论文标题
医疗决策问题的相对稀疏性
Relative Sparsity for Medical Decision Problems
论文作者
论文摘要
现有的统计方法可以估算一项政策,或从协变量到决策的映射,然后可以指导决策者(例如,是否基于协变量进行血压和心率进行低血压治疗)。在医疗保健中使用此类数据驱动政策非常感兴趣。但是,向医疗保健提供者和患者解释新政策与当前护理标准的不同通常很重要。如果可以查明从护理标准到新的,建议的政策时,则可以促进此目的。为此,我们适应了信任区域政策优化(TRPO)的想法。但是,在我们的工作中,与TRPO不同,建议的政策和护理标准之间的差异必须稀疏,可以帮助解释性。 This yields ``relative sparsity," where, as a function of a tuning parameter, $λ$, we can approximately control the number of parameters in our suggested policy that differ from their counterparts in the standard of care (e.g., heart rate only). We propose a criterion for selecting $λ$, perform simulations, and illustrate our method with a real, observational healthcare dataset, deriving a policy that is easy to explain in the当前的护理标准的背景。
Existing statistical methods can estimate a policy, or a mapping from covariates to decisions, which can then instruct decision makers (e.g., whether to administer hypotension treatment based on covariates blood pressure and heart rate). There is great interest in using such data-driven policies in healthcare. However, it is often important to explain to the healthcare provider, and to the patient, how a new policy differs from the current standard of care. This end is facilitated if one can pinpoint the aspects of the policy (i.e., the parameters for blood pressure and heart rate) that change when moving from the standard of care to the new, suggested policy. To this end, we adapt ideas from Trust Region Policy Optimization (TRPO). In our work, however, unlike in TRPO, the difference between the suggested policy and standard of care is required to be sparse, aiding with interpretability. This yields ``relative sparsity," where, as a function of a tuning parameter, $λ$, we can approximately control the number of parameters in our suggested policy that differ from their counterparts in the standard of care (e.g., heart rate only). We propose a criterion for selecting $λ$, perform simulations, and illustrate our method with a real, observational healthcare dataset, deriving a policy that is easy to explain in the context of the current standard of care. Our work promotes the adoption of data-driven decision aids, which have great potential to improve health outcomes.