Report of the Medical Image De-Identification (MIDI) Task Group -- Best Practices and Recommendations
This report addresses the technical aspects of de-identification of medical images of human subjects and biospecimens, such that re-identification risk of ethical, moral, and legal concern is sufficiently reduced to allow unrestricted public sharing for any purpose, regardless of the jurisdiction of...
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Published in | ArXiv.org |
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Main Authors | , , , , , , , , , , , , , , , , , , |
Format | Journal Article |
Language | English |
Published |
Cornell University
01.04.2023
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Online Access | Get full text |
ISSN | 2331-8422 |
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Summary: | This report addresses the technical aspects of de-identification of medical
images of human subjects and biospecimens, such that re-identification risk of
ethical, moral, and legal concern is sufficiently reduced to allow unrestricted
public sharing for any purpose, regardless of the jurisdiction of the source
and distribution sites. All medical images, regardless of the mode of
acquisition, are considered, though the primary emphasis is on those with
accompanying data elements, especially those encoded in formats in which the
data elements are embedded, particularly Digital Imaging and Communications in
Medicine (DICOM). These images include image-like objects such as
Segmentations, Parametric Maps, and Radiotherapy (RT) Dose objects. The scope
also includes related non-image objects, such as RT Structure Sets, Plans and
Dose Volume Histograms, Structured Reports, and Presentation States. Only
de-identification of publicly released data is considered, and alternative
approaches to privacy preservation, such as federated learning for artificial
intelligence (AI) model development, are out of scope, as are issues of privacy
leakage from AI model sharing. Only technical issues of public sharing are
addressed. |
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ISSN: | 2331-8422 |