As the COVID-19 pandemic puts pressure on healthcare systems worldwide, the computed tomography image based AI diagnostic system has become a sustainable solution for early diagnosis. However, the model-wise vulnerability under adversarial perturbation hinders its deployment in practical situation. The existing adversarial training strategies are difficult to generalized into medical imaging field challenged by complex medical texture features. To overcome this challenge, we propose a Contour Attention Preserving (CAP) method based on lung cavity edge extraction. The contour prior features are injected to attention layer via a parameter regularization and we optimize the robust empirical risk with hybrid distance metric. We then introduce a new cross-nation CT scan dataset to evaluate the generalization capability of the adversarial robustness under distribution shift. Experimental results indicate that the proposed method achieves state-of-the-art performance in multiple adversarial defense and generalization tasks. The code and dataset are available at https://github.com/Quinn777/CAP.
翻译:由于COVID-19大流行对全世界的保健系统造成压力,基于人工智能诊断系统的计算成透视图像系统已成为早期诊断的一个可持续解决办法;然而,在对抗性扰动下,模型判断的脆弱程度阻碍了在实际情况下的部署;现有的对抗性培训战略难以推广到医疗成像领域,因为复杂的医疗质素特征使这些战略难以推广到医疗成像领域;为了克服这一挑战,我们提议以肺腔腔边缘抽取法为基础的“CAP”保护“CAP”方法;先前的等同特征通过参数正规化注入给关注层,我们优化混合距离指标的强力实证风险;我们随后推出新的交叉点CT扫描数据集,以评价分配性转变下的对抗性稳健性一般化能力;实验结果显示,拟议的方法在多种对抗性防御和一般化任务中达到了最先进的性能;代码和数据集可在https://github.com/Quinn777/CAP上查阅。