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NATURE REVIEWS CANCER
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Summary: Artificial intelligence in the field of digital radiology has made significant advancements, thanks in part to the COVID-19 pandemic and its impact on research. A study conducted a comprehensive review to identify the challenges and initiatives in the field, using narrative reviews and original questionnaires. The study highlighted the importance of addressing these challenges and suggested further research in the area.
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Summary: This study investigates the acceptance and consensus of medical specialists, medical physicists, and specialists of applied sciences on the introduction of artificial intelligence in digital radiology. The results show a high degree of agreement among the three professionals on the use of AI in imaging and non-imaging applications, using both standalone applications and/or mHealth/eHealth. However, there are differences in consent depending on the training background.
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