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Published in: Pediatric Radiology 11/2022

01-07-2021 | Artificial Intelligence | Artificial intelligence in pediatric radiology

Artificial intelligence reporting guidelines: what the pediatric radiologist needs to know

Authors: Riwa Meshaka, Daniel Pinto Dos Santos, Owen J. Arthurs, Neil J. Sebire, Susan C. Shelmerdine

Published in: Pediatric Radiology | Issue 11/2022

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Abstract

There has been an exponential rise in artificial intelligence (AI) research in imaging in recent years. While the dissemination of study data that has the potential to improve clinical practice is welcomed, the level of detail included in early AI research reporting has been highly variable and inconsistent, particularly when compared to more traditional clinical research. However, inclusion checklists are now commonly available and accessible to those writing or reviewing clinical research papers. AI-specific reporting guidelines also exist and include distinct requirements, but these can be daunting for radiologists new to the field. Given that pediatric radiology is a specialty faced with workforce shortages and an ever-increasing workload, AI could help by offering solutions to time-consuming tasks, thereby improving workflow efficiency and democratizing access to specialist opinion. As a result, pediatric radiologists are expected to be increasingly leading and contributing to AI imaging research, and researchers and clinicians alike should feel confident that the findings reported are presented in a transparent way, with sufficient detail to understand how they apply to wider clinical practice. In this review, we describe two of the most clinically relevant and available reporting guidelines to help increase awareness and engage the pediatric radiologist in conducting AI imaging research. This guide should also be useful for those reading and reviewing AI imaging research and as a checklist with examples of what to expect.
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Metadata
Title
Artificial intelligence reporting guidelines: what the pediatric radiologist needs to know
Authors
Riwa Meshaka
Daniel Pinto Dos Santos
Owen J. Arthurs
Neil J. Sebire
Susan C. Shelmerdine
Publication date
01-07-2021
Publisher
Springer Berlin Heidelberg
Published in
Pediatric Radiology / Issue 11/2022
Print ISSN: 0301-0449
Electronic ISSN: 1432-1998
DOI
https://doi.org/10.1007/s00247-021-05129-1

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