Abstract

Owing the epidemic of the novel coronavirus disease 2019 (COVID-19), chest X-ray computed tomography imaging is being used for effectively screening COVID-19 patients. The development of computer-aided systems based on deep neural networks (DNNs) has become an advanced open source to rapidly and accurately detect COVID-19 cases because the need for expert radiologists, who are limited in number, forms a bottleneck for screening. However, thus far, the vulnerability of DNN-based systems has been poorly evaluated, although realistic and high-risk attacks using universal adversarial perturbation (UAP), a single (input image agnostic) perturbation that can induce DNN failure in most classification tasks, are available. Thus, we focus on representative DNN models for detecting COVID-19 cases from chest X-ray images and evaluate their vulnerability to UAPs. We consider non-targeted UAPs, which cause a task failure, resulting in an input being assigned an incorrect label, and targeted UAPs, which cause the DNN to classify an input into a specific class. The results demonstrate that the models are vulnerable to non-targeted and targeted UAPs, even in the case of small UAPs. In particular, the 2% norm of the UAPs to the average norm of an image in the image dataset achieves >85% and >90% success rates for the non-targeted and targeted attacks, respectively. Owing to the non-targeted UAPs, the DNN models judge most chest X-ray images as COVID-19 cases. The targeted UAPs allow the DNN models to classify most chest X-ray images into a specified target class. The results indicate that careful consideration is required in practical applications of DNNs to COVID-19 diagnosis; in particular, they emphasize the need for strategies to address security concerns. As an example, we show that iterative fine-tuning of DNN models using UAPs improves the robustness of DNN models against UAPs.

Highlights

  • Coronavirus disease 2019 (COVID-19) [1] is an infectious disease caused by the coronavirus, called severe acute respiratory syndrome coronavirus 2

  • The visual differences in chest X-ray images among COVID-19-associated pneumonia, non-COVID-19 pneumonia, and no pneumonia are subtle; the need for expert radiologists, who are limited in number, forms a bottleneck for diagnoses based on radiography images

  • Vulnerability to non-targeted universal adversarial perturbations. We found that both COVIDNet-CXR Small and COVIDNet-CXR Large models were vulnerable to non-targeted UAPs (Table 1)

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Summary

Introduction

Coronavirus disease 2019 (COVID-19) [1] is an infectious disease caused by the coronavirus, called severe acute respiratory syndrome coronavirus 2. To reduce the spread of this epidemic, effective screening of COVID-19 patients is required. The visual differences in chest X-ray images among COVID-19-associated pneumonia, non-COVID-19 pneumonia, and no pneumonia are subtle; the need for expert radiologists, who are limited in number, forms a bottleneck for diagnoses based on radiography images. To overcome this limitation, computer-aided systems that can aid radiologists in more rapidly and accurately interpreting radiography images to detect COVID-19 cases are highly required [7, 8]; in particular, deep neural networks (DNNs) are often used for this purpose

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