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Universal adversarial attacks on deep neural networks for medical image classification

机译:对医学图像分类深神经网络的普遍对抗攻击

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Deep neural networks (DNNs) are widely investigated in medical image classification to achieve automated support for clinical diagnosis. It is necessary to evaluate the robustness of medical DNN tasks against adversarial attacks, as high-stake decision-making will be made based on the diagnosis. Several previous studies have considered simple adversarial attacks. However, the vulnerability of DNNs to more realistic and higher risk attacks, such as universal adversarial perturbation (UAP), which is a single perturbation that can induce DNN failure in most classification tasks has not been evaluated yet. We focus on three representative DNN-based medical image classification tasks (i.e., skin cancer, referable diabetic retinopathy, and pneumonia classifications) and investigate their vulnerability to the seven model architectures of UAPs. We demonstrate that DNNs are vulnerable to both nontargeted UAPs, which cause a task failure resulting in an input being assigned an incorrect class, and to targeted UAPs, which cause the DNN to classify an input into a specific class. The almost imperceptible UAPs achieved??80% success rates for nontargeted and targeted attacks. The vulnerability to UAPs depended very little on the model architecture. Moreover, we discovered that adversarial retraining, which is known to be an effective method for adversarial defenses, increased DNNs’ robustness against UAPs in only very few cases. Unlike previous assumptions, the results indicate that DNN-based clinical diagnosis is easier to deceive because of adversarial attacks. Adversaries can cause failed diagnoses at lower costs (e.g., without consideration of data distribution); moreover, they can affect the diagnosis. The effects of adversarial defenses may not be limited. Our findings emphasize that more careful consideration is required in developing DNNs for medical imaging and their practical applications.
机译:深度神经网络(DNN)被广泛研究了医学图像分类,以实现临床诊断的自动支持。有必要评估医疗DNN任务对抗对抗性攻击的稳健性,因为将基于诊断进行高股决策。以前的几项研究被认为是简单的对抗性攻击。然而,DNN漏洞到更现实和更高的风险攻击,例如通用的对抗扰动(UAP),这是可以在大多数分类任务中诱导DNN失败的单个扰动。我们专注于三个代表基于DNN的医学图像分类任务(即皮肤癌,可指糖尿病视网膜病变和肺炎分类),并调查他们对UAP的七种模型架构的脆弱性。我们展示DNN容易受到Nontargeted UAP的影响,这导致任务发生故障导致输入的输入被分配不正确的类,并且针对UNAP,这使得DNN将输入分类为特定类别。几乎难以察觉的UAP达到了?&?Nontargeted和目标攻击的80%成功率。 UAPS的脆弱性依赖于模型架构。此外,我们发现,已知是对逆势防御的有效方法的对抗性再培训,在少数情况下增加了DNNS对UAP的鲁棒性。与以前的假设不同,结果表明,由于对抗的攻击,基于DNN的临床诊断更容易欺骗。对手可能导致成本较低的诊断失败(例如,不考虑数据分布);此外,它们可以影响诊断。对抗性防御的影响可能不受限制。我们的调查结果强调,在为医学成像和其实际应用中开发DNN时需要更加仔细考虑。

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