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GRANGETTO M. - Contract UE n.n. 825111 "DeepHealt" - H2020-ICT-2018-2020/H2020-ICT-2018-2

Progetto
Health scientific discovery and innovation are expected to quickly move forward under the so called “fourth paradigm of science”, which relies on unifying the traditionally separated and heterogeneous high-performance computing and big data analytics environments. Under this paradigm, the DeepHealth project will provide HPC computing power at the service of biomedical applications; and apply Deep Learning (DL) techniques on large and complex biomedical datasets to support new and more efficient ways of diagnosis, monitoring and treatment of diseases. DeepHealth will develop a flexible and scalable framework for the HPC + Big Data environment, based on two new libraries: the European Distributed Deep Learning Library (EDDLL) and the European Computer Vision Library (ECVL). The framework will be validated in 14 use cases which will allow to train models and provide training data from different medical areas (migraine, dementia, depression, etc.). The resulting trained models, and the libraries, will be integrated and validated in 7 existing biomedical software platforms, which include: a) commercial platforms (e.g. PHILIPS Clinical Decision Support System from or THALES SIX PIAF; and b) research oriented platforms (e.g. CEA`s ExpressIFTM or CRS4`s Digital Pathology). Impact is measured by tracking the time-to-model-in-production (ttmip). Through this approach, DeepHealth will also standardise HPC resources to the needs of DL applications, and underpin the compatibility and uniformity on the set of tools used by medical staff and expert users. The final DeepHealth solution will be compatible with HPC infrastructures ranging from the ones in supercomputing centers to the ones in hospitals. DeepHealth involves 21 partners from 9 European Countries, gathering a multidisciplinary group from research organisations (9), health organisations (4) as well as (4) large and (4) SME industrial partners, with strongcommitment towards innovation, exploitation and sustainability.
  • Dati Generali
  • Pubblicazioni

Dati Generali

Partecipanti

GRANGETTO Marco   Responsabile scientifico  

Dipartimenti coinvolti

INFORMATICA   Principale  

Tipo

H2020 Innovation action

Finanziatore

EUROPEAN COMMISSION
Ente Finanziatore

Partner

Università degli Studi di TORINO

Periodo di attività

Gennaio 1, 2019 - Giugno 30, 2022

Durata progetto

42 mesi

Pubblicazioni

Pubblicazioni

Neural network-derived perfusion maps: A model-free approach to computed tomography perfusion in patients with acute ischemic stroke 
FRONTIERS IN NEUROINFORMATICS
2023
Articolo
Open Access
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