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New implementation of data standards for AI in oncology: Experience from the EuCanImage project
3
Zitationen
19
Autoren
2024
Jahr
Abstract
BACKGROUND: An unprecedented amount of personal health data, with the potential to revolutionize precision medicine, is generated at health care institutions worldwide. The exploitation of such data using artificial intelligence (AI) relies on the ability to combine heterogeneous, multicentric, multimodal, and multiparametric data, as well as thoughtful representation of knowledge and data availability. Despite these possibilities, significant methodological challenges and ethicolegal constraints still impede the real-world implementation of data models. TECHNICAL DETAILS: The EuCanImage is an international consortium aimed at developing AI algorithms for precision medicine in oncology and enabling secondary use of the data based on necessary ethical approvals. The use of well-defined clinical data standards to allow interoperability was a central element within the initiative. The consortium is focused on 3 different cancer types and addresses 7 unmet clinical needs. We have conceived and implemented an innovative process to capture clinical data from hospitals, transform it into the newly developed EuCanImage data models, and then store the standardized data in permanent repositories. This new workflow combines recognized software (REDCap for data capture), data standards (FHIR for data structuring), and an existing repository (EGA for permanent data storage and sharing), with newly developed custom tools for data transformation and quality control purposes (ETL pipeline, QC scripts) to complement the gaps. CONCLUSION: This article synthesizes our experience and procedures for health care data interoperability, standardization, and reproducibility.
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Autoren
- Teresa García‐Lezana
- Maciej Bobowicz
- Santiago Frid
- Michael Rutherford
- Mikel Recuero
- Katrine Riklund
- Aldar Cabrelles
- Marlena Rygusik
- Lauren A. Fromont
- Roberto Francischello
- Emanuele Neri
- Salvador Capella-Gutiérrez
- Arcadi Navarro
- Fred Prior
- Jonathan P. Bona
- Pilar Nicolás Jiménez
- Martijn P. A. Starmans
- Karim Lekadir
- Jordi Rambla
Institutionen
- Centre for Genomic Regulation(ES)
- Institute of Science and Technology
- Gdańsk Medical University(PL)
- Hospital Clínic de Barcelona(ES)
- University of Arkansas for Medical Sciences(US)
- University of the Basque Country(ES)
- Umeå University(SE)
- University of Pisa(IT)
- Barcelona Supercomputing Center(ES)
- Universitat Politècnica de Catalunya(ES)
- Institució Catalana de Recerca i Estudis Avançats(ES)
- Universitat Pompeu Fabra(ES)
- Pasqual Maragall Foundation(ES)
- Erasmus MC(NL)
- Artificial Intelligence in Medicine (Canada)(CA)
- Universitat de Barcelona(ES)