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A hierarchical finite mixture model that accommodates zero-inflated counts non-independence and heterogeneity

机译:分层有限混合模型可容纳零膨胀计数非独立性和异质性

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摘要

A number of mixture modeling approaches assume both normality and independent observations. However, these two assumptions are at odds with the reality of many data sets, which are often characterized by an abundance of zero-valued or highly skewed observations as well as observations from biologically related (i.e., non-independent) subjects. We present here a finite mixture model with a zero-inflated Poisson regression component that may be applied to both types of data. This flexible approach allows the use of covariates to model both the Poisson mean and rate of zero-inflation and can incorporate random effects to accommodate non-independent observations. We demonstrate the utility of this approach by applying these models to a candidate endophenotype for schizophrenia, but the same methods are applicable to other types of data characterized by zero inflation and non-independence.
机译:许多混合建模方法都假设正态性和独立观测。但是,这两个假设与许多数据集的实际情况不符,通常以大量零值或高度偏斜的观察结果以及生物学相关(即非独立)受试者的观察结果为特征。我们在这里提出了一个有限混合模型,该模型具有零膨胀的Poisson回归分量,可以应用于这两种类型的数据。这种灵活的方法允许使用协变量对泊松均值和零通胀率建模,并且可以合并随机效应以适应非独立观测。通过将这些模型应用于精神分裂症的候选内表型,我们证明了该方法的实用性,但是相同的方法适用于以零膨胀和非独立为特征的其他类型的数据。

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