School of Mathematical and Statistical Sciences, Clemson University, Clemson, South Carolina, USA.
Department of Statistics, Virginia Tech, Blacksburg, Virginia, USA.
Stat Med. 2024 Jul 20;43(16):3073-3091. doi: 10.1002/sim.10113. Epub 2024 May 27.
We propose a Bayesian model selection approach that allows medical practitioners to select among predictor variables while taking their respective costs into account. Medical procedures almost always incur costs in time and/or money. These costs might exceed their usefulness for modeling the outcome of interest. We develop Bayesian model selection that uses flexible model priors to penalize costly predictors a priori and select a subset of predictors useful relative to their costs. Our approach (i) gives the practitioner control over the magnitude of cost penalization, (ii) enables the prior to scale well with sample size, and (iii) enables the creation of our proposed inclusion path visualization, which can be used to make decisions about individual candidate predictors using both probabilistic and visual tools. We demonstrate the effectiveness of our inclusion path approach and the importance of being able to adjust the magnitude of the prior's cost penalization through a dataset pertaining to heart disease diagnosis in patients at the Cleveland Clinic Foundation, where several candidate predictors with various costs were recorded for patients, and through simulated data.
我们提出了一种贝叶斯模型选择方法,使医疗从业者能够在考虑各自成本的情况下选择预测变量。医疗程序几乎总是要花费时间和/或金钱。这些成本可能超过了它们对建模相关结果的有用性。我们开发了贝叶斯模型选择,该方法使用灵活的模型先验来预先惩罚昂贵的预测因子,并选择相对于其成本有用的预测因子子集。我们的方法 (i) 使从业者能够控制成本惩罚的幅度,(ii) 使先验能够很好地适应样本大小,以及 (iii) 使我们提出的纳入路径可视化得以创建,这可以用于使用概率和可视化工具对单个候选预测因子做出决策。我们通过克利夫兰诊所基金会心脏病诊断患者数据集以及模拟数据,展示了我们的纳入路径方法的有效性以及能够调整先验成本惩罚幅度的重要性,其中记录了几位具有不同成本的候选预测因子。