MultiomIcs based Risk stratification of Atherosclerotic CardiovascuLar disEase
Acronym
MIRACLE
Description of the granted funding
Atherosclerotic cardiovascular disease (ASCVD) is the leading cause of mortality worldwide. Aside from asymptomatic manifestations, the first sign of clinically significant ASCVD is often a severe clinical event, such as stroke or myocardial infarction (MI). Thus, identifying individuals at high risk is crucial in preventing the fatal consequences of ASCVD. Current risk prediction models based on traditional risk factors, such as SCORE2, have limitations since they do not encompass all mechanisms and intermediary phenotypes leading to ASCVD. Particularly, current risk models fail to consider the disturbance of gene regulatory networks (GRNs) caused by genetic risk factors and diverse longitudinal exposures accumulating during a person's lifetime.Furthermore, the current models predict the combined risk of CAD, PAD and ischemic stroke despite mounting evidence of the heterogeneity of the underlying disease mechanisms. To capture the missing aspects of current ASCVD risk scores, MIRACLE project brings together unique data resources and expertise to provide novel multiomics based prediction models of ASCVD. We aim to (1) Integrate the globally largest CAD, PAD, and stroke GWAS information to identify genetic loci that differ between or are shared by these diseases and their subtypes, (2) Identify sex-specific subtypes of ASCVD patients using transcriptomic phenotyping of plaques and circulating biomarkers, (3) Generate functionally informed polygenic risk scores by combining experimental fine-mapping and gene prioritization approaches with integrative GRN and deep learning modelling. (4) Derive novel risk prediction models incorporating polygenic risk and circulating biomarkers. Providing a new gold standard for prediction models to accurately risk stratify stroke and MI represents a technological breakthrough allowing for earlier diagnoses and treatments of ASCVD.
Show moreStarting year
2023
End year
2027
Granted funding
KLINIKUM DER UNIVERSITAT MUNCHEN (DE)
590 625 €
Third party
DEUTSCHES HERZZENTRUM MUNCHEN (DE)
590 625 €
Participant
UNIVERSITAIR MEDISCH CENTRUM UTRECHT (NL)
639 843.75 €
Participant
UNIVERSITETET I BERGEN (NO)
374 062.5 €
Participant
LUDWIG-MAXIMILIANS-UNIVERSITAET MUENCHEN (DE)
Participant
KAROLINSKA INSTITUTET (SE)
590 625 €
Participant
Amount granted
4 000 000 €
Funder
European Union
Funding instrument
HORIZON EIC Grants
Framework programme
Horizon Europe (HORIZON)
Call
Programme part
The European Innovation Council (EIC) (11739Topic
EIC Pathfinder Challenge: Cardiogenomics (HORIZON-EIC-2022-PATHFINDERCHALLENGES-01-03Call ID
HORIZON-EIC-2022-PATHFINDERCHALLENGES-01 Other information
Funding decision number
101115381