构建外部对照臂时,真实世界肿瘤学终点的测量误差和偏差

Benjamin Ackerman, Ryan W. Gan, Craig S. Meyer, Jocelyn R. Wang, Youyi Zhang, Jennifer Hayden, Grace Mahoney, Jennifer L. Lund, Janick Weberpals, Sebastian Schneeweiss, James Roose, Juned Siddique, Omar Nadeem, Smith Giri, Til Stürmer, S. Ailawadhi, Ashita S. Batavia, Khaled Sarsour
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引用次数: 0

摘要

导言:尽管随机对照试验仍是评估治疗效果的参考标准,但人们对使用外部对照臂(ECA)的兴趣日益浓厚,尤其是在肿瘤学领域使用真实世界数据(RWD)。与真实世界肿瘤学终点(如无进展生存期(PFS))测量相关的挑战是限制使用和接受外部对照组作为试验人群比较对象的一个因素。现实世界中疾病评估的方式和时间不同,可能会带来测量误差,限制现实世界无进展生存期(rwPFS)与试验无进展生存期的可比性。虽然测量误差是利用真实世界数据进行外部对照试验时面临的一个已知挑战,但描述关键因素的文献有限,特别是在多发性骨髓瘤(MM)方面:方法:我们对如何得出或确定终点(误分类偏倚)和何时观察或评估结果(监测偏倚)造成的偏倚进行了区分。我们进一步描述了进展事件的误分类(即假阳性、假阴性)和多发性骨髓瘤 RWD 中不规则的评估频率是如何分别导致这些偏倚的。我们进行了一项模拟研究,以说明这些偏差是如何单独或共同出现的:我们在模拟研究中发现,某些类型的测量误差对误测的中位生存期(mPFS)和真实的中位生存期之间的可比性的影响可能比其他类型的误差更大。例如,当观察到的进展事件被误判为假阳性或假阴性时,误测的 mPFS 可能会分别偏向较早的时间(mPFS 偏差 = -6.4 个月)或较晚的时间(mPFS 偏差 = 13 个月)。然而,当事件分类正确但评估频率不规则时,误测的 mPFS 与真实的 mPFS 更为相似(mPFS 偏差 = 0.67 个月):讨论:当分类错误的进展事件和不规则的评估时间同时出现时,它们可能会产生大于各部分之和的偏差。更好地了解终点测量误差以及由此产生的偏倚在 RWD 中的表现,对于在肿瘤学及其他领域构建稳健的 ECA 非常重要。对测量误差的影响进行量化的模拟有助于规划 ECA 研究,并能在终点测量存在差异的情况下将结果具体化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measurement error and bias in real-world oncology endpoints when constructing external control arms
Introduction: While randomized controlled trials remain the reference standard for evaluating treatment efficacy, there is an increased interest in the use of external control arms (ECA), namely in oncology, using real-world data (RWD). Challenges related to measurement of real-world oncology endpoints, like progression-free survival (PFS), are one factor limiting the use and acceptance of ECAs as comparators to trial populations. Differences in how and when disease assessments occur in the real-world may introduce measurement error and limit the comparability of real-world PFS (rwPFS) to trial progression-free survival. While measurement error is a known challenge when conducting an externally-controlled trial with real-world data, there is limited literature describing key contributing factors, particularly in the context of multiple myeloma (MM).Methods: We distinguish between biases attributed to how endpoints are derived or ascertained (misclassification bias) and when outcomes are observed or assessed (surveillance bias). We further describe how misclassification of progression events (i.e., false positives, false negatives) and irregular assessment frequencies in multiple myeloma RWD can contribute to these biases, respectively. We conduct a simulation study to illustrate how these biases may behave, both individually and together.Results: We observe in simulation that certain types of measurement error may have more substantial impacts on comparability between mismeasured median PFS (mPFS) and true mPFS than others. For instance, when the observed progression events are misclassified as either false positives or false negatives, mismeasured mPFS may be biased towards earlier (mPFS bias = −6.4 months) or later times (mPFS bias = 13 months), respectively. However, when events are correctly classified but assessment frequencies are irregular, mismeasured mPFS is more similar to the true mPFS (mPFS bias = 0.67 months).Discussion: When misclassified progression events and irregular assessment times occur simultaneously, they may generate bias that is greater than the sum of their parts. Improved understanding of endpoint measurement error and how resulting biases manifest in RWD is important to the robust construction of ECAs in oncology and beyond. Simulations that quantify the impact of measurement error can help when planning for ECA studies and can contextualize results in the presence of endpoint measurement differences.
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