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. 2018 Oct 12;42(8):754–771. doi: 10.1002/gepi.22159

Table 1.

The number of SNPs included in the analysis and the tuning parameters that require cross validation, for the MATURA data sets, for the 11 methods.

Method Number of SNPs for anti‐TNF cohort Number of SNPs for MTX cohort Tuning parameters that require cross validation
Lasso
Elastic Net 40,000 42,000 Penalty parameter
Ridge
RF 9,000 9,000 Number of variables to split
SVR 9,000 9,000 Standard deviation for Gaussian RBF kernel
SPLS 40,000 42,000 Number of components, sparsity parameter
GCTA‐GREML 4,542,024 6,291,430 NA
PRSice*
BSLMM 40,000 42,000 NA
SkyNet 9,000 9,000 NA
LDpred 340,000 370,000 NA

Note. The prediction is based on the SNP effects only. For the PBC data set, we use SVM (Support Vector Machine) instead of SVR on account of binary outcome.

*

For PRSice, the LD‐clumping is performed within the software, resulting in ≈ 140,000 SNPs for the anti‐TNF cohort, and ≈ 170, SNPs for the MTX cohort.