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使用有序数据的惩罚多阶段模型推断共识问题列表。

Inferring a consensus problem list using penalized multistage models for ordered data.

作者信息

Boonstra Philip S, Krauss John C

机构信息

Department of Biostatistics, University of Michigan, USA.

Division of Hematology Oncology, University of Michigan, USA.

出版信息

Ann Appl Stat. 2020 Sep;14(3):1557-1580. doi: 10.1214/20-aoas1361. Epub 2020 Sep 18.

Abstract

A patient's medical problem list describes his or her current health status and aids in the coordination and transfer of care between providers. Because a problem list is generated once and then subsequently modified or updated, what is not usually observable is the provider-effect. That is, to what extent does a patient's problem in the electronic medical record actually reflect a consensus communication of that patient's current health status? To that end, we report on and analyze a unique interview-based design in which multiple medical providers independently generate problem lists for each of three patient case abstracts of varying clinical difficulty. Due to the uniqueness of both our data and the scientific objectives of our analysis, we apply and extend so-called multistage models for ordered lists and equip the models with variable selection penalties to induce sparsity. Each problem has a corresponding non-negative parameter estimate, interpreted as a relative log-odds ratio, with larger values suggesting greater importance and zero values suggesting unimportant problems. We use these fitted penalized models to quantify and report the extent of consensus. We conduct a simulation study to evaluate the performance of our methodology and then analyze the motivating problem list data. For the three case abstracts, the proportions of problems with model-estimated non-zero log-odds ratios were 10/28, 16/47, and 13/30. Physicians exhibited consensus on the highest ranked problems in the first and last case abstracts but agreement quickly deteriorated; in contrast, physicians broadly disagreed on the relevant problems for the middle - and most difficult - case abstract.

摘要

患者的医疗问题清单描述了其当前的健康状况,并有助于医护人员之间协调和交接护理工作。由于问题清单一旦生成便会随后进行修改或更新,所以通常无法观察到医护人员的影响。也就是说,电子病历中患者的问题在多大程度上实际反映了对该患者当前健康状况的一致沟通?为此,我们报告并分析了一种独特的基于访谈的设计,其中多名医疗服务提供者针对三个临床难度各异的患者病例摘要分别独立生成问题清单。由于我们数据的独特性以及分析的科学目标,我们应用并扩展了所谓的有序列表多阶段模型,并为模型配备变量选择惩罚以引入稀疏性。每个问题都有一个相应的非负参数估计值,解释为相对对数优势比,值越大表明问题越重要,值为零表明问题不重要。我们使用这些拟合的惩罚模型来量化和报告一致程度。我们进行了一项模拟研究以评估我们方法的性能,然后分析了引发研究的问题清单数据。对于这三个病例摘要,模型估计的非零对数优势比的问题比例分别为10/28、16/47和13/30。医生们在第一个和最后一个病例摘要中对排名最高的问题达成了共识,但这种一致性很快就变差了;相比之下,医生们对中间的、也是最难的病例摘要中的相关问题存在广泛分歧。

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