Medical Image De-Identification Benchmark Challenge
Linmin Pei, Granger Sutton, Michael Rutherford, Ulrike Wagner, Tracy Nolan, Kirk Smith, Phillip Farmer, Peter Gu, Ambar Rana, Kailing Chen, Thomas Ferleman, Brian Park, Ye Wu, Jordan Kojouharov, Gargi Singh, Jon Lemon, Tyler Willis, Milos Vukadinovic, Grant Duffy, Bryan He

TL;DR
This paper presents the MIDI-B Challenge, a standardized benchmarking platform for medical image de-identification tools, utilizing diverse real-world datasets and synthetic PHI/PII to evaluate and improve privacy-preserving methods in medical imaging.
Contribution
It introduces a comprehensive benchmark for DICOM image de-identification, including challenge design, implementation, and evaluation metrics, fostering advancements in privacy-preserving medical imaging techniques.
Findings
High accuracy of de-identification methods, with scores up to 99.93%
Diverse approaches including LLMs and OCR achieved effective results
Benchmark facilitates standardized evaluation of de-identification tools
Abstract
The de-identification (deID) of protected health information (PHI) and personally identifiable information (PII) is a fundamental requirement for sharing medical images, particularly through public repositories, to ensure compliance with patient privacy laws. In addition, preservation of non-PHI metadata to inform and enable downstream development of imaging artificial intelligence (AI) is an important consideration in biomedical research. The goal of MIDI-B was to provide a standardized platform for benchmarking of DICOM image deID tools based on a set of rules conformant to the HIPAA Safe Harbor regulation, the DICOM Attribute Confidentiality Profiles, and best practices in preservation of research-critical metadata, as defined by The Cancer Imaging Archive (TCIA). The challenge employed a large, diverse, multi-center, and multi-modality set of real de-identified radiology images with…
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Taxonomy
TopicsBrain Tumor Detection and Classification
