| Literature DB >> 26470881 |
Amanda R Campbell1,2, Kelly Regan3,4, Neela Bhave5, Arka Pattanayak6, Robin Parihar7, Andrew R Stiff8,9, Prashant Trikha10, Steven D Scoville11,12, Sandya Liyanarachchi13, Sri Vidya Kondadasula14, Omkar Lele15, Ramana Davuluri16, Philip R O Payne17, William E Carson18,19,20.
Abstract
BACKGROUND: Traditionally, the CD56(dim)CD16(+) subset of Natural Killer (NK) cells has been thought to mediate cellular cytotoxicity with modest cytokine secretion capacity. However, studies have suggested that this subset may exert a more diverse array of immunological functions. There exists a lack of well-developed functional models to describe the behavior of activated NK cells, and the interactions between signaling pathways that facilitate effector functions are not well understood. In the present study, a combination of genome-wide microarray analyses and systems-level bioinformatics approaches were utilized to elucidate the transcriptional landscape of NK cells activated via interactions with antibody-coated targets in the presence of interleukin-12 (IL-12).Entities:
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Year: 2015 PMID: 26470881 PMCID: PMC4608307 DOI: 10.1186/s12920-015-0142-9
Source DB: PubMed Journal: BMC Med Genomics ISSN: 1755-8794 Impact factor: 3.063
Fig. 1Overview of the network-level systems analysis approach. This type of methodology utilizes a combination of observed data, public data sets, the mining of applicable domain literature, and/or ontologies (e.g., expertly curated collections of domain knowledge represented in a computable format). In this example, vertices (e.g., genes, gene products, and biological structures or functions) are linked together by edges that represent relevant biological relationships
Fig. 2NK cells secrete high levels of immune stimulatory cytokines following FcR activation in the presence of IL-12. a Human NK cells were stimulated via their FcR by culture onto wells pre-coated with either huIgG or Ab-coated SK-BR-3 tumor cells, or by direct FcR cross-linking by 3 g8 Ab. IL-12 was added at a concentration of 10 ng/mL. Control wells consisted of NK cells cultured with medium alone (medium), FcR activation alone (via immobilized huIgG, Ab-coated tumor, or 3 g8 cross-linking, as indicated), or IL-12 alone (IL-12). Culture supernatants were harvested after 12 h and analyzed for IFN-γ content by ELISA. In time-course experiments, NK cells were cultured onto immobilized huIgG with IL-12 for varying times (4-72 h) and supernatants were analyzed for (b) IFN-γ, (c) MIP-1α, and (d) TNF-α. The means and SEM are shown with n = 3 for each experiment. *p < 0.001 vs. Medium, FcR activation alone, and IL-12 alone. e NK cells cultured in the immobilized IgG plus IL-12 condition were harvested at varying times and processed for Real-Time PCR analysis of IFN-γ transcript. Results are given as fold increase in cytokine transcript over baseline (Medium). The means and SEM are shown (n = 3). *p < 0.01 vs. Medium, immobilized IgG, and IL-12. Similar results were observed for gene expression of MIP-1α and TNF-α (not shown)
Fig. 3FcR activation in the presence of IL-12 results in differential expression of a unique subset of genes. a Human NK cells were isolated from peripheral blood and cultured with immobilized IgG, IL-12, or IgG and IL-12. Following stimulation, culture supernatants were harvested and levels of cytokines were analyzed by ELISA. Genomewide expression profiling was performed for NK cells derived from all 8 samples via microarray, and representative transcript expression levels were validated using Real-time RT-PCR. The bioinformatics portion of this study utilized a set of genes that exhibited the greatest expression level differences as reported by microarray. Functional enrichment analysis generated an integrated network of structural interactions among differentially expressed genes. Canonical pathway interactions were mapped using IPA. Select genes within top enriched GO functional categories were validated using Real-time RT-PCR (dotted line). b Hierarchical clustering based on the expression profile of genes that were up- or down-regulated by at least 2-fold across all samples. Each row represents relative hybridization intensities of a particular gene across different samples. Colors reflect the magnitude of relative expression of a particular gene across samples. Brighter green corresponds to higher expression and brighter red corresponds to lower expression. The organization and length of the branches in the resulting dendrogram reflect the similarity in gene expression profiles between each of the samples. The division and length of the branches within the dendrogram reflect the relative similarity in gene expression profiles between each NK cell stimulation condition. The terminal branches that are close spatially in the dendrogram represent the NK cell conditions that have the most similar gene expression patterns. Venn diagrams generated by the intersection of the list of genes (c) up-regulated or (d) down-regulated by at least 2-fold vs. stimulation with medium alone are shown
