首页> 外文期刊>Journal of Clinical Epidemiology >Absolute risk reductions, relative risks, relative risk reductions, and numbers needed to treat can be obtained from a logistic regression model.
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Absolute risk reductions, relative risks, relative risk reductions, and numbers needed to treat can be obtained from a logistic regression model.

机译:绝对风险降低,相对风险,相对风险降低和需要治疗的数量可以从逻辑回归模型中获得。

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OBJECTIVE: Logistic regression models are frequently used in cohort studies to determine the association between treatment and dichotomous outcomes in the presence of confounding variables. In a logistic regression model, the association between exposure and outcome is measured using the odds ratio (OR). The OR can be difficult to interpret and only approximates the relative risk (RR) in certain restrictive settings. Several authors have suggested that for dichotomous outcomes, RRs, RR reductions, absolute risk reductions, and the number needed to treat (NNT) are more clinically meaningful measures of treatment effect. STUDY DESIGN AND SETTING: We describe a method for deriving clinically meaningful measures of treatment effect from a logistic regression model. This method involves determining the probability of the outcome if each subject in the cohort was treated and if each subject was untreated. These probabilities are then averaged across the study cohort to determine the average probability of the outcome in the population if all subjects were treated and if they were untreated. RESULTS: Risk differences, RRs, and NNTs were derived using a logistic regression model. CONCLUSIONS: Clinically meaningful measures of effect can be derived from a logistic regression model in a cohort study. These methods can also be used in randomized controlled trials when logistic regression is used to adjust for possible imbalance in prognostically important baseline covariates.
机译:目的:在队列研究中经常使用逻辑回归模型来确定在存在混杂变量的情况下治疗与二分结果之间的关联。在逻辑回归模型中,使用比值比(OR)来衡量暴露和结果之间的关联。 OR可能难以解释,只能在某些限制性条件下近似相对风险(RR)。一些作者建议,对于二分结果,RR,RR降低,绝对风险降低和所需治疗数(NNT)是治疗效果更有意义的临床指标。研究设计和设置:我们描述了一种从逻辑回归模型中得出具有临床意义的治疗效果的方法。该方法涉及确定如果队列中的每个受试者都已接受治疗且每个受试者均未接受过治疗的结果概率。然后将这些概率在整个研究队列中平均,以确定所有受试者是否都接受治疗以及是否未接受治疗的结果在人群中的平均概率。结果:风险差异,RRs和NNTs使用逻辑回归模型得出。结论:可从队列研究中的逻辑回归模型中得出临床上有意义的疗效量度。当使用逻辑回归来调整预后重要基线协变量的可能不平衡时,这些方法也可以用于随机对照试验。

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