Catching the Big Fish in Big Data: A Meta-Analysis of Zebrafish Kidney scRNA-Seq Datasets Highlights Conserved Molecular Profiles of Macrophages and Neutrophils in Vertebrates
Abstract
:Simple Summary
Abstract
1. Introduction
2. Materials and Methods
- 1.
- For our meta-analysis, we searched and downloaded the suitable scRNAseq datasets described in our previous study [4] and experiments that were added to GEO NCBI during the last year;
- 2.
- The downloaded datasets were converted to zebrafish gene identifiers (GRCz11). For each experimental dataset, we made a separate dataframe used to create the corresponding Seurat object. Seurat objects were annotated according to the general information for the experiments (GEO identifiers, fish age, and genotype);
- 3.
- Individual Seurat objects went through a soft initial filtering procedure and were merged into a single Seurat. Afterward, to correct batch effects, we used normalization and harmonization procedures. In the resulting space, the main types of immune and non-immune cells of the zebrafish kidney were identified;
- 4.
- Further filtering involved the removal of non-immune cells, immune cells with insufficient coverage, and the removal of genes not specific to immune cells. One experiment was also excluded from the final dataset because of the strong individual batch effect, which cannot be completely eliminated by Harmony and may lead to incorrect data integration;
- 5.
- The final dataset was normalized and harmonized. In the resulting clusters, we identified immune cell types based on literature data, their marker genes, and TFs;
- 6.
- The identified marker genes of different cell types were ranked and classified into one of four groups based on their expression level and the strength of upregulation in the target cell type;
- 7.
- Next, for the most highly specific and highly expressed genes of macrophages and neutrophils, co-expression (Step 7 in Figure 1) and protein–protein interactions (Step 8 in Figure 1) were extracted, which allowed us to reconstruct gene networks relevant to the immune cells of these two types (Step 9 in Figure 1).
2.1. Data Collection
2.2. Data Meta-Analysis
2.2.1. Software and Packages Used
2.2.2. Dataset Integration and Cell Type Identification
- group.by.vars = "orig.ident", project.dim = TRUE, plot_convergence = TRUE, verbose = TRUE, assay.use = "SCT".
2.2.3. Analysis of the Immune Cell Subset and Identification of Marker Genes
2.2.4. Classification of Cell-Type-Specific Markers
2.3. Identification of Human Orthologs of Fish Immune Genes
2.4. Reconstruction of Highly Expressed Macrophage and Neutrophil Gene Networks
2.5. Functional Annotation
3. Results and Discussion
3.1. Zebrafish Kidney Marrow scRNA-Seq Dataset Integration and IIS Cell Classification
3.1.1. Hematopoietic Stem Cells
3.1.2. Macrophages and Macrophage-like Cells
3.1.3. Mature Neutrophils, Immature Neutrophils, and Neutrophil-like Cells
3.1.4. B Cells, T Cells, and Monocytes
3.2. Detailed Analysis of the Molecular Genetic Systems of Immune Cells
3.2.1. The Novel Marker Genes of Zebrafish Macrophages
3.2.2. The Novel Marker Genes of Zebrafish Neutrophils and Immature Neutrophils
3.2.3. The Novel Markers of Other Cell Types
3.2.4. The Novel Transcription Factors Involved in Zebrafish Myelopoesis
3.3. Gene Networks and Functional Annotations of Key Macrophage and Neutrophil Marker Genes Identified through Integration of Zebrafish Kidney scRNA-Seq Datasets
- 1.
- Initial low coverage: The limited coverage of our data analysis was due to the inherent limitations of scRNA-seq technology (see Section 3.1). This limitation was partially addressed through a filtering procedure that allowed us to exclude cells with a minimal number of reads.
- 2.
- Lack of precise information: There was insufficient detailed information on the immune properties and functions of individual genes in the identified immune cell type markers (see Section 3.2). This gap is often addressed by utilizing data from specific studies that examine the function of particular orthologous genes in humans or mouse models.
3.3.1. Macrophage-Specific Gene Network
- 1.
- Twelve genes are related to immune functions. Six cathepsins: ctsa, ctsba, ctsc, ctsh, ctsk, and ctsz; four genes encoding major histocompatibility complex class II proteins (si:busm1-266f07.2 (mhc2a), mhc2dab, cd74a, and cd74b); peptidoglycan recognition protein 5 (pglyrp5) and macrophage migration inhibitory factor (mif);
- 2.
- Eight genes encode integral membrane proteins. Three genes of transporters of proteins into the endoplasmic reticulum (sec61a1, sec61b, and sec61g); three genes of signal sequence receptors (ssr2, ssr3, and ssr4); transmembrane protein 258 (tmem258); a subunit of the oligosaccharyl transferase complex dad1;
- 3.
- Six genes of proton-transporting V-type ATPase complex: atp6ap2, atp6v0e1, atp6v0ca, atp6v1g1, atp6v1e1b, and rnaseka.
3.3.2. Neutrophil-Specific Gene Network
- 1.
- Two genes encoding actin (actb1, actb2) and five genes of actin-related protein 2/3 complex subunit: actr2a, arpc1b, arpc3, arpc4l, and arpc5b;
- 2.
