Continuous stratification for improved prevention, treatment, and rehabilitation of stroke patients using digital twins and AI

HealthHORIZON-RIAID: 101080875
EC Contribution
€56,985
Consortium Size
16 orgs
Start Year
2023
Summary

State-of-the-art stratification today is based on machine-learning (ML) algorithms, trained on large cohort data. This has two main limitations: a) such ML-models cannot use all the variety of different data that is generated about a patient, b) stratification is thus only done intermittently, implying out-dated and sub-optimal care decisions. To remedy this, we herein present a new concept and technology - continuous stratification, using our new STRATIF-AI platform. In continuous stratification, all data generated about a patient is cumulatively stored in a Personal Data Vault, controlled by the patient. These personal data continuously updates our world-unique digital twins. The unique potential with our twins comes from the hybrid architecture, combining mechanistic, multi-scale, and multi-organ models with ML and bioinformatics. This allows us to simulate patient-specific responses to changes in diet, exercise, and certain medications, and see changes on both an intracellular, organ, and whole-body level, ranging from seconds to years. We also combine semantic harmonization with federated learning to securely re-train the various sub-models, when new data become available in one of the cohort databases. In this project, we will for the first time use this cutting-edge technology to connect a series of apps that together covers an entire patient journey. Using 6 new clinical studies, involving 8 new partner hospitals, we will both refine and validate the models, and demonstrate how the same digital twin can follow a patient across different apps, covering all phases of stroke: from prevention, to acute treatment, and rehabilitation. Our scalable platform for continuous stratification forms the foundation for a new interconnected and patient-centric healthcare system.

Consortium (16)

Project Results (14)

Source: CORDIS, the EU research results database.

Publications (5)
A physiologically-based digital twin for alcohol consumption – predicting real-life drinking responses and long-term plasma PEth
npj Digital Medicine· 2024DOI
Henrik Podéus; Christian Simonsson; William Lövfors; Patrik Nasr; Mattias Ekstedt; Peter Lundberg; Gunnar Cedersund; Stergios Kechagias; Henrik Podéus; Christian Simonsson; Patrik Nasr; Mattias Ekstedt; Stergios Kechagias; Peter Lundberg; William Lövfors; Gunnar Cedersund
A unified framework for prediction of liver steatosis dynamics in response to different diet and drug interventions
Clinical Nutrition· 2024DOI
Christian Simonsson, Elin Nyman, Peter Gennemark, Peter Gustafsson, Ingrid Hotz, Mattias Ekstedt, Peter Lundberg, Gunnar Cedersund
Predictors of social risk for post-ischemic stroke reintegration
Scientific Reports· 2024DOI
Katryna K. Cisek, Thi Nguyet Que Nguyen, Alejandro Garcia-Rudolph, Joan Saurí, Helard Becerra Martinez, Andrew Hines, John D. Kelleher
HURON: A Quantitative Framework for Assessing Human Readability in Ontologies
IEEE Access· 2023DOI
Francisco Abad-Navarro, Catalina Martínez-Costa, Jesualdo Tomás Fernández-Breis
‘SNOMEDizing’ Questionnaires for Standardizing Stroke Registry Data
Digital Health and Informatics Innovations for Sustainable Health Care SystemsDOI
Andrea Riedel, Stefan Schulz, Catalina Martínez Costa
Deliverables (8)
Other Results (1)
Periodic Reporting for period 1 - STRATIF-AI (Continuous stratification for improved prevention, treatment, and rehabilitation of stroke patients using digital twins and AI)