Platform trials can evaluate the efficacy of several treatments compared to a control. The number of treatments is not fixed, as arms may be added or removed as the trial progresses. Platform trials are more efficient than independent parallel-group trials because of using shared control groups. For arms entering the trial later, not all patients in the control group are randomised concurrently. The control group is then divided into concurrent and non-concurrent controls. Using non-concurrent controls (NCC) can improve the trial's efficiency, but can introduce bias due to time trends. We focus on a platform trial with two treatment arms and a common control arm. Assuming that the second treatment arm is added later, we assess the robustness of model-based approaches to adjust for time trends when using NCC. We consider approaches where time trends are modeled as linear or as a step function, with steps at times where arms enter or leave the trial. For trials with continuous or binary outcomes, we investigate the type 1 error (t1e) rate and power of testing the efficacy of the newly added arm under a range of scenarios. In addition to scenarios where time trends are equal across arms, we investigate settings with trends that are different or not additive in the model scale. A step function model fitted on data from all arms gives increased power while controlling the t1e, as long as the time trends are equal for the different arms and additive on the model scale. This holds even if the trend's shape deviates from a step function if block randomisation is used. But if trends differ between arms or are not additive on the model scale, t1e control may be lost. The efficiency gained by using step function models to incorporate NCC can outweigh potential biases. However, the specifics of the trial, plausibility of different time trends, and robustness of results should be considered
翻译:与控制相比, 平台测试可以评估多个处理器的功效。 处理次数没有固定, 因为随着测试的进展, 武器可能会被添加或删除。 平台审判比独立平行小组审判更有效, 因为使用共享控制组。 对于进入测试的军火, 并非所有控制组的病人都是随机的。 控制组随后可以分为同时和非同步的控制。 使用非同步控制( NCC) 可以提高测试效率, 但由于时间趋势, 可能会引入偏差。 我们侧重于平台试验, 有两种处理武器, 有共同的控制臂。 假设第二处理臂在使用共享控制组时, 平台审判比独立平行小组审判更有效。 对于使用 NCC 时, 我们评估基于模型的方法在时间趋势上调整时间趋势的稳健性。 对于时间趋势, 我们考虑将时间趋势建模作为线或一步函数, 在武器进入或离开测试组时, 使用连续或双轨结果的试验, 我们调查第1 型模型( t1e) 测试新增加的手臂在一系列情景下的效率的偏差率。 假设中, 如果从模型显示时间趋势是相同的时间趋势,,, 将使用所有武器变变变变变的顺序, 我们则使用比值 变换的顺序 。