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The Use of Percent Change in RR Interval for Data Exclusion in Analyzing 24-h Time Domain Heart Rate Variability in Rodents

机译:使用RR间隔变化百分比进行数据排除以分析啮齿类动物的24小时时域心率变异性

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摘要

While epidemiological data support the link between reduced heart rate variability (HRV) and a multitude of pathologies, the mechanisms underlying changes in HRV and disease progression are poorly understood. Even though we have numerous rodent models of disease for mechanistic studies, not being able to reliably measure HRV in conscious, freely moving rodents has hindered our ability to extrapolate the role of HRV in the progression from normal physiology to pathology. The sheer number of heart beats per day (>800,000 in mice) makes data exclusion both time consuming and daunting. We sought to evaluate an RR interval exclusion method based on percent (%) change of adjacent RR intervals. Two approaches were evaluated: % change from “either” and “both” adjacent RR intervals. The data exclusion method based on standard deviation (SD) was also evaluated for comparison. Receiver operating characteristic (ROC) curves were generated to determine the performance of each method. Results showed that exclusion based on % change from “either” adjacent RR intervals was the most accurate method in identifying normal and abnormal RR intervals, with an overall accuracy of 0.92–0.99. As the exclusion value increased (% change or SD), the sensitivity (correctly including normal RR intervals) increased exponentially while the specificity (correctly rejecting abnormal RR intervals) decreased linearly. Compared to the SD method, the “either” approach had a steeper rise in sensitivity and a more gradual decrease in specificity. The intersection of sensitivity and specificity where the exclusion criterion had the same accuracy in identifying normal and abnormal RR intervals was 10–20% change for the “either” approach and ∼ 1 SD for the SD-based exclusion method. Graphically (tachogram and Lorenz plot), 20% change from either adjacent RR interval resembled the data after manual exclusion. Finally, overall (SDNN) and short-term (rMSSD) indices of HRV generated using 20% change from “either” adjacent RR intervals as the exclusion criterion were closer to the manual exclusion method with lower subject-to-subject variability than those generated using the 2 SD exclusion criterion. Thus, 20% change from “either” adjacent RR intervals is a good criterion for data exclusion for reliable 24-h time domain HRV analysis in rodents.
机译:尽管流行病学数据支持心率变异性(HRV)降低与多种病理之间的联系,但对HRV变化和疾病进展的潜在机制了解甚少。尽管我们有许多用于机制研究的疾病啮齿动物模型,但无法在有意识的,自由移动的啮齿动物中可靠地测量HRV,却阻碍了我们推测HRV在从正常生理学向病理学进展中的作用的能力。每天大量的心跳(在小鼠中> 800,000)使数据排除既费时又令人生畏。我们试图基于相邻RR间隔的百分比变化来评估RR间隔排除方法。评估了两种方法:相邻RR间隔从“任一”和“两个”的变化百分比。还评估了基于标准差(SD)的数据排除方法以进行比较。生成接收器工作特性(ROC)曲线以确定每种方法的性能。结果显示,基于“两个”相邻RR间隔变化百分比的排除是识别正常和异常RR间隔的最准确方法,总体准确度为0.92-0.99。随着排除值的增加(百分比变化或SD),灵敏度(正确包括正常RR间隔)呈指数增长,而特异性(正确拒绝异常RR间隔)呈线性下降。与SD方法相比,“任一种”方法的灵敏度都有较大的提高,而特异性却逐渐降低。排除标准在识别正常和异常RR间隔方面具有相同准确性的敏感性和特异性的相交点,对于“两种”方法而言,变化为10–20%,对于基于SD的排除方法,变化为〜1 SD。以图形方式(速度记录图和洛伦兹图),两个相邻RR间隔的20%变化类似于手动排除后的数据。最后,使用“相邻” RR间隔中的20%的变化作为排除标准所产生的HRV的总体(SDNN)和短期(rMSSD)指数更接近于手动排除方法,其个体间差异比生成的更低使用2 SD排除标准。因此,从“两个”相邻的RR间隔中得出20%的变化是对啮齿动物进行可靠的24小时时域HRV分析的数据排除的良好标准。

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