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A hierarchical zero-inflated log-normal model for skewed responses

机译:偏斜响应的分层零膨胀对数正态模型

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Although considerable attention has been given to zero-inflated count data, research on zero-inflated log-normal data is limited. In this article, we consider a study to examine human sperm cell DNA damage obtained from single-cell electrophoresis (COMET assay) experiment in which the outcome measures present a typical example of log-normal data with excess zeros. The problem is further complicated by the fact that each study subject has multiple outcomes at each of up to three visits separated by six-week intervals. Previous methods for zero-inflated log-normal data are based on either simple experimental designs, where comparison of means of zero-inflated log-normal data across different experiment groups is of primary interest, or longitudinal measurements, where only one observation is available for each subject at each visit. Their methods cannot be applied when multiple observations per visit are possible and both inter- and intra-subject variations are present. Our zero-inflated model extends the previous methods by incorporating a hierarchical structure using latent random variables to take into account both inter- and intra-subject variations in zero-inflated log-normal data. An EM algorithm has been developed to obtain the Maximum likelihood estimates of the parameters and their standard errors can be estimated by parametric bootstrap. The model is illustrated using the COMET assay data.
机译:尽管已经对零膨胀计数数据给予了很大的关注,但是对零膨胀对数正态数据的研究仍然有限。在本文中,我们考虑进行一项研究,以检查从单细胞电泳(COMET分析)实验中获得的人类精子细胞DNA损伤,该研究中的结果指标显示了对数正态数据的典型示例,其零值过多。由于每个研究对象在以六周为间隔的最多三次访问中的每一次都有多个结果的事实使问题变得更加复杂。先前的零膨胀对数正态数据的方法是基于简单的实验设计(主要比较不同实验组的零膨胀对数正态数据的平均值),或者是纵向测量,其中只有一个观测值可用于每次访问时每个主题。当每次访问可能有多个观察结果且受试者间和受试者内均存在变异时,则无法应用其方法。我们的零膨胀模型通过合并使用潜在随机变量的层次结构来扩展先前的方法,以考虑零膨胀对数正态数据中对象间和对象内的变化。已经开发了一种EM算法来获取参数的最大似然估计,并且可以通过参数引导程序来估计其标准误差。使用COMET分析数据说明了该模型。

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