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Calculating the power or sample size for the logistic and proportional hazards models

机译:为逻辑和比例风险模型计算功效或样本数量

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An algorithm is presented for calculating the power for the logistic and proportional hazards models in which some of the covariates are discrete and the remainders are multivariate normal. The mean and covariance matrix of the multivariate normal covariates may depend on the discrete covariates. The algorithm, which finds the power of the Wald test, uses the result that the information matrix can be calculated using univariate numerical integration even when there are several continuous covariates. The algorithm is checked using simulation and in certain situations gives more accurate results than current methods which are based on simple formulae. The algorithm is used to explore properties of these models, in particular, the power gain from a prognostic covariate in the analysis of a clinical trial or observational study. The methods can be extended to determine power for other generalized linear models.
机译:提出了一种用于计算逻辑和比例风险模型的功效的算法,其中一些协变量是离散的,其余协变量是多元正态的。多元正态协变量的均值和协方差矩阵可能取决于离散协变量。该算法发现Wald检验的功效,使用的结果是即使存在多个连续协变量,也可以使用单变量数值积分来计算信息矩阵。该算法通过仿真进行检查,在某些情况下,其结果比基于简单公式的当前方法更为准确。该算法用于探索这些模型的属性,尤其是在临床试验或观察性研究的分析中,预后变量的功效。可以扩展这些方法来确定其他广义线性模型的功效。

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