首页> 外文期刊>Journal of the Royal Statistical Society. Series A, Statistics in Society >A protective estimator for longitudinal binary data subject to non-ignorable non-monotone missingness
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A protective estimator for longitudinal binary data subject to non-ignorable non-monotone missingness

机译:纵向二元数据遭受不可忽略的非单调缺失的保护性估计器

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In longitudinal studies missing data are the rule not the exception. We consider the analysis of longitudinal binary data with non-monotone missingness that is thought to be non-ignorable. In this setting a full likelihood approach is complicated algebraically and can be computationally prohibitive when there are many measurement occasions. We propose a 'protective' estimator that assumes that the probability that a response is missing at any occasion depends, in a completely unspecified way, on the value of that variable alone. Relying on this 'protectiveness' assumption, we describe a pseudolikelihood estimator of the regression parameters under non-ignorable missingness, without having to model the missing data mechanism directly. The method proposed is applied to CD4 cell count data from two longitudinal clinical trials of patients infected with the human immunodeficiency virus.
机译:在纵向研究中,缺失数据并非例外。我们考虑对具有非单调缺失的纵向二进制数据进行分析,这种分析被认为是不可忽略的。在这种情况下,全似然法在代数上很复杂,并且在有很多测量场合时可能在计算上是禁止的。我们提出了一种“保护性”的估算器,该估算器假定在任何情况下都缺少响应的可能性完全以未指定的方式取决于该变量的值。依靠这种“保护性”假设,我们描述了不可忽略缺失下回归参数的伪似然估计,而不必直接对缺失数据机制进行建模。所提出的方法适用于来自两个被人类免疫缺陷病毒感染的患者的纵向临床试验的CD4细胞计数数据。

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