首页> 外文期刊>Journal of Pharmacological and Toxicological Methods >A new approach to correct the QT interval for changes in heart rate using a nonparametric regression model in beagle dogs.
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A new approach to correct the QT interval for changes in heart rate using a nonparametric regression model in beagle dogs.

机译:使用非参数回归模型在比格犬中纠正心率变化的QT间隔的新方法。

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INTRODUCTION: Over- and/or under-correction of QT intervals for changes in heart rate may lead to misleading conclusions and/or masking the potential of a drug to prolong the QT interval. This study examines a nonparametric regression model (Loess Smoother) to adjust the QT interval for differences in heart rate, with an improved fitness over a wide range of heart rates. METHODS: 240 sets of (QT, RR) observations collected from each of 8 conscious and non-treated beagle dogs were used as the materials for investigation. The fitness of the nonparametric regression model to the QT-RR relationship was compared with four models (individual linear regression, common linear regression, and Bazett's and Fridericia's correlation models) with reference to Akaike's Information Criterion (AIC). Residuals were visually assessed. RESULTS: The bias-corrected AIC of the nonparametric regression model was the best of the models examined in this study. Although the parametric models did not fit, the nonparametric regression model improved the fitting at both fast and slow heart rates. DISCUSSION: The nonparametric regression model is the more flexible method compared with the parametric method. The mathematical fit for linear regression models was unsatisfactory at both fast and slow heart rates, while the nonparametric regression model showed significant improvement at all heart rates in beagle dogs.
机译:简介:针对心率变化而对QT间隔进行的过度和/或不足校正可能会导致误导性的结论和/或掩盖药物延长QT间隔的潜力。这项研究研究了一种非参数回归模型(Loess Smoother),以针对心率差异调整QT间隔,并在广泛的心率范围内提高了适应性。方法:从8只有意识和未经治疗的比格犬中各收集240组(QT,RR)观察值作为调查材料。参照Akaike的信息准则(AIC),将非参数回归模型对QT-RR关系的适应性与四个模型(个体线性回归,普通线性回归以及Bazett和Fridericia的相关模型)进行了比较。视觉评估残留物。结果:非参数回归模型的偏差校正AIC是本研究中检验的最佳模型。尽管参数模型不适合,但非参数回归模型改善了快速和慢速心率时的拟合。讨论:与参数方法相比,非参数回归模型是更灵活的方法。线性回归模型的数学拟合在快速和慢速心率方面均不令人满意,而非参数回归模型显示了所有比格犬心率均显着改善。

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