Teng Haoyang, Zhang Zhengjun
Department of Mathematics and Statistics, Arkansas State University, P.O. Box 70, Jonesboro, AR 72467, USA.
Department of Statistics, University of Wisconsin-Madison, 1300 University Ave, Madison, WI 53706, USA.
Entropy (Basel). 2021 Nov 15;23(11):1517. doi: 10.3390/e23111517.
Logistic regression is widely used in the analysis of medical data with binary outcomes to study treatment effects through (absolute) treatment effect parameters in the models. However, the indicative parameters of relative treatment effects are not introduced in logistic regression models, which can be a severe problem in efficiently modeling treatment effects and lead to the wrong conclusions with regard to treatment effects. This paper introduces a new enhanced logistic regression model that offers a new way of studying treatment effects by measuring the relative changes in the treatment effects and also incorporates the way in which logistic regression models the treatment effects. The new model, called the Absolute and Relative Treatment Effects (AbRelaTEs) model, is viewed as a generalization of logistic regression and an enhanced model with increased flexibility, interpretability, and applicability in real data applications than the logistic regression. The AbRelaTEs model is capable of modeling significant treatment effects via an absolute or relative or both ways. The new model can be easily implemented using statistical software, with the logistic regression model being treated as a special case. As a result, the classical logistic regression models can be replaced by the AbRelaTEs model to gain greater applicability and have a new benchmark model for more efficiently studying treatment effects in clinical trials, economic developments, and many applied areas. Moreover, the estimators of the coefficients are consistent and asymptotically normal under regularity conditions. In both simulation and real data applications, the model provides both significant and more meaningful results.
逻辑回归在具有二元结局的医学数据分析中被广泛应用,通过模型中的(绝对)治疗效果参数来研究治疗效果。然而,逻辑回归模型中并未引入相对治疗效果的指示性参数,这在有效建模治疗效果时可能是个严重问题,并可能导致关于治疗效果的错误结论。本文引入了一种新的增强逻辑回归模型,该模型通过测量治疗效果的相对变化提供了一种研究治疗效果的新方法,并且还纳入了逻辑回归对治疗效果进行建模的方式。这个新模型,称为绝对和相对治疗效果(AbRelaTEs)模型,被视为逻辑回归的推广,并且在实际数据应用中比逻辑回归具有更高的灵活性、可解释性和适用性的增强模型。AbRelaTEs模型能够通过绝对或相对或两者结合的方式对显著的治疗效果进行建模。该新模型可以使用统计软件轻松实现,逻辑回归模型被视为一种特殊情况。因此,经典逻辑回归模型可以被AbRelaTEs模型取代,以获得更大的适用性,并拥有一个新的基准模型,以便在临床试验、经济发展和许多应用领域更有效地研究治疗效果。此外,在正则条件下,系数估计量是一致的且渐近正态。在模拟和实际数据应用中,该模型都提供了显著且更有意义的结果。