Skip to main content
. 2024 Apr 10;4(4):100539. doi: 10.1016/j.xgen.2024.100539

Figure 1.

Figure 1

MUSSEL workflow

(Step 0) Apply LDpred2 to each of the K training populations (ancestry groups) to obtain estimated causal SNP proportions (pk,k=1,,K) and heritability (hk2,k=1,,K) parameters based on the tuning set; these parameters will be used to specify the prior distributions and tuning-parameter settings for Bayesian learning with MUSS. (Step 1) MUSS: jointly model all training populations to obtain a total of (L × K) PRS models under L different tuning-parameter settings for Pr(δ1j,,δKj) (functions of pk s) and ρk1k2 s across K training populations. (Step 2) for each target population, conduct ensemble learning (EL) via a super learner (SL) algorithm with a set of base learners (e.g., elastic net regression, ridge regression, and linear regression) to train an “optimal” linear combination of the (L × K) PRS models from the MUSS step to obtain the final MUSSEL model. The prediction performance of the final PRS derived using MUSSEL should be evaluated on an independent testing set.