Project cooperationUpdated on 28 December 2025
Virtual Human Twins (VHTs) for integrated clinical decision support in prevention and diagnosis HORIZON-HLTH-2027-03-TOOL-04
Professor at Vytautas Magnus University
Kaunas, Lithuania
About
Objectives (what we will deliver)
O1 — Patient-specific NeuroVHT models that are multi-scale (behaviour → signals → imaging) and longitudinal (updates with new evidence over time), producing an interpretable risk state and confidence.
O2 — Integrated multi-modal screening pipeline that fuses digital biomarkers (pen/keyboard/gait/voice), EEG, and multimodal neuroimaging (MRI+PET) into a unified VHT representation.
O3 — Clinically validated decision support for prevention/diagnosis: earlier identification of high-risk individuals, reduced false referrals, and support for personalised diagnostic workups.
O4 — Interoperable assets made available to the European VHT ecosystem (models, pipelines, documentation, evaluation protocols), aligned with platform specifications and community practices.
Approach
B1. Multi-modal data backbone. Combine: (i) neuroimaging (sMRI, FDG-PET), (ii) electrophysiology (resting-state EEG; visual stimulus EEG), (iii) digital biomarkers from at-home or low-cost tests: handwriting spirals, keystroke dynamics, gait accelerometers, and voice.
B2. Representation-first modelling. Build on our demonstrated advantage of transforming raw signals into information-rich representations (e.g., time–frequency images) and then applying deep models/transfer learning for robust screening.
B3. Hybrid VHT modelling.
Similar opportunities
Project cooperation
Virtual Human Twin Models for Brain Tumour Progression Modelling & Personalised Treatment Response
Robertas Damaševičius
Professor at Vytautas Magnus University
Kaunas, Lithuania
Expertise
Robertas Damaševičius
Professor at Vytautas Magnus University
Kaunas, Lithuania
Project cooperation
Jaime Correia
Innovation Manager at INEGI
Porto, Portugal