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A Bayesian Hierarchical Non-Linear Regression Model in Receiver Operating Characteristic Analysis of Clustered Continuous Diagnostic Data

机译:聚类连续诊断数据的接收器运行特性分析中的贝叶斯分层非线性回归模型

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摘要

Receiver operating characteristic (ROC) analysis is a useful evaluative method of diagnostic accuracy. A Bayesian hierarchical nonlinear regression model for ROC analysis was developed. A validation analysis of diagnostic accuracy was conducted using prospective multi-center clinical trial prostate cancer biopsy data collected from three participating centers. The gold standard was based on radical prostatectomy to determine local and advanced disease. To evaluate the diagnostic performance of PSA level at fixed levels of Gleason score, a normality transformation was applied to the outcome data. A hierarchical regression analysis incorporating the effects of cluster (clinical center) and cancer risk (low, intermediate, and high) was performed, and the area under the ROC curve (AUC) was estimated.
机译:接收器工作特性(ROC)分析是诊断准确性的有用评估方法。建立了用于ROC分析的贝叶斯分层非线性回归模型。使用从三个参与中心收集的前瞻性多中心临床试验前列腺癌活检数据对诊断准确性进行了验证分析。金标准是根据前列腺癌根治术来确定局部和晚期疾病。为了评估固定的Gleason评分水平下PSA水平的诊断性能,将正态转换应用于结局数据。进行了包含聚类(临床中心)和癌症风险(低,中,高)影响的分层回归分析,并估算了ROC曲线下的面积(AUC)。

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