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首页> 外文期刊>Statistics in medicine >A hierarchical model for binary data with dependence between the design and outcome success probabilities.
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A hierarchical model for binary data with dependence between the design and outcome success probabilities.

机译:设计和结果成功概率之间具有依赖性的二进制数据的分层模型。

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Statistical theory requires that analysis of study outcomes be conducted conditional on the design process. Ignoring this process may result in severely biased estimates, leading to false inferences, especially when the outcome variable is associated with design variables. We propose in this paper a class of hierarchical models to investigate the dependence between the design process and the study outcomes of primary interest. We discuss a fully parametric and a semi-parametric formulation of the hypothesized model and propose the EM algorithm to obtain maximum likelihood estimates. Our numerical results show that the semi-parametric approach outperforms the fully parametric model with respect to some key features of the model. The methodology is used to gain insight into the mechanism that generates breast cancer literacy outcomes in a study conducted among medically underserved females in Michigan.
机译:统计理论要求研究结果的分析应在设计过程中进行。忽略此过程可能会导致估计值严重偏差,从而导致错误的推断,尤其是当结果变量与设计变量关联时。我们在本文中提出了一类层次模型,以研究设计过程与主要兴趣的研究结果之间的依赖性。我们讨论了假设模型的全参数和半参数公式,并提出了EM算法以获得最大似然估计。我们的数值结果表明,就模型的某些关键特性而言,半参数方法优于完全参数模型。在密歇根州医疗服务不足的女性中进行的一项研究中,该方法用于深入了解产生乳腺癌素养结局的机制。

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