GenNet framework

interpretable deep learning for predicting phenotypes from genetic data

Journal Article (2021)
Author(s)

Arno van Hilten (Erasmus MC)

Steven A. Kushner (Erasmus MC)

Manfred Kayser (Erasmus MC)

M. Arfan Ikram (Erasmus MC)

Hieab H.H. Adams (Erasmus MC)

Caroline C.W. Klaver (Erasmus MC)

Wiro J. Niessen (Erasmus MC, TU Delft - ImPhys/Computational Imaging, TU Delft - ImPhys/Medical Imaging)

Gennady V. Roshchupkin (Erasmus MC)

Research Group
ImPhys/Medical Imaging
DOI related publication
https://doi.org/10.1038/s42003-021-02622-z
More Info
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Publication Year
2021
Language
English
Research Group
ImPhys/Medical Imaging
Journal title
Communications Biology
Issue number
1
Volume number
4
Article number
1094
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419
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Abstract

Applying deep learning in population genomics is challenging because of computational issues and lack of interpretable models. Here, we propose GenNet, a novel open-source deep learning framework for predicting phenotypes from genetic variants. In this framework, interpretable and memory-efficient neural network architectures are constructed by embedding biologically knowledge from public databases, resulting in neural networks that contain only biologically plausible connections. We applied the framework to seventeen phenotypes and found well-replicated genes such as HERC2 and OCA2 for hair and eye color, and novel genes such as ZNF773 and PCNT for schizophrenia. Additionally, the framework identified ubiquitin mediated proteolysis, endocrine system and viral infectious diseases as most predictive biological pathways for schizophrenia. GenNet is a freely available, end-to-end deep learning framework that allows researchers to develop and use interpretable neural networks to obtain novel insights into the genetic architecture of complex traits and diseases.