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Regularization in retrieval-driven classification of clustered microcalcifications for breast cancer

机译:乳腺癌微簇钙化的检索驱动分类中的正则化

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摘要

We propose a regularization based approach for case-adaptive classification in computer-aided diagnosis (CAD) of breast cancer. The goal is to improve the classification accuracy on a query case by making use of a set of similar cases retrieved from an existing library of known cases. In the proposed approach, a prior is first derived from a traditional CAD classifier (which is typically pre-trained offline on a set of training cases). It is then used together with the retrieved similar cases to obtain an adaptive classifier on the query case. We consider two different forms for the regularization prior: one is fixed for all query cases and the other is allowed to vary with different query cases. In the experiments the proposed approach is demonstrated on a dataset of 1,006 clinical cases. The results show that it could achieve significant improvement in numerical efficiency compared with a previously proposed case adaptive approach (by about an order of magnitude) while maintaining similar (or better) improvement in classification accuracy; it could also adapt faster in performance with a small number of retrieved cases. Measured by the area of under the ROC curve (AUC), the regularization based approach achieved AUC = 0.8215, compared with AUC = 0.7329 for the baseline classifier (P-value = 0.001).
机译:我们提出了一种基于正则化的乳腺癌计算机辅助诊断(CAD)案例分类方法。目的是通过利用从已知案例的现有库中检索到的一组相似案例来提高查询案例的分类准确性。在提出的方法中,先验先从传统的CAD分类器(通常在一组训练案例中离线进行预先训练)中得出。然后将其与检索到的相似案例一起使用,以获取查询案例的自适应分类器。对于正则化优先级,我们考虑两种不同的形式:一种对于所有查询案例都是固定的,另一种允许随不同查询案例而变化。在实验中,在1,006个临床病例的数据集上证明了所提出的方法。结果表明,与先前提出的案例自适应方法相比,该方法可以实现数值效率的显着提高(大约一个数量级),而分类精度保持相似(或更佳)的提高;在少数情况下,它也可以更快地适应性能。通过ROC曲线下面积(AUC)进行测量,基于正则化的方法实现了AUC = 0.8215,而基线分类器的AUC = 0.7329(P值= 0.001)。

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