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混杂因素强度如何影响电子健康记录中的资源分配

How Confounder Strength Can Affect Allocation of Resources in Electronic Health Records.

作者信息

Lynch Kristine E, Whitcomb Brian W, DuVall Scott L

机构信息

VA Salt Lake City Health Care System in Salt Lake City, UT.

University of Massachusetts Amherst in Amherst, MA.

出版信息

Perspect Health Inf Manag. 2018 Jan 1;15(Winter):1d. eCollection 2018 Winter.

PMID:29618960
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5869441/
Abstract

When electronic health record (EHR) data are used, multiple approaches may be available for measuring the same variable, introducing potentially confounding factors. While additional information may be gleaned and residual confounding reduced through resource-intensive assessment methods such as natural language processing (NLP), whether the added benefits offset the added cost of the additional resources is not straightforward. We evaluated the implications of misclassification of a confounder when using EHRs. Using a combination of simulations and real data surrounding hospital readmission, we considered smoking as a potential confounder. We compared ICD-9 diagnostic code assignment, which is an easily available measure but has the possibility of substantial misclassification of smoking status, with NLP, a method of determining smoking status that more expensive and time-consuming than ICD-9 code assignment but has less potential for misclassification. Classification of smoking status with NLP consistently produced less residual confounding than the use of ICD-9 codes; however, when minimal confounding was present, differences between the approaches were small. When considerable confounding is present, investing in a superior measurement tool becomes advantageous.

摘要

当使用电子健康记录(EHR)数据时,测量同一变量可能有多种方法,这会引入潜在的混杂因素。虽然可以通过诸如自然语言处理(NLP)等资源密集型评估方法收集更多信息并减少残余混杂,但额外的益处是否能抵消额外资源的成本并不明确。我们评估了使用电子健康记录时混杂因素误分类的影响。结合围绕医院再入院的模拟和真实数据,我们将吸烟视为潜在的混杂因素。我们比较了ICD - 9诊断代码赋值(这是一种易于获取的测量方法,但吸烟状态可能存在大量误分类)与NLP(一种确定吸烟状态的方法,比ICD - 9代码赋值更昂贵且耗时,但误分类可能性较小)。与使用ICD - 9代码相比,用NLP对吸烟状态进行分类始终产生较少的残余混杂;然而,当存在最小程度的混杂时,两种方法之间的差异很小。当存在相当程度的混杂时,投资于一种更优的测量工具会更有利。