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A two-stage estimation in the Clayton-Oakes model with marginal linear transformation models for multivariate failure time data

机译:具有多元线性故障时间数据的边际线性变换模型的Clayton-Oakes模型中的两阶段估计

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This paper considers the analysis of multivariate survival data where the marginal distributions are specified by semiparametric transformation models, a general class including the Cox model and the proportional odds model as special cases. First, consideration is given to the situation where the joint distribution of all failure times within the same cluster is specified by the Clayton-Oakes model (Clayton, Bio-metrika 65:141-151, 1978; Oakes, J R Stat Soc B 44:412-422, 1982). A two-stage estimation procedure is adopted by first estimating the marginal parameters under the independence working assumption, and then the association parameter is estimated from the maximization of the full likelihood function with the estimators of the marginal parameters plugged in. The asymptotic properties of all estimators in the semiparametric model are derived. For the second situation, the third and higher order dependency structures are left unspecified, and interest focuses on the pairwise correlation between any two failure times. Thus, the pairwise association estimate can be obtained in the second stage by maximizing the pairwise likelihood function. Large sample properties for the pairwise association are also derived. Simulation studies show that the proposed approach is appropriate for practical use. To illustrate, a subset of the data from the Diabetic Retinopathy Study is used.
机译:本文考虑了通过半参数转换模型指定边际分布的多元生存数据的分析,作为特殊情况的通用类包括Cox模型和比例赔率模型。首先,考虑以下情况:同一集群内所有故障时间的联合分布由Clayton-Oakes模型指定(Clayton,Bio-metrika 65:141-151,1978; Oakes,JR Stat Soc B 44: 412-422,1982)。首先通过在独立工作假设下估算边缘参数,然后采用两阶段估算程序,然后通过插入边缘参数的估算器,通过全似然函数的最大化来估算关联参数。所有参数的渐近性质推导了半参数模型中的估计量。对于第二种情况,未指定三阶和更高阶的依存结构,并且关注点集中于任意两个故障时间之间的成对相关性。因此,可以在第二阶段通过最大化成对似然函数来获得成对关联估计。还导出了成对关联的大样本属性。仿真研究表明,该方法适用于实际应用。为了说明,使用了糖尿病性视网膜病研究的部分数据。

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