NinimHMDA: neural integration of neighborhood information on a multiplex heterogeneous network for multiple types of human Microbe-Disease association

Bioinformatics. 2021 Apr 5;36(24):5665-5671. doi: 10.1093/bioinformatics/btaa1080.

Abstract

Motivation: Many computational methods have been recently proposed to identify differentially abundant microbes related to a single disease; however, few studies have focused on large-scale microbe-disease association prediction using existing experimentally verified associations. This area has critical meanings. For example, it can help to rank and select potential candidate microbes for different diseases at-scale for downstream lab validation experiments and it utilizes existing evidence instead of the microbiome abundance data which usually costs money and time to generate.

Results: We construct a multiplex heterogeneous network (MHEN) using human microbe-disease association database, Disbiome and other prior biological databases, and define the large-scale human microbe-disease association prediction as link prediction problems on MHEN. We develop an end-to-end graph convolutional neural network-based mining model NinimHMDA which can not only integrate different prior biological knowledge but also predict different types of microbe-disease associations (e.g. a microbe may be reduced or elevated under the impact of a disease) using one-time model training. To the best of our knowledge, this is the first method that targets on predicting different association types between microbes and diseases. Results from large-scale cross validation and case studies show that our model is highly competitive compared to other commonly used approaches.

Availabilityand implementation: The codes are available at Github https://github.com/yuanjing-ma/NinimHMDA.

Supplementary information: Supplementary data are available at Bioinformatics online.