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Clustering Seismocardiographic Events using Unsupervised Machine Learning

机译:使用无监督机器学习对地震心动事件进行聚类

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Seismocardiographic (SCG) signal morphology is known to be affected by cardio-pulmonary interactions, which introduce variability in the SCG signal. Hence, grouping of SCG signals according to their respiratory phase can reduce their morphological dissimilarity. In addition, correlating SCG with pulmonary phases may provide more insights into the nature of cardio-pulmonary interactions. This study uses unsupervised machine learning to cluster SCG events based on their morphology. Here, K-means clustering was employed using the time domain amplitude as the feature vector. The method is applied on measured SCG data from 5 male subjects (Age: 30 ± 5.8 years). The mean Silhouette values for different number of clusters suggested that optimal clustering was reached when SCG waveforms were divided into two groups. Using respiratory flow information, SCG waves were labeled as inspiratory vs. expiratory or high vs. low lung volume. The SCG clusters were then compared with these labels and purity values were calculated. The distributions of clustered SCG events in relation to respiratory flowrate and lung volume phases showed consistent trends in all subjects. Results suggested that grouping SCG based on lung volume phases would yield more homogeneous groups and, hence, would keep SCG variability (within each group) to a minimum. The demonstrated utility of the proposed machine learning approach in identifying respiratory phases from SCG waveforms may obviate the need for simultaneous respiratory measurements.
机译:已知地震心动图(SCG)信号形态会受到心肺相互作用的影响,这会在SCG信号中引入变异性。因此,根据其呼吸相位对SCG信号进行分组可以减少其形态学差异。此外,将SCG与肺期相关可以进一步了解心肺相互作用的本质。这项研究使用无监督机器学习根据事件的形态对SCG事件进行聚类。在此,使用时域幅度作为特征向量,采用K均值聚类。该方法适用于来自5位男性受试者(年龄:30±5.8岁)的测量SCG数据。不同聚类数的平均Silhouette值表明,将SCG波形分为两组时可以达到最佳聚类。使用呼吸流量信息,SCG波被标记为吸气量与呼气量或高肺量与低肺量。然后将SCG簇与这些标记进行比较,并计算纯度值。在所有受试者中,与呼吸流量和肺体积阶段有关的集群SCG事件的分布均显示出一致的趋势。结果表明,基于肺体积阶段对SCG进行分组将产生更多的均质组,因此,将SCG的变异性(每组内)保持在最低水平。所提出的机器学习方法从SCG波形中识别呼吸相位的实用性可以避免同时进行呼吸测量的需要。

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