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Robust fit of Bayesian mixed effects regression models with application to colony forming unit count in tuberculosis research

机译:贝叶斯混合效应回归模型的强大适合应用于结核病研究中的菌落形成单位计数

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摘要

Early bactericidal activity of tuberculosis drugs is conventionally assessed using statistical regression modeling of colony forming unit (CFU) counts over time. Typically, most CFU counts deviate little from the regression curve, but gross outliers due to erroneous sputum sampling are occasionally present and can markedly influence estimates of the rate of change in CFU count, which is the parameter of interest. A recently introduced Bayesian nonlinear mixed effects regression model was adapted to offer a robust approach that accommodates both outliers and potential skewness in the data. At its most general, the proposed regression model fits the skew Student t distribution to residuals and random coefficients. Deviance information criterion statistics and compound Laplace-Metropolis marginal likelihoods were used to discriminate between alternative Bayesian nonlinear mixed effects regression models. We present a relatively easy method to calculate the marginal likelihoods required to determine compound Laplace-Metropolis marginal likelihoods, by adapting methods available in currently available statistical software. The robust methodology proposed in this paper was applied to data from 6 clinical trials. The results provide strong evidence that the distribution of CFU count is often heavy tailed and negatively skewed (suggesting the presence of outliers). Therefore, we recommend that robust regression models, such as those proposed here, should be fitted to CFU count.
机译:几次菌落形成单位(CFU)随着时间的推移,使用统计回归建模的统计回归建模的早期杀菌活性。通常,大多数CFU计数偏离回归曲线几乎没有偏差,但由于错误的痰液采样引起的总异常值偶尔会出现,并且可以显着影响CFU数量变化率的估计,这是感兴趣的参数。最近引入的贝叶斯非线性混合效果回归模型适用于提供一种强大的方法,可以在数据中容纳异常值和潜在的偏见。在最常一般的情况下,拟议的回归模型适合偏斜的学生T分布到残留和随机系数。偏差信息标准统计和复合LAPLACE-METROPOLIS边缘似然旨在区分替代贝叶斯非线性混合效应回归模型。我们通过调整现有可用统计软件中可用的方法来计算确定复合Laplace-Metropolis边缘似然性所需的边缘似然性的方法。本文提出的鲁棒方法应用于来自6项临床试验的数据。结果提供了强有力的证据表明,CFU数量的分布往往是重的尾声和负面倾斜(表明异常值的存在)。因此,我们建议强大的回归模型,例如在此提出的那些,应该适合CFU计数。

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