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Zero adjusted models with applications to analysing helminths count data

机译:零调整模型具有应用于分析Helminths计数数据的应用

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Background It is common in public health and epidemiology that the outcome of interest is counts of events occurrence. Analysing these data using classical linear models is mostly inappropriate, even after transformation of outcome variables due to overdispersion. Zero-adjusted mixture count models such as zero-inflated and hurdle count models are applied to count data when over-dispersion and excess zeros exist. Main objective of the current paper is to apply such models to analyse risk factors associated with human helminths ( S. haematobium ) particularly in a case where there’s a high proportion of zero counts. Methods The data were collected during a community-based randomised control trial assessing the impact of mass drug administration (MDA) with praziquantel in Malawi, and a school-based cross sectional epidemiology survey in Zambia. Count data models including traditional (Poisson and negative binomial) models, zero modified models (zero inflated Poisson and zero inflated negative binomial) and hurdle models (Poisson logit hurdle and negative binomial logit hurdle) were fitted and compared. Results Using Akaike information criteria (AIC), the negative binomial logit hurdle (NBLH) and zero inflated negative binomial (ZINB) showed best performance in both datasets. With regards to zero count capturing, these models performed better than other models. Conclusion This paper showed that zero modified NBLH and ZINB models are more appropriate methods for the analysis of data with excess zeros. The choice between the hurdle and zero-inflated models should be based on the aim and endpoints of the study.
机译:背景技术在公共卫生和流行病学中是常见的,即利息的结果是事件发生的数额。使用经典线性模型分析这些数据大多是不合适的,即使在因过度分解导致的结果变量之后也是如此。零调整的混合物计数模型,如零充气和障碍计数模型应用于超色散和过量的零时计数数据。本文的主要目的是应用这些模型,以分析与人蠕虫(S.Aematobium)相关的风险因素,特别是在零计数比例的高比例的情况下。方法对基于社区的随机对照试验期间收集数据,评估大规模药物施用(MDA)与马拉维的普拉齐亚地区的影响,以及赞比亚的学校横断面流行病学调查。计算包括传统(泊松和负二项式)型号的数据模型,零改装型号(零充气泊松和零膨胀的负笔)和障碍模型(Poisson Logit Rundle和负二项Logit障碍)进行了比较。使用Akaike信息标准(AIC)的结果,负二项式Logit障碍(NBLH)和零充气负二进制(ZinB)在两个数据集中显示出最佳性能。关于零计数捕获,这些模型比其他模型更好。结论本文显示,零修改的NBLH和Zinb模型是更合适的方法,用于分析具有过量零的数据。障碍物和零充气模型之间的选择应基于该研究的目的和终点。

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