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Comparative study of ROC regression techniques-Applications for the computer-aided diagnostic system in breast cancer detection

机译:ROC回归技术的比较研究-计算机辅助诊断系统在乳腺癌检测中的应用

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The receiver operating characteristic (ROC) curve is the most widely used measure for statistically evaluating the discriminatory capacity of continuous biomarkers. It is well known that, in certain circumstances, the markers' discriminatory capacity can be affected by factors, and several ROC regression methodologies have been proposed to incorporate covariates in the ROC framework. An in-depth simulation study of different ROC regression models and their application in the emerging field of automatic detection of tumour masses is presented. In the simulation study different scenarios were considered and the models were compared to each other on the basis of the mean squared error criterion. The application of the reviewed ROC regression techniques in evaluating computer-aided diagnostic (CAD) schemes can become a major factor in the development of such systems in Radiology.
机译:接收器工作特性(ROC)曲线是用于统计评估连续生物标记物鉴别能力的最广泛使用的度量。众所周知,在某些情况下,标记的区分能力会受到因素的影响,并且已经提出了几种ROC回归方法以将协变量纳入ROC框架中。提出了对不同ROC回归模型的深入仿真研究及其在新兴的肿块自动检测领域中的应用。在模拟研究中,考虑了不同的情况,并基于均方误差标准对模型进行了比较。评论的ROC回归技术在评估计算机辅助诊断(CAD)方案中的应用可能成为放射学中此类系统开发的主要因素。

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