Publication | Open Access
Canadian Association of Radiologists White Paper on De-identification of Medical Imaging: Part 2, Practical Considerations
28
Citations
3
References
2020
Year
Artificial IntelligenceEngineeringMachine LearningDiagnosisDiagnostic ImagingData ScienceCt ScanAi HealthcareMachine Learning ProjectsHealthcare Big DataRadiologyHealth SciencesMedical ImagingComputer ScienceRadiologic ImagingDeep LearningMedical Image ComputingRadiomicsCanadian AssociationComputer-aided DiagnosisRadiologists White PaperClinical ImageMedicineMedical Image AnalysisHealth Informatics
The application of big data, radiomics, machine learning, and artificial intelligence (AI) algorithms in radiology requires access to large data sets containing personal health information. Because machine learning projects often require collaboration between different sites or data transfer to a third party, precautions are required to safeguard patient privacy. Safety measures are required to prevent inadvertent access to and transfer of identifiable information. The Canadian Association of Radiologists (CAR) is the national voice of radiology committed to promoting the highest standards in patient-centered imaging, lifelong learning, and research. The CAR has created an AI Ethical and Legal standing committee with the mandate to guide the medical imaging community in terms of best practices in data management, access to health care data, de-identification, and accountability practices. Part 2 of this article will inform CAR members on the practical aspects of medical imaging de-identification, strengths and limitations of de-identification approaches, list of de-identification software and tools available, and perspectives on future directions.
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