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Analysis of longitudinal laboratory data in the presence of common selection mechanisms: a view toward greater emphasis on pre-marketing pharmaceutical safety.

机译:在存在共同选择机制的情况下对纵向实验室数据进行分析:一种更加重视售前药品安全性的观点。

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摘要

Pharmaceutical safety has received substantial attention in the recent past; however, longitudinal clinical laboratory data routinely collected during clinical trials to derive safety profiles are often used ineffectively. For example, these data are frequently summarized by comparing proportions (between treatment arms) of participants who cross pre-specified threshold values at some time during follow-up. This research is intended, in part, to encourage more effective utilization of these data by avoiding unnecessary dichotomization of continuous data, acknowledging and making use of the longitudinal follow-up, and combining data from multiple clinical trials. However, appropriate analyses require careful consideration of a number of challenges (e.g. selection, comparability of study populations, etc.). We discuss estimation strategies based on estimating equations and maximum likelihood for analyses in the presence of three response history-dependent selection mechanisms: dropout, follow-up frequency, and treatment discontinuation. In addition, because clinical trials' participants usually represent non-random samples from target populations, we describe two sensitivity analysis approaches. All discussions are motivated by an analysis that aims to characterize the dynamic relationship between concentrations of a liver enzyme (alanine aminotransferase) and three distinct doses (no drug, low dose, and high dose) of an nk-1 antagonist across four Phase II clinical trials.
机译:近期,药物安全性受到了广泛关注。但是,经常无效地使用在临床试验期间常规收集的纵向临床实验室数据以得出安全性概况。例如,这些数据经常通过比较在随访过程中某个时间超过预定阈值的参与者的比例(在治疗组之间)进行汇总。这项研究的部分目的是通过避免不必要的连续数据二分法,确认和利用纵向随访以及合并来自多个临床试验的数据来鼓励更有效地利用这些数据。但是,适当的分析需要仔细考虑许多挑战(例如选择,研究人群的可比性等)。我们讨论了基于估计方程和最大似然性的估计策略,用于在存在三种依赖于反应历史的选择机制时进行分析:辍学,随访频率和治疗中断。此外,由于临床试验的参与者通常代表目标人群的非随机样本,因此我们描述了两种敏感性分析方法。所有讨论均受到旨在分析肝脏酶(丙氨酸转氨酶)浓度与三种不同剂量(无药物,低剂量和高剂量)的nk-1拮抗剂在四个II期临床试验中的动态关系之间的动态关系的分析的启发审判。

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