Cell-type-specific co-expression inference from single cell RNA-sequencing data.
Chang SuZichun XuXinning ShanBiao CaiHongyu ZhaoJingfei ZhangPublished in: Nature communications (2023)
The advancement of single cell RNA-sequencing (scRNA-seq) technology has enabled the direct inference of co-expressions in specific cell types, facilitating our understanding of cell-type-specific biological functions. For this task, the high sequencing depth variations and measurement errors in scRNA-seq data present two significant challenges, and they have not been adequately addressed by existing methods. We propose a statistical approach, CS-CORE, for estimating and testing cell-type-specific co-expressions, that explicitly models sequencing depth variations and measurement errors in scRNA-seq data. Systematic evaluations show that most existing methods suffered from inflated false positives as well as biased co-expression estimates and clustering analysis, whereas CS-CORE gave accurate estimates in these experiments. When applied to scRNA-seq data from postmortem brain samples from Alzheimer's disease patients/controls and blood samples from COVID-19 patients/controls, CS-CORE identified cell-type-specific co-expressions and differential co-expressions that were more reproducible and/or more enriched for relevant biological pathways than those inferred from existing methods.
Keyphrases
- single cell
- rna seq
- high throughput
- electronic health record
- poor prognosis
- big data
- end stage renal disease
- ejection fraction
- chronic kidney disease
- stem cells
- emergency department
- sars cov
- peritoneal dialysis
- white matter
- patient reported outcomes
- dna methylation
- machine learning
- optical coherence tomography
- binding protein
- prognostic factors
- multiple sclerosis
- resting state
- long non coding rna
- artificial intelligence
- cell therapy
- functional connectivity