| Literature DB >> 34629873 |
Mingqiang Wang1, Mingxia Gu2,3, Ling Liu4, Yu Liu1, Lei Tian1.
Abstract
Cardiovascular diseases (CVDs) are a group of disorders of the blood vessels and heart, which are considered as the leading causes of death worldwide. The pathology of CVDs could be related to the functional abnormalities of multiple cell types in the heart. Single-cell RNA sequencing (scRNA-seq) technology is a powerful method for characterizing individual cells and elucidating the molecular mechanisms by providing a high resolution of transcriptomic changes at the single-cell level. Specifically, scRNA-seq has provided novel insights into CVDs by identifying rare cardiac cell types, inferring the trajectory tree, estimating RNA velocity, elucidating the cell-cell communication, and comparing healthy and pathological heart samples. In this review, we summarize the different scRNA-seq platforms and published single-cell datasets in the cardiovascular field, and describe the utilities and limitations of this technology. Lastly, we discuss the future perspective of the application of scRNA-seq technology into cardiovascular research.Entities:
Keywords: RNA velocity; cardiovascular diseases; cell–cell communication; clustering; spatial genomics; trajectory inference
Mesh:
Year: 2021 PMID: 34629873 PMCID: PMC8495612 DOI: 10.2147/VHRM.S288090
Source DB: PubMed Journal: Vasc Health Risk Manag ISSN: 1176-6344
scRNA-Seq Sequencing Methods Comparison
| scRNA-Seq Protocol | Data Type | Cost | Platform | Throughput (K) | Read Depth (per Cell) | Reaction Volume | Year | Reference |
|---|---|---|---|---|---|---|---|---|
| Smart-seq/C1(Fluidigm) | Full length | High | Microfluidics | 0.1–1 | 106 | Nanoliter | 2012 | [ |
| Smart-seq2 | Full length | High | Microfluidics | 0.1–1 | 106 | Microliter | 2014 | [ |
| MATQ-seq | Full length | Moderate | Plate-based | 0.1–1 | 106 | Microliter | 2017 | [ |
| MARS-seq | 3ʹ-End | Low | Plate-based | 0.1–1 | 104–105 | Microliter | 2014 | [ |
| CEL-seq | 3ʹ-End | Moderate | Plate-based | 0.1–1 | 104–105 | Nanoliter | 2016 | [ |
| Drop-seq | 3ʹ-End | Low | Droplet | 1–10 | 104–105 | Nanoliter | 2015 | [ |
| msSCRB-seq | 3ʹ-End | Low | Plate-based | 1–10 | 104 | Nanoliter | 2018 | [ |
| Chromium | 3ʹ-End | Low | Droplet | 1–10 | 104–105 | Nanoliter | 2017 | [ |
| SEQ-well | 3ʹ-End | Moderate | Nanowell array | 1–10 | 104–105 | Nanoliter | 2017 | [ |
| SPLIT-seq | 3ʹ-End | Moderate | Plate-based | 1–100 | 104 | Microliter | 2018 | [ |
| ICELL8 | 5ʹ-End | Moderate | Nanowell-based | 1 | 104 | Nanoliter | 2017 | [ |
Figure 1The number of papers published in the application of scRNA-seq in cardiovascular research in the past decades. Publications with the keyword “(scRNA-seq or single-cell transcript*)[TIAB] AND (heart or cardiac or cardio*)[TIAB]” in the NCBI PubMed database as of Aug 2021. Note the exponential growth in the number of published articles, in particular in the last 30 years.
Summary of Single-Cell RNA-Seq Studies on Cardiovascular Research
| Species | Throughput | Heart Region/Cell Type | Disease | Developmental Time Point | Method | Cell Number | Finding | Publishing Date | Accessibility | Ref |
|---|---|---|---|---|---|---|---|---|---|---|
| Human | High | Whole heart | Healthy, HF and HF recovery | Adult | FACS | 21,422 | CM heterogeneity, CM contractility and metabolism changes in heart function | 2020 | GEO ID: GSE109816, GSE121893 | [ |
| Human | High | Whole heart | Healthy and CHB | Fetus | 10X Genomics | 17,747 | Heterogeneous cell population in CHB heart | 2020 | BioProject ID: PRJNA576243 | [ |
| Human | High | Whole heart | Healthy | Adult | 10X Genomics | 287,269 | Defined the transcriptional and cellular diversity in the normal human heart | 2020 | SCP: SCP498 | [ |
| Human | High | Arterial cells | Heart failure | Adult | 10X Genomics | 125,253 | Created a cell atlas of human nondiseased cardiac artery | 2021 | N/A | [ |
| Human | High | hiPSC-derived endocardium | Healthy, HLHS | Fetus, hiPSC | 10X Genomics | 10,000 | Reveal a critical role for endocardium in HLHS etiology | 2020 | GEO: GSE138979 | [ |
| Human | High | Whole heart and other organs | Healthy | Fetus | sci-RNA-seq3 | 101,748 | A reference atlas of human fetal cell types including heart cell types | 2020 | GEO: GSE156793 | [ |
