Enhancing Radiomics and Deep Learning Systems Through the Standardization of Medical Imaging Workflows
Scientific Data(2023)
Advanced Computing and e-Science Group | Clínica Universidad de Navarra
Abstract
Recent advances in computer-aided diagnosis, treatment response and prognosis in radiomics and deep learning challenge radiology with requirements for world-wide methodological standards for labeling, preprocessing and image acquisition protocols. The adoption of these standards in the clinical workflows is a necessary step towards generalization and interoperability of radiomics and artificial intelligence algorithms in medical imaging.
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