首页> 外文期刊>Statistics in medicine >Using latent variable modeling and multiple imputation to calibrate rater bias in diagnosis assessment.
【24h】

Using latent variable modeling and multiple imputation to calibrate rater bias in diagnosis assessment.

机译:利用潜在变量建模和多重归责校准评估中的校准患者偏差。

获取原文
获取原文并翻译 | 示例
           

摘要

We present an approach that uses latent variable modeling and multiple imputation to correct rater bias when one group of raters tends to be more lenient in assigning a diagnosis than another. Our method assumes that there exists an unobserved moderate category of patient who is assigned a positive diagnosis by one type of rater and a negative diagnosis by the other type. We present a Bayesian random effects censored ordinal probit model that allows us to calibrate the diagnoses across rater types by identifying and multiply imputing 'case' or 'non-case' status for patients in the moderate category. A Markov chain Monte Carlo algorithm is presented to estimate the posterior distribution of the model parameters and generate multiple imputations. Our method enables the calibrated diagnosis variable to be used in subsequent analyses while also preserving uncertainty in true diagnosis. We apply our model to diagnoses of posttraumatic stress disorder (PTSD) from a depression study where nurse practitioners were twice as likely as clinical psychologists to diagnose PTSD despite the fact that participants were randomly assigned to either a nurse or a psychologist. Our model appears to balance PTSD rates across raters, provides a good fit to the data, and preserves between-rater variability. After calibrating the diagnoses of PTSD across rater types, we perform an analysis looking at the effects of comorbid PTSD on changes in depression scores over time. Results are compared with an analysis that uses the original diagnoses and show that calibrating the PTSD diagnoses can yield different inferences.
机译:当一组评估者往往比另一组比另一组倾向于更宽度时,我们提出了一种使用潜在变量建模和多重归属来纠正患者偏差的方法。我们的方法假设存在不观察室的中等类别的患者,他们通过一种类型的评估者和其他类型分配了阳性诊断。我们展示了拜耳随机效应被审查的序序概率模型,使我们能够通过识别和乘以中等类别中患者的“案例”或“非案例”状态来校准患者类型的诊断。提出了Markov链蒙特卡罗算法以估计模型参数的后部分布并产生多个避免。我们的方法使校准的诊断变量能够在随后的分析中使用,同时在真实诊断中保持不确定性。我们应用我们的模型来诊断从抑郁研究的抑郁症研究(PTSD)诊断护士从业者的可能性是临床心理学家的可能性,尽管参与者被随机分配给护士或心理学家。我们的模型似乎平衡了评级者的PTSD率,提供了良好的数据,并保持额定变异性。校准患有患者类型的PTSD诊断后,我们进行了分析,观察了COMORBID PTSD随着时间的推移抑郁症变化的影响。结果与使用原始诊断的分析进行了比较,并表明校准PTSD诊断可以产生不同的推论。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号