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A data-augmentation method for infectious disease incidence data from close contact groups

机译:近距离接触人群传染病发病率数据的数据增强方法

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摘要

A broad range of studies of preventive measures in infectious diseases gives rise to incidence data from close contact groups. Parameters of common interest in such studies include transmission probabilities and efficacies of preventive or therapeutic interventions. We estimate these parameters using discrete-time likelihood models. We augment the data with unobserved pairwise transmission outcomes and fit the model using the EM algorithm. A linear model derived from the likelihood based on the augmented data and fitted with the iteratively reweighted least squares method is also discussed. Using simulations, we demonstrate the comparable accuracy and lower sensitivity to initial estimates of the proposed methods with data augmentation relative to the likelihood model based solely on the observed data. Two randomized household-based trials of zanamivir, an influenza antiviral agent, are analyzed using the proposed methods.
机译:传染病预防措施的广泛研究产生了密切接触人群的发病数据。在此类研究中,共同感兴趣的参数包括传播概率和预防或治疗干预的有效性。我们使用离散时间似然模型估计这些参数。我们使用未观察到的成对传输结果扩充数据,并使用EM算法拟合模型。还讨论了基于扩充数据的似然性得出的线性模型,并拟合了迭代加权最小二乘法。使用模拟,我们证明了相对于仅基于观测数据的似然模型而言,数据增强的拟议方法的初始估计具有相当的准确性和较低的敏感性。使用拟议的方法分析了扎那米韦(一种抗流感病毒药物)的两项基于家庭的随机试验。

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