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Erschienen in: Pediatric Radiology 11/2022

06.07.2022 | Artificial intelligence in pediatric radiology

Data governance functions to support responsible data stewardship in pediatric radiology research studies using artificial intelligence

verfasst von: Suranna R. Monah, Matthias W. Wagner, Asthik Biswas, Farzad Khalvati, Lauren E. Erdman, Afsaneh Amirabadi, Logi Vidarsson, Melissa D. McCradden, Birgit B. Ertl-Wagner

Erschienen in: Pediatric Radiology | Ausgabe 11/2022

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Abstract

The integration of human and machine intelligence promises to profoundly change the practice of medicine. The rapidly increasing adoption of artificial intelligence (AI) solutions highlights its potential to streamline physician work and optimize clinical decision-making, also in the field of pediatric radiology. Large imaging databases are necessary for training, validating and testing these algorithms. To better promote data accessibility in multi-institutional AI-enabled radiologic research, these databases centralize the large volumes of data required to effect accurate models and outcome predictions. However, such undertakings must consider the sensitivity of patient information and therefore utilize requisite data governance measures to safeguard data privacy and security, to recognize and mitigate the effects of bias and to promote ethical use. In this article we define data stewardship and data governance, review their key considerations and applicability to radiologic research in the pediatric context, and consider the associated best practices along with the ramifications of poorly executed data governance. We summarize several adaptable data governance frameworks and describe strategies for their implementation in the form of distributed and centralized approaches to data management.
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Metadaten
Titel
Data governance functions to support responsible data stewardship in pediatric radiology research studies using artificial intelligence
verfasst von
Suranna R. Monah
Matthias W. Wagner
Asthik Biswas
Farzad Khalvati
Lauren E. Erdman
Afsaneh Amirabadi
Logi Vidarsson
Melissa D. McCradden
Birgit B. Ertl-Wagner
Publikationsdatum
06.07.2022
Verlag
Springer Berlin Heidelberg
Erschienen in
Pediatric Radiology / Ausgabe 11/2022
Print ISSN: 0301-0449
Elektronische ISSN: 1432-1998
DOI
https://doi.org/10.1007/s00247-022-05427-2

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