A Review of the Logistic Regression Model with Emphasis on Medical Research

E. Boateng, D. Abaye
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引用次数: 109

Abstract

This study explored and reviewed the logistic regression (LR) model, a multivariable method for modeling the relationship between multiple independent variables and a categorical dependent variable, with emphasis on medical research. Thirty seven research articles published between 2000 and 2018 which employed logistic regression as the main statistical tool as well as six text books on logistic regression were reviewed. Logistic regression concepts such as odds, odds ratio, logit transformation, logistic curve, assumption, selecting dependent and independent variables, model fitting, reporting and interpreting were presented. Upon perusing the literature, considerable deficiencies were found in both the use and reporting of LR. For many studies, the ratio of the number of outcome events to predictor variables (events per variable) was sufficiently small to call into question the accuracy of the regression model. Also, most studies did not report on validation analysis, regression diagnostics or goodness-of-fit measures; measures which authenticate the robustness of the LR model. Here, we demonstrate a good example of the application of the LR model using data obtained on a cohort of pregnant women and the factors that influence their decision to opt for caesarean delivery or vaginal birth. It is recommended that researchers should be more rigorous and pay greater attention to guidelines concerning the use and reporting of LR models.
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以医学研究为重点的Logistic回归模型综述
本文以医学研究为重点,对logistic回归(LR)模型进行了探索和综述,该模型是一种多变量方法,用于建模多个自变量与分类因变量之间的关系。回顾了2000年至2018年间发表的37篇以逻辑回归为主要统计工具的研究论文以及6本关于逻辑回归的教科书。介绍了逻辑回归的概念,如比值、比值比、逻辑变换、逻辑曲线、假设、选择因变量和自变量、模型拟合、报告和解释。在仔细阅读文献后,发现在LR的使用和报告中都存在相当大的缺陷。在许多研究中,结果事件数与预测变量(每个变量的事件数)之比小到足以质疑回归模型的准确性。此外,大多数研究没有报告验证分析、回归诊断或拟合优度措施;验证LR模型鲁棒性的度量。在这里,我们展示了LR模型应用的一个很好的例子,使用了一组孕妇的数据,以及影响她们选择剖腹产或顺产的因素。建议研究人员应更加严格,更加关注有关LR模型使用和报告的指南。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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