Table of Contents
Fine-mApping of causal genes for BInary Outcomes (FABIO) is a TWAS fine-mapping method that relies on a probit model to directly relate multiple genetically regulated gene expression (GReX) to binary outcome in TWAS fine-mapping. Additionally, it jointly models all genes located on the same chromosome to account for the correlation among GReX arising from cis-SNP LD and expression correlation across genomic regions. Through a Markov chain Monte Carlo (MCMC) algorithm, it obtains the posterior probability of having a non-zero effect for each gene, which is also known as the posterior inclusion probability (PIP). PIP serves as an important measure of evidence for the gene’s association with the outcome trait, and FABIO nominates signal genes based PIP.
Citation #
Haihan Zhang, Kevin He, Lam C. Tsoi, and Xiang Zhou#. FABIO: TWAS Fine-mapping to Prioritize Causal Genes for Binary Traits.
Contact #
For any questions or feedbacks on FABIO software, please feel free to leave messages on the github issues or contact me through email: hhzhang@umich.edu