scPriorGraph: constructing biosemantic cell-cell graphs with prior gene set selection for cell type identification from scRNA-seq data.
Xiyue CaoYu-An HuangZhu-Hong YouXuequn ShangLun HuPeng-Wei HuZhi-An HuangPublished in: Genome biology (2024)
Cell type identification is an indispensable analytical step in single-cell data analyses. To address the high noise stemming from gene expression data, existing computational methods often overlook the biologically meaningful relationships between genes, opting to reduce all genes to a unified data space. We assume that such relationships can aid in characterizing cell type features and improving cell type recognition accuracy. To this end, we introduce scPriorGraph, a dual-channel graph neural network that integrates multi-level gene biosemantics. Experimental results demonstrate that scPriorGraph effectively aggregates feature values of similar cells using high-quality graphs, achieving state-of-the-art performance in cell type identification.
Keyphrases
- single cell
- genome wide
- bioinformatics analysis
- neural network
- gene expression
- electronic health record
- rna seq
- big data
- genome wide identification
- dna methylation
- machine learning
- copy number
- induced apoptosis
- deep learning
- stem cells
- genome wide analysis
- cell proliferation
- mesenchymal stem cells
- bone marrow
- transcription factor
- cell death
- liquid chromatography