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Published in: Pediatric Radiology 4/2023

Open Access 22-06-2022 | Pediatric Radiology | ESPR

European Society of Paediatric Radiology Artificial Intelligence taskforce: a new taskforce for the digital age

Authors: Lene Bjerke Laborie, Jaishree Naidoo, Erika Pace, Pierluigi Ciet, Christine Eade, Matthias W. Wagner, Thierry A. G. M. Huisman, Susan C. Shelmerdine

Published in: Pediatric Radiology | Issue 4/2023

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Abstract

A new task force dedicated to artificial intelligence (AI) with respect to paediatric radiology was created in 2021 at the International Paediatric Radiology (IPR) meeting in Rome, Italy (a joint society meeting by the European Society of Pediatric Radiology [ESPR] and the Society for Pediatric Radiology [SPR]). The concept of a separate task force dedicated to AI was borne from an ESPR-led international survey of health care professionals’ opinions, expectations and concerns regarding AI integration within children’s imaging departments. In this survey, the majority (> 80%) of ESPR respondents supported the creation of a task force and helped define our key objectives. These include providing educational content about AI relevant for paediatric radiologists, brainstorming ideas for future projects and collaborating on AI-related studies with respect to collating data sets, de-identifying images and engaging in multi-case, multi-reader studies. This manuscript outlines the starting point of the ESPR AI task force and where we wish to go.
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Metadata
Title
European Society of Paediatric Radiology Artificial Intelligence taskforce: a new taskforce for the digital age
Authors
Lene Bjerke Laborie
Jaishree Naidoo
Erika Pace
Pierluigi Ciet
Christine Eade
Matthias W. Wagner
Thierry A. G. M. Huisman
Susan C. Shelmerdine
Publication date
22-06-2022
Publisher
Springer Berlin Heidelberg
Published in
Pediatric Radiology / Issue 4/2023
Print ISSN: 0301-0449
Electronic ISSN: 1432-1998
DOI
https://doi.org/10.1007/s00247-022-05426-3

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