With the rise and ever-increasing potential of deep learning techniques in recent years, publicly available medical datasets became a key factor to enable reproducible development of diagnostic algorithms in the medical domain. Medical data contains sensitive patient-related information and is therefore usually anonymized by removing patient identifiers, e.g., patient names before publication. To the best of our knowledge, we are the first to show that a well-trained deep learning system is able to recover the patient identity from chest X-ray data. We demonstrate this using the publicly available large-scale ChestX-ray14 dataset, a collection of 112,120 frontal-view chest X-ray images from 30,805 unique patients. Our verification system is able to identify whether two frontal chest X-ray images are from the same person with an AUC of 0.9940 and a classification accuracy of 95.55%. We further highlight that the proposed system is able to reveal the same person even ten and more years after the initial scan. When pursuing a retrieval approach, we observe an mAP@R of 0.9748 and a precision@1 of 0.9963. Furthermore, we achieve an AUC of up to 0.9870 and a precision@1 of up to 0.9444 when evaluating our trained networks on external datasets such as CheXpert and the COVID-19 Image Data Collection. Based on this high identification rate, a potential attacker may leak patient-related information and additionally cross-reference images to obtain more information. Thus, there is a great risk of sensitive content falling into unauthorized hands or being disseminated against the will of the concerned patients. Especially during the COVID-19 pandemic, numerous chest X-ray datasets have been published to advance research. Therefore, such data may be vulnerable to potential attacks by deep learning-based re-identification algorithms.
翻译:近年来,随着深层学习技术的上升和潜力的不断增加,公开提供的医疗数据集成为使医疗领域诊断算法得到可复制发展的关键因素。医疗数据包含与病人有关的敏感信息,因此通常通过删除病人的识别资料匿名,例如,在出版前删除病人的姓名。据我们所知,我们是第一个显示受过良好训练的深层学习系统能够从胸部X光数据中恢复病人身份。我们利用公开提供的大规模切斯特X光14型跨级数据集,收集了30 805个独特病人的112 120张前视X光图像。我们的核查系统能够确定两张前胸X光图像是否来自同一人,如在出版前取用0.9940个病人姓名,分类精确度为95.55%。我们进一步强调,在初步扫描后10年和10年以上,拟议系统能够向病人透露同一人的身份。在进行检索时,我们发现一个为0.9748的MAP, 准确度为0.996的病人的胸透视图像。此外,我们通过经过培训的AS-D高端数据流率,我们从已实现AUCS-10X高端数据的外部数据,然后再向CheX数据检索。在数据库中进行这种高端数据检索数据流数据流数据流数据中,然后通过经0.970至0.947数据流数据流数据流数据流数据流数据流数据流数据,在检索数据流数据更新到高数据流数据,在S-10至10至高数据流数据检索。