Analysis of functional genetic variants in RNA processing and expression

NIH RePORTER · NIH · U01 · $526,757 · view on reporter.nih.gov ↗

Abstract

Project Summary The goal of this project is to functionally annotate genetic variants in post-transcriptional regulation of RNA expression, which extends and complements the current focus of ENCODE data analysis. Recently, tremendous success has been achieved in constructing a catalog of genetic variants in disease genomes or across population. The next great challenge is to identify causal variants and elucidate their potential function in biological and disease processes. To this end, research efforts have been directed to studying variants located in protein-coding, promoter, and splice site regions due to their apparent impacts on gene expression. However, many of the newly identified disease-associated variants reside in other non-coding regions, such as introns, that may confer regulatory function to the related gene. The mechanisms of these variants have been hard to decipher. It is expected that many of them may function at the post-transcriptional level, thus affecting mRNA expression. In human, a myriad of processes mediate RNA expression at the post-transcriptional stage, such as splicing, editing, polyadenylation and mRNA decay. Post-transcriptional regulation is extremely versatile, yet closely regulated, affecting most human genes. Despite the importance, how to accurately identify functional genetic variants in these processes remains a key question in the field. To address this question, the large collection of ENCODE expression and protein-binding data represent an invaluable resource. We will develop novel methodologies to make full use of the ENCODE and other publicly available data sets, complemented by further bioinformatic prediction and experimental validations. This work will allow a previously unattained level of understanding of genetic variants in post-transcriptional regulation of RNA expression and provide new means to tackle the imperative task of functional annotations of genetic variants.

Key facts

NIH application ID
9898416
Project number
5U01HG009417-04
Recipient
UNIVERSITY OF CALIFORNIA LOS ANGELES
Principal Investigator
Xinshu Grace Xiao
Activity code
U01
Funding institute
NIH
Fiscal year
2020
Award amount
$526,757
Award type
5
Project period
2017-02-01 → 2023-01-31