| Human | High | Whole heart and other organs | Healthy | Adult, fetus | 10X Genomics | 10,783 | Construct a scheme for the human cell landscape including heart | 2020 | GEO: GSE134355 | [ |
| Human | High | Whole heart | Healthy | Adult | 10X Genomics | 486,134 | Construct cells of the adult human heart | 2020 | HCA: ERP123138 | [ |
| Human | High | hiPSC-CMs | Differentiation | hiPSC | 10X Genomics | 43,168 | Provides a key transcriptional roadmap of cardiac differentiation | 2018 | GEO: GSE97080 | [ |
| Human | High | hiPSC-CMs | Differentiation | hiPSC | Chromium + IFC system | 10,376 | Dissect the role of distinct cardiac transcriptional regulators associated with each cell population | 2018 | GEO: GSE81585 | [ |
| Human | Medium | Whole heart | Healthy development | Embryos | 10X Genomics | 3777 | Spatial organization in the human embryonic heart | 2019 | EBI-EGA: EGAS00001003996 | [ |
| Human | Medium | Whole heart | Healthy development | Fetus | Mouth pipette | 4948 | Systematic mapping of the transcriptomic landscape of the human fetal heart | 2019 | GEO ID: GSE106118 | [ |
| Human | Low | Whole heart | Healthy development | Embryo/fetus | FACS | 458 | LGR5 is identified as a key regulator on congenital heart diseases | 2019 | BioProject ID: PRJNA510181 | [ |
| Human | Low | hiPSC-epi | Differentiation | hiPSC | Smart-Seq2 | 232 | Cell heterogeneity in human epicardium regulated by BNC1 | 2019 | GEO: GSE122714 | [ |
| Human | Low | hiCMs | Differentiation | hiCMs | Fluidigm | 704 | Molecular features of hiCM determination and cell fate conversion | 2019 | GEO: GSE106888 | [ |
| Human and mouse | Low | Left ventricles | Healthy and DCM | Adult | Smart-seq2 | 419 | CM contractility and metabolism are prominent aspects that are correlated with changes in heart function | 2018 | GEO: GSE95143 | [ |
| Human | Low | Left ventricles, nuclei | Healthy, HF and DCM | Adult, mouse | Single molecule RNA FISH | 359 | Discover long intergenic lincRNA as key nodal regulators, affect dedifferentiation and cell cycle genes | 2017 | BioProject ID: PRJNA264588 | [ |
| Mice | High | Whole heart | Healthy and TAC | Adult | ICELL8 | 11,492 | Illustrated the dynamics of all major cardiac cell types | 2020 | GEO: GSE120064 | [ |
| Mice | High | Whole heart and other organs | Healthy, aging | Neonate, adult | 10X Genomics, Smart-seq2 | ~20,000 | Mouse Ageing Cell Atlas provides how the most important hallmarks of ageing are reflected in a broad range of tissues and cell types | 2020 | GEO: GSE132042 | [ |
| Mice | High | Whole heart | Healthy, CHD | Embryo | 10X Genomics | 73,926 | Hand2 is a specifier of outflow tract cells | 2019 | GEO: GSE126128 | [ |
| Mice | High | Whole heart | Healthy development | neonate | 10X Genomics | 22,462 | Assess the transcriptional landscape of the entire CCS | 2019 | GEO: GSE132658 | [ |
| Mice | High | Cardiac outflow tract | Healthy development | Embryo | 10X Genomics | 55,611 | Molecular signatures of six cell lineages and subpopulations | 2019 | BioProject ID: PRJNA489304 | [ |
| Mice | High | Whole heart, nuclei | Healthy aging | Adult | 10X Genomics | 27,808 | Molecular changes of aging cardiac fibroblasts | 2019 | EBI: E-MTAB-7869 | [ |
| Mice | High | Ventricles, nuclei | healthy and MI | Adult | 10X Genomics | 31,542 | Dedifferentiation may be an important prerequisite for CM proliferation | 2019 | GEO: GSE129175 | [ |
| Mice | High | Sinus node, nuclei | Healthy pacemaking | Adult | 10X Genomics | 5357 | Unique molecular make-up of the cardiac pacemaker | 2019 | GEO: GSE130710 | [ |
| Mice | High | Non-CMs and FB | Healthy and MI | Adult | 10X Genomics | 13,331 | Heterogeneity, dynamics and intercellular communication among immune and stromal cells | 2019 | EMBL-EBI: E-MTAB-7376, E-MTAB-7365 | [ |
| Mice | High | Endothelial cells | Healthy and MI | Adult | 10X Genomics | 28,598 | Present cardiac specific resident ECs, and the transcriptional hierarchy underpinning endogenous vascular repair following MI | 2019 | Not public | [ |
| Mice | High | Whole heart, nucleus | Healthy development and pediatric mitochondrial cardiomyopathy | Neonate | sNucDrop-seq | 15,083 | Uncovered profound cell type-specific modifications of the cardiac transcriptional landscape | 2018 | GEO: GSE88761 | [ |
