Theodore G. Karrison Ph.D. , Dezheng Huo M.S. , Rick Chappell Ph.D.
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The key advantage of a group sequential approach in which randomization probabilities are kept constant within sequential groups is that a stratified analysis will eliminate bias due to drift. In this article we consider binary outcomes and an algorithm for altering the allocation ratio that depends on the strength of the accumulated evidence. Specifically, patients are enrolled in groups of size <em>n<sub>Ak</sub></em>, <em>n<sub>Bk</sub></em>, <em>k</em> <!-->=<!--> <!-->1, 2, … <em>K</em>, where <em>n<sub>Ak</sub></em>, <em>n<sub>Bk</sub></em> are the sample sizes in treatment arms A and B in sequential group <em>k</em>. Patients are initially allocated in a 1:1 ratio. After the <em>k</em>th interim analysis, if the z-value comparing outcomes in the two treatment groups is less than 1.0 in absolute value, the ratio remains 1:1; if the z-value exceeds 1.0, the next sequential group is allocated in the ratio R<sub>1</sub> favoring the currently better-performing treatment; if the z-statistic exceeds 1.5, the allocation ratio is R<sub>2</sub>, and if the z-value exceeds 2.0, the allocation ratio is R<sub>3</sub>. If the O'Brien-Fleming monitoring boundary is exceeded the trial is terminated. Group sample-sizes are adjusted upward to maintain equal increments of information when allocation ratios exceed one. The z-statistic is derived from a weighted log-odds ratio stratified by sequential group. Simulation studies and theoretical calculations were performed under a variety of scenarios and allocation rules. Results indicate that the method maintains the nominal type I error rate even when there is substantial drift in the patient population. When a true treatment difference exists, a modest reduction in the number of patients assigned to the inferior treatment arm can be achieved at the expense of smaller increases in the total sample size relative to a nonadaptive design. Limitations, such as the impact of delays in observing outcomes, are discussed, as well as areas for further research. We conclude that responsive adaptive designs may be useful for some purposes, particularly in the presence of large treatment effects, although allowing early stopping minimizes the benefits. If such a design is undertaken, the randomization and analysis should be stratified in order to avoid bias due to time trends.</p></div>","PeriodicalId":72706,"journal":{"name":"Controlled clinical trials","volume":"24 5","pages":"Pages 506-522"},"PeriodicalIF":0.0000,"publicationDate":"2003-10-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://sci-hub-pdf.com/10.1016/S0197-2456(03)00092-8","citationCount":"77","resultStr":"{\"title\":\"A group sequential, response-adaptive design for randomized clinical trials\",\"authors\":\"Theodore G. Karrison Ph.D. , Dezheng Huo M.S. , Rick Chappell Ph.D.\",\"doi\":\"10.1016/S0197-2456(03)00092-8\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>There has been considerable methodological research on response-adaptive designs for clinical trials but they have seldom been used in practice. 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Specifically, patients are enrolled in groups of size <em>n<sub>Ak</sub></em>, <em>n<sub>Bk</sub></em>, <em>k</em> <!-->=<!--> <!-->1, 2, … <em>K</em>, where <em>n<sub>Ak</sub></em>, <em>n<sub>Bk</sub></em> are the sample sizes in treatment arms A and B in sequential group <em>k</em>. Patients are initially allocated in a 1:1 ratio. After the <em>k</em>th interim analysis, if the z-value comparing outcomes in the two treatment groups is less than 1.0 in absolute value, the ratio remains 1:1; if the z-value exceeds 1.0, the next sequential group is allocated in the ratio R<sub>1</sub> favoring the currently better-performing treatment; if the z-statistic exceeds 1.5, the allocation ratio is R<sub>2</sub>, and if the z-value exceeds 2.0, the allocation ratio is R<sub>3</sub>. If the O'Brien-Fleming monitoring boundary is exceeded the trial is terminated. Group sample-sizes are adjusted upward to maintain equal increments of information when allocation ratios exceed one. 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引用次数: 77
