BMC Genomics,
Mick Watson, David A Hume, Nader Deeb, Alan Mileham, Alan L Archibald, Richard Talbot, Frances Turner, Julia Loecherbach, Karen Troup, Pablo Fuentes-Utrilla, Christelle Robert
英文
BMC Genomics,
Mick Watson, David A Hume, Nader Deeb, Alan Mileham, Alan L Archibald, Richard Talbot, Frances Turner, Julia Loecherbach, Karen Troup, Pablo Fuentes-Utrilla, Christelle Robert
英文
BMC Genomics,2013年
Frank Blecha, Yongming Sang, James M Reecy, Megan Bystrom, Ryan Pei-Yen Cheng, Ting-Hua Huang, Eric Fritz, Zhiliang Hu, Christopher K Tuggle, John C Schwartz, Michael P Murtaugh, Bertrand Bed’Hom, Claire Rogel-Gaillard, Géraldine Pascal, Mark Thomas, Matthew Astley, David Lloyd, Charles Steward, Catherine Snow, James GR Gilbert, Mike Kay, Matthew Hardy, Jennifer L Harrow, Jane E Loveland, Toby Hunt, Laurens Wilming, Denise Carvalho-Silva, Clara Amid, Takeya Morozumi, Daisuke Toki, Shu-Hong Zhao, Jie Zhang, Ranjit Kataria, Hiroki Shinkai, Hirohide Uenishi, Sara Botti, Bouabid Badaoui, Anna Anselmo, Elisabetta Giuffra, Alan L Archibald, Ronan Kapetanovic, Tom C Freeman, Dario Beraldi, David A Hume, Tahar Ait-Ali, Katherine M Mann, Joan K Lunney, Daniel Berman, Celine Chen, Harry D Dawson
LicenseType:Unknown |
BackgroundThe domestic pig is known as an excellent model for human immunology and the two species share many pathogens. Susceptibility to infectious disease is one of the major constraints on swine performance, yet the structure and function of genes comprising the pig immunome are not well-characterized. The completion of the pig genome provides the opportunity to annotate the pig immunome, and compare and contrast pig and human immune systems.ResultsThe Immune Response Annotation Group (IRAG) used computational curation and manual annotation of the swine genome assembly 10.2 (Sscrofa10.2) to refine the currently available automated annotation of 1,369 immunity-related genes through sequence-based comparison to genes in other species. Within these genes, we annotated 3,472 transcripts. Annotation provided evidence for gene expansions in several immune response families, and identified artiodactyl-specific expansions in the cathelicidin and type 1 Interferon families. We found gene duplications for 18 genes, including 13 immune response genes and five non-immune response genes discovered in the annotation process. Manual annotation provided evidence for many new alternative splice variants and 8 gene duplications. Over 1,100 transcripts without porcine sequence evidence were detected using cross-species annotation. We used a functional approach to discover and accurately annotate porcine immune response genes. A co-expression clustering analysis of transcriptomic data from selected experimental infections or immune stimulations of blood, macrophages or lymph nodes identified a large cluster of genes that exhibited a correlated positive response upon infection across multiple pathogens or immune stimuli. Interestingly, this gene cluster (cluster 4) is enriched for known general human immune response genes, yet contains many un-annotated porcine genes. A phylogenetic analysis of the encoded proteins of cluster 4 genes showed that 15% exhibited an accelerated evolution as compared to 4.1% across the entire genome.ConclusionsThis extensive annotation dramatically extends the genome-based knowledge of the molecular genetics and structure of a major portion of the porcine immunome. Our complementary functional approach using co-expression during immune response has provided new putative immune response annotation for over 500 porcine genes. Our phylogenetic analysis of this core immunome cluster confirms rapid evolutionary change in this set of genes, and that, as in other species, such genes are important components of the pig’s adaptation to pathogen challenge over evolutionary time. These comprehensive and integrated analyses increase the value of the porcine genome sequence and provide important tools for global analyses and data-mining of the porcine immune response.
