过度分散
计数数据
样本量测定
负二项分布
统计
泊松分布
二项分布
准似然
标称水平
样品(材料)
推论
数学
差异(会计)
统计推断
航程(航空)
计算机科学
I类和II类错误
置信区间
会计
业务
色谱法
人工智能
复合材料
化学
材料科学
作者
Dateng Li,Song Zhang,Jing Cao
摘要
Statistical inference based on correlated count measurements are frequently performed in biomedical studies. Most of existing sample size calculation methods for count outcomes are developed under the Poisson model. Deviation from the Poisson assumption (equality of mean and variance) has been widely documented in practice, which indicates urgent needs of sample size methods with more realistic assumptions to ensure valid experimental design. In this study, we investigate sample size calculation for clinical trials with correlated count measurements based on the negative binomial distribution. This approach is flexible to accommodate overdispersion and unequal measurement intervals, as well as arbitrary randomization ratios, missing data patterns, and correlation structures. Importantly, the derived sample size formulas have closed forms both for the comparison of slopes and for the comparison of time‐averaged responses, which greatly reduces the burden of implementation in practice. We conducted extensive simulation to demonstrate that the proposed method maintains the nominal levels of power and type I error over a wide range of design configurations. We illustrate the application of this approach using a real epileptic trial.
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