clinical validation of Artificial Intelligence for providing a personalized motor clinical profile assessment and rehabilitation of upper limb in children with unilateral Cerebral Palsy

HORIZON.2.1HORIZON-RIAID: 101057309
EC Contribution
€64,941
Consortium Size
12 orgs
Summary

Unilateral Cerebral palsy (UCP) is the most common neurological chronic disease in childhood with a significant burden on children, their families and health care system. AInCP aims to develop evidence-based clinical Decision Support Tools (DST) for personalized functional diagnosis, Upper Limb (UpL) assessment and home-based intervention for children with UCP, by developing, testing and validating trustworthy Artificial Intelligence (AI) and cost-effective strategies. The AInCP approach will: i) establish a clinical diagnosis and accurate prognosis for treatment response of individual UCP profiles, by employing a multimodal approach including clinical phenotyping, advanced brain imaging and real-life monitoring of UpL function, and ii) provide personalized home-based treatment, from advanced ICT and AI technologies. The AInCP will build upon personalized diagnostic and rehabilitative DST (dDST and rDST) to be developed and validated through large observational and rehabilitation studies, including at least 200 and 150 children with UCP, respectively. Using data driven and AI approach, dDST and rDST will be combined for developing a theranostic DST (tDST) that will allow the re-designing of an economical, ethical, sustainable decision-making process for delivering a personalized and validated approach, focused on the care, monitoring and rehabilitation of UpL in children with UCP. AInCP is a significant example of a transdisciplinary approach, where all project collaborators (clinicians, data scientists, physicists, engineers, economists, ethicists, SMEs, children and parent associations) will work closely together in building the AInCP approach. This approach will, therefore, hinge on transdisciplinary contributions, multi-dimensional data, sets of innovative devices and fair AI-based algorithms, clinically effective and able to reduce users? and market barriers of acceptability, reimbursability and adoption of the proposed solution.

Consortium (12)

Project Results (23)

Source: CORDIS, the EU research results database.

Publications (9)
Daily‐life executive functions and bimanual performance in children with unilateral cerebral palsy
Developmental Medicine & Child Neurology· 2025DOI
Alexandra Kalkantzi, Lize Kleeren, Dieter Baeyens, Lisa Decraene, Monica Crotti, Katrijn Klingels, Anja Van Campenhout, Geert Verheyden, Els Ortibus, Hilde Feys, Lisa Mailleux
Soft Robots Proprioception Through Stretchable Laser‐Induced Graphene Strain Sensors
Advanced Intelligent Systems· 2025DOI
Giovanna De Luca, Anna Chiara Bressi, Radan Pathan, Niccolò Pagliarani, Martina Maselli, Francesco Greco, Matteo Cianchetti
The wide world of technological telerehabilitation for pediatric neurologic and neurodevelopmental disorders – a systematic review
Frontiers in Public Health· 2025DOI
Benedetta Del Lucchese, Stefano Parravicini, Silvia Filogna, Gloria Mangani, Elena Beani, Maria Chiara Di Lieto, Alessandra Bardoni, Marta Bertamino, Marta Papini, Chiara Tacchino, Francesca Fedeli, Giovanni Cioni, Giuseppina Sgandurra, null null
Wearable sensors for measuring spontaneous upper limb use in children with unilateral cerebral palsy and typical development
Journal of NeuroEngineering and Rehabilitation· 2025DOI
Elena Beani, Mattia Franchi de ’Cavalieri, Silvia Filogna, Veronica Barzacchi, Matteo Cianchetti, Martina Maselli, Giada Martini, Valentina Menici, Giuseppe Prencipe, Elisa Sicola, Giovanni Cioni, Giuseppina Sgandurra
Artificial Intelligence in Medicine
Artificial Intelligence in Medicine· 2024DOI
Tommaso Turchi; Giuseppe Prencipe; Alessio Malizia; Silvia Filogna; Francesco Latrofa; Giuseppina Sgandurra
Le regulatory sandboxes come strumento etico per un’intelligenza artificiale affidabile.” Research Trends in Humanities 12: 39-44
RTH – Research Trends in Humanities. Education & Philosophy· 2024DOI
Corrado Claverini
Pathways to democratized healthcare: Envisioning human-centered AI-as-a-service for customized diagnosis and rehabilitation
Artificial Intelligence in Medicine· 2024DOI
Tommaso Turchi, Giuseppe Prencipe, Alessio Malizia, Silvia Filogna, Francesco Latrofa, Giuseppina Sgandurra
Sensorizing objects with soft and flexible sensors based on Laser-Induced Graphene
2024 46th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC)· 2024DOI
Giovanna De Luca, Anna Chiara Bressi, Martina Maselli, Francesco Greco, Matteo Cianchetti
Telemedicine and AI: From Co-Design to Explainability
2024 IEEE 8th Forum on Research and Technologies for Society and Industry Innovation (RTSI)· 2024DOI
Silvia Filogna, Alessio Malizia, Daniele Mazzei, Giuseppe Prencipe, Giuseppina Sgandurra, Tommaso Turchi
Deliverables (13)
Other Results (1)
Periodic Reporting for period 2 - AInCP (clinical validation of Artificial Intelligence for providing a personalized motor clinical profile assessment and rehabilitation of upper limb in children with unilateral Cerebral Palsy)