EPGAT: Gene Essentiality Prediction With Graph Attention Networks

07/19/2020
by   João Schapke, et al.
0

The identification of essential genes/proteins is a critical step towards a better understanding of human biology and pathology. Computational approaches helped to mitigate experimental constraints by exploring machine learning (ML) methods and the correlation of essentiality with biological information, especially protein-protein interaction (PPI) networks, to predict essential genes. Nonetheless, their performance is still limited, as network-based centralities are not exclusive proxies of essentiality, and traditional ML methods are unable to learn from non-Euclidean domains such as graphs. Given these limitations, we proposed EPGAT, an approach for essentiality prediction based on Graph Attention Networks (GATs), which are attention-based Graph Neural Networks (GNNs) that operate on graph-structured data. Our model directly learns patterns of gene essentiality from PPI networks, integrating additional evidence from multiomics data encoded as node attributes. We benchmarked EPGAT for four organisms, including humans, accurately predicting gene essentiality with AUC score ranging from 0.78 to 0.97. Our model significantly outperformed network-based and shallow ML-based methods and achieved a very competitive performance against the state-of-the-art node2vec embedding method. Notably, EPGAT was the most robust approach in scenarios with limited and imbalanced training data. Thus, the proposed approach offers a powerful and effective way to identify essential genes and proteins.

READ FULL TEXT

page 13

page 15

page 18

research
05/08/2020

Predicting gene expression from network topology using graph neural networks

Motivation: It is known that the structure of transcription and protein ...
research
07/12/2019

Towards Probabilistic Generative Models Harnessing Graph Neural Networks for Disease-Gene Prediction

Disease-gene prediction (DGP) refers to the computational challenge of p...
research
09/18/2023

DeepHEN: quantitative prediction essential lncRNA genes and rethinking essentialities of lncRNA genes

Gene essentiality refers to the degree to which a gene is necessary for ...
research
01/16/2020

Graph Attentional Autoencoder for Anticancer Hyperfood Prediction

Recent research efforts have shown the possibility to discover anticance...
research
04/30/2020

SkipGNN: Predicting Molecular Interactions with Skip-Graph Networks

Molecular interaction networks are powerful resources for the discovery....
research
11/13/2021

Quasifibrations of Graphs to Find Symmetries in Biological Networks

A fibration of graphs is an homomorphism that is a local isomorphism of ...
research
06/05/2023

Graph Fourier MMD for Signals on Graphs

While numerous methods have been proposed for computing distances betwee...

Please sign up or login with your details

Forgot password? Click here to reset