摘要
对于临床试验的反应适应性设计已经有相当多的方法学研究,但很少在实践中使用。Rosenberger和Lachin在一篇文章中总结了造成这种情况的许多原因,但通常引用的两个主要原因是后勤困难和由于选择效应、患者特征或风险因素随时间的“漂移”以及其他来源而产生的潜在偏差。jenison和Turnbull考虑了一种连续结果变量的群体顺序、响应自适应设计,该设计部分解决了这些问题,同时允许提前停止。群体序列方法的主要优点是,随机化概率在序列组中保持恒定,分层分析将消除由于漂移引起的偏差。在本文中,我们考虑二元结果和一种算法来改变分配比例,这取决于累积证据的强度。具体而言,患者被分为大小为nAk, nBk, k = 1,2,…k的组,其中nAk, nBk为序贯k组A和B治疗组的样本量。患者最初按1:1的比例分配。第k次中期分析后,若两治疗组比较结果的z值绝对值小于1.0,则比值仍为1:1;如果z值超过1.0,则按比例R1分配下一个顺序组,以支持当前表现较好的处理;如果z统计量超过1.5,则分配率为R2,如果z统计量超过2.0,则分配率为R3。如果超过O'Brien-Fleming监测边界,则终止试验。当分配比率超过1时,组样本大小向上调整,以保持相等的信息增量。z统计量来源于按顺序分组分层的加权对数-比值比。在各种场景和分配规则下进行了仿真研究和理论计算。结果表明,该方法保持名义的I型错误率,即使有大量的漂移在患者群体。当真正的治疗差异存在时,相对于非适应性设计,分配到较差治疗组的患者数量的适度减少可以以总样本量的较小增加为代价。讨论了观测结果延迟的影响等局限性,以及进一步研究的领域。我们得出的结论是,响应性自适应设计可能对某些目的有用,特别是在存在较大治疗效果的情况下,尽管允许早期停止会使益处最小化。如果进行这样的设计,应该对随机化和分析进行分层,以避免由于时间趋势造成的偏差。
A group sequential, response-adaptive design for randomized clinical trials
There has been considerable methodological research on response-adaptive designs for clinical trials but they have seldom been used in practice. The many reasons for this are summarized in an article by Rosenberger and Lachin, but the two main reasons generally cited are logistical difficulties and the potential for bias due to selection effects, “drift” in patient characteristics or risk factors over time, and other sources. Jennison and Turnbull consider a group sequential, response-adaptive design for continuous outcome variables that partially addresses these concerns while at the same time allowing for early stopping. The key advantage of a group sequential approach in which randomization probabilities are kept constant within sequential groups is that a stratified analysis will eliminate bias due to drift. In this article we consider binary outcomes and an algorithm for altering the allocation ratio that depends on the strength of the accumulated evidence. Specifically, patients are enrolled in groups of size nAk, nBk, k = 1, 2, … K, where nAk, nBk are the sample sizes in treatment arms A and B in sequential group k. Patients are initially allocated in a 1:1 ratio. After the kth interim analysis, if the z-value comparing outcomes in the two treatment groups is less than 1.0 in absolute value, the ratio remains 1:1; if the z-value exceeds 1.0, the next sequential group is allocated in the ratio R1 favoring the currently better-performing treatment; if the z-statistic exceeds 1.5, the allocation ratio is R2, and if the z-value exceeds 2.0, the allocation ratio is R3. If the O'Brien-Fleming monitoring boundary is exceeded the trial is terminated. Group sample-sizes are adjusted upward to maintain equal increments of information when allocation ratios exceed one. The z-statistic is derived from a weighted log-odds ratio stratified by sequential group. Simulation studies and theoretical calculations were performed under a variety of scenarios and allocation rules. Results indicate that the method maintains the nominal type I error rate even when there is substantial drift in the patient population. When a true treatment difference exists, a modest reduction in the number of patients assigned to the inferior treatment arm can be achieved at the expense of smaller increases in the total sample size relative to a nonadaptive design. Limitations, such as the impact of delays in observing outcomes, are discussed, as well as areas for further research. We conclude that responsive adaptive designs may be useful for some purposes, particularly in the presence of large treatment effects, although allowing early stopping minimizes the benefits. If such a design is undertaken, the randomization and analysis should be stratified in order to avoid bias due to time trends.