Gemini: memory-efficient integration of hundreds of gene networks with high-order pooling

Author:

Woicik Addie1,Zhang Mingxin1,Xu Hanwen1,Mostafavi Sara1,Wang Sheng1

Affiliation:

1. Paul G. Allen School of Computer Science and Engineering, University of Washington , Seattle, WA 98195, United States

Abstract

AbstractMotivationThe exponential growth of genomic sequencing data has created ever-expanding repositories of gene networks. Unsupervised network integration methods are critical to learn informative representations for each gene, which are later used as features for downstream applications. However, these network integration methods must be scalable to account for the increasing number of networks and robust to an uneven distribution of network types within hundreds of gene networks.ResultsTo address these needs, we present Gemini, a novel network integration method that uses memory-efficient high-order pooling to represent and weight each network according to its uniqueness. Gemini then mitigates the uneven network distribution through mixing up existing networks to create many new networks. We find that Gemini leads to more than a 10% improvement in F1 score, 15% improvement in micro-AUPRC, and 63% improvement in macro-AUPRC for human protein function prediction by integrating hundreds of networks from BioGRID, and that Gemini’s performance significantly improves when more networks are added to the input network collection, while Mashup and BIONIC embeddings’ performance deteriorates. Gemini thereby enables memory-efficient and informative network integration for large gene networks and can be used to massively integrate and analyze networks in other domains.Availability and implementationGemini can be accessed at: https://github.com/MinxZ/Gemini.

Funder

Sony Research Award

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

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