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Multi Scale Curriculum CNN for Context-Aware Breast MRI Malignancy Classification

机译:多尺度课程CNN用于情境感知乳房MRI恶性分类

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Classification of malignancy for breast cancer and other cancer types is usually tackled as an object detection problem: Individual lesions are first localized and then classified with respect to malignancy. However, the drawback of this approach is that abstract features incorporating several lesions and areas that are not labelled as a lesion but contain global medically relevant information are thus disregarded: especially for dynamic contrast-enhanced breast MRI, criteria such as background parenchymal enhancement and location within the breast are important for diagnosis and cannot be captured by object detection approaches properly. In this work, we propose a 3D CNN and a multi scale curriculum learning strategy to classify malignancy globally based on an MRI of the whole breast. Thus, the global context of the whole breast rather than individual lesions is taken into account. Our proposed approach does not rely on lesion segmentations, which renders the annotation of training data much more effective than in current object detection approaches. Achieving an AUROC of 0.89, we compare the performance of our approach to Mask R-CNN and Retina U-Net as well as a radiologist. Our performance is on par with approaches that, in contrast to our method, rely on pixelwise segmentations of lesions.
机译:通常将乳腺癌和其他癌症类型的恶性分类作为对象检测问题来解决:首先对单个病变进行定位,然后根据恶性进行分类。但是,这种方法的缺点是,忽略了包含多个未标记为病变但包含整体医学相关信息的多个病变和区域的抽象特征:特别是对于动态对比增强的乳房MRI,标准包括背景实质增强和位置乳房内的肿瘤对于诊断很重要,并且不能通过物体检测方法正确捕获。在这项工作中,我们提出了3D CNN和多尺度课程学习策略,以基于整个乳房的MRI对恶性肿瘤进行全球分类。因此,要考虑整个乳房而不是单个病变的整体情况。我们提出的方法不依赖于病变分割,这使得训练数据的注释比当前对象检测方法更有效。为了达到0.89的AUROC,我们比较了Mask R-CNN和Retina U-Net以及放射科医生的方法性能。与我们的方法相比,我们的性能与方法完全相同,后者依赖于病变的像素分割。

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