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首页> 外文期刊>Computer Methods and Programs in Biomedicine: An International Journal Devoted to the Development, Implementation and Exchange of Computing Methodology and Software Systems in Biomedical Research and Medical Practice >surrosurv: An R package for the evaluation of failure time surrogate endpoints in individual patient data meta-analyses of randomized clinical trials
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surrosurv: An R package for the evaluation of failure time surrogate endpoints in individual patient data meta-analyses of randomized clinical trials

机译:Surrosurv:用于评估失败时间代理终点的R包,在随机临床试验中的个体患者数据荟萃分析中

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摘要

Background and objectiveSurrogate endpoints are attractive for use in clinical trials instead of well-established endpoints because of practical convenience. To validate a surrogate endpoint, two important measures can be estimated in a meta-analytic context when individual patient data are available: theRindiv2or the Kendall’sτat the individual level, and theRtrial2at the trial level. We aimed at providing anRimplementation of classical and well-established as well as more recent statistical methods for surrogacy assessment with failure time endpoints. We also intended incorporating utilities for model checking and visualization and data generating methods described in the literature to date. MethodsIn the case of failure time endpoints, the classical approach is based on two steps. First, a Kendall’sτis estimated as measure of individual level surrogacy using a copula model. Then, theRtrial2is computed via a linear regression of the estimated treatment effects; at this second step, the estimation uncertainty can be accounted for via measurement-error model or via weights. In addition to the classical approach, we recently developed an approach based on bivariate auxiliary Poisson models with individual random effects to measure the Kendall’sτand treatment-by-trial interactions to measure theRtrial2. The most common data simulation models described in the literature are based on: copula models, mixed proportional hazard models, and mixture of half-normal and exponential random variables. ResultsTheRpackagesurrosurvimplements the classical two-step method with Clayton, Plackett, and Hougaard copulas. It also allows to optionally adjusting the second-step linear regression for measurement-error. The mixed Poisson approach is implemented with different reduced models in addition to the full model. We present the package functions for estimating the surrogacy models, for checking their convergence, for performing leave-one-trial-out cross-validation, and for plotting the results. We illustrate their use in practice on individual patient data from a meta-analysis of 4069 patients with advanced gastric cancer from 20 trials of chemotherapy. ConclusionsThesurrosurvpackage provides anRimplementation of classical and recent statistical methods for surrogacy assessment of failure time endpoints. Flexible simulation functions are available to generate data according to the methods described in the literature.
机译:背景和ObjectiveSurrogate终点对于临床试验中使用的吸引力而不是良好的终点,因为实际方便起见。为了验证代理端点,在可以使用各个患者数据时可以在元分析上下文中估算两个重要措施:TherIndiv2 kendall的kendall'stat的个人级别,并在Therial2aT的试验水平。我们旨在提供古典和良好的既有经典和良好成熟的统计方法,以及使用失效时间终点的代孕评估统计方法。我们还包括在文献中结合用于模型检查和可视化和数据生成方法,以及迄今为止描述的数据生成方法。方法在故障时端点的情况下,经典方法基于两个步骤。首先,kendall'sτis估计使用copula模型作为个人级别代孕的衡量标准。然后,通过估计的治疗效果的线性回归来计算Thertrial2。在该第二步骤中,可以通过测量误差模型或重量来计算估计不确定性。除了古典方法外,我们最近开发了一种基于双变型辅助泊松模型的方法,具有单个随机效应来测量KENDALL的静脉治疗逐次相互作用,以测量THERTIAL2。文献中描述的最常见的数据仿真模型基于:Copula型号,混合比例危险模型以及半正常和指数随机变量的混合。结果resturpackagesurvimplement与克莱顿,plackett和hougaard copulas的经典两步方法。它还允许可选地调整用于测量误差的第二步线性回归。除完整模型外,混合泊松方法是用不同的减少模型实现的。我们介绍了估计代理模型的包功能,以便检查其融合,以便执行休假 - 一次试验交叉验证,以及绘制结果。我们从4069例化疗试验中的4069例晚期胃癌患者的META分析中说明了他们在实践中使用。结论耐久性为故障时间终点的代理评估提供了古典和最近的统计方法。灵活的仿真功能可根据文献中描述的方法生成数据。

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