BMC Genomics,2013年
Frank Blecha, Yongming Sang, James M Reecy, Megan Bystrom, Ryan Pei-Yen Cheng, Ting-Hua Huang, Eric Fritz, Zhiliang Hu, Christopher K Tuggle, John C Schwartz, Michael P Murtaugh, Bertrand Bed’Hom, Claire Rogel-Gaillard, Géraldine Pascal, Mark Thomas, Matthew Astley, David Lloyd, Charles Steward, Catherine Snow, James GR Gilbert, Mike Kay, Matthew Hardy, Jennifer L Harrow, Jane E Loveland, Toby Hunt, Laurens Wilming, Denise Carvalho-Silva, Clara Amid, Takeya Morozumi, Daisuke Toki, Shu-Hong Zhao, Jie Zhang, Ranjit Kataria, Hiroki Shinkai, Hirohide Uenishi, Sara Botti, Bouabid Badaoui, Anna Anselmo, Elisabetta Giuffra, Alan L Archibald, Ronan Kapetanovic, Tom C Freeman, Dario Beraldi, David A Hume, Tahar Ait-Ali, Katherine M Mann, Joan K Lunney, Daniel Berman, Celine Chen, Harry D Dawson
LicenseType:Unknown |
BackgroundThe domestic pig is known as an excellent model for human immunology and the two species share many pathogens. Susceptibility to infectious disease is one of the major constraints on swine performance, yet the structure and function of genes comprising the pig immunome are not well-characterized. The completion of the pig genome provides the opportunity to annotate the pig immunome, and compare and contrast pig and human immune systems.ResultsThe Immune Response Annotation Group (IRAG) used computational curation and manual annotation of the swine genome assembly 10.2 (Sscrofa10.2) to refine the currently available automated annotation of 1,369 immunity-related genes through sequence-based comparison to genes in other species. Within these genes, we annotated 3,472 transcripts. Annotation provided evidence for gene expansions in several immune response families, and identified artiodactyl-specific expansions in the cathelicidin and type 1 Interferon families. We found gene duplications for 18 genes, including 13 immune response genes and five non-immune response genes discovered in the annotation process. Manual annotation provided evidence for many new alternative splice variants and 8 gene duplications. Over 1,100 transcripts without porcine sequence evidence were detected using cross-species annotation. We used a functional approach to discover and accurately annotate porcine immune response genes. A co-expression clustering analysis of transcriptomic data from selected experimental infections or immune stimulations of blood, macrophages or lymph nodes identified a large cluster of genes that exhibited a correlated positive response upon infection across multiple pathogens or immune stimuli. Interestingly, this gene cluster (cluster 4) is enriched for known general human immune response genes, yet contains many un-annotated porcine genes. A phylogenetic analysis of the encoded proteins of cluster 4 genes showed that 15% exhibited an accelerated evolution as compared to 4.1% across the entire genome.ConclusionsThis extensive annotation dramatically extends the genome-based knowledge of the molecular genetics and structure of a major portion of the porcine immunome. Our complementary functional approach using co-expression during immune response has provided new putative immune response annotation for over 500 porcine genes. Our phylogenetic analysis of this core immunome cluster confirms rapid evolutionary change in this set of genes, and that, as in other species, such genes are important components of the pig’s adaptation to pathogen challenge over evolutionary time. These comprehensive and integrated analyses increase the value of the porcine genome sequence and provide important tools for global analyses and data-mining of the porcine immune response.
BMC Genomics,2013年
Christopher D Gregory, Tamasin N Doig, John R Goodlad, David A Hume, Thanasis Theocharidis, Tom C Freeman
LicenseType:Unknown |
BackgroundBiopsies taken from individual tumours exhibit extensive differences in their cellular composition due to the inherent heterogeneity of cancers and vagaries of sample collection. As a result genes expressed in specific cell types, or associated with certain biological processes are detected at widely variable levels across samples in transcriptomic analyses. This heterogeneity also means that the level of expression of genes expressed specifically in a given cell type or process, will vary in line with the number of those cells within samples or activity of the pathway, and will therefore be correlated in their expression.ResultsUsing a novel 3D network-based approach we have analysed six large human cancer microarray datasets derived from more than 1,000 individuals. Based upon this analysis, and without needing to isolate the individual cells, we have defined a broad spectrum of cell-type and pathway-specific gene signatures present in cancer expression data which were also found to be largely conserved in a number of independent datasets.ConclusionsThe conserved signature of the tumour-associated macrophage is shown to be largely-independent of tumour cell type. All stromal cell signatures have some degree of correlation with each other, since they must all be inversely correlated with the tumour component. However, viewed in the context of established tumours, the interactions between stromal components appear to be multifactorial given the level of one component e.g. vasculature, does not correlate tightly with another, such as the macrophage.
BMC Genomics,2013年
Christopher D Gregory, Tamasin N Doig, John R Goodlad, David A Hume, Thanasis Theocharidis, Tom C Freeman
LicenseType:Unknown |
BackgroundBiopsies taken from individual tumours exhibit extensive differences in their cellular composition due to the inherent heterogeneity of cancers and vagaries of sample collection. As a result genes expressed in specific cell types, or associated with certain biological processes are detected at widely variable levels across samples in transcriptomic analyses. This heterogeneity also means that the level of expression of genes expressed specifically in a given cell type or process, will vary in line with the number of those cells within samples or activity of the pathway, and will therefore be correlated in their expression.ResultsUsing a novel 3D network-based approach we have analysed six large human cancer microarray datasets derived from more than 1,000 individuals. Based upon this analysis, and without needing to isolate the individual cells, we have defined a broad spectrum of cell-type and pathway-specific gene signatures present in cancer expression data which were also found to be largely conserved in a number of independent datasets.ConclusionsThe conserved signature of the tumour-associated macrophage is shown to be largely-independent of tumour cell type. All stromal cell signatures have some degree of correlation with each other, since they must all be inversely correlated with the tumour component. However, viewed in the context of established tumours, the interactions between stromal components appear to be multifactorial given the level of one component e.g. vasculature, does not correlate tightly with another, such as the macrophage.