Conference Program Home
  My Program

All Times EDT

Abstract Details

Activity Number: 186 - Statistical Methods for Assessing Genomic Heterogeneity
Type: Topic Contributed
Date/Time: Monday, August 8, 2022 : 2:00 PM to 3:50 PM
Sponsor: Section on Statistics in Genomics and Genetics
Abstract #323566
Title: Exploiting Deep Transfer Learning for the Prediction of Functional Noncoding Variants Using Genomic Sequence
Author(s): Li Chen*
Companies: Indiana University
Keywords: Transfer learning; Genetics; Deep learning; Noncoding variants; GWAS; MPRA
Abstract:

Though genome-wide association studies have identified tens of thousands of variants associated with complex traits and most of them fall within the noncoding regions, they may not the causal ones. The development of high- throughput functional assays leads to the discovery of experimental validated noncoding functional variants. However, these validated variants are rare due to technical difficulty and financial cost. The small sample size of validated variants makes it less reliable to develop a supervised machine learning model for achieving a whole genome-wide prediction of noncoding causal variants. We will exploit a deep transfer learning model, which is based on convolutional neural network, to improve the prediction for functional noncoding variants. To address the challenge of small sample size, the transfer learning model leverages both large-scale generic functional noncoding variants to improve the learning of low-level features and context-specific functional noncoding variants to learn high-level features toward the context-specific prediction task.


Authors who are presenting talks have a * after their name.

Back to the full JSM 2022 program