Identifying phenotype-associated subpopulations by integrating bulk and single-cell sequencing data.
Duanchen SunXiangnan GuanAmy E MoranLing-Yun WuDavid Z QianPepper J SchedinMu-Shui DaiAlexey V DanilovJoshi J AlumkalAndrew C AdeyPaul T SpellmanZheng XiaPublished in: Nature biotechnology (2021)
Single-cell RNA sequencing (scRNA-seq) distinguishes cell types, states and lineages within the context of heterogeneous tissues. However, current single-cell data cannot directly link cell clusters with specific phenotypes. Here we present Scissor, a method that identifies cell subpopulations from single-cell data that are associated with a given phenotype. Scissor integrates phenotype-associated bulk expression data and single-cell data by first quantifying the similarity between each single cell and each bulk sample. It then optimizes a regression model on the correlation matrix with the sample phenotype to identify relevant subpopulations. Applied to a lung cancer scRNA-seq dataset, Scissor identified subsets of cells associated with worse survival and with TP53 mutations. In melanoma, Scissor discerned a T cell subpopulation with low PDCD1/CTLA4 and high TCF7 expression associated with an immunotherapy response. Beyond cancer, Scissor was effective in interpreting facioscapulohumeral muscular dystrophy and Alzheimer's disease datasets. Scissor identifies biologically and clinically relevant cell subpopulations from single-cell assays by leveraging phenotype and bulk-omics datasets.
Keyphrases
- single cell
- rna seq
- high throughput
- electronic health record
- muscular dystrophy
- big data
- poor prognosis
- genome wide
- stem cells
- machine learning
- oxidative stress
- cognitive decline
- bone marrow
- mesenchymal stem cells
- data analysis
- dna methylation
- cell death
- long non coding rna
- binding protein
- induced apoptosis
- duchenne muscular dystrophy
- papillary thyroid
- endoplasmic reticulum stress
- skin cancer