论文标题
将复杂的选择规则集成到潜在重叠的组套索中,以构建相干预测模型
Integrating complex selection rules into the latent overlapping group Lasso for constructing coherent prediction models
论文作者
论文摘要
连贯的预测模型的构建在医学研究中非常重要,因为这样的模型使健康研究人员能够更深入地了解疾病流行病学和临床医生,以确定患有较高不良结果风险的患者。开发预测模型的一种常用方法是通过惩罚回归技术的变量选择。将天然可变结构整合到此过程中不仅可以增强模型的解释性,还可以%增加恢复真正的基础模型并提高预测准确性的可能性。但是,挑战在于确定如何有效地将潜在的复杂选择依赖性纳入惩罚回归中。在这项工作中,我们演示了如何以数学方式表示选择依赖关系,提供用于推导全部潜在模型集的算法,并提供一种结构化方法,通过潜在重叠的组套件将复杂规则整合到可变选择中。为了说明我们的方法论,我们应用了这些技术来构建一个相干的预测模型,以用于最近因房颤住院的高血压患者的主要出血,随后处方口服抗凝剂。在此应用中,我们考虑了抗凝剂的依从性及其与剂量的相互作用及其与药物相互作用之外的口服抗凝剂的相互作用。
The construction of coherent prediction models holds great importance in medical research as such models enable health researchers to gain deeper insights into disease epidemiology and clinicians to identify patients at higher risk of adverse outcomes. One commonly employed approach to developing prediction models is variable selection through penalized regression techniques. Integrating natural variable structures into this process not only enhances model interpretability but can also %increase the likelihood of recovering the true underlying model and boost prediction accuracy. However, a challenge lies in determining how to effectively integrate potentially complex selection dependencies into the penalized regression. In this work, we demonstrate how to represent selection dependencies mathematically, provide algorithms for deriving the complete set of potential models, and offer a structured approach for integrating complex rules into variable selection through the latent overlapping group Lasso. To illustrate our methodology, we applied these techniques to construct a coherent prediction model for major bleeding in hypertensive patients recently hospitalized for atrial fibrillation and subsequently prescribed oral anticoagulants. In this application, we account for a proxy of anticoagulant adherence and its interaction with dosage and the type of oral anticoagulants in addition to drug-drug interactions.