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Association of cardiovascular risk using non-linear heart rate variability measures with the framingham risk score in a rural population

机译:在农村人口中使用非线性心率变异性测量方法将心血管风险与framingham风险评分相关联

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摘要

Cardiovascular risk can be calculated using the Framingham cardiovascular disease (CVD) risk score and provides a risk stratification from mild to very high CVD risk percentage over 10 years. This equation represents a complex interaction between age, gender, cholesterol status, blood pressure, diabetes status, and smoking. Heart rate variability (HRV) is a measure of how the autonomic nervous system (ANS) modulates the heart rate. HRV measures are sensitive to age, gender, disease status such as diabetes and hypertension and processes leading to atherosclerosis. We investigated whether HRV measures are a suitable, simple, noninvasive alternative to differentiate between the four main Framingham associated CVD risk categories. In this study we applied the tone-entropy (T-E) algorithm and complex correlation measure (CCM) for analysis of HRV obtained from 20 min. ECG recordings and correlated the HRV score with the stratification results using the Framingham risk equation. Both entropy and CCM had significant analysis of variance (ANOVA) results [F(172, 3) = 9.51; <0.0001]. Bonferroni post hoc analysis indicated a significant difference between mild, high and very high cardiac risk groups applying tone-entropy (p < 0.01). CCM detected a difference in temporal dynamics of the RR intervals between the mild and very high CVD risk groups (p < 0.01). Our results indicate a good agreement between the T-E and CCM algorithm and the Framingham CVD risk score, suggesting that this algorithm may be of use for initial screening of cardiovascular risk as it is noninvasive, economical and easy to use in clinical practice.
机译:可以使用Framingham心血管疾病(CVD)风险评分来计算心血管风险,并且可以将10年内从轻度到非常高的CVD风险百分比进行分层。这个方程式代表了年龄,性别,胆固醇状态,血压,糖尿病状态和吸烟之间的复杂相互作用。心率变异性(HRV)是自主神经系统(ANS)如何调节心率的量度。 HRV措施对年龄,性别,疾病状态(例如糖尿病和高血压)以及导致动脉粥样硬化的过程敏感。我们调查了HRV措施是否是一种合适的,简单的,无创的选择,以区分四种主要的弗雷明汉相关的CVD风险类别。在这项研究中,我们应用了音调熵(T-E)算法和复杂相关度量(CCM)来分析从20分钟获得的HRV。使用Framingham风险方程式记录心电图,并将HRV评分与分层结果相关联。熵和CCM均具有显着的方差分析(ANOVA)结果[F(172,3)= 9.51; <0.0001]。 Bonferroni事后分析表明,应用声调熵的轻度,高和极高心脏风险组之间存在显着差异(p <0.01)。 CCM检测到轻度和极高CVD风险组之间RR间隔的时间动态差异(p <0.01)。我们的结果表明T-E和CCM算法与Framingham CVD风险评分之间有很好的一致性,这表明该算法可用于心血管疾病的初始筛查,因为它无创,经济且易于在临床实践中使用。

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