- Six genes related to actin cytoskeleton organization: plastin-2 lcp1, cofilin 1-like cfl1l, profilin pfn1, thymosin beta tmsb4x, myosin heavy chain 9a myh9a, and tropomyosin 1 alpha tpm1;
- 3.
- Four genes involved in glycolytic process: enolase 1a eno1a, enolase 3 eno3, glyceraldehyde-3-phosphate dehydrogenase 2 gapdhs, and glucose-6-phosphate isomerase gpia;
- 4.
- Glutathione reductase gsr, myosin light chain 12 myl12.1, transketolase b tktb, and zgc:153867.
3.3.3. Functional Annotation of Highly Expressed Genes in Zebrafish Macrophages and Neutrophils
3.3.4. Identified Molecular Profiles of Pro- and Anti-Inflammatory Immune Cells
4. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
IIS | Innate immune system |
HSPCs | Hematopoietic stem and progenitor cells |
scRNAseq | Single-cell RNA sequencing |
UMAP | Uniform manifold approximation and projection |
ACPC | Average gene counts per cell |
TF | Transcription factor |
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GEO NCBI ID 1 | Age | Genotype/Strain | Number of Used Samples | Initial Number of Cells | Ref. |
---|---|---|---|---|---|
GSE100910 | 3–9 months | WT; prkdc | 6 | 11,327 | [29] |
GSE112438 | not available | AB; CD41:GFP | 37 | 13,824 | [30] |
GSE130487 | 4–12 months | WT | 1 | 20,000 | [31] |
GSE150373 | 8 months | WT; runx1 | 8 | 39,424 | [32] |
GSE151231 | 4 months | WT; gata2b | 9 | 14,463 | [33] |
GSE166646 | adult | WT | 1 | 6422 | [34] |
GSE176036 | 8 months | runx1 | 8 | 35,178 | [32] |
GSE179401 | 2 months | WT; rag; rag il2rga | 9 | 47,832 | [35] |
GSE190794 | 4 months | GESTALT | 10 | 51,540 | [36] |
GSE191029 | adult | WT; prkcda; cxcl8 | 8 | 20,695 | [37] |
GSE242133 | 1–1.5 months | AB | 3 | 36,600 | [8] |
GSE246039 | 3 months | WT; cebpb | 10 | 105,194 | [38] |
GSE252788 | 6 months | cebpb | 2 | 28,534 | [9] |
Cell Type | Total Cell Number | Seurat Cluster No | Cell Number in Cluster |
---|---|---|---|
HSCs | 11,013 | 0 | 7852 |
16 | 1736 | ||
25 | 1202 | ||
41 | 223 | ||
Macrophages | 15,365 | 2 | 5831 |
4 | 5232 | ||
10 | 3149 | ||
32 | 877 | ||
40 | 276 | ||
Macrophage-like cells | 10,595 | 15 | 1769 |
20 | 1600 | ||
21 | 1552 | ||
23 | 1545 | ||
27 | 992 | ||
30 | 910 | ||
31 | 879 | ||
34 | 819 | ||
37 | 408 | ||
43 | 121 | ||
Neutrophils | 26,556 | 1 | 6372 |
5 | 4812 | ||
6 | 4466 | ||
9 | 3506 | ||
11 | 3095 | ||
19 | 1684 | ||
22 | 1550 | ||
36 | 486 | ||
38 | 403 | ||
42 | 182 | ||
Immature neutrophils | 7477 | 3 | 5383 |
14 | 2094 | ||
Neutrophil-like cells | 3876 | 12 | 3035 |
33 | 841 | ||
B cells | 5416 | 8 | 4137 |
28 | 982 | ||
39 | 297 | ||
T cells | 5678 | 7 | 4209 |
24 | 1469 | ||
Monocytes | 8422 | 13 | 2334 |
17 | 1710 | ||
18 | 1705 | ||
26 | 1019 | ||
29 | 960 | ||
35 | 697 |
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Bobrovskikh, A.V.; Zubairova, U.S.; Naumenko, L.G.; Doroshkov, A.V. Catching the Big Fish in Big Data: A Meta-Analysis of Zebrafish Kidney scRNA-Seq Datasets Highlights Conserved Molecular Profiles of Macrophages and Neutrophils in Vertebrates. Biology 2024, 13, 773. https://doi.org/10.3390/biology13100773
Bobrovskikh AV, Zubairova US, Naumenko LG, Doroshkov AV. Catching the Big Fish in Big Data: A Meta-Analysis of Zebrafish Kidney scRNA-Seq Datasets Highlights Conserved Molecular Profiles of Macrophages and Neutrophils in Vertebrates. Biology. 2024; 13(10):773. https://doi.org/10.3390/biology13100773
Chicago/Turabian StyleBobrovskikh, Aleksandr V., Ulyana S. Zubairova, Ludmila G. Naumenko, and Alexey V. Doroshkov. 2024. "Catching the Big Fish in Big Data: A Meta-Analysis of Zebrafish Kidney scRNA-Seq Datasets Highlights Conserved Molecular Profiles of Macrophages and Neutrophils in Vertebrates" Biology 13, no. 10: 773. https://doi.org/10.3390/biology13100773