Englander Institute for Precision Medicine

Comparison of genetic risk prediction models to improve prediction of coronary heart disease in two large cohorts of the MONICA/KORA study.

TitleComparison of genetic risk prediction models to improve prediction of coronary heart disease in two large cohorts of the MONICA/KORA study.
Publication TypeJournal Article
Year of Publication2021
AuthorsBauer A, Zierer A, Gieger C, Buyukozkan M, Müller-Nurasyid M, Grallert H, Meisinger C, Strauch K, Prokisch H, Roden M, Peters A, Krumsiek J, Herder C, Koenig W, Thorand B, Huth C
JournalGenet Epidemiol
Volume45
Issue6
Pagination633-650
Date Published2021 Sep
ISSN1098-2272
KeywordsCohort Studies, Coronary Disease, Humans, Models, Genetic, Polymorphism, Single Nucleotide, Risk Assessment, Risk Factors
Abstract

It is still unclear how genetic information, provided as single-nucleotide polymorphisms (SNPs), can be most effectively integrated into risk prediction models for coronary heart disease (CHD) to add significant predictive value beyond clinical risk models. For the present study, a population-based case-cohort was used as a trainingset (451 incident cases, 1488 noncases) and an independent cohort as testset (160 incident cases, 2749 noncases). The following strategies to quantify genetic information were compared: A weighted genetic risk score including Metabochip SNPs associated with CHD in the literature (GRS ); selection of the most predictive SNPs among these literature-confirmed variants using priority-Lasso (PL ); validation of two comprehensive polygenic risk scores: GRS based on Metabochip data, and GRS (available in the testset only) based on cross-validated genome-wide genotyping data. We used Cox regression to assess associations with incident CHD. C-index, category-free net reclassification index (cfNRI) and relative integrated discrimination improvement (IDI ) were used to quantify the predictive performance of genetic information beyond Framingham risk score variables. In contrast to GRS and PL , GRS significantly improved the prediction (delta C-index [95% confidence interval]: 0.0087 [0.0044, 0.0130]; IDI : 0.0509 [0.0131, 0.0894]; cfNRI improved only in cases: 0.1761 [0.0253, 0.3219]). GRS yielded slightly worse prediction results than GRS .

DOI10.1002/gepi.22389
Alternate JournalGenet Epidemiol
PubMed ID34082474

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