Brittney N. Keel, Amanda K. Lindholm-Perry, Gary A. Rohrer, William T. Oliver
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Estimation of cell type proportions from bulk RNA-Seq of porcine whole blood samples using partial reference-free deconvolution
Whole blood has become increasingly utilized in transcriptomic studies because it is easily accessible and can be collected from live animals with minimal invasiveness. However, whole blood represents an extremely complex mixture of cell types, and cell type proportions can confound downstream statistical analyses. Information on cell type proportions may be missing from blood transcriptome studies for a variety of reasons. Experimental approaches for cell counting, such as cell sorting, are arduous and expensive, and therefore may not feasible for studies conducted on a limited budget. Statistical deconvolution can be applied directly to transcriptomic data sets to estimate cell type proportions. In addition to being financially advantageous, computational deconvolution can readily be applied to old datasets, where it may be difficult or impossible to re-analyze for cell type information. In an effort to assist researchers in recovering cell type proportions from porcine whole blood transcriptome samples, we present a manually curated set of porcine blood cell markers that can be utilized in a partial reference-free deconvolution framework to obtain estimates of cell types measured in a standard complete blood count (CBC) panel, which includes neutrophils, lymphocytes, monocytes, eosinophils, basophils, and red blood cells.
Animal GeneAgricultural and Biological Sciences-Insect Science
自引率
0.00%
发文量
16
期刊介绍:
Gene Reports publishes papers that focus on the regulation, expression, function and evolution of genes in all biological contexts, including all prokaryotic and eukaryotic organisms, as well as viruses. Gene Reports strives to be a very diverse journal and topics in all fields will be considered for publication. Although not limited to the following, some general topics include: DNA Organization, Replication & Evolution -Focus on genomic DNA (chromosomal organization, comparative genomics, DNA replication, DNA repair, mobile DNA, mitochondrial DNA, chloroplast DNA). Expression & Function - Focus on functional RNAs (microRNAs, tRNAs, rRNAs, mRNA splicing, alternative polyadenylation) Regulation - Focus on processes that mediate gene-read out (epigenetics, chromatin, histone code, transcription, translation, protein degradation). Cell Signaling - Focus on mechanisms that control information flow into the nucleus to control gene expression (kinase and phosphatase pathways controlled by extra-cellular ligands, Wnt, Notch, TGFbeta/BMPs, FGFs, IGFs etc.) Profiling of gene expression and genetic variation - Focus on high throughput approaches (e.g., DeepSeq, ChIP-Seq, Affymetrix microarrays, proteomics) that define gene regulatory circuitry, molecular pathways and protein/protein networks. Genetics - Focus on development in model organisms (e.g., mouse, frog, fruit fly, worm), human genetic variation, population genetics, as well as agricultural and veterinary genetics. Molecular Pathology & Regenerative Medicine - Focus on the deregulation of molecular processes in human diseases and mechanisms supporting regeneration of tissues through pluripotent or multipotent stem cells.