| Mice | High | Whole heart and other organs | Healthy | Adult | 10X Genomics, Smart-seq2 | ~5000 | Compendium of single-cell transcriptomic data from 20 organ including heart | 2018 | GEO: GSE109774 | [ |
| Mice | Medium | Left ventricles | Healthy development | Adult | ICELL8 | 3717 | Switching of fibroblast subtypes regulates CM maturation | 2020 | GEO: GSE123547 | [ |
| Mice | Medium | Whole heart | Healthy and Hand2os1 knock out | Embryo | FACS | 3600 | The regulatory complexity of the lncRNA Hand2os1 on HAND2 expression | 2019 | GEO: GSE102935 | [ |
| Mice | Medium | Aortic valve, mitral valve | Healthy development | Neonate ~ juvenile | Drop-seq | 2840 | Subpopulations undergo changes in gene expression during development | 2019 | GEO: GSE117011 | [ |
| Mice | Medium | Left ventricles | Healthy development | Neonate | ICELL8 | 4231 | Transcriptomes of mono- or multi-nucleated cardiomyocytes are highly similar Interstitial cell | 2019 | ENA: PRJEB29049 | [ |
| Mice | Medium | Nkx2.5 or Isl1 expressing cardiac progenitors | Healthy development | Embryo | FACS | 1231 | Cxcr2 regulates chemotaxis during development | 2019 | GEO: GSE108963 | [ |
| Mice | Medium | Whole heart and other 7 organs | Healthy development | Embryo | STRT | 1916 | Identify mutual interactions between epithelial and mesenchymal cells | 2018 | GEO:GSE87038 | [ |
| Mice | Medium | Ventricles | Healthy, I/R and MI | Neonate, adult | CEL-Seq2 | 1939 | Identification of CSC populations | 2018 | GEO: GSE102048 | [ |
| Mice | Medium | Nuclei from whole heart | Healthy | Fetus | IFC system | 2233 | Chamber-specific genes in the embryonic mouse heart | 2016 | GEO: GSE76118 | [ |
| Mice | Medium | Whole heart | Healthy development | Neonate, adult | IFC system | >1200 | Reveals lineage-specific gene programs underlying normal cardiac development and congenital heart disease | 2016 | GEO: GSE47948, GSE62913 | [ |
| Mice | Low | Whole heart | Healthy and ischemia reperfusion | Adult | SORT-seq | 935 | Ckap4 is a modulator of fibroblasts activation in the injured heart | 2018 | Not public | [ |
| Mice | Low | Mesp1-positive or null cardiac progenitors | Healthy development Mesp1 knock out | Embryo | SMART-Seq2 | 598 | Mesp1 is required for the exit from the pluripotent state | 2018 | GEO: GSE100471 | [ |
| Zebrafish | Low | Epicardium | Healthy development | Embryo | SMART-Seq2 | 366 | 3 Developmental epicardial subpopulations and the functions of | 2020 | GEO: GSE121750 | [ |
| Zebrafish | Medium | Heart | Healthy and Pbx4-depleted | Embryo | FACS | 5300 | Pbx4 limits heart size and fosters arch artery formation | 2020 | GEO: GSE126647 | [ |
| Zebrafish | Medium | Heart | Cryoinjured hearts | Embryos | FACS | 1536 | ErbB2 signaling is essential for cardiomyocyte proliferation in the regenerating heart | 2019 | GEO: GSE139218 | [ |
| Zebrafish | Medium | Heart | Healthy and development | Embryos | FACS | 2637 | The conversion of zebrafish Etv2-deficient vascular progenitors into skeletal muscle | 2020 | GEO: GSE142484 | [ |
| Monkey | High | Heart | Healthy | Young and old ages | 10X Genomics | 36,210 | FOXO3A loss as a key driver for arterial endothelial aging | 2020 | GEO: GSE117715 | [ |
| Monkey | High | Whole heart and other organs | Healthy | Young and old ages | 10X Genomics | 42,053 | Depict the first transcriptomic atlas of the aged primate cardiopulmonary system | 2020 | NGDC: CRA002689 | [ |
Figure 2Experimental workflow of single-cell RNA-seq. The general experimental workflow of single-cell RNA- study begins with sample preparation. Prepared cells are captured by various single-cell methods. Reverse transcription of single-cell RNA is performed, followed by PCR amplification and library preparation of the resulting cDNA. Next-generation sequencing is performed to generate the raw reads.
Figure 3Application of scRNA-seq computational approach. Preprocessing steps convert the raw reads to sparse expression matrix. Downstream data analysis includes clustering, differentially expressed gene calling, cell trajectory analysis, RNA velocity, cell–cell interactions, identify mutations, integration (Reprinted from Cell, 177(7), Stuart T, Butler A, Hoffman P, et al. Comprehensive Integration of Single-Cell Data. 1888-1902 e182, Copyright 2019, with permission from Elsevier)64 and spatial genomics.