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CHAIMELEON Project: Creation of a Pan-European Repository of Health Imaging Data for the Development of AI-Powered Cancer Management Tools
35
Zitationen
21
Autoren
2022
Jahr
Abstract
The CHAIMELEON project aims to set up a pan-European repository of health imaging data, tools and methodologies, with the ambition to set a standard and provide resources for future AI experimentation for cancer management. The project is a 4 year long, EU-funded project tackling some of the most ambitious research in the fields of biomedical imaging, artificial intelligence and cancer treatment, addressing the four types of cancer that currently have the highest prevalence worldwide: lung, breast, prostate and colorectal. To allow this, clinical partners and external collaborators will populate the repository with multimodality (MR, CT, PET/CT) imaging and related clinical data. Subsequently, AI developers will enable a multimodal analytical data engine facilitating the interpretation, extraction and exploitation of the information stored at the repository. The development and implementation of AI-powered pipelines will enable advancement towards automating data deidentification, curation, annotation, integrity securing and image harmonization. By the end of the project, the usability and performance of the repository as a tool fostering AI experimentation will be technically validated, including a validation subphase by world-class European AI developers, participating in Open Challenges to the AI Community. Upon successful validation of the repository, a set of selected AI tools will undergo early <i>in-silico</i> validation in observational clinical studies coordinated by leading experts in the partner hospitals. Tool performance will be assessed, including external independent validation on hallmark clinical decisions in response to some of the currently most important clinical end points in cancer. The project brings together a consortium of 18 European partners including hospitals, universities, R&D centers and private research companies, constituting an ecosystem of infrastructures, biobanks, AI<i>/in-silico</i> experimentation and cloud computing technologies in oncology.
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Autoren
- Luis Martí‐Bonmatí
- Ana Miguel
- A. Suárez-Garcı́a
- Mario Aznar
- Jean Paul Beregi
- Laure Fournier
- Emanuele Neri
- Andrea Laghi
- Manuela França
- Francesco Sardanelli
- Tobias Penzkofer
- Philippe Lambin
- Ignácio Blanquer
- Marion I. Menzel
- Karine Seymour
- Sergio Figueiras Gómez
- Katharina Krischak
- Ricard Martínez Martínez
- Yisroel Mirsky
- Guang Yang
- Ángel Alberich‐Bayarri
Institutionen
- Collège de France(FR)
- University of Pisa(IT)
- Azienda Ospedaliera Sant'Andrea(IT)
- Centro Hospitalar do Porto(PT)
- IRCCS Policlinico San Donato(IT)
- Istituti di Ricovero e Cura a Carattere Scientifico(IT)
- Charité - Universitätsmedizin Berlin(DE)
- Maastricht University(NL)
- Universitat Politècnica de València(ES)
- Siemens Healthcare (Germany)(DE)
- Technical University of Munich(DE)
- Software (Spain)(ES)
- European Institute for Biomedical Imaging Research(AT)
- Universitat de València(ES)
- Ben-Gurion University of the Negev(IL)
- Imperial College London(GB)
- Center For Biomarker Research In Medicine(AT)