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The importance of distribution-choice in modeling substance use data: a comparison of negative binomial, beta binomial, and zero-inflated distributions

机译:选择物质对物质使用数据进行建模的重要性:负二项式,β二项式和零膨胀分布的比较

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Background: It is important to correctly understand the associations among addiction to multiple drugs and between co-occurring substance use and psychiatric disorders. Substance-specific outcomes (e.g. number of days used cannabis) have distributional characteristics which range widely depending on the substance and the sample being evaluated. Objectives: We recommend a four-part strategy for determining the appropriate distribution for modeling substance use data. We demonstrate this strategy by comparing the model fit and resulting inferences from applying four different distributions to model use of substances that range greatly in the prevalence and frequency of their use. Methods: Using Timeline Followback (TLFB) data from a previously-published study, we used negative binomial, beta-binomial and their zero-inflated counterparts to model proportion of days during treatment of cannabis, cigarettes, alcohol, and opioid use. The fit for each distribution was evaluated with statistical model selection criteria, visual plots and a comparison of the resulting inferences. Results: We demonstrate the feasibility and utility of modeling each substance individually and show that no single distribution provides the best fit for all substances. Inferences regarding use of each substance and associations with important clinical variables were not consistent across models and differed by substance. Conclusion: Thus, the distribution chosen for modeling substance use must be carefully selected and evaluated because it may impact the resulting conclusions. Furthermore, the common procedure of aggregating use across different substances may not be ideal.
机译:背景:重要的是要正确理解多种药物成瘾之间的关联以及共同使用药物与精神疾病之间的关联。特定于物质的结果(例如使用大麻的天数)具有分布特征,其分布范围取决于所评估的物质和样品。目标:我们建议采用四部分策略来确定用于对物质使用数据进行建模的适当分布。我们通过比较模型的拟合度和通过应用四种不同的分布来对物质的使用进行建模而得出的推论来证明该策略,该物质的使用范围和使用频率存在很大差异。方法:使用先前发表的研究中的时间轴追踪(TLFB)数据,我们使用负二项式,β-二项式及其零膨胀对应物来模拟大麻,香烟,酒精和阿片类药物使用期间的天数比例。使用统计模型选择标准,视觉图和所得推论的比较来评估每种分布的拟合度。结果:我们证明了对每种物质进行单独建模的可行性和实用性,并且表明没有单一的分布可以为所有物质提供最佳的拟合。关于每种物质的使用以及与重要临床变量的关联的推论在各个模型之间并不一致,并且因物质而异。结论:因此,必须仔细选择和评估用于模拟物质使用的分布,因为这可能会影响得出的结论。此外,汇总跨不同物质使用的通用程序可能并不理想。

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