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A bivariate binomial ROC methodology for comparing new methods to an existing standard for screening applications

机译:双变量二项式ROC方法,用于将新方法与现有标准进行比较以进行筛选

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摘要

Validating the use of new imaging technologies for screening large patient populations is an important and very challenging area of diagnostic imaging research. A particular concern in ROC studies evaluating screening technologies is the problem of verification bias, in which an independent verification of disease status is only available for a subpopulation of patients, typically those with positive results by a current screening standard. For example, in screening mammography, a study might evaluate a new approach using a sample of patients that have undergone needle biopsy following a standard mammogram and subsequent work-up. This case sampling approach provides accurate independent verification of ground truth and increases the prevalence of disease cases. However, the selection criteria will likely bias results of the study. In this work we present an initial exploration of an approach to correcting this bias within the parametric framework of binormal assumptions. We posit conditionally bivariate normal distributions on the latent decision variable for both the new methodology as well as the screening standard. In this case, verification bias can be seen as the effect of missing data from an operating point in the screening standard. We examine the magnitude of this bias in the setting of breast cancer screening with mammography, and we derive a maximum likelihood approach to estimating bias corrected ROC curves in this model.
机译:验证使用新的成像技术来筛查大量患者是诊断成像研究的重要且非常具有挑战性的领域。 ROC评估筛查技术的研究中特别关注的是验证偏倚的问题,其中疾病状态的独立验证仅适用于亚人群的患者,通常是那些根据当前筛查标准获得阳性结果的患者。例如,在乳腺钼靶筛查中,一项研究可能会使用经过标准乳腺钼靶检查和随后的检查后接受穿刺活检的患者样本来评估新方法。这种病例抽样方法可提供对地面真相的准确独立验证,并增加疾病病例的流行率。但是,选择标准可能会使研究结果产生偏差。在这项工作中,我们提出了在双态假设的参数框架内纠正这种偏差的方法的初步探索。对于新方法和筛选标准,我们在潜在决策变量上有条件地确定了二元正态分布。在这种情况下,验证偏差可以看作是筛选标准中某个操作点缺少数据的影响。我们通过乳腺X线摄影检查在乳腺癌筛查中的偏倚程度,并推导了一种最大似然方法来估计该模型中偏倚校正的ROC曲线。

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