Disease areas:
  • heart and blood vessels
  • nutrition and metabolism
Last updated:
Author(s):
Tuomo Kiiskinen, Pyry Helkkula, Kristi Krebs, Juha Karjalainen, Elmo Saarentaus, Nina Mars, Arto Lehisto, Wei Zhou, Mattia Cordioli, Sakari Jukarainen, Joel T. Rämö, Juha Mehtonen, Kumar Veerapen, Markus Räsänen, Sanni Ruotsalainen, Mutaamba Maasha, Teemu Niiranen, Tiinamaija Tuomi, Veikko Salomaa, Mitja Kurki, Matti Pirinen, Aarno Palotie, Mark Daly, Andrea Ganna, Aki S. Havulinna, Lili Milani, Samuli Ripatti
Publish date:
18 January 2023
Journal:
Nature Medicine
PubMed ID:
36653479

Abstract

Little is known about the genetic determinants of medication use in preventing cardiometabolic diseases. Using the Finnish nationwide drug purchase registry with follow-up since 1995, we performed genome-wide association analyses of longitudinal patterns of medication use in hyperlipidemia, hypertension and type 2 diabetes in up to 193,933 individuals (55% women) in the FinnGen study. In meta-analyses of up to 567,671 individuals combining FinnGen with the Estonian Biobank and the UK Biobank, we discovered 333 independent loci (P < 5 × 10-9) associated with medication use. Fine-mapping revealed 494 95% credible sets associated with the total number of medication purchases, changes in medication combinations or treatment discontinuation, including 46 credible sets in 40 loci not associated with the underlying treatment targets. The polygenic risk scores (PRS) for cardiometabolic risk factors were strongly associated with the medication-use behavior. A medication-use enhanced multitrait PRS for coronary artery disease matched the performance of a risk factor-based multitrait coronary artery disease PRS in an independent sample (UK Biobank, n = 343,676). In summary, we demonstrate medication-based strategies for identifying cardiometabolic risk loci and provide genome-wide tools for preventing cardiovascular diseases.

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