Indian Institute of Science Education and Research, Pune, 411008, India.
Department of Physics, The Cochin College, Cochin, 682002, India.
Sci Rep. 2017 Nov 9;7(1):15127. doi: 10.1038/s41598-017-15498-z.
The characterization of heart dynamics with a view to distinguish abnormal from normal behavior is an interesting topic in clinical sciences. Here we present an analysis of the Electro-cardiogram (ECG) signals from several healthy and unhealthy subjects using the framework of dynamical systems approach to multifractal analysis. Our analysis differs from the conventional nonlinear analysis in that the information contained in the amplitude variations of the signal is being extracted and quantified. The results thus obtained reveal that the attractor underlying the dynamics of the heart has multifractal structure and the variations in the resultant multifractal spectra can clearly separate healthy subjects from unhealthy ones. We use supervised machine learning approach to build a model that predicts the group label of a new subject with very high accuracy on the basis of the multifractal parameters. By comparing the computed indices in the multifractal spectra with that of beat replicated data from the same ECG, we show how each ECG can be checked for variations within itself. The increased variability observed in the measures for the unhealthy cases can be a clinically meaningful index for detecting the abnormal dynamics of the heart.
以区分异常与正常行为为目的的心脏动力学特征描述是临床科学中的一个有趣课题。在这里,我们使用动力系统方法的多重分形分析框架,对来自多个健康和不健康个体的心电图(ECG)信号进行了分析。我们的分析与传统的非线性分析不同,因为它提取并量化了信号振幅变化中所包含的信息。所得结果表明,心脏动力学的基础吸引子具有多重分形结构,而所得多重分形谱的变化可以清楚地区分健康个体和不健康个体。我们使用有监督的机器学习方法来构建一个模型,该模型可以根据多重分形参数非常准确地预测新个体的群体标签。通过将计算出的多重分形谱中的指标与来自相同 ECG 的心跳复制数据的指标进行比较,我们展示了如何检查每个 ECG 自身的变化。在不健康情况下观察到的度量指标的增加可变性可以是检测心脏异常动力学的有临床意义的指标。