贝叶斯方法建模与精神分裂症住院风险相关的行政记录中诊断不足的疾病。

Eileen M Stock, James D Stamey, John E Zeber, Alexander W Thompson, Laurel A Copeland
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引用次数: 1

摘要

精神分裂症是一种使人衰弱的严重精神疾病,其特征是一系列复杂的症状,其严重程度和持续时间各不相同。患者可能只是间歇性地寻求治疗,这给诊断这种疾病带来了挑战。误诊可能有潜在的偏倚和降低研究的有效性。因此,我们开发了一个统计模型来评估诊断为精神分裂症的患者住院1年的风险,考虑到精神分裂症在行政数据库中的低报情况。一项回顾性研究设计确定了2010年在位于美国西南部的健康维护组织研究网络的综合医疗保健系统内寻求护理的患者。贝叶斯分析解决了精神分裂症漏诊的问题,统计测量误差模型假设不同的漏诊率。然后将结果与经典的多变量逻辑回归进行比较。假设没有漏报,住院与精神分裂症相关的相对几率增加87%,OR = 1.87, CI[1.08, 3.23]。考虑到诊断不足,贝叶斯方法降低了代表住院和精神分裂症之间关联的效应大小和区间估计值,这表明在精神分裂症研究中,病情较轻的患者可能代表性不足。这种分析方法在其他情况下也有有用的应用,在这些情况下,对特定疾病的患者的识别可能在行政记录中被低估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian Approach to Modeling Risk of Hospital Admissions Associated With Schizophrenia Accounting for Underdiagnosis of the Disorder in Administrative Records.

Schizophrenia is a debilitating serious mental illness characterized by a complex array of symptoms with varying severity and duration. Patients may seek treatment only intermittently, contributing to challenges diagnosing the disorder. A misdiagnosis may potentially bias and reduce study validity. Thus we developed a statistical model to assess the risk of 1-year hospitalization for patients diagnosed with schizophrenia, accounting for when schizophrenia is underreported in administrative databases. A retrospective study design identified patients seeking care during 2010 within an integrated health care system from the Health Maintenance Organization Research Network located in the southwestern United States. Bayesian analysis addressed the problem of underdiagnosed schizophrenia with a statistical measurement error model assuming varying rates of underreporting. Results were then compared to classical multivariable logistic regression. Assuming no underreporting, there was an 87% greater relative odds of hospitalization associated with schizophrenia, OR = 1.87, CI [1.08, 3.23]. Effect sizes and interval estimates representing the association between hospitalization and schizophrenia were reduced with the Bayesian approach accounting for underdiagnosis, suggesting that less severe patients may be underrepresented in studies of schizophrenia. The analytical approach has useful applications in other contexts where the identification of patients with a given condition may be underreported in administrative records.

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CiteScore
4.30
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