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低心率变异性熵与心肌梗死密切相关。

Low HRV entropy is strongly associated with myocardial infarction.

作者信息

Lau Stephan, Haueisen Jens, Schukat-Talamazzini Ernst G, Voss Andreas, Goernig Matthias, Leder Uwe, Figulla Hans-R

机构信息

Institute of Computer Science, Friedrich Schiller University Jena, Jena, Germany.

出版信息

Biomed Tech (Berl). 2006 Oct;51(4):186-9. doi: 10.1515/BMT.2006.033.

Abstract

Heart rate variability (HRV) is a marker of autonomous activity in the heart. An important application of HRV measures is the stratification of mortality risk after myocardial infarction. Our hypothesis is that the information entropy of HRV, a non-linear approach, is a suitable measure for this assessment. As a first step, to evaluate the effect of myocardial infarction on the entropy, we compared the entropy to standard HRV parameters. The entropy was estimated by compressing the tachogram with Bzip2. For univariate comparison, statistical tests were used. Multivariate analysis was carried out using automatically generated decision trees. The classification rate and the simplicity of the decision trees were the two evaluation criteria. The findings support our hypothesis. The meanNN-normalized entropy is reduced in patients with myocardial infarction with very high significance. One entropy parameter alone exceeds the discrimination strength of multivariate standards-based trees.

摘要

心率变异性(HRV)是心脏自主活动的一个指标。HRV测量的一个重要应用是对心肌梗死后的死亡风险进行分层。我们的假设是,HRV的信息熵(一种非线性方法)是用于这种评估的合适指标。作为第一步,为了评估心肌梗死对熵的影响,我们将熵与标准HRV参数进行了比较。通过使用Bzip2压缩心动周期图来估计熵。对于单变量比较,使用了统计检验。使用自动生成的决策树进行多变量分析。决策树的分类率和简单性是两个评估标准。研究结果支持我们的假设。心肌梗死患者的平均NN标准化熵显著降低。仅一个熵参数就超过了基于多变量标准的决策树的判别能力。

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