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Modeling the oxygen uptake kinetics during exercise testing of patients with chronic obstructive pulmonary diseases using nonlinear mixed models

机译:使用非线性混合模型对慢性阻塞性肺疾病患者运动测试期间的氧吸收动力学建模

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Background The six-minute walk test (6MWT) is commonly used to quantify exercise capacity in patients with several cardio-pulmonary diseases. Oxygen uptake ( (dot {mathrm {V}}) O2) kinetics during 6MWT typically follow 3 distinct phases (rest, exercise, recovery) that can be modeled by nonlinear regression. Simultaneous modeling of multiple kinetics requires nonlinear mixed models methodology. To the best of our knowledge, no such curve-fitting approach has been used to analyze multiple (dot {mathrm {V}}) O2 kinetics in both research and clinical practice so far. Methods In the present study, we describe functionality of the R package medrc that extends the framework of the commonly used packages drc and nlme and allows fitting nonlinear mixed effects models for automated nonlinear regression modeling. The methodology was applied to a data set including 6MWT (dot {mathrm {V}}) O2 kinetics from 61 patients with chronic obstructive pulmonary disease (disease severity stage II to IV). The mixed effects approach was compared to a traditional curve-by-curve approach. Results A six-parameter nonlinear regression model was jointly fitted to the set of (dot {mathrm {V}}) O2 kinetics. Significant differences between disease stages were found regarding steady state (dot {mathrm {V}}) O2 during exercise, (dot {mathrm {V}}) O2 level after recovery and (dot {mathrm {V}}) O2 inflection point in the recovery phase. Estimates obtained by the mixed effects approach showed standard errors that were consistently lower as compared to the curve-by-curve approach. Conclusions Hereby we demonstrate the novelty and usefulness of this methodology in the context of physiological exercise testing.
机译:背景技术六分钟步行测试(6MWT)通常用于量化几种心肺疾病患者的运动能力。 6MWT期间的氧气吸收(( dot { mathrm {V}} )O 2 )动力学通常遵循3个不同的阶段(休息,运动,恢复),可以通过非线性回归进行建模。多个动力学的​​同时建模需要非线性混合模型方法。据我们所知,到目前为止,在研究和临床实践中还没有使用这种曲线拟合方法来分析多个( dot { mathrm {V}} )O 2 动力学。方法在本研究中,我们描述了R包medrc的功能,该功能扩展了常用包drc和nlme的框架,并允许拟合非线性混合效应模型以进行自动非线性回归建模。该方法已应用于包括61例慢性阻塞性肺疾病(疾病严重程度为II至IV)的6MWT ( dot { mathrm {V}} )O 2 动力学的数据集。将混合效果方法与传统的逐曲线方法进行了比较。结果将六参数非线性回归模型联合拟合到( dot { mathrm {V}} )O 2 动力学集合。发现运动阶段的稳态( dot { mathrm {V}} )O 2 ,( dot { mathrm {V}} )O <恢复后的sub> 2 级别和恢复阶段的( dot { mathrm {V}} )O 2 拐点。通过混合效应方法获得的估计值显示的标准误差与逐曲线方法相比始终较低。结论因此,我们在生理运动测试的背景下证明了这种方法的新颖性和实用性。

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