
This record contains the real-data resources used in the GTEx-based analyses of the MR.RGM and MR.RGM+ methods. The upload includes two archives: 1) GTEx.zip This archive contains preprocessed genotype and gene expression matrices derived from the GTEx v7 project for muscle skeletal tissue. These files were prepared for direct use in the real-data analysis scripts provided in the associated code repository. 2) GTEx_Analysis_v7_eQTL.tar.gz This archive contains publicly available GTEx v7 eQTL summary files for muscle skeletal tissue, including significant variant–gene pairs and eGenes, downloaded from the GTEx Portal. The files in this record are provided to enable full reproducibility of the real-data analyses reported in the associated manuscript. Users can download and extract the archives and run the provided R scripts without additional preprocessing. Original GTEx data were generated by the GTEx Consortium. This record redistributes derived and reorganized data products for methodological reproducibility only.
Mendelian Randomization Analysis/instrumentation, Bayesian methods, Genotype data, Gene Expression, GTEx, Causal network inference
Mendelian Randomization Analysis/instrumentation, Bayesian methods, Genotype data, Gene Expression, GTEx, Causal network inference
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