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Editorial: Radiomics and artificial intelligence in radiology and nuclear medicine
4
Zitationen
2
Autoren
2023
Jahr
Abstract
Artificial intelligence (AI) and radiomics algorithms in radiology and nuclear medicine have demonstrated a good performance as diagnostic, predictive or prognostic markers for several diseases with a high potential to be used as clinical tools. However, these algorithms should be further validated in clinical practice to spread their routinary use worldwide.This Research Topic comprises 12 articles that highlight the role of AI and radiomics in radiology or nuclear medicine. Finally, we would like to underline that AI and radiomics tools are widely used for research purpose in the fields of radiology and nuclear medicine. Nevertheless, large validation protocols and real-life experience are needed to allow an increasing use of these tools in clinical practice, with possible benefit for patients' treatments and outcomes.
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