about
Flux balance analysis predicts essential genes in clear cell renal cell carcinoma metabolism.Chromosome 3p loss of heterozygosity is associated with a unique metabolic network in clear cell renal carcinoma.Glycosaminoglycan Profiling in Patients' Plasma and Urine Predicts the Occurrence of Metastatic Clear Cell Renal Cell Carcinoma.Kiwi: a tool for integration and visualization of network topology and gene-set analysisPrognostic Value of Plasma and Urine Glycosaminoglycan Scores in Clear Cell Renal Cell Carcinoma.Genome-scale modeling of human metabolism - a systems biology approach.Absolute Quantification of Protein and mRNA Abundances Demonstrate Variability in Gene-Specific Translation Efficiency in Yeast.Human protein secretory pathway genes are expressed in a tissue-specific pattern to match processing demands of the secretome.In search for symmetries in the metabolism of cancer.Systematic analysis of overall survival and interactions between tumor mutations and drug treatment.Exploiting off-targeting in guide-RNAs for CRISPR systems for simultaneous editing of multiple genes.Recon3D enables a three-dimensional view of gene variation in human metabolism.Systematic Analysis Reveals that Cancer Mutations Converge on Deregulated Metabolism of Arachidonate and Xenobiotics.Microbial inactivation of paprika using oregano essential oil combined with high-pressure CO2Pan-cancer analysis of the metabolic reaction networkBreast cyst fluid heparan sulphate is distinctivelyN-sulphated depending on apocrine or flattened typePan-cancer analysis of the metabolic reaction networkPlasma Glycosaminoglycans as Diagnostic and Prognostic Biomarkers in Surgically Treated Renal Cell Carcinoma
P50
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P50
description
researcher ORCID: 0000-0002-9031-9562
@en
name
Francesco Gatto
@ast
Francesco Gatto
@en
Francesco Gatto
@es
Francesco Gatto
@nl
Francesco Gatto
@sl
type
label
Francesco Gatto
@ast
Francesco Gatto
@en
Francesco Gatto
@es
Francesco Gatto
@nl
Francesco Gatto
@sl
prefLabel
Francesco Gatto
@ast
Francesco Gatto
@en
Francesco Gatto
@es
Francesco Gatto
@nl
Francesco Gatto
@sl
P106
P21
P214
821144647706682502005
P2456
155/6872-1
P31
P496
0000-0002-9031-9562
P734
P735
P7859
viaf-821144647706682502005