top of page

Create Your First Project

Start adding your projects to your portfolio. Click on "Manage Projects" to get started

Deep interpretability for GWAS

Type de projet

Préimpression

Date

03 juil. 2020

Rôle

Consultant

Auteurs

Deepak Sharma, Audrey Durand, Marc-André Legault, Louis-Philippe Lemieux Perreault, Audrey Lemaçon, Marie-Pierre Dubé, Joelle Pineau

Genome-Wide Association Studies are typically conducted using linear models to find genetic variants associated with common diseases. In these studies, association testing is done on a variant-by-variant basis, possibly missing out on non-linear interaction effects between variants. Deep networks can be used to model these interactions, but they are difficult to train and interpret on large genetic datasets. We propose a method that uses the gradient based deep interpretability technique named DeepLIFT to show that known diabetes genetic risk factors can be identified using deep models along with possibly novel associations

Numéro de téléphone

+1 (581) 681 - 9414

RDV sur les réseaux
  • LinkedIn
  • Twitter

© 2024 Par Audrey Lemaçon

Propulsé et sécurisé par Wix

bottom of page