Rönnegård, Lars
- Institutionen för husdjurens biovetenskaper, Sveriges lantbruksuniversitet
- Högskolan Dalarna
Improving inference in large-scale genetic data linked to electronic medical record data requires the development of novel computationally efficient regression methods. Here, the authors develop a Bayesian approach for association analyses to improve SNP-heritability estimation, discovery, fine-mapping and genomic prediction.We develop a Bayesian model (BayesRR-RC) that provides robust SNP-heritability estimation, an alternative to marker discovery, and accurate genomic prediction, taking 22 seconds per iteration to estimate 8.4 million SNP-effects and 78 SNP-heritability parameters in the UK Biobank. We find that only = 95% probability of contributing >= 0.001% to the genetic variance of these four traits. Our open-source software (GMRM) provides a scalable alternative to current approaches for biobank data.
Nature Communications
2021, volym: 12, nummer: 1, artikelnummer: 6972
Utgivare: NATURE PORTFOLIO
SDG3 God hälsa och välbefinnande
Bioinformatik (beräkningsbiologi)
Genetik och genomik
https://res.slu.se/id/publ/114699