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A probit- log- skew-normal mixture model for repeated measures data with excess zeros, with application to a cohort study of paediatric respiratory symptoms

机译:概率-偏态-正态混合模型,用于重复测量数据,带有零以上,适用于小儿呼吸系统症状的队列研究

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Background A zero-inflated continuous outcome is characterized by occurrence of "excess" zeros that more than a single distribution can explain, with the positive observations forming a skewed distribution. Mixture models are employed for regression analysis of zero-inflated data. Moreover, for repeated measures zero-inflated data the clustering structure should also be modeled for an adequate analysis. Methods Diary of Asthma and Viral Infections Study (DAVIS) was a one year (2004) cohort study conducted at McMaster University to monitor viral infection and respiratory symptoms in children aged 5-11 years with and without asthma. Respiratory symptoms were recorded daily using either an Internet or paper-based diary. Changes in symptoms were assessed by study staff and led to collection of nasal fluid specimens for virological testing. The study objectives included investigating the response of respiratory symptoms to respiratory viral infection in children with and without asthma over a one year period. Due to sparse data daily respiratory symptom scores were aggregated into weekly average scores. More than 70% of the weekly average scores were zero, with the positive scores forming a skewed distribution. We propose a random effects probit/log-skew-normal mixture model to analyze the DAVIS data. The model parameters were estimated using a maximum marginal likelihood approach. A simulation study was conducted to assess the performance of the proposed mixture model if the underlying distribution of the positive response is different from log-skew normal. Results Viral infection status was highly significant in both probit and log-skew normal model components respectively. The probability of being symptom free was much lower for the week a child was viral positive relative to the week she/he was viral negative. The severity of the symptoms was also greater for the week a child was viral positive. The probability of being symptom free was smaller for asthmatics relative to non-asthmatics throughout the year, whereas there was no difference in the severity of the symptoms between the two groups. Conclusions A positive association was observed between viral infection status and both the probability of experiencing any respiratory symptoms, and their severity during the year. For DAVIS data the random effects probit -log skew normal model fits significantly better than the random effects probit -log normal model, endorsing our parametric choice for the model. The simulation study indicates that our proposed model seems to be robust to misspecification of the distribution of the positive skewed response.
机译:背景零膨胀的连续结果的特征是出现了“过多”的零,这比单个分布可以解释的多,而积极观察则形成了偏斜的分布。混合模型用于零膨胀数据的回归分析。此外,对于重复测量的零膨胀数据,还应该对聚类结构进行建模以进行充分的分析。方法哮喘和病毒感染日记研究(DAVIS)是一项在McMaster大学进行的为期一年(2004年)的队列研究,旨在监测5-11岁有无哮喘的儿童的病毒感染和呼吸道症状。每天使用互联网或纸质日记记录呼吸道症状。研究人员评估了症状的变化,并收集了鼻液样本进行病毒学测试。研究目标包括调查在一年内有无哮喘的儿童中呼吸道症状对呼吸道病毒感染的反应。由于数据稀疏,每天的呼吸系统症状评分被汇总为每周平均评分。每周平均分数的70%以上为零,正分数形成偏态分布。我们提出了一个随机效应概率/对数偏态-正态混合模型来分析DAVIS数据。使用最大边际似然法估计模型参数。如果阳性反应的基本分布与对数偏态正态分布不同,则会进行仿真研究以评估所提出的混合模型的性能。结果病毒感染状态在概率模型和对数偏态正常模型组件中分别具有很高的意义。与病毒阴性的一周相比,病毒阳性的一周中无症状的可能性要低得多。在儿童出现病毒阳性的一周中,症状的严重程度也更高。相对于非哮喘患者,全年哮喘患者无症状的可能性较小,而两组之间症状的严重程度没有差异。结论在这一年中,病毒感染状况与出现任何呼吸道症状的可能性及其严重程度之间呈正相关。对于DAVIS数据,随机效应概率对数偏态法线模型比随机效应概率对数法线模型拟合得更好,这证明了我们对该模型的参数选择。仿真研究表明,我们提出的模型对于正偏响应分布的错误指定似乎很可靠。

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