ProjektkooperationAktualisiert am 27. Dezember 2025
Virtual Human Twin Models for Brain Tumour Progression Modelling & Personalised Treatment Response HORIZON-MISS-2026-02-CANCER-01
Details
Specific objectives (science & tech)
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O1. Multiscale VHT core: tumour–host models spanning molecular → cellular → tissue/organ levels, capturing infiltration, angiogenesis, oedema, therapy response and resistance.
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O2. Patient-specific parameterisation: infer VHT parameters from MRI (multi-sequence), pathology-derived phenotypes, (when available) omics/immune profiles, and real-world clinical data; represent uncertainty explicitly.
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O3. Longitudinal updating: “twin refresh” after each follow-up scan/clinical event using Bayesian/data-assimilation methods to track progression under therapy.
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O4. Clinically meaningful validation: demonstrate predictive/decision utility for progression and treatment response, with usability evidence for clinical uptake.
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O5. Open, interoperable delivery: publish reusable model/data assets with metadata in line with EU requirements and platform integration.
Core innovation (what is new)
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Mechanism + AI coupling: AI provides robust patient-specific states (tumour compartments, uncertainty, phenotypes); mechanistic simulators provide time-evolving causal dynamics and counterfactual treatment testing.
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Explainable VHT “drivers”: attention/XAI outputs are aligned to mechanistic variables (e.g., infiltration rate, radiosensitivity proxies) to produce actionable explanations, not just heatmaps.
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Interoperability by design: assets packaged as containers/APIs for integration into EU platforms and imaging ecosystems. +
2) IMPACT
Contribution to expected outcomes
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Advanced multiscale VHTs used by multidisciplinary researchers to understand onset/progression mechanisms (tumour–host–immune interactions; therapy resistance).
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VHT-based solutions for personalised treatment (simulated therapy pathways with uncertainty) enabling improved treatment stratification.
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Access via UNCAN.eu + Advanced VHT Platform with open-science assets and reusability across Europe.
Key exploitable results
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VHT-Brain Engine (hybrid mechanistic + AI inference, HPC-ready)
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Longitudinal “twin refresh” toolkit (calibrated updating from follow-up imaging)
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Clinician-facing decision dashboard (uncertainty-aware scenario comparison; explainability)
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Open benchmarks & synthetic twin generator (privacy-preserving validation and stress tests)
3) IMPLEMENTATION
Consortium partners:
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Clinical neuro-oncology partners: cohorts, endpoints, tumour board workflow integration, prospective observational validation.
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Your AI group (key competence): transformer segmentation, explainable attention, multimodal fusion, optimisation, survival/outcome modelling—feeding patient-specific states and uncertainty into the VHT.
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Mechanistic modelling/HPC partners: tumour growth/invasion solvers, therapy PK/PD modules, scalable computing.
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Data/standards & platform partners: FAIRification, metadata pipelines, UNCAN.eu and VHT platform asset packaging and interoperability.
Work plan (WPs)
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WP1 Coordination, ethics, patient involvement (sex/gender considerations; governance)
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WP2 FAIR multimodal data pipeline (imaging + clinical + optional omics/immune; harmonisation; metadata)
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WP3 AI perception layer (segmentation/classification/phenotypes; XAI/attention; uncertainty)
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WP4 Multiscale VHT engine (mechanistic models + AI coupling; twin refresh)
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WP5 Verification, validation & clinical usability (retrospective + observational prospective; decision studies)
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WP6 & Advanced VHT Platform integration + open science (assets, APIs, documentation)
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WP7 Mission cluster networking (budgeted participation in the Cancer Mission “Understanding” cluster)
Organisation
Ähnliche Einträge
Projektkooperation
- Early - project idea
Robertas Damaševičius
Professor bei Kaunas University of Technology
Kaunas, Litauen
Expertise
Perception, Multimodal Learning, and Reasoning
Zongru SHAO
Senior Scientist bei Silicon Austria Labs GmbH
Linz, Österreich
Expertise
- Health
Robertas Damaševičius
Professor bei Kaunas University of Technology
Kaunas, Litauen