sameAs
P185
Learning a prior on regulatory potential from eQTL dataSingle-cell mass cytometry of differential immune and drug responses across a human hematopoietic continuumContext Sensitive Modeling of Cancer Drug SensitivityNormalization of mass cytometry data with bead standards.viSNE enables visualization of high dimensional single-cell data and reveals phenotypic heterogeneity of leukemia.Systems biology. Conditional density-based analysis of T cell signaling in single-cell data.Integration of genomic data enables selective discovery of breast cancer drivers.Data-Driven Phenotypic Dissection of AML Reveals Progenitor-like Cells that Correlate with Prognosis.Wishbone identifies bifurcating developmental trajectories from single-cell data.Learning signaling network structures with sparsely distributed dataJISTIC: identification of significant targets in cancer.An Immune Atlas of Clear Cell Renal Cell Carcinoma.Principles and strategies for developing network models in cancer.An integrated approach to uncover drivers of cancer.Identifying regulatory mechanisms using individual variation reveals key role for chromatin modification.Single-cell mass cytometry of TCR signaling: amplification of small initial differences results in low ERK activation in NOD miceMapping differentiation under mixed culture conditions reveals a tunable continuum of T cell fatesEnvironmental stresses disrupt telomere length homeostasis.Genotype-environment interactions reveal causal pathways that mediate genetic effects on phenotype.Highly multiplexed profiling of single-cell effector functions reveals deep functional heterogeneity in response to pathogenic ligands.Palladium-based mass tag cell barcoding with a doublet-filtering scheme and single-cell deconvolution algorithmInterferon α/β Enhances the Cytotoxic Response of MEK Inhibition in Melanoma.Scalable microfluidics for single-cell RNA printing and sequencing.Using systems and structure biology tools to dissect cellular phenotypesInference of modules associated to eQTLs.Bayesian network analysis of signaling networks: a primer.Functional Genomic Landscape of Human Breast Cancer Drivers, Vulnerabilities, and Resistance.PD-1 Blockade Expands Intratumoral Memory T Cells.Modularity and interactions in the genetics of gene expressionRHPN2 drives mesenchymal transformation in malignant glioma by triggering RhoA activation.Harnessing gene expression to identify the genetic basis of drug resistancePhenoGraph and viSNE Facilitate the Identification of Abnormal T-Cell Populations in Routine Clinical Flow Cytometric Data.High-resolution analysis of DNA regulatory elements by synthetic saturation mutagenesis.Single-cell trajectory detection uncovers progression and regulatory coordination in human B cell development.Detection of minimal residual disease in B lymphoblastic leukemia using viSNE.Measuring Signaling and RNA-Seq in the Same Cell Links Gene Expression to Dynamic Patterns of NF-κB Activation.Broadening horizons: holistic viewpoints from the Biology of Genomes.Minreg: inferring an active regulator set.Using Bayesian networks to analyze expression dataRegenerative lineages and immune-mediated pruning in lung cancer metastasis
P50
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P50
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americká bioinformatička
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P214
P1153
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