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Prognostic score matching methods for estimating the average effect of a non-reversible binary time-dependent treatment on the survival function

机译:预后得分匹配方法,用于估算不可逆转的二元时间依赖于生存功能的不可逆转二进制时间依赖性处理的平均效果

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摘要

In evaluating the benefit of a treatment on survival, it is often of interest to compare post-treatment survival with the survival function that would have been observed in the absence of treatment. In many practical settings, treatment is time-dependent in the sense that subjects typically begin follow-up untreated, with some going on to receive treatment at some later time point. In observational studies, treatment is not assigned at random and, therefore, may depend on various patient characteristics. We have developed semi-parametric matching methods to estimate the average treatment effect on the treated (ATT) with respect to survival probability and restricted mean survival time. Matching is based on a prognostic score which reflects each patient's death hazard in the absence of treatment. Specifically, each treated patient is matched with multiple as-yet-untreated patients with similar prognostic scores. The matched sets do not need to be of equal size, since each matched control is weighted in order to preserve risk score balancing across treated and untreated groups. After matching, we estimate the ATT non-parametrically by contrasting pre- and post-treatment weighted Nelson-Aalen survival curves. A closed-form variance is proposed and shown to work well in simulation studies. The proposed methods are applied to national organ transplant registry data.
机译:在评估生存期权治疗的益处时,往往有目的是将治疗后的存活率与在没有治疗的情况下观察到的存活功能。在许多实际设置中,治疗是时间依赖于受试者通常开始随访未经治疗的感觉,有些人在一些稍后的时间点接受治疗。在观察性研究中,治疗不随意分配,因此可能取决于各种患者特征。我们开发了半参数匹配方法,以估计关于存活概率和受限制的平均存活时间的治疗(ATT)的平均处理效果。匹配基于预后分数,反映了在没有治疗的情况下反映了每个患者的死亡危害。具体地,每个治疗的患者与多个尚未治疗的患者匹配,具有相似的预后评分。匹配的组不需要相同的大小,因为每个匹配的控制被加权,以便在处理和未经处理的群体中保持风险分数平衡。在匹配之后,通过对比预先治疗的加权纳尔逊 - Aalen存活曲线对比,我们估计非参数估计。提出了一种闭合形式的方差并显示在模拟研究中运行良好。该提出的方法适用于国家器官移植登记册数据。

著录项

  • 来源
    《Lifetime Data Analysis》 |2020年第3期|451-470|共20页
  • 作者单位

    Department of Biostatistics University of Michigan 1415 Washington Hts. Ann Arbor MI 48109-2029 USA;

    Department of Biostatistics Epidemiology and Informatics University of Pennsylvania Perelman School of Medicine 3400 Civic Center Blvd Philadelphia PA 19104 USA;

    Department of Internal Medicine University of Michigan 1500 East Medical Center Dr. Ann Arbor MI 48109-5361 USA;

    Department of Surgery University of Michigan 1500 East Medical Center Dr. Ann Arbor MI 48109-5334 USA;

    Department of Biostatistics Epidemiology and Informatics University of Pennsylvania Perelman School of Medicine 3400 Civic Center Blvd Philadelphia PA 19104 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Landmark analysis; Causal inference; Matching; Prognostic score; Semiparametric method; Survival function; Treatment effect;

    机译:地标分析;因果推断;匹配;预后分数;Semiparametric方法;生存功能;治疗效果;

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