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Principal Component Analysis for the Classification of Cardiac Motion Abnormalities Based on Echocardiographic Strain and Strain Rate Imaging

机译:基于超声心动图应变和应变率成像的心脏运动异常分类的主成分分析

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Clinical value of the quantitative assessment of regional myocardial function through segmental strain and strain rate has already been demonstrated. Traditional methods for diagnosing heart diseases are based on values extracted at specific time points during the cardiac cycle, known as 'techno-markers', and as a consequence they may fail to provide an appropriate description of the strain (rate) characteristics. This study concerns the statistical analysis of the whole cardiac cycle by the Principal Component Analysis (PCA) method and modeling the major patterns of the strain (rate) curves. Experimental outcomes show that the PCA features can outperform their traditional counterparts in categorizing healthy and infarcted myocardial segments and are able to drive considerable benefit to a classification system by properly modeling the complex structure of the strain rate traces.
机译:通过分段应变和应变率定量评估局部心肌功能的临床价值已得到证实。用于诊断心脏病的传统方法是基于在心动周期中特定时间点提取的值(称为“技术标记”),因此,它们可能无法提供对应变(速率)特征的适当描述。这项研究涉及通过主成分分析(PCA)方法对整个心动周期进行统计分析,并对应变(速率)曲线的主要模式进行建模。实验结果表明,在对健康和梗死的心肌节段进行分类时,PCA功能可以优于传统功能,并且可以通过正确建模应变率曲线的复杂结构,从而为分类系统带来可观的收益。

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