Fig. 4Genes uniquely regulated in NK cells following FcR activation in the presence of IL-12 grouped by function. Gene expression values of genes differentially expressed by at least 2-fold by NK cells stimulated by immobilized IgG plus IL-12 vs. those stimulated by Medium. Bars represent fold change of the mRNA level of a particular gene when comparing the subpopulations. Positive values indicate that the transcript was more abundant in the stimulated cells and negative values indicate that the gene was down-regulated in the stimulated cells. Genes were grouped according to their presumed function (a-e) based on information available in public databases or in the literature (see Materials and Methods). f Validation of microarray gene expression estimates by Real-Time PCR. Shown is fold change in gene expression (vs. no stimulation) within NK cells following FcR activation (IgG), IL-12 stimulation (IL-12), or FcR activation in the presence of IL-12 (IgG plus IL-12). Representative data from a single donor out of three examined is shown for each gene listed on the right
List of most highly ranked genes based on Betweenness Centrality (BC) score
| Rank | Gene | Betweenness Centrality Score |
|---|---|---|
| 1 | IL21R | 0.0921779 |
| 2 | FASLG | 0.0612643 |
| 3 | IRF4 | 0.0545417 |
| 4 | STAT4 | 0.0455257 |
| 5 | TNFRSF4 | 0.0438375 |
| 6 | IL2RB | 0.0244015 |
| 7 | CCR5 | 0.0233243 |
| 8 | P2RX5 | 0.0203641 |
| 9 | SLC7A5 | 0.0195173 |
| 10 | BATF3 | 0.0192476 |
| 11 | TNFRSF9 | 0.0188821 |
| 12 | TBX21 | 0.0176988 |
| 13 | IFNG | 0.0171686 |
| 14 | IRF1 | 0.0171325 |
| 15 | ACAP1 | 0.0170313 |
| 16 | CXCR6 | 0.0149211 |
| 17 | TRIB1 | 0.0146721 |
| 18 | EBI3 | 0.0141001 |
| 19 | NFKB2 | 0.0134729 |
| 20 | EIF4A1 | 0.0132968 |
BC scores were calculated via the PAJEK algorithm (22), and are presented in decreasing order within the integrated network. A higher BC score indicates that a given gene is highly interconnected with other genes and gene products
List of most highly ranked genes based on Authority or Hub scores
| A | |
| Rank | Authorities |
| 1 | NLRP1 |
| 2 | BIRC3 |
| 3 | EIF4A1 |
| 4 | FAS |
| 5 | CFLAR |
| 6 | TNFRSF9 |
| 7 | PTPRCAP |
| 8 | EGR3 |
| 9 | IFNG |
| B | |
| Rank | Hubs |
| 1 | CASP1 |
| 2 | FASLG |
| 3 | TRAF1 |
| 4 | NFKB1 |
| 5 | NFKBIA |
| 6 | TNFRSF1B |
| 7 | FAS |
| 8 | IL11RA |
| 9 | PTPRC |
The HITS algorithm was used to measure two important characteristics of an overall genomic network: the authority of individual genes, which may be interpreted as a surrogate marker for the relative “importance” of those genes to the overall function of the network (Table 2a); and the hub value of individual genes, which is a surrogate marker for the relative “impact” of that gene on the interconnections or relationships between genes that make up that same network (Table 2b). Authority and Hub scores are presented in decreasing order within the integrated network
Fig. 5An integrated visualization of the top two networks generated by IPA. The connections between genes in the NK cell signaling pathways have been highlighted using blue edges. Red nodes represent up-regulated genes, and green nodes represent down-regulated genes identified in our differential expression analysis (based on NK cells dual-stimulated via IgG and IL-12). The darker the node color, the more extreme (high or low) the up- or down-regulation of the respective gene. White nodes represent genes that were not originally identified in our microarray analysis but are connected to other genes within the enriched network. Blue nodes represent genes from canonical pathways. Relationship types are outlined in the figure legend
Top two networks along with their constituent genes and associated canonical scores as calculated by IPA.
| ID | Molecules in the Network | IPA Score | Top Functions |
|---|---|---|---|
| 1 |
| 37 | Connective Tissue Disorders, Immunological Disease, Inflammatory Disease |
| 2 |
| 37 | Cellular Development, Cellular Growth and Proliferation, Hematological System Development and Function |
The gene names in bold text indicate those genes that were included in the original microarray data set for NK cells stimulated via IgG and IL-12. The assertion “top two” indicates that the maximal number of genes from the integrated network belonged to these two pathways according to the IPA analysis tool