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Learning from unbalanced data: A cascade-based approach for detecting clustered microcalcifications

机译:从不平衡数据中学习:一种基于级联的方法,用于检测聚簇的微钙化

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Finding abnormalities in diagnostic images is a difficult task even for expert radiologists because the normal tissue locations largely outnumber those with suspicious signs which may thus be missed or incorrectly interpreted. For the same reason the design of a Computer-Aided Detection (CADe) system is very complex because the large predominance of normal samples in the training data may hamper the ability of the classifier to recognize the abnormalities on the images. In this paper we present a novel approach for computer-aided detection which faces the class imbalance with a cascade of boosting classifiers where each node is trained by a learning algorithm based on ranking instead of classification error. Such approach is used to design a system (CasCADe) for the automated detection of clustered microcalcifications (μCs), which is a severely unbalanced classification problem because of the vast majority of image locations where no μC is present. The proposed approach was evaluated with a dataset of 1599 full-field digital mammograms from 560 cases and compared favorably with the Hologic R2CAD ImageChecker, one of the most widespread commercial CADe systems. In particular, at the same lesion sensitivity of R2CAD (90%) on biopsy proven malignant cases, CasCADe and R2CAD detected 0.13 and 0.21 false positives per image (FPpi), respectively (p-value. = 0.09), whereas at the same FPpi of R2CAD (0.21), CasCADe and R2CAD detected 93% and 90% of true lesions respectively (p-value. = 0.11) thus showing that CasCADe can compete with high-end CADe commercial systems.
机译:即使对于放射线专家而言,在诊断图像中查找异常也是一项艰巨的任务,因为正常组织的位置大大超过具有可疑体征的组织,因此可能会错过或错误解释这些体征。出于同样的原因,计算机辅助检测(CADe)系统的设计非常复杂,因为训练数据中大量的正常样本可能会妨碍分类器识别图像异常的能力。在本文中,我们提出了一种新的计算机辅助检测方法,该方法通过级联提升分类器来面对类不平衡问题,其中通过基于排名而非分类错误的学习算法训练每个节点。这种方法用于设计用于自动检测簇状微钙化(μC)的系统(CasCADe),这是一个严重不平衡的分类问题,因为其中绝大多数图像位置都没有μC。所提出的方法是使用来自560个案例的1599个全视野数字化乳房X线照片的数据集进行评估的,并且与Hologic R2CAD ImageChecker(最广泛的商业CADe系统之一)进行比较。特别是,在经活检证实为恶性病例的R2CAD病变敏感性相同(90%)时,CasCADe和R2CAD每幅图像(FPpi)分别检测到0.13和0.21假阳性(p值= 0.09),而在相同的FPpi在R2CAD(0.21)中,CasCADe和R2CAD分别检测到93%和90%的真实病变(p值= 0.11),从而表明CasCADe可以与高端CADe商业系统竞争。

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