about
Mining textural knowledge in biological images: Applications, methods and trendsComputational Methods for CLIP-seq Data Processing.miREE: miRNA recognition elements ensembleBellerophontes: an RNA-Seq data analysis framework for chimeric transcripts discovery based on accurate fusion model.Pegasus: a comprehensive annotation and prediction tool for detection of driver gene fusions in cancer.An automated approach to the segmentation of HEp-2 cells for the indirect immunofluorescence ANA test.VDJSeq-Solver: in silico V(D)J recombination detection tool.isomiR-SEA: an RNA-Seq analysis tool for miRNAs/isomiRs expression level profiling and miRNA-mRNA interaction sites evaluation.FuGePrior: A novel gene fusion prioritization algorithm based on accurate fusion structure analysis in cancer RNA-seq samples.MicroRNA-mRNA interactions underlying colorectal cancer molecular subtypes.Gelsius: a literature-based workflow for determining quantitative associations between genes and biological processes.Convergent mutations and kinase fusions lead to oncogenic STAT3 activation in anaplastic large cell lymphoma.FunMod: a Cytoscape plugin for identifying functional modules in undirected protