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Threshold-based subgroup testing in logistic regression models in two-phase sampling designs

机译:两相采样设计中逻辑回归模型中基于阈值的子组测试

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摘要

The effect of treatment on binary disease outcome can differ across subgroups characterised by other covariates. Testing for the existence of subgroups that are associated with heterogeneous treatment effects can provide valuable insight regarding the optimal treatment recommendation in practice. Our research in this paper is motivated by the question of whether host genetics could modify a vaccine's effect on HTV acquisition risk. To answer this question, we used data from an HIV vaccine trial with a two-phase sampling design and developed a general threshold-based model framework to test for the existence of subgroups associated with the heterogeneity in disease risks, allowing for subgroups based on multivariate covariates. We developed a testing procedure based on maximum of likelihood ratio statistics over change-planes and demonstrated its advantage over alternative methods. We further developed the testing procedure to account for bias sampling of expensive (i.e. resource-intensive to measure) covariates through the incorporation of inverse probability weighting techniques. We used the proposed method to analyse the motivating HIV vaccine trial data. Our proposed testing procedure also has broad applications in epidemiological studies for assessing heterogeneity in disease risk with respect to univariate or multivariate predictors.
机译:治疗对二元疾病结果的影响可以在其他协变量的特征的亚组中不同。测试与异质治疗效果相关的子组的存在可以提供有价值的见解,就实践中的最佳治疗建议提供了有价值的洞察力。我们本文的研究是由宿主遗传学是否可以修改疫苗对HTV收购风险的影响的主动。为了回答这个问题,我们使用来自HIV疫苗试验的数据,并开发了一种基于阈值的基于阈值的模型框架,以测试与疾病风险的异质性相关的亚组存在,从而允许基于多变量的子组协变量。我们开发了基于最大可能性比率统计数据的测试程序,并通过替代方法证明了其优势。我们进一步开发了测试程序,以通过掺入逆概率加权技术来解释昂贵的(即资源密集型来测量)协变量的偏差采样。我们利用该方法分析了激励艾滋病毒疫苗试验数据。我们所提出的测试程序还具有广泛应用的流行病学研究,以评估与单变量或多变量预测因子的疾病风险中的异质性。

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