Vaccination is widely acknowledged as one of the most effective tools for preventing disease. However, there has been a rise in parental refusal and delay of childhood vaccination in recent years in the United States. This trend undermines the maintenance of herd immunity and elevates the likelihood of outbreaks of vaccine-preventable diseases. Our aim is to identify demographic or socioeconomic characteristics associated with vaccine refusal, which could help public health professionals and medical providers develop interventions targeted to concerned parents. We examine US county-level vaccine refusal data for patients under five years of age collected on a monthly basis during the period 2012--2015. These data exhibit challenging features: zero inflation, spatial dependence, seasonal variation, spatially-varying dispersion, and a large sample size (approximately 3,000 counties per month). We propose a flexible zero-inflated Conway--Maxwell--Poisson (ZICOMP) regression model that addresses these challenges. Because ZICOMP models have an intractable normalizing function, it is challenging to do Bayesian inference for these models. We propose a new hybrid Monte Carlo algorithm that permits efficient sampling and provides asymptotically exact estimates of model parameters.
翻译:接种疫苗被公认为是预防疾病最有效的工具之一,然而,近年来美国父母拒绝和推迟儿童接种儿童疫苗的情况有所上升,这一趋势破坏了维持牛群免疫能力,提高了疫苗可预防疾病爆发的可能性。我们的目标是确定与拒绝接种疫苗有关的人口或社会经济特征,这有助于公共卫生专业人员和医疗提供者制定针对有关父母的干预措施。我们检查了2012-2015年期间每月收集的美国县一级五岁以下儿童疫苗拒绝接种数据。这些数据具有挑战性的特点:零通货膨胀、空间依赖性、季节性变化、空间变化性分散和大量抽样(每月约3,000个县),我们提出了一个灵活零膨胀的康威-马克斯韦-普瓦松(ZICOMP)回归模型,以应对这些挑战。由于ZICOMP模型具有棘手的正常功能,因此很难对这些模型进行巴耶斯语推理。我们提出了一个新的混合蒙特卡洛算法,允许高效取样,并尽可能精确地估算模型参数。