Fine-mapping and QTL tissue-sharing information improves the reliability of causal gene identification.
Alvaro N BarbeiraOwen J MeliaYanyu LiangRodrigo BonazzolaGao WangHeather E WheelerFrançois AguetKristin G ArdlieXiaoquan WenHae K ImPublished in: Genetic epidemiology (2020)
The integration of transcriptomic studies and genome-wide association studies (GWAS) via imputed expression has seen extensive application in recent years, enabling the functional characterization and causal gene prioritization of GWAS loci. However, the techniques for imputing transcriptomic traits from DNA variation remain underdeveloped. Furthermore, associations found when linking eQTL studies to complex traits through methods like PrediXcan can lead to false positives due to linkage disequilibrium between distinct causal variants. Therefore, the best prediction performance models may not necessarily lead to more reliable causal gene discovery. With the goal of improving discoveries without increasing false positives, we develop and compare multiple transcriptomic imputation approaches using the most recent GTEx release of expression and splicing data on 17,382 RNA-sequencing samples from 948 post-mortem donors in 54 tissues. We find that informing prediction models with posterior causal probability from fine-mapping (dap-g) and borrowing information across tissues (mashr) can lead to better performance in terms of number and proportion of significant associations that are colocalized and the proportion of silver standard genes identified as indicated by precision-recall and receiver operating characteristic curves. All prediction models are made publicly available at predictdb.org.
Keyphrases
- genome wide
- copy number
- single cell
- dna methylation
- genome wide association
- genome wide identification
- poor prognosis
- case control
- rna seq
- gene expression
- high resolution
- health information
- high density
- high throughput
- small molecule
- gold nanoparticles
- social media
- healthcare
- bioinformatics analysis
- human immunodeficiency virus
- mass spectrometry
- machine learning
- artificial intelligence
- men who have sex with men