proved a valuable tool over the years to monitor the status of at-risk patients for some cardiovascular diseases. Its multi-source version, consisting of the simultaneous recording of multiple acoustic signals from different points of the patient's chest, is currently under research as a solution to develop wearable devices based on PCG and bring PCG to the patient's domicile. When a high number of PCG signals are available, to define the most suitable auscultation area, depending on the clinical question, clustering comes into the picture. In this work, we applied agglomerative hierarchical clustering and k-means to multi-source PCG recordings. A similarity metrics based on the correlation of the signals was used to compare the signals based on their morphological characteristics. The two clustering methods resulted in a Rand Index averagely higher than 0.84, showing a high level of agreement and validating the usage of clustering for the application of interest. Hierarchical clustering allowed for obtaining a better trade-off between the intra-cluster variability and the inter-cluster distance. Adding to its deterministic nature, it should be considered as preferrable with respect to k-means. This work moves one step further to the development a reliable wearable device based on digital auscultation for the monitoring of the patient at its domicile.
多源心音图的分层聚类与局部聚类比较
多年来,心音图(PCG)已被证明是监测某些心血管疾病高危患者状态的宝贵工具。它的多源版本,包括同时记录来自患者胸部不同位置的多个声学信号,目前正在研究中,作为开发基于PCG的可穿戴设备的解决方案,并将PCG带到患者的住所。当有大量的PCG信号可用时,根据临床问题确定最合适的听诊区域,聚类就出现了。在这项工作中,我们将聚类分层聚类和k-means应用于多源PCG记录。采用基于信号相关性的相似性度量,根据信号的形态特征对信号进行比较。两种聚类方法的Rand指数平均高于0.84,显示出高度的一致性,并验证了聚类对兴趣应用的使用。分层聚类允许在簇内可变性和簇间距离之间获得更好的权衡。再加上它的确定性,相对于k-means,它应该被认为是更可取的。这项工作进一步发展了一种可靠的基于数字听诊的可穿戴设备,用于在其住所监测患者。
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