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Genomic risk score offers predictive performance comparable to clinical risk factors for ischaemic stroke

Authors :
Tingting Wang
Agus Salim
Gad Abraham
Joanna M. M. Howson
John Danesh
Adam S. Butterworth
Michael Inouye
Rainer Malik
Martin Dichgans
Ekaterina Yonova-Doing
Butterworth, Adam S [0000-0002-6915-9015]
Howson, Joanna MM [0000-0001-7618-0050]
Dichgans, Martin [0000-0002-0654-387X]
Apollo - University of Cambridge Repository
Butterworth, Adam S. [0000-0002-6915-9015]
Howson, Joanna M. M. [0000-0001-7618-0050]
Howson, Joanna M M [0000-0001-7618-0050]
Source :
Nature Communications, Nature Communications, Vol 10, Iss 1, Pp 1-10 (2019), Nature Communications 10(1), 5819 (2019). doi:10.1038/s41467-019-13848-1, essn: 2041-1723, nlmid: 101528555, PubMed Central, Apollo, DOAJ-Articles, OpenAIRE
Publication Year :
2019
Publisher :
Nature Publishing Group UK, 2019.

Abstract

Recent genome-wide association studies in stroke have enabled the generation of genomic risk scores (GRS) but their predictive power has been modest compared to established stroke risk factors. Here, using a meta-scoring approach, we develop a metaGRS for ischaemic stroke (IS) and analyse this score in the UK Biobank (n = 395,393; 3075 IS events by age 75). The metaGRS hazard ratio for IS (1.26, 95% CI 1.22–1.31 per metaGRS standard deviation) doubles that of a previous GRS, identifying a subset of individuals at monogenic levels of risk: the top 0.25% of metaGRS have three-fold risk of IS. The metaGRS is similarly or more predictive compared to several risk factors, such as family history, blood pressure, body mass index, and smoking. We estimate the reductions needed in modifiable risk factors for individuals with different levels of genomic risk and suggest that, for individuals with high metaGRS, achieving risk factor levels recommended by current guidelines may be insufficient to mitigate risk.<br />Stroke risk is influenced by genetic and lifestyle factors and previously a genomic risk score (GRS) for stroke was proposed, albeit with limited predictive power. Here, Abraham et al. develop a metaGRS that is composed of several stroke-related GRSs and demonstrate improved predictive power compared with individual GRS or classic risk factors.

Details

Language :
English
ISSN :
20411723
Volume :
10
Database :
OpenAIRE
Journal :
Nature Communications
Accession number :
edsair.doi.dedup.....025033106b3c37aaa10ce8de9c9e2c58