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ROC CURVE AND AUC FOR A LEFT-TRUNCATED SAMPLE FROM RAYLEIGH DISTRIBUTION

机译:瑞利分布的左截断样本的ROC曲线和AUC

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摘要

Evaluation of biomarker performance in screening and diagnosis of a particular disease are topics of major interest in clinical diagnosis. The performance of diagnosis can be evaluated through the receiver operating characteristics (ROC) curve. In some situations, the variable/biomarker value for some of the subjects cannot be measured because of technical problems and we need to truncate the sample at some specific point. Discarding such observations will result in loss of valuable information. When the number of missing values in a sample is large, it will lead to biased estimates. Applying the traditional complete sample ROC procedures to the incomplete data to evaluate the accuracy may under-or overestimate the accuracy of classification. This article concerns modeling a parametric ROC curve for the left-truncated sample from Rayleigh distribution. The ROC model, area under the ROC curve (AUC) asymptotic variance and confidence interval for an estimated AUC have been discussed and analyzed through simulation studies as well as a real-life example.
机译:在特定疾病的筛查和诊断中生物标志物性能的评估是临床诊断中的主要关注主题。可以通过接收器工作特性(ROC)曲线评估诊断的性能。在某些情况下,由于技术问题,无法测量某些受试者的变量/生物标志物值,因此我们需要在某个特定点截断样品。丢弃这些观察结果将导致有价值的信息丢失。当样本中缺失值的数量很大时,将导致估计偏差。将传统的完整样本ROC程序应用于不完整数据以评估准确性可能会低估或高估分类的准确性。本文涉及为瑞利分布中的左截断样本建模参数ROC曲线。通过仿真研究和一个实际示例,讨论并分析了ROC模型,ROC曲线下的面积(AUC)渐近方差和估计的AUC的置信区间。

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