Pediatric and Rare Disease Centers of Excellence, QuintilesIMS, Durham, North Carolina.
Center for Statistics in Drug Development, QuintilesIMS, Durham, North Carolina.
Pediatr Res. 2017 Nov;82(5):814-821. doi: 10.1038/pr.2017.163. Epub 2017 Aug 16.
BackgroundPediatric clinical trials commonly experience recruitment challenges including limited number of patients and investigators, inclusion/exclusion criteria that further reduce the patient pool, and a competitive research landscape created by pediatric regulatory commitments. To overcome these challenges, innovative approaches are needed.MethodsThis article explores the use of Bayesian statistics to improve pediatric trial feasibility, using pediatric Type-2 diabetes as an example. Data for six therapies approved for adults were used to perform simulations to determine the impact on pediatric trial size.ResultsWhen the number of adult patients contributing to the simulation was assumed to be the same as the number of patients to be enrolled in the pediatric trial, the pediatric trial size was reduced by 75-78% when compared with a frequentist statistical approach, but was associated with a 34-45% false-positive rate. In subsequent simulations, greater control was exerted over the false-positive rate by decreasing the contribution of the adult data. A 30-33% reduction in trial size was achieved when false-positives were held to less than 10%.ConclusionReducing the trial size through the use of Bayesian statistics would facilitate completion of pediatric trials, enabling drugs to be labeled appropriately for children.
儿科临床试验通常面临招募挑战,包括患者和研究者数量有限、纳入/排除标准进一步减少患者群体,以及儿科监管承诺所带来的竞争研究环境。为了克服这些挑战,需要采用创新方法。
本文以儿科 2 型糖尿病为例,探讨了贝叶斯统计在改善儿科试验可行性方面的应用。使用已批准用于成人的六种疗法的数据进行模拟,以确定对儿科试验规模的影响。
当假设参与模拟的成年患者数量与儿科试验中要招募的患者数量相同时,与传统统计学方法相比,儿科试验规模缩小了 75-78%,但假阳性率为 34-45%。在随后的模拟中,通过减少成人数据的贡献,对假阳性率的控制得到了更大的加强。当假阳性率控制在 10%以下时,试验规模可减少 30-33%。
通过使用贝叶斯统计来缩小试验规模将有助于完成儿科试验,使药物能够为儿童进行适当的标签。