主 题: Statistical approaches for predicting the functional effect of 
报告人: Prof. Iuliana Ionita-Laza (Columbia University)
时 间: 2016-06-30 12:30-13:30 
地 点: 北京大学镜春园全斋 29 
  
 
  Over the past few years, large scale genomics projects such as 
  
the ENCODE and Roadmap Epigenomics have produced genome-wide data on a 
  
large number of biochemical assays for a diverse set of human cell types 
  
and tissues. Such data can play a critical role in identifying 
  
putatively causal variants among the abundant natural variation that 
  
occurs at a locus of interest. I will discuss challenges in using these 
  
data for predicting functional effects of variants, and discuss recent 
  
work on unsupervised approaches to integrate these diverse sets of 
  
annotations into a single predictor of functional importance. I will 
  
demonstrate the usefulness of such scores in the context of complex 
  
disease genetics. In the second part, I will discuss some quantile 
  
regression methods to identify eQTLs (expression quantitative trait 
  
loci) using data across many tissues from the GTEx project, a major 
  
effort to study the effect of genetic variants on gene expression in 
  
multiple tissues.