isoMIGA: Expression and Splicing QTL Summary Statistics in Human Microglia
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下载链接:
https://zenodo.org/record/8250770
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资源简介:
https://github.com/RajLabMSSM/isoMiGA
Full associations and top association summary statistics for QTLs mapped in a multi-ethnic meta-analysis of human microglia, as part of the isoform-centric Microglia Genomic Atlas (isoMiGA) project.
Sample size = 555 samples from 391 unique donors
6 cohorts (Raj MFG, Raj STG, Raj, SVZ, Raj, THA, Roussos, Gaffney) meta-analysed using the linear mixed model random-effects meta-analysis software mmQTL (PMID: 35058635).
Each file has the following naming convention:
{REFERENCE}_{PHENOTYPE}_{ASSOC}.tsv.gz
References
The following two transcript references were used for mapping phenotypes:
1. GENCODE - GENCODE v38 comprehensive transcripts (https://www.gencodegenes.org/human/release_38.html)
2. Union - a union of all GENCODE v38 transcripts with an additional 35,879 novel transcripts identified from long-read RNA-seq in 30 human microglia samples. GTF to be uploaded in Zenodo.
Phenotypes
The following phenotypes were tested for genetic association:
expression: total gene expression of each gene following voom normalization of read counts.
transcript: transcript usage - each transcript expression normalized by TPM divided by the total TPM for that gene
leafcutter: junction usage using the Leafcutter framework to count and cluster intron-splicing junction reads. Each phenotype is the relative usage of the intron against the total count of the introns within that cluster.
SUPPA_A3: alternate 3' splice site usage, as identified by SUPPA2 from transcript TPMs
SUPPA_A5: alternate 5' splice site usage
SUPPA_AF: alternate first exon usage
SUPPA_AL: alternate last exon usage
SUPPA_RI: intron retention usage
SUPPA_SE: exon skipping usage
All phenotype matrices were scaled and centred and then quantile normalized.
Associations
Top associations (top_assoc.tsv.gz) list the SNP-feature pair with the lowest adjusted P-value (qval) for that feature.
Full associations (full_assoc.tsv.gz) list all tested SNP-feature pairs.
Data dictionary
The columns of the two association files only differ by the presence of the qval column in the top associations.
feature: the phenotype being tested
variant_id: the genetic variant being tested
chr: chromosome
pos: position (hg38)
ref: reference allele
alt: alternate allele
Allele: the effect allele that the beta is relative to
beta_tissue_0: Gaffney cohort beta
sd_tissue_0: Gaffney cohort standard error
z_tissue_0: Gafney cohort Z-score
beta_tissue_1: Roussos cohort beta
sd_tissue_1: Roussos cohort standard error
z_tissue_1: Roussos cohort Z-core
beta_tissue_2: Raj MFG cohort beta
sd_tissue_2: Raj MFG cohort standard error
z_tissue_2: Raj MFG cohort Z-score
beta_tissue_3: Raj STG cohort beta
sd_tissue_3: Raj STG cohort standard error
z_tissue_3: Raj STG cohort Z-score
beta_tissue_4: Raj SVZ cohort beta
sd_tissue_4: Raj SVZ cohort standard error
z_tissue_4: Raj SVZ cohort Z-score
beta_tissue_5: Raj THA cohort beta
sd_tissue_5: Raj THA cohort standard error
z_tissue_5: Raj THA cohort Z-score
fixed_beta: Fixed effect meta-analysis estimate of the beta
fixed_sd: Fixed effect meta-analysis standard error of the beta
fixed_z: Fixed effect meta-analysis Z-score
Random_Z: Random effect meta-analysis Z-score
Fixed_P: Fixed effect meta-analysis P-value
Random_P: Random effect meta-analysis P-value
Fixed_bonf: Fixed effect meta-analysis P-value adjusted for the number of variants tested in that feature (Bonferroni)
Random_bonf: Random effect meta-analysis P-value adjusted for the number of variants tested in that feature (Bonferroni)
Fixed_FDR: Fixed effect meta-analysis P-value adjusted for the number of variants tested in that feature (FDR)
Random_FDR: Random effect meta-analysis P-value adjusted for the number of variants tested in that feature (FDR)
qval: Random effect meta-analysis P-value adjusted for the number of variants tested in that feature (FDR) and for the number of features tested in the dataset (Storey's q value)
创建时间:
2023-08-28



