Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.
Department of Biostatistics & Data Science, University of Kansas Medical Center, Kansas City, KS, USA.
Contemp Clin Trials. 2024 Sep;144:107633. doi: 10.1016/j.cct.2024.107633. Epub 2024 Jul 14.
Early preterm birth (ePTB) - born before 34 weeks of gestation - poses a significant public health challenge. Two randomized trials indicated an ePTB reduction among pregnant women receiving high-dose docosahexaenoic acid (DHA) supplementation. One of them is Assessment of DHA on Reducing Early Preterm Birth (ADORE). A survey employed in its secondary analysis identified women with low DHA levels, revealing that they derived greater benefits from high-dose DHA supplementation. This survey's inclusion in future trials can provide critical insights for informing clinical practices.
To optimize a Phase III trial design, ADORE Precision, aiming at assessing DHA supplement (200 vs. 1000 mg/day) on reducing ePTB among pregnant women with a low baseline DHA.
We propose a Bayesian Hybrid Response Adaptive Randomization (RAR) Design utilizing a finite mixture model to characterize gestational age at birth. Subsequently, a dichotomized ePTB outcome is used to inform trial design using RAR. Simulation studies were conducted to compare a Fixed Design, an Adaptive Design with early stopping, an ADORE-like Adaptive RAR Design, and two new Hybrid Designs with different hyperpriors.
Simulation reveals several advantages of the RAR designs, such as higher allocation to the more promising dose and a trial duration reduction. The proposed Hybrid RAR Designs addresses the statistical power drop observed in Adaptive RAR. The new design model shows robustness to hyperprior choices. We recommend Hybrid RAR Design 1 for ADORE Precision, anticipating that it will yield precise determinations, which is crucial for advancing our understanding in this field.
早产(ePTB)-妊娠 34 周前出生-构成重大公共卫生挑战。两项随机试验表明,接受高剂量二十二碳六烯酸(DHA)补充的孕妇早产率降低。其中之一是评估 DHA 降低早产的研究(ADORE)。其二次分析中采用的一项调查确定了 DHA 水平较低的女性,发现她们从高剂量 DHA 补充中获得了更大的益处。未来试验中纳入该调查可为提供关键信息,以指导临床实践。
优化 ADORE Precision 三期试验设计,旨在评估低基线 DHA 孕妇补充 DHA(200 与 1000mg/天)对降低早产的影响。
我们提出了一种贝叶斯混合反应适应性随机化(RAR)设计,利用有限混合模型来描述出生时的胎龄。随后,使用 RAR 基于二分早产结局来告知试验设计。进行了模拟研究,比较了固定设计、有早期停止的适应性设计、ADORE 样适应性 RAR 设计,以及两种具有不同超先验的新混合设计。
模拟结果显示,RAR 设计具有多个优势,如向更有前途的剂量分配更多,试验持续时间缩短。所提出的混合 RAR 设计解决了适应性 RAR 中观察到的统计功效下降问题。新设计模型对超先验选择具有稳健性。我们建议使用混合 RAR 设计 1 进行 ADORE Precision,预计它将产生精确的结果,这对于推进我们在该领域的理解至关重要。