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首页> 外文期刊>Korean Circulation Journal >Fractal and Complexity Measures of Heart Rate Dynamics in Patients with Normal and Left Ventricular Dysfunction: The Role of New Noninvasive Markers for Cardiac Risk Stratification
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Fractal and Complexity Measures of Heart Rate Dynamics in Patients with Normal and Left Ventricular Dysfunction: The Role of New Noninvasive Markers for Cardiac Risk Stratification

机译:正常和左心室功能障碍患者心率动力学的分形和复杂度措施:新的非侵入性标记对心脏风险分层的作用

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Background and Objectives The traditional indexes of heart rate (HR) variability may lack the ability to detect subtle, but important changes in HR behavior. Nonlinear heart rate variability (HRV) analysis methods that are based on chaos theory can reveal subtle abnormalities in the HR dynamics of patients with cardiovascular diseases. Therefore, we tested the validity of nonlinear analysis methods as markers to differentiate normal and abnormal HR dynamics in the cardiovascular disease state. Subjects and Methods One-hundred patients were studied: 70 patients with left ventricular dysfunction (LVD), including 40 post-myocardial infarct patients (PMI) and 30 dilated cardiomyopahty patients (DCM), and 30 age and gender-matched controls. One-hour, 6-hours (day and night each) and 24 hours of R-R interval data from 24-hour Holter recordings were subjected to the conventional time and frequency-domain analysis. The ApEn, short-term (α1) and long-term (α2) scaling exponents of the detrended fluctuation analysis (DFA) and the power-law exponent (β) were also measured. Results Conventional linear measures did not show a significant difference except for the VLF, lnLF and the LF/HF ratio between the controls and the LVD patients. Among the analyzed parameters, β, β2 and α1 were the most powerful discriminators. The β of the normal and LVD patients was -1.10±0.29 and -0.70±0.40, respectively (p1 was 1.08±0.23 and 0.81±0.28, respectively (p2 and α1 can discriminate the etiologic cause of LVD. The length of the R-R interval data did not affect the result, and a significant correlation was observed. The individual values of the fractal and complexity measures were more stable than those of the conventional linear measures. Conclusion We conclude that the measures derived from fractal and complexity methods are useful for detecting altered HR dynamics of LVD and for improving the shortcomings of the conventional measures.
机译:背景和目标传统的心率(HR)变异性指标可能缺乏检测微妙的能力,但人力资源行为的重要变化。基于混沌理论的非线性心率变异(HRV)分析方法可以揭示心血管疾病患者人力资源动态的微妙异常。因此,我们测试了非线性分析方法作为标记的有效性,以区分心血管疾病状态下的正常和异常HR动态。研究了百分之百患者:70例患者左心室功能障碍(LVD),其中40例后心肌梗死患者(PMI)和30名扩张心肌病患者(DCM)和30名和性别匹配的对照组。每小时,6小时(每天每天)和24小时的24小时r-r间隔数据从24小时历史记录进行传统时间和频率域分析。 APEN,短期(α 1 )和长期(α 2 )缩放指数的贬值波动分析(DFA)和幂律指数(β )也被测量。结果常规线性测量除了VLF,LNLF和LVD患者之间的VLF,LNLF和LF / HF比外,没有显示出显着差异。在分析的参数中,β,β 2 和α 1 是最强大的鉴别器。正常和LVD患者的β分别为-1.10±0.29和-0.70±0.40(P1 分别为1.08±0.23和0.81±0.28)(P2 和α 1 可以区分LVD的病因原因。RR间隔数据的长度不会影响结果,观察到显着的相关性。分形和复杂度措施的个体值比传统线性措施更稳定。结论我们得出结论,来自分形和复杂性方法的措施可用于检测LVD的改变的HR动态和改善常规措施的缺点。

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