01 Dec 2019

NeurIPS 2018

Authors: Daniel Neil, Joss Briody, Alix Lacoste, Aaron Sim, Paidi Creed, Amir Saffari

Abstract

In this work, we provide a new formulation for Graph Convolutional Neural Networks (GCNNs) for link prediction on graph data that addresses common challenges for biomedical knowledge graphs (KGs). We introduce a regularized attention mechanism to GCNNs that not only improves performance on clean datasets, but also favorably accommodates noise in KGs, a pervasive issue in real-world applications. Further, we explore new visualization methods for interpretable modelling and to illustrate how the learned representation can be exploited to automate dataset denoising. The results are demonstrated on a synthetic dataset, the common benchmark dataset FB15k-237, and a large biomedical knowledge graph derived from a combination of noisy and clean data sources. Using these improvements, we visualize a learned model's representation of the disease cystic fibrosis and demonstrate how to interrogate a neural network to show the potential of PPARG as a candidate therapeutic target for rheumatoid arthritis.


Back to publications

Latest publications

01 May 2024
Journal of Biomedical Semantics, volume 15, Article number: 5 (2024)
Elucidating the Semantics-Topology Trade-off for Knowledge Inference-Based Pharmacological Discovery
Read more
12 Oct 2023
Translational Neurodegeneration. 2023; 12: 47
Janus kinase inhibitors are potential therapeutics for amyotrophic lateral sclerosis
Read more
09 Oct 2023
FRONTIERS IN GENETICS
Learning the kernel for rare variant genetic association test
Read more