Ultrasound is a non-invasive imaging modality that can be conveniently used to classify suspicious breast nodules and potentially detect the onset of breast cancer. Recently, Convolutional Neural Networks (CNN) techniques have shown promising results in classifying ultrasound images of the breast into benign or malignant. However, CNN inference acts as a black-box model, and as such, its decision-making is not interpretable. Therefore, increasing effort has been dedicated to explaining this process, most notably through GRAD-CAM and other techniques that provide visual explanations into inner workings of CNNs. In addition to interpretation, these methods provide clinically important information, such as identifying the location for biopsy or treatment. In this work, we analyze how adversarial assaults that are practically undetectable may be devised to alter these importance maps dramatically. Furthermore, we will show that this change in the importance maps can come with or without altering the classification result, rendering them even harder to detect. As such, care must be taken when using these importance maps to shed light on the inner workings of deep learning. Finally, we utilize Multi-Task Learning (MTL) and propose a new network based on ResNet-50 to improve the classification accuracies. Our sensitivity and specificity is comparable to the state of the art results.
翻译:超声波是一种非侵入性成像模式,可以方便地用来对可疑的乳结核进行分类,并有可能发现乳腺癌的发作。最近,进化神经网络技术在将乳房超声图像分为良性或恶性分类方面显示出令人乐观的结果。然而,CNN的推论作为一种黑盒模型,因此它的决策是无法解释的。因此,人们日益致力于解释这一过程,主要是通过GRAD-CAM和为CNN内部工作提供直观解释的其他技术。除了解释外,这些方法还提供重要的临床信息,例如确定生物心理或治疗的地点。在这项工作中,我们分析如何设计实际上无法检测到的对抗性攻击来大幅度改变这些重要地图。此外,我们将表明,重要地图的这一变化可以随着或不会改变分类结果而出现,使它们更难于检测。因此,在使用这些重要地图为CNN的内部工作提供直观解释时,必须小心谨慎。除了解释外,这些方法还提供临床重要信息,例如确定生物心理或治疗的地点。在这项工作中,我们利用多塔斯克的敏感度网络来进行可比性研究,并提议以新的地图分类。