Boston Medical Center, 72 E. Concord St, Boston, MA, USA.
Boston University School of Public Health, 801 Massachusetts Ave, Boston, MA, USA.
BMC Med Res Methodol. 2019 Dec 16;19(1):239. doi: 10.1186/s12874-019-0883-9.
The Multiphase Optimization Strategy (MOST) is designed to maximize the impact of clinical healthcare interventions, which are typically multicomponent and increasingly complex. MOST often relies on factorial experiments to identify which components of an intervention are most effective, efficient, and scalable. When assigning participants to conditions in factorial experiments, researchers must be careful to select the assignment procedure that will result in balanced sample sizes and equivalence of covariates across conditions while maintaining unpredictability.
In the context of a MOST optimization trial with a 2x2x2x2 factorial design, we used computer simulation to empirically test five subject allocation procedures: simple randomization, stratified randomization with permuted blocks, maximum tolerated imbalance (MTI), minimal sufficient balance (MSB), and minimization. We compared these methods across the 16 study cells with respect to sample size balance, equivalence on key covariates, and unpredictability. Leveraging an existing dataset to compare these procedures, we conducted 250 computerized simulations using bootstrap samples of 304 participants.
Simple randomization, the most unpredictable procedure, generated poor sample balance and equivalence of covariates across the 16 study cells. Stratified randomization with permuted blocks performed well on stratified variables but resulted in poor equivalence on other covariates and poor balance. MTI, MSB, and minimization had higher complexity and cost. MTI resulted in balance close to pre-specified thresholds and a higher degree of unpredictability, but poor equivalence of covariates. MSB had 19.7% deterministic allocations, poor sample balance and improved equivalence on only a few covariates. Minimization was most successful in achieving balanced sample sizes and equivalence across a large number of covariates, but resulted in 34% deterministic allocations. Small differences in proportion of correct guesses were found across the procedures.
Based on the computer simulation results and priorities within the study context, minimization with a random element was selected for the planned research study. Minimization with a random element, as well as computer simulation to make an informed randomization procedure choice, are utilized infrequently in randomized experiments but represent important technical advances that researchers implementing multi-arm and factorial studies should consider.
多阶段优化策略(MOST)旨在最大限度地提高临床医疗干预的效果,这些干预通常是多组分的,且日益复杂。MOST 通常依赖析因实验来确定干预措施的哪些组成部分最有效、最有效率和最具可扩展性。在析因实验中为参与者分配条件时,研究人员必须小心选择分配程序,以确保在保持不可预测性的同时,在条件之间实现平衡的样本量和协变量的等效性。
在一项具有 2x2x2x2 析因设计的 MOST 优化试验中,我们使用计算机模拟实证测试了五种受试者分配程序:简单随机化、分层随机化与置换块、最大可容忍不平衡(MTI)、最小充分平衡(MSB)和最小化。我们比较了这些方法在 16 个研究单元中的样本量平衡、关键协变量的等效性和不可预测性。利用现有的数据集来比较这些程序,我们使用 304 名参与者的引导样本进行了 250 次计算机模拟。
最简单的随机化程序是最不可预测的程序,导致 16 个研究单元中的样本量平衡和协变量等效性差。分层随机化与置换块在分层变量上表现良好,但在其他协变量上表现出较差的等效性和较差的平衡性。MTI、MSB 和最小化的复杂性和成本更高。MTI 导致接近预定阈值的平衡,并具有更高的不可预测性,但协变量等效性较差。MSB 有 19.7%的确定性分配,样本量平衡差,仅在少数几个协变量上得到改善。在这些程序中,发现正确猜测的比例差异很小。
基于计算机模拟结果和研究背景中的优先级,选择了带有随机元素的最小化作为计划研究。带有随机元素的最小化以及计算机模拟以做出明智的随机化程序选择,在随机试验中使用较少,但代表了实施多臂和析因研究的研究人员应考虑的重要技术进步。