Babbs Charles F
Charles F Babbs, Weldon School of Biomedical Engineering, Purdue University, West Lafayette, IN 47907, United States.
World J Methodol. 2014 Jun 26;4(2):109-22. doi: 10.5662/wjm.v4.i2.109.
To present statistical tools to model and optimize the cost of a randomized clinical trial as a function of the stringency of patient inclusion criteria.
We consider a two treatment, dichotomous outcome trial that includes a proportion of patients who are strong responders to the tested intervention. Patients are screened for inclusion using an arbitrary number of test results that are combined into an aggregate suitability score. The screening score is regarded as a diagnostic test for the responsive phenotype, having a specific cutoff value for inclusion and a particular sensitivity and specificity. The cutoff is a measure of stringency of inclusion criteria. Total cost is modeled as a function of the cutoff value, number of patients screened, the number of patients included, the case occurrence rate, response probabilities for control and experimental treatments, and the trial duration required to produce a statistically significant result with a specified power. Regression methods are developed to estimate relevant model parameters from pilot data in an adaptive trial design.
The patient numbers and total cost are strongly related to the choice of the cutoff for inclusion. Clear cost minimums exist between 5.6 and 6.1 on a representative 10-point scale of exclusiveness. Potential cost savings for typical trial scenarios range in millions of dollars. As the response rate for controls approaches 50%, the proper choice of inclusion criteria can mean the difference between a successful trial and a failed trial.
Early formal estimation of optimal inclusion criteria allows planning of clinical trials to avoid high costs, excessive delays, and moral hazards of Type II errors.
介绍统计工具,以根据患者纳入标准的严格程度对随机临床试验的成本进行建模和优化。
我们考虑一项双治疗、二分类结局的试验,其中包括一部分对试验干预有强烈反应的患者。使用任意数量的检测结果对患者进行纳入筛查,这些结果被合并为一个综合适用性评分。筛查评分被视为对反应性表型的诊断测试,具有特定的纳入临界值以及特定的敏感性和特异性。临界值是纳入标准严格程度的一种度量。总成本被建模为临界值、筛查患者数量、纳入患者数量、病例发生率、对照和实验治疗的反应概率以及以指定功效产生具有统计学意义结果所需的试验持续时间的函数。开发回归方法以从适应性试验设计中的试点数据估计相关模型参数。
患者数量和总成本与纳入临界值的选择密切相关。在具有代表性的10分排他性量表上,明显的成本最小值存在于5.6至6.1之间。典型试验场景的潜在成本节省可达数百万美元。当对照的反应率接近50%时,纳入标准的正确选择可能意味着试验成功与失败的区别。
早期对最佳纳入标准进行正式估计可使临床试验的规划避免高成本、过度延迟以及II类错误的道德风险。