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首页> 外文期刊>Probability in the Engineering and Informational Sciences >BANDIT STRATEGIES EVALUATED IN THE CONTEXT OF CLINICAL TRIALS IN RARE LIFE-THREATENING DISEASES
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BANDIT STRATEGIES EVALUATED IN THE CONTEXT OF CLINICAL TRIALS IN RARE LIFE-THREATENING DISEASES

机译:在临床试验中评估罕见病危重病的盗贼策略

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摘要

In a rare life-threatening disease setting the number of patients in the trial is a high proportion of all patients with the condition (if not all of them). Further, this number is usually not enough to guarantee the required statistical power to detect a treatment effect of a meaningful size. In such a context, the idea of prioritizing patient benefit over hypothesis testing as the goal of the trial can lead to a trial design that produces useful information to guide treatment, even if it does not do so with the standard levels of statistical confidence. The idealized model to consider such an optimal design of a clinical trial is known as a classic multi-armed bandit problem with a finite patient horizon and a patient benefit objective function. Such a design maximizes patient benefit by balancing the learning and earning goals as data accumulates and given the patient horizon. On the other hand, optimally solving such a model has a very high computational cost (many times prohibitive) and more importantly, a cumbersome implementation, even for populations as small as a hundred patients. Several computationally feasible heuristic rules to address this problem have been proposed over the last 40 years in the literature. In this paper, we study a novel heuristic approach to solve it based on the reformulation of the problem as a Restless bandit problem and the derivation of its corresponding Whittle Index (WI) rule. Such rule was recently proposed in the context of a clinical trial in Villar, Bowden, and Wason [16]. We perform extensive computational studies to compare through both exact value calculations and simulated values the performance of this rule, other index rules and simpler heuristics previously proposed in the literature. Our results suggest that for the two and three-armed case and a patient horizon less or equal than a hundred patients, all index rules are a priori practically identical in terms of the expected proportion of success attained when all arms start with a uniform prior. However, we find that a posteriori, for specific values of the parameters of interest, the index policies outperform the simpler rules in every instance and specially so in the case of many arms and a larger, though still relatively small, total number of patients with the diseases. The very good performance of bandit rules in terms of patient benefit (i.e., expected number of successes and mean number of patients allocated to the best arm, if it exists) makes them very appealing in context of the challenge posed by drug development and treatment for rare life-threatening diseases.
机译:在一种罕见的威胁生命的疾病中,试验中的患者人数占所有患有该疾病的患者的比例很高(如果不是所有人)。此外,该数目通常不足以保证检测有意义大小的治疗效果所需的统计能力。在这种情况下,将患者的利益优先于假设检验的想法作为试验的目标,这可能会导致试验设计产生有用的信息来指导治疗,即使它没有采用统计可信度的标准水平也是如此。考虑这种临床试验最佳设计的理想模型被称为经典多臂匪徒问题,具有有限的患者视野和患者受益目标函数。这样的设计通过在数据累积和给定患者视线的同时平衡学习和收入目标,从而使患者受益最大化。另一方面,最佳地求解这种模型具有很高的计算成本(很多时候令人望而却步),更重要的是,即使对于只有一百名患者的人群,实现起来也很麻烦。在过去的40年中,已经提出了几种解决该问题的可行计算启发式规则。在本文中,我们基于将问题重新格式化为不安定的土匪问题并推导其相应的Whittle Index(WI)规则,研究了一种新颖的启发式方法来解决该问题。最近在Villar,Bowden和Wason的临床试验中提出了这样的规则[16]。我们进行了广泛的计算研究,以通过精确值计算和模拟值比较该规则,其他索引规则和先前在文献中提出的简单启发式算法的性能。我们的结果表明,对于两臂和三臂情况以及小于或等于一百名患者的患者视野,就所有臂均以统一先验开始时获得的成功预期比例而言,所有指标规则在先验上实际上是相同的。但是,我们发现,对于感兴趣的参数的特定值而言,后验索引策略在每种情况下均优于简单规则,尤其是在有很多分支和较大但仍相对较小的患者总数的情况下,疾病。在患者利益方面,强盗规则的表现非常出色(即,预期成功次数和分配给最佳团队的平均患者人数,如果存在的话)使其在药物开发和治疗所带来的挑战的背景下非常具有吸引力罕见的威胁生命的疾病。

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