Litcius/Paper detail

GCNG: graph convolutional networks for inferring gene interaction from spatial transcriptomics data

Ye Yuan, Ziv Bar‐Joseph

2020Genome biology196 citationsDOIOpen Access PDF

Abstract

Most methods for inferring gene-gene interactions from expression data focus on intracellular interactions. The availability of high-throughput spatial expression data opens the door to methods that can infer such interactions both within and between cells. To achieve this, we developed Graph Convolutional Neural networks for Genes (GCNG). GCNG encodes the spatial information as a graph and combines it with expression data using supervised training. GCNG improves upon prior methods used to analyze spatial transcriptomics data and can propose novel pairs of extracellular interacting genes. The output of GCNG can also be used for downstream analysis including functional gene assignment.Supporting website with software and data: https://github.com/xiaoyeye/GCNG .

Topics & Concepts

GraphConvolutional neural networkBiologyComputational biologyComputer scienceGeneTranscriptomeSpatial analysisGene expressionArtificial intelligenceGeneticsTheoretical computer scienceGeologyRemote sensingSingle-cell and spatial transcriptomicsBioinformatics and Genomic NetworksGene expression and cancer classification
GCNG: graph convolutional networks for inferring gene interaction from spatial transcriptomics data | Litcius