Litcius/Paper detail

Graph Neural Networks for Multimodal Single-Cell Data Integration

Hongzhi Wen, Jiayuan Ding, Wei Jin, Yiqi Wang, Yuying Xie, Jiliang Tang

2022Proceedings of the 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining74 citationsDOIOpen Access PDF

Abstract

Recent advances in multimodal single-cell technologies have enabled simultaneous acquisitions of multiple omics data from the same cell, providing deeper insights into cellular states and dynamics. However, it is challenging to learn the joint representations from the multimodal data, model the relationship between modalities, and, more importantly, incorporate the vast amount of single-modality datasets into the downstream analyses. To address these challenges and correspondingly facilitate multimodal single-cell data analyses, three key tasks have been introduced: Modality prediction, Modality matching andJoint embedding. In this work, we present a general Graph Neural Network framework scMoGNN to tackle these three tasks and show that scMoGNN demonstrates superior results in all three tasks compared with the state-of-the-art and conventional approaches. Our method is an official winner in the overall ranking ofModality prediction from NeurIPS 2021 Competition (https://openproblems.bio/neurips_2021/), and all implementations of our methods have been integrated into DANCE package (https://github.com/OmicsML/dance).

Topics & Concepts

Modality (human–computer interaction)Computer scienceEmbeddingModalitiesMatching (statistics)GraphArtificial intelligenceArtificial neural networkKey (lock)Machine learningTheoretical computer scienceMathematicsComputer securitySocial scienceStatisticsSociologySingle-cell and spatial transcriptomicsGene Regulatory Network AnalysisBioinformatics and Genomic Networks