J Beryl Rachel, Sood Anubhuti, Pattnaik Tanurag, Malhotra Rewa, Nayyar Vivek, Narayan Bhaskar, Mishra Deepika, Surya Varun
Oral Pathology and Microbiology, Centre for Dental Education and Research, All India Institute of Medical Sciences, New Delhi, India.
Oral Pathology and Microbiology, Centre for Dental Education and Research, All India Institute of Medical Sciences, New Delhi, India.
J Med Imaging Radiat Sci. 2025 Sep;56(5):101914. doi: 10.1016/j.jmir.2025.101914. Epub 2025 Apr 26.
With digitalization in the field of healthcare, using patient image based data, there is also increasing concerns on protection of patient privacy. Globally various legal rules and regulations have been adopted for stringent measures on data privacy. However, despite the growing importance of privacy, there are currently no universally defined protocols outlining the specific parameters for the de-identification/pseudo-anonymization of medical images.
The study aims to assess current methods for protecting patient privacy in medical image datasets used in research and healthcare technology development.
A comprehensive, systematic search was conducted with a defined search string across databases, including PubMed/Medline, Scopus, Web of Science, Embase, and Google Scholar. Studies were selected based on their focus on the procedures used for anonymization, pseudo-anonymization, and de-identification of medical images during the creation of datasets.
From an initial pool of 324 potentially relevant articles, 13 studies were ultimately included in the final review after meeting the inclusion criteria. Of these, the majority focused on open-source datasets, which are accessible for use in research and algorithm development. Methods of de-identification of images included burn-in annotation, defacing processes, removal of DICOM tags, and facial de-identification. A medical image protection checklist was created based on the findings of our review.
The review explores techniques such as removal or masking of personal identifiers, DICOM tag removal, facial de-identification GOAL: The insights gathered aim to help develop standardized privacy protocols to be adhered by healthcare professionals for responsible use of medical imaging data, ensuring the responsible use of medical imaging data for healthcare advancements.
The findings of this review highlight several key considerations for effective pseudo-anonymization and de-identification of medical images. The review emphasizes the need for a careful balance between protecting patient privacy and ensuring that medical datasets retain sufficient quality and richness for research and technological development.
随着医疗保健领域的数字化,利用基于患者图像的数据,人们对患者隐私保护的担忧也与日俱增。全球已采用各种法律法规来实施严格的数据隐私保护措施。然而,尽管隐私的重要性日益凸显,但目前尚无统一界定的协议来概述医学图像去识别/准匿名化的具体参数。
本研究旨在评估在研究和医疗技术开发中使用的医学图像数据集中保护患者隐私的现有方法。
使用定义好的搜索字符串在多个数据库(包括PubMed/Medline、Scopus、科学网、Embase和谷歌学术)中进行全面、系统的搜索。根据研究对数据集创建过程中医学图像匿名化、准匿名化和去识别所使用程序的关注程度来选择研究。
从最初的324篇潜在相关文章中,有13项研究在符合纳入标准后最终被纳入最终综述。其中,大多数研究聚焦于开源数据集,这些数据集可供研究和算法开发使用。图像去识别方法包括烙印注释、面部模糊处理、去除DICOM标签以及面部去识别。根据我们的综述结果创建了一份医学图像保护清单。
本综述探讨了诸如去除或屏蔽个人标识符、去除DICOM标签、面部去识别等技术。目标:所收集的见解旨在帮助制定医疗保健专业人员应遵守的标准化隐私协议,以负责任地使用医学成像数据,确保为医疗进步负责任地使用医学成像数据。
本综述的结果突出了医学图像有效准匿名化和去识别的几个关键考虑因素。该综述强调在保护患者隐私与确保医学数据集保留足够的质量和丰富性以用于研究和技术开发之间需要谨慎平衡。