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Molecular profiling of Spitz nevi identified by digital RNA counting
Lisa M. Hillen
, Milan S. Geybels
, Dorit Rennspiess
, Ivelina Spassova
, Cathrin Ritter
, Juergen C. Becker
, Marjan Garmyn
,
Axel zur Hausen
, Joost Van den Oord
, Veronique Winnepenninckx
*
*
Corresponding author for this work
Pathologie
DA Pat Pathologie
GROW - Prevention
Epidemiologie
DA Klinische Pathologie
GROW - Basic and Translational Cancer Biology
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Dive into the research topics of 'Molecular profiling of Spitz nevi identified by digital RNA counting'. Together they form a unique fingerprint.
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Immunology and Microbiology
Upregulation
100%
Gene Expression
100%
Extracellular Matrix
100%
Angiogenesis
100%
Random Forest
100%
Feature Extraction
100%
Oncogene
100%
Neuroscience
Angiogenesis
100%
Gene Expression
100%
False Discovery Rate
100%
Extracellular Matrix
100%
Oncogene
100%
Messenger RNA
100%
Keyphrases
Molecular Profiling
100%
Spitz Nevus
100%
Nevocellular Nevus
72%
Same Patient
18%
Training Set
18%
MRNA Expression
9%
Feature Selection
9%
Molecular Properties
9%
Gene Pathway
9%
Gene Expression
9%
Least Absolute Shrinkage and Selection Operator (LASSO)
9%
False Discovery Rate
9%
Angiogenesis
9%
Differentially Expressed Genes
9%
Validation Set
9%
Oncogene
9%
Random Forest
9%
Melanoma
9%
Biomarker Discovery
9%
Gene number
9%
Gene Analysis
9%
Molecular Expression
9%
Expression Profile
9%
Genetic Modification
9%
Nevus
9%
Immunomodulatory
9%
NanoString nCounter
9%
Molecular Signature
9%
Melanocytic Nevus
9%
Extracellular Matrix Interaction
9%
Expression Platform
9%
Benign Melanocytic Lesions
9%
Biochemistry, Genetics and Molecular Biology
RNA
100%
Upregulation
50%
Gene Expression
50%
Angiogenesis
50%
Oncogene
50%
Random Forest
50%
Genomics
50%
Feature Extraction
50%
Messenger RNA
50%
Differentially Expressed Gene
50%
INIS
rna
100%
genes
100%
patients
28%
validation
28%
matrices
14%
comparative evaluations
14%
inflammation
14%
randomness
14%
messenger-rna
14%
angiogenesis
14%
interactions
14%
forests
14%
oncogenes
14%
neoplasms
14%
melanomas
14%
shrinkage
14%
Medicine and Dentistry
Molecular Profiling
100%
Spitz Nevus
100%
Nevus
81%
Neoplasm
9%
Gene Expression
9%
Angiogenesis
9%
Upregulation
9%
Oncogene
9%
Extracellular Matrix
9%
Molecular Property
9%
Messenger RNA
9%
Feature Extraction
9%
Melanoma
9%