Towards Treatment Effect Interpretability: A Bayesian Re-analysis of 194,129 Patient Outcomes Across 230 Oncology Trials

Alexander Dean Sherry, Pavlos Msaouel, Gabrielle Kupferman, Timothy Lin, Joseph Abi Jaoude, Ramez Kouzy, Molly B. El Alam, Roshal Patel, Alex Koong, Christine Lin, Adina Passy, Avital Miller, Esther Beck, Clifton David Fuller, Tomer Meirson, Zachary David McCaw, Ethan B. Ludmir
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Abstract

Most oncology trials define superiority of an experimental therapy compared to a control therapy according to frequentist significance thresholds, which are widely misinterpreted. Posterior probability distributions computed by Bayesian inference may be more intuitive measures of uncertainty, particularly for measures of clinical benefit such as the minimum clinically important difference (MCID). Here, we manually reconstructed 194,129 individual patient-level outcomes across 230 phase III, superiority-design, oncology trials. Posteriors were calculated by Markov Chain Monte Carlo sampling using standard priors. All trials interpreted as positive had probabilities > 90% for marginal benefits (HR < 1). However, 38% of positive trials had ≤ 90% probabilities of achieving the MCID (HR < 0.8), even under an enthusiastic prior. A subgroup analysis of 82 trials that led to regulatory approval showed 30% had ≤ 90% probability for meeting the MCID under an enthusiastic prior. Conversely, 24% of negative trials had > 90% probability of achieving marginal benefits, even under a skeptical prior, including 12 trials with a primary endpoint of overall survival. Lastly, a phase III oncology-specific prior from a previous work, which uses published summary statistics rather than reconstructed data to compute posteriors, validated the individual patient-level data findings. Taken together, these results suggest that Bayesian models add considerable unique interpretative value to phase III oncology trials and provide a robust solution for overcoming the discrepancies between refuting the null hypothesis and obtaining a MCID.
实现治疗效果的可解释性:对 230 项肿瘤学试验中 194 129 例患者结果的贝叶斯再分析
大多数肿瘤试验都是根据频数显著性阈值来定义实验疗法与对照疗法的优劣,而频数显著性阈值被广泛误读。通过贝叶斯推理计算出的后验概率分布可能更能直观地衡量不确定性,特别是对于最小临床重要性差异(MCID)等临床获益指标。在此,我们手动重建了230项III期、优越性设计、肿瘤试验中的194129个患者水平结果。后验是通过使用标准先验的马尔可夫链蒙特卡洛抽样计算得出的。所有被解释为阳性的试验的边际效益(HR <1)概率均为 90%。然而,38%的阳性试验达到MCID(HR <0.8)的概率≤90%,即使在热情先验条件下也是如此。对 82 项获得监管部门批准的试验进行的分组分析表明,在积极先验条件下,30% 的试验达到 MCID 的概率不超过 90%。相反,24%的阴性试验即使在怀疑先验条件下也有 90% 的概率达到边际效益,其中包括 12 项主要终点为总生存期的试验。最后,前一项研究中针对 III 期肿瘤的先验数据验证了单个患者层面的数据结果,该先验数据使用的是已发表的汇总统计数据而不是重构数据来计算后验值。总之,这些结果表明,贝叶斯模型为 III 期肿瘤学试验增加了相当大的独特解释价值,并为克服反驳零假设和获得 MCID 之间的差异提供了一个稳健的解决方案。
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