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Bias correction for the proportional odds logistic regression model with application to a study of surgical complications

机译:比例赔率逻辑回归模型的偏差校正及其在外科手术并发症研究中的应用

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摘要

The proportional odds logistic regression model is widely used for relating an ordinal outcome to a set of covariates. When the number of outcome categories is relatively large, the sample size is relatively small and/or certain outcome categories are rare, maximum likelihood can yield biased estimates of the regression parameters. Firth and Kosmidis proposed a procedure to remove the leading term in the asymptotic bias of the maximum likelihood estimator. Their approach is most easily implemented for univariate outcomes. We derive a bias correction that exploits the proportionality between Poisson and multinomial likelihoods for multinomial regression models. Specifically, we describe a bias correction for the proportional odds logistic regression model, based on the likelihood from a collection of independent Poisson random variables whose means are constrained to sum to 1, that is straightforward to implement. The method proposed is motivated by a study of predictors of post-operative complications in patients undergoing colon or rectal surgery.
机译:比例赔率逻辑回归模型被广泛用于将序数结果与一组协变量相关联。当结果类别的数量相对较大,样本量相对较小和/或某些结果类别很少时,最大似然会产生回归参数的偏差估计。 Firth和Kosmidis提出了一种消除最大似然估计的渐近偏差中的前导项的过程。对于单变量结果,他们的方法最容易实现。我们得出偏差校正,该校正利用了多项式回归模型的泊松和多项式似然之间的比例。具体来说,我们基于来自独立泊松随机变量集合的可能性来描述比例赔率逻辑回归模型的偏差校正,该变量的均值被限制为1,这很容易实现。所提出的方法是由对结肠或直肠手术患者术后并发症的预测因素进行研究而激发的。

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