基于Poincaré差值散点图的心率变异性分析方法研究
Heart rate variability analysis based on modified Poincaré plot
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摘要: 在心率变异性的非线性分析中,Poincaré散点图分析是一种重要手段.本文基于Poincaré差值散点图(modified Poincaré plot提出了两个参数一区域分布熵和区域分布系数,用于定量描述所考察区域内散点的分布趋势,并提出对散点在4个象限中的分布进行分别计算.通过对MIT-BIH数据库中健康年轻人、健康老年人和充血性心力衰竭患者样本数据的分析,发现两参数值均呈现显著的组间差异;同时,不同象限的分析结果显示了四个象限具有不同的区分敏感性,而其中尤以第一象限的区分度为最高,反映出充血性心力衰竭患者相对健康人迷走神经调控功能的改变最为显著,与以往的生理学研究结论相符.经验证,该方法可用于短时数据,更易于扩展至临床应用.
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关键词:
- 心率变异性 /
- Poincaré差值散点图 /
- 象限
Abstract: Poincaré plot is an important method in nonlinear analysis of heart rate variability(HRV). Based on the modified Poincaré plot, two arguments-the regional distribution entropy and regional distribution coefficient are put forward for the quantitative description of the scatter distribution trends in the studied area. And the distributions of the Poincaré plot in the four quadrants are calculated separately. Through the analysis of the HRV sample data from healthy young people, older people and congestive heart failure(CHF) sufferers in MIT-BIH database, we find that the two parameters show a significant difference between the groups. Meanwhile, the analysis results in different quadrants show that the sensitivities of the four quadrants are different, and especially in the first quadrant, the sensitivity is best. This phenomenon shows that the changes of vagal control function are most significant between healthy people and CHF sufferers, which is consistent with previous physiological research conclusion. Experimental results also show that the method can be used for short-term data, and thus is easier to extend to clinical applications. -
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