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Machine learning and deep learning for classifying the justification of brain CT referrals
3
Zitationen
7
Autoren
2024
Jahr
Abstract
Significant variations exist among human experts in interpreting unstructured clinical indications/patient presentations. Machine and deep learning can automate the justification analysis of radiology referrals according to iGuide categorisation. Machine and deep learning can improve retrospective and prospective justification auditing for better implementation of imaging referral guidelines.
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