Predicting cell types and genetic variations contributing to disease by combining GWAS and epigenetic data
about
Decoding the non-coding genome: elucidating genetic risk outside the coding genomeEpigenome-modifying tools in asthmaJoint analysis of functional genomic data and genome-wide association studies of 18 human traits.On the identification of potential regulatory variants within genome wide association candidate SNP sets.Epigenomic analysis of primary human T cells reveals enhancers associated with TH2 memory cell differentiation and asthma susceptibilityGenetic-epigenetic dysregulation of thymic TSH receptor gene expression triggers thyroid autoimmunityNRSF and BDNF polymorphisms as biomarkers of cognitive dysfunction in adults with newly diagnosed epilepsyAsthma genetics and personalised medicine.17q21 asthma-risk variants switch CTCF binding and regulate IL-2 production by T cells.CD4+ T-cell subsets in inflammatory diseases: beyond the Th1/Th2 paradigm.Epigenetic regulation of T-helper cell differentiation, memory, and plasticity in allergic asthma.Extensive Association of Common Disease Variants with Regulatory Sequence.Disentangling the Effects of Colocalizing Genomic Annotations to Functionally Prioritize Non-coding Variants within Complex-Trait Loci.Adult Neural Stem Cells: Basic Research and Production Strategies for Neurorestorative Therapy.Histone modifications and their role in epigenetics of atopy and allergic diseases.
P2860
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P2860
Predicting cell types and genetic variations contributing to disease by combining GWAS and epigenetic data
description
2013 nî lūn-bûn
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2013 թուականին հրատարակուած գիտական յօդուած
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2013 թվականին հրատարակված գիտական հոդված
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2013年の論文
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2013年論文
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2013年論文
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2013年論文
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2013年論文
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2013年論文
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2013年论文
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name
Predicting cell types and gene ...... ining GWAS and epigenetic data
@ast
Predicting cell types and gene ...... ining GWAS and epigenetic data
@en
Predicting cell types and gene ...... ining GWAS and epigenetic data
@en-gb
Predicting cell types and gene ...... ining GWAS and epigenetic data
@nl
type
label
Predicting cell types and gene ...... ining GWAS and epigenetic data
@ast
Predicting cell types and gene ...... ining GWAS and epigenetic data
@en
Predicting cell types and gene ...... ining GWAS and epigenetic data
@en-gb
Predicting cell types and gene ...... ining GWAS and epigenetic data
@nl
prefLabel
Predicting cell types and gene ...... ining GWAS and epigenetic data
@ast
Predicting cell types and gene ...... ining GWAS and epigenetic data
@en
Predicting cell types and gene ...... ining GWAS and epigenetic data
@en-gb
Predicting cell types and gene ...... ining GWAS and epigenetic data
@nl
P2093
P2860
P1433
P1476
Predicting cell types and gene ...... ining GWAS and epigenetic data
@en
P2093
Anjana Rao
Anna Gerasimova
Gregory Seumois
Jason Greenbaum
Pandurangan Vijayanand
P2860
P304
P356
10.1371/JOURNAL.PONE.0054359
P407
P577
2013-01-01T00:00:00Z