about
Systems level analysis of systemic sclerosis shows a network of immune and profibrotic pathways connected with genetic polymorphisms.Experimentally-derived fibroblast gene signatures identify molecular pathways associated with distinct subsets of systemic sclerosis patients in three independent cohorts.Molecular characterization of systemic sclerosis esophageal pathology identifies inflammatory and proliferative signaturesStress granules and RNA processing bodies are novel autoantibody targets in systemic sclerosis.A novel multi-network approach reveals tissue-specific cellular modulators of fibrosis in systemic sclerosis.A Functional Genomic Meta-Analysis of Clinical Trials in Systemic Sclerosis: Toward Precision Medicine and Combination Therapy.A Multimodal Strategy Used By A Large c-di-GMP Network.Roles of mouse sperm-associated alpha-L-fucosidases in fertilization.Mycophenolate mofetil treatment of systemic sclerosis reduces myeloid cell numbers and attenuates the inflammatory gene signature in skin.The mechanistic implications of gene expression studies in SSc: Insights from Systems BiologyMultiPLIER: a transfer learning framework reveals systemic features of rare autoimmune diseaseCross-Platform Normalization Enables Machine Learning Model Training On Microarray And RNA-Seq Data SimultaneouslyIntegrative networks illuminate biological factors underlying gene-disease associationsA Novel Multi-network Approach Reveals Tissue-specific Cellular Modulators of Fibrosis in Systemic Sclerosis, Pulmonary Fibrosis and Pulmonary Arterial HypertensionMetabolic pathways and immunometabolism in rare kidney diseasesSystems Biology Approaches to Understanding the Pathogenesis of Systemic SclerosisIntegrated machine learning pipeline for aberrant biomarker enrichment (i-mAB): characterizing clusters of differentiation within a compendium of systemic lupus erythematosus patients.Making Workshops Work: Insights from EDAMAME
P50
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P50
description
researcher ORCID ID = 0000-0003-4734-4508
@en
wetenschapper
@nl
name
Jaclyn N Taroni
@ast
Jaclyn N Taroni
@en
Jaclyn N Taroni
@nl
type
label
Jaclyn N Taroni
@ast
Jaclyn N Taroni
@en
Jaclyn N Taroni
@nl
prefLabel
Jaclyn N Taroni
@ast
Jaclyn N Taroni
@en
Jaclyn N Taroni
@nl
P21
P31
P496
0000-0003-4734-4508