Causal inference methods can be applied to estimate the effect of a point exposure or treatment on an outcome of interest using data from observational studies. When the outcome of interest is a count, the estimand is often the causal mean ratio, i.e., the ratio of the counterfactual mean count under exposure to the counterfactual mean count under no exposure. This paper considers estimators of the causal mean ratio based on inverse probability of treatment weights, the parametric g-formula, and doubly robust estimation, each of which can account for overdispersion, zero-inflation, and heaping in the measured outcome. Methods are compared in simulations and are applied to data from the Women's Interagency HIV Study to estimate the effect of incarceration in the past six months on two count outcomes in the subsequent six months: the number of sexual partners and the number of cigarettes smoked per day.
翻译:利用观察研究的数据,可以采用因果关系推断法估计点接触或治疗对利益结果的影响。当利息结果被计算出来时,估计值通常是因果平均比率,即:在不暴露的情况下,在接触反事实平均数值与反事实平均数值的比例。本文根据治疗重量的反概率、参数g-形态和加倍稳健的估计值来考虑因果关系平均比率的估计值,其中每种估计值都可说明过度分散、零通货膨胀和在测量结果中加热。在模拟中比较了方法,并应用于妇女机构间艾滋病毒研究的数据,以估计过去六个月监禁的影响,根据随后六个月的两次计算结果:性伴侣的人数和每天吸烟的烟数。