| Literature DB >> 26967054 |
Soile Tuomela1, Sini Rautio2, Helena Ahlfors3, Viveka Öling1, Verna Salo1, Ubaid Ullah1, Zhi Chen1, Saara Hämälistö1, Subhash K Tripathi1, Tarmo Äijö2, Omid Rasool1, Hayssam Soueidan4, Lodewyk Wessels4, Brigitta Stockinger3, Harri Lähdesmäki1,2, Riitta Lahesmaa1.
Abstract
Uncontrolled Th17 cell activity is associated with cancer and autoimmune and inflammatory diseases. To validate the potential relevance of mouse models of targeting the Th17 pathway in human diseases we used RNA sequencing to compare the expression of coding and non-coding transcripts during the priming of Th17 cell differentiation in both human and mouse. In addition to already known targets, several transcripts not previously linked to Th17 cell polarization were found in both species. Moreover, a considerable number of human-specific long non-coding RNAs were identified that responded to cytokines stimulating Th17 cell differentiation. We integrated our transcriptomics data with known disease-associated polymorphisms and show that conserved regulation pinpoints genes that are relevant to Th17 cell-mediated human diseases and that can be modelled in mouse. Substantial differences observed in non-coding transcriptomes between the two species as well as increased overlap between Th17 cell-specific gene expression and disease-associated polymorphisms underline the need of parallel analysis of human and mouse models. Comprehensive analysis of genes regulated during Th17 cell priming and their classification to conserved and non-conserved between human and mouse facilitates translational research, pointing out which candidate targets identified in human are worth studying by using in vivo mouse models.Entities:
Keywords: Immune response; Immunity; Immunology and Microbiology Section; RNA-seq; Th17 cell priming; comparative analysis of human and mouse; disease-associated SNPs; lncRNA
Mesh:
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Year: 2016 PMID: 26967054 PMCID: PMC4924651 DOI: 10.18632/oncotarget.7963
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Transcriptional changes during the first 72 hours of Th17 cell differentiation
A. Schematic overview of the approach used in the study. CD4+ cells were cultured under Th17 cell polarization condition. Three biological replicates of the time-series were collected for RNA-seq. B. Heatmap of the selected human genes associated with Th17 cell polarization for the first time in this study. The visualized genes were differentially regulated between Th17 and Th0 conditions at least in two timepoints, and their expression level was more than 10 RPKM in some of the sampling timepoints. The genes were ranked based on their average absolute log2 FC over the timepoints. Top 50 genes were visualized in the heatmap, where genes were clustered using hierarchical clustering. C. Functional annotation (www.ingenuity.com) of the human genes not previously reported to be differentially regulated during Th17 cell polarization. The differentially expressed genes were considered as unreported if they were not indicated to be regulated during Th17 cell polarization in the previous high-throughput studies [13, 14, 15].
Figure 2Differentially expressed lncRNAs during human Th17 cell priming
A. Heatmap of the differentially expressed lncRNAs between cells polarized toward Th17 phenotype and unpolarized control cells (FDR <0.05, |log2 FC| >1 cut offs and RPKM >0.5). The lncRNAs were clustered using hierarchical clustering with Euclidean distance. B. Classification of the differentially expressed lncRNAs.
Figure 3Shared Th17 cell-specific transcriptome in human and mouse
Genes with FDR <0.05 were ranked based on their fold change between Th17 and Th0 conditions. The top 20% of the ranked up-regulated and down-regulated genes were included in the analysis. A. Comparison of the regulation of the orthologous genes. The similarly regulated genes had conserved regulation at least at one time point during the analyzed time frame (UP/DOWN = up- / down-regulated genes in Th17 cells). B. Comparison of the clustering and the time shift analysis results. Clustering analysis was used to select the orthologs which shared their expression profile in both species as judged by their presence in the same cluster when clustering was performed over standardized time profiles averaged at each time point across replicates. Orthologous gene pairs with similar time-shifted profiles in their Th17 cell expression were determined with an extended LIGAP method [16]. C. The number of genes predicted to be bound by STAT3, MAF, IRF4, BATF or IRF4 and BATF together based on the comparison of our data with the data by Ciofani et al. 2012 [13] with analysis window of +/−250 bp around the transcription start sites (TSS). The number of the similarly regulated genes between human and mouse that have the same binding motif is indicated above the bars with the statistical significance of the overlap. D. Genes similarly regulated in human and mouse (Table S4) were clustered based on their chromosomal location. The clusters of co-localizing genes were identified and the clusters with statistically significant (p < 0.05) co-localization visualized with the Kerfuffle tool [35] for human and mouse. The green bars protruding inward in the Circos plots indicate the identified clusters and the length of the bars represent the numbers of genes in each cluster.
Enrichment of the SNPs associated with selected Th17 cell-mediated diseases among the differentially expressed genes in the Th17 cell transcriptomics studies
| Array | RNA-seq | |||
|---|---|---|---|---|
| Trait | FDR | No. of genes | FDR | No. of genes |
| Arthritis, Rheumatoid | 5.80E-02 | 30 | 2.02E-14 | 64 |
| Asthma | 1.60E-01 | 36 | 1.39E-07 | 69 |
| Dermatitis, Atopic | 2-87E-01 | 4 | 9.48E-04 | 10 |
| Inflammatory Bowel Diseases | 3.05E-01 | 12 | 4.77E-03 | 21 |
| Multiple Sclerosis | 5.36E-01 | 22 | 2.06E-05 | 49 |
| Psoriasis | 6.03E-02 | 24 | 1.06E-08 | 42 |
The indicated diseases are Th17-cell mediated based on Tesmer et al. 2008 [49]
Tuomela et al. Blood 2012 [12]
The current study
Figure 4Disease-associated single nucleotide polymorphisms are localized close to the identified Th17 cell-specific genes
The enrichment of the known lead SNPs associated with diseases among the orthologous genes differentially regulated in Th17 cells are presented in the figure for the shared Th17 cell-specific genes between human and mouse (common), and the human and mouse top 20% coding transcripts. The figure summarizes the data for 15 diseases with the highest enrichment of SNPs. Only the traits with at least two associated genes were taken into account for calculation of enrichment. Significance of an enrichment of SNPs associated with a trait was calculated using hypergeometric distribution.
The traits showing the strongest enrichment of differentially regulated lncRNAs in our Th17 cell polarization data
| Trait | FDR | No. of lncRNAs |
|---|---|---|
| Celiac Disease | 1.18E-03 | 9 |
| Schizophrenia | 4.69E-03 | 16 |
| Azoospermia | 4.69E-03 | 3 |
| Alopecia Areata | 4.69E-03 | 4 |
| Lupus Erythematosus, Systemic | 4.69E-03 | 13 |
| Crohn Disease | 5.49E-03 | 10 |
| Diabetes Mellitus, Type 1 | 5.61E-03 | 10 |
| Follicle Stimulating Hormone | 1.12E-02 | 4 |
| Mucocutaneous Lymph Node Syndrome | 1.75E-02 | 4 |
| Personality | 2.93E-02 | 3 |