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A scaling transformation for classifier output based on likelihood ratio: Applications to a CAD workstation for diagnosis of breast cancer

机译:基于似然比的分类器输出的缩放转换:在诊断乳腺癌的CAD工作站中的应用

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Purpose: The authors developed scaling methods that monotonically transform the output of one classifier to the scale of another. Such transformations affect the distribution of classifier output while leaving the ROC curve unchanged. In particular, they investigated transformations between radiologists and computer classifiers, with the goal of addressing the problem of comparing and interpreting case-specific values of output from two classifiers. Methods: Using both simulated and radiologists' rating data of breast imaging cases, the authors investigated a likelihood-ratio-scaling transformation, based on matching classifier likelihood ratios. For comparison, three other scaling transformations were investigated that were based on matching classifier true positive fraction, false positive fraction, or cumulative distribution function, respectively. The authors explored modifying the computer output to reflect the scale of the radiologist, as well as modifying the radiologist's ratings to reflect the scale of the computer. They also evaluated how dataset size affects the transformations. Results: When ROC curves of two classifiers differed substantially, the four transformations were found to be quite different. The likelihood-ratio scaling transformation was found to vary widely from radiologist to radiologist. Similar results were found for the other transformations. Our simulations explored the effect of database sizes on the accuracy of the estimation of our scaling transformations. Conclusions: The likelihood-ratio-scaling transformation that the authors have developed and evaluated was shown to be capable of transforming computer and radiologist outputs to a common scale reliably, thereby allowing the comparison of the computer and radiologist outputs on the basis of a clinically relevant statistic.
机译:目的:作者开发了缩放方法,可以将一个分类器的输出单调转换为另一个分类器的缩放。这样的变换会影响分类器输出的分布,同时保持ROC曲线不变。尤其是,他们研究了放射科医生和计算机分类器之间的转换,目的是解决比较和解释两个分类器输出的个案特定值的问题。方法:作者使用模拟和放射线对乳腺成像病例的评级数据,基于匹配的分类器似然比,研究了似然比定标变换。为了进行比较,研究了分别基于匹配分类器的真实正分数,伪正分数或累积分布函数的其他三个缩放变换。作者探索了修改计算机输出以反映放射线医生的规模,以及修改放射线医生的等级以反映计算机的规模。他们还评估了数据集大小如何影响转换。结果:当两个分类器的ROC曲线有显着差异时,发现这四个变换非常不同。发现似然比定标变换在放射线医师之间变化很大。对于其他转换也发现了类似的结果。我们的仿真探索了数据库大小对缩放转换的估计准确性的影响。结论:作者开发和评估的似然比定标转换能够将计算机和放射线医生的输出可靠地转换为一个通用尺度,从而可以在临床相关的基础上比较计算机和放射线医生的输出统计。

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