Piotr Jaholkowski
jaholkowskipiotr.bsky.social
Piotr Jaholkowski
@jaholkowskipiotr.bsky.social
MD PhD | Psychiatrist | Postdoc researcher in psychiatric genetics @SFFNORMENT @uio.no
Reposted by Piotr Jaholkowski
All of these features are implemented in a computationally fast manner, thereby allowing scalability to very large datasets as well as large number of outcome variables like voxel-wise or vertex-wise analyses.
May 16, 2025 at 3:22 PM
Reposted by Piotr Jaholkowski
FEMA-Long can perform longitudinal GWAS with SNP*time non-linear interaction to discover SNPs showing time-varying effects. The top part of the Miami plots show SNPs having time-dependent effect compared to longitudinal GWAS (bottom part). Last panel shows the effect of a few selected SNPs over time
May 16, 2025 at 3:22 PM
Reposted by Piotr Jaholkowski
FEMA-Long can model unstructured covariance such as time-varying heritability and genetic correlations which are super critical for longitudinal datasets. Here, using the MoBa dataset, we show time-varying random effects for length, weight, and BMI in the first year of life.
May 16, 2025 at 3:22 PM