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139 Agentic AI for automated classification of paediatric radiology reports
0
Zitationen
6
Autoren
2026
Jahr
Abstract
charge was provided by physiotherapists, doctors, nurses and play specialists (figure 3). Figure 4 displays patient confidence on discharge.Feedback related to information resources included verbal or written advice (80%) and online resources (20%).Conclusions Whilst all patients understood the role of physiotherapy, they received variable information prior to admission and on discharge.They reported varying degrees of confidence in returning to school and PE.Only a small number of children were involved in this study and further data should be collected.Creating an information resource would ensure standardised information is provided.
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