论文标题
偏见场对基于DNN的X射线识别构成威胁
Bias Field Poses a Threat to DNN-based X-Ray Recognition
论文作者
论文摘要
胸部X射线在筛查和诊断许多肺部疾病(包括COVID-19)中起着关键作用。最近,许多作品构建了深层神经网络(DNN),用于胸部X射线图像,以实现对肺部疾病的自动化和有效诊断。然而,胸部X射线图像中广泛存在的医学图像采集过程引起的偏差领域,而DNN对偏置领域的稳健性很少被探索,这绝对会对基于X射线的自动化诊断系统构成威胁。在本文中,我们基于最近的对抗性攻击研究了这个问题,并提出了全新的攻击,即,对抗性偏见野外攻击,其中偏置场而不是添加噪声可以作为欺骗DNN的对抗性扰动。这项小说攻击发布了一个关键问题:如何在本地调整偏见领域以实现高攻击成功率,同时保持其空间平滑度以确保高现实。这两个目标彼此矛盾,因此使攻击变得艰巨。为了克服这一挑战,我们提出了可以在局部调整偏置场的对抗性平滑偏置攻击,并使用关节平滑和对抗性约束。结果,对抗性X射线图像不仅可以有效地欺骗DNN,而且可以保持很高的逼真程度。我们在具有强大DNN的真实胸部X射线数据集上验证我们的方法,例如Resnet50,Densenet121和Mobilenet,并显示出图像现实性和攻击性传递性的最新攻击。我们的方法揭示了对基于DNN的X射线自动诊断的潜在威胁,并且肯定可以使偏置现场自动诊断系统的发展受益。
The chest X-ray plays a key role in screening and diagnosis of many lung diseases including the COVID-19. More recently, many works construct deep neural networks (DNNs) for chest X-ray images to realize automated and efficient diagnosis of lung diseases. However, bias field caused by the improper medical image acquisition process widely exists in the chest X-ray images while the robustness of DNNs to the bias field is rarely explored, which definitely poses a threat to the X-ray-based automated diagnosis system. In this paper, we study this problem based on the recent adversarial attack and propose a brand new attack, i.e., the adversarial bias field attack where the bias field instead of the additive noise works as the adversarial perturbations for fooling the DNNs. This novel attack posts a key problem: how to locally tune the bias field to realize high attack success rate while maintaining its spatial smoothness to guarantee high realisticity. These two goals contradict each other and thus has made the attack significantly challenging. To overcome this challenge, we propose the adversarial-smooth bias field attack that can locally tune the bias field with joint smooth & adversarial constraints. As a result, the adversarial X-ray images can not only fool the DNNs effectively but also retain very high level of realisticity. We validate our method on real chest X-ray datasets with powerful DNNs, e.g., ResNet50, DenseNet121, and MobileNet, and show different properties to the state-of-the-art attacks in both image realisticity and attack transferability. Our method reveals the potential threat to the DNN-based X-ray automated diagnosis and can definitely benefit the development of bias-field-robust automated diagnosis system.