Litcius/Paper detail

A DICOM dataset for evaluation of medical image de-identification

Michael Rutherford, Seong K. Mun, Betty A. Levine, William Bennett, Kirk Smith, Phillip Farmer, Quasar Jarosz, Ulrike Wagner, John Freyman, Geri Blake, Lawrence Tarbox, Keyvan Farahani, Fred Prior

2021Scientific Data32 citationsDOIOpen Access PDF

Abstract

We developed a DICOM dataset that can be used to evaluate the performance of de-identification algorithms. DICOM objects (a total of 1,693 CT, MRI, PET, and digital X-ray images) were selected from datasets published in the Cancer Imaging Archive (TCIA). Synthetic Protected Health Information (PHI) was generated and inserted into selected DICOM Attributes to mimic typical clinical imaging exams. The DICOM Standard and TCIA curation audit logs guided the insertion of synthetic PHI into standard and non-standard DICOM data elements. A TCIA curation team tested the utility of the evaluation dataset. With this publication, the evaluation dataset (containing synthetic PHI) and de-identified evaluation dataset (the result of TCIA curation) are released on TCIA in advance of a competition, sponsored by the National Cancer Institute (NCI), for algorithmic de-identification of medical image datasets. The competition will use a much larger evaluation dataset constructed in the same manner. This paper describes the creation of the evaluation datasets and guidelines for their use.

Topics & Concepts

DICOMIdentification (biology)Computer scienceMetadataData curationDatabaseInformation retrievalData scienceWorld Wide WebBiologyArtificial intelligenceBotanyRadiomics and Machine Learning in Medical ImagingColorectal Cancer Screening and DetectionAI in cancer detection