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首页> 外文期刊>Journal of pharmacokinetics and pharmacodynamics >Evaluation of graphical diagnostics for assessing goodness of fit of logistic regression models.
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Evaluation of graphical diagnostics for assessing goodness of fit of logistic regression models.

机译:图形诊断程序的评估,以评估逻辑回归模型的拟合优度。

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摘要

The aim of the current work was to evaluate graphical diagnostics for assessment of the fit of logistic regression models. Assessment of goodness of fit of a model to the data set is essential to ensure the model provides an acceptable description of the binary variables seen. For logistic regression the most common diagnostic used for this purpose is binning the data and comparing the empirical probability of the occurrence of a dependent variable with the model predicted probability against the mean covariate value in the bin. Although intuitively appealing this method, which we term simple binning, may not have consistent properties for diagnosing model problems. In this report we describe and evaluate two different diagnostic procedures, random binning and simplified Bayes marginal model plots. These procedures were assessed via simulation under three different designs. Design 1: studies which were balanced on binary variables and a continuous covariate. Design 2: studies that were balanced on binary variables but unbalanced on the continuous covariate. Design 3: studies that were unbalanced on both the binary variables and the covariate. Each simulated study consisted of 500 individuals. Thirty studies were simulated. The covariate of interest was dose which could range from 0 to 20 units. The data were simulated with the dose being related to the outcome according to an E (max) model on the logit scale. A logit E (max) model (correct model) and a logit linear model (wrong model) were fitted to all data sets. The performance of the above diagnostics, in addition to simple binning, was compared. For all designs the proposed diagnostics performed at least as well and in many instances better than simple binning. In case of design 1 random binning and simple binning are identical. In the case of designs 2 and 3 random binning and simplified Bayes marginal model plots were superior in assessing the model fit when compared to simple binning. For the examples tested, both random binning and simplified Bayesian marginal model plots performed acceptably.
机译:当前工作的目的是评估图形诊断,以评估逻辑回归模型的拟合度。评估模型与数据集的拟合优度对于确保模型对所见二元变量提供可接受的描述至关重要。对于逻辑回归,用于此目的的最常见诊断方法是对数据进行装箱,并将因变量与模型预测的概率发生的经验概率与箱中的平均协变量值进行比较。尽管从直觉上讲这种方法(我们称为简单合并)很有吸引力,但可能没有用于诊断模型问题的一致属性。在本报告中,我们描述和评估了两种不同的诊断程序,即随机分箱和简化的贝叶斯边际模型图。通过三种不同设计的仿真评估了这些程序。设计1:在二元变量和连续协变量之间取得平衡的研究。设计2:在二元变量上平衡但在连续协变量上不平衡的研究。设计3:在二元变量和协变量上均不平衡的研究。每个模拟研究由500个人组成。模拟了三十项研究。感兴趣的协变量是剂量,范围为0至20个单位。根据对数刻度上的E(max)模型,以剂量与结果相关的方式模拟数据。将logit E(最大)模型(正确模型)和logit线性模型(错误模型)拟合到所有数据集。除了简单的装仓外,还比较了上述诊断程序的性能。对于所有设计,建议的诊断至少在简单情况下也表现出色,并且在许多情况下要比简单分类更好。在设计1的情况下,随机装箱和简单装箱相同。在设计2和3的情况下,与简单分箱相比,随机分箱和简化的贝叶斯边际模型图在评估模型拟合方面更为出色。对于测试的示例,随机装仓和简化贝叶斯边际模型图均可接受。

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