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VISION: Toward a Standardized Process for Radiology Image Management at the National Level

29 April 2024
Kathryn Knight
Ioana Danciu
Olga Ovchinnikova
Jacob D. Hinkle
Mayanka Chandra Shekar
Debangshu Mukherjee
Eileen McAllister
Caitlin Rizy
Kelly Cho
Amy C. Justice
Joseph Erdos
Peter Kuzmak
Lauren Costa
Y. Ho
Reddy Madipadga
Suzanne Tamang
Ian Goethert
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Abstract

The compilation and analysis of radiological images poses numerous challenges for researchers. The sheer volume of data as well as the computational needs of algorithms capable of operating on images are extensive. Additionally, the assembly of these images alone is difficult, as these exams may differ widely in terms of clinical context, structured annotation available for model training, modality, and patient identifiers. In this paper, we describe our experiences and challenges in establishing a trusted collection of radiology images linked to the United States Department of Veterans Affairs (VA) electronic health record database. We also discuss implications in making this repository research-ready for medical investigators. Key insights include uncovering the specific procedures required for transferring images from a clinical to a research-ready environment, as well as roadblocks and bottlenecks in this process that may hinder future efforts at automation.

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