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31st Annual Meeting and Associated Programs of the Society for Immunotherapy of Cancer (SITC 2016): part oneA factor graph nested effects model to identify networks from genetic perturbations.Inference of patient-specific pathway activities from multi-dimensional cancer genomics data using PARADIGM.Voltage-gated Na+ channel SCN5A is a key regulator of a gene transcriptional network that controls colon cancer invasionThe UCSC Cancer Genomics Browser: update 2011Single-cell analyses of transcriptional heterogeneity during drug tolerance transition in cancer cells by RNA sequencing.The UCSC Interaction Browser: multidimensional data views in pathway context.Lymphocyte Invasion in IC10/Basal-Like Breast Tumors Is Associated with Wild-Type TP53.Integrated molecular profiles of invasive breast tumors and ductal carcinoma in situ (DCIS) reveal differential vascular and interleukin signalingGene prediction and verification in a compact genome with numerous small introns.FOXM1 cistrome predicts breast cancer metastatic outcome better than FOXM1 expression levels or tumor proliferation index.Inferring disease-related pathways using a probabilistic epistasis model.Cell of origin and mutation pattern define three clinically distinct classes of sebaceous carcinoma.Transcriptional Programming of Normal and Inflamed Human Epidermis at Single-Cell ResolutionPolyoma virus-associated carcinomas of the urologic tract: a clinicopathologic and molecular studyDeep Learning Implicitly Handles Tissue Specific Phenomena to Predict Tumor DNA Accessibility and Immune ActivityData-Independent Acquisition Mass Spectrometry To Quantify Protein Levels in FFPE Tumor Biopsies for Molecular Diagnostics
P50
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P50
description
hulumtues
@sq
researcher
@en
wetenschapper
@nl
հետազոտող
@hy
name
Charles J Vaske
@ast
Charles J Vaske
@en
Charles J Vaske
@es
Charles J Vaske
@nl
Charles J Vaske
@sl
type
label
Charles J Vaske
@ast
Charles J Vaske
@en
Charles J Vaske
@es
Charles J Vaske
@nl
Charles J Vaske
@sl
prefLabel
Charles J Vaske
@ast
Charles J Vaske
@en
Charles J Vaske
@es
Charles J Vaske
@nl
Charles J Vaske
@sl
P1053
D-6018-2013
P106
P108
P21
P31
P3829
P496
0000-0001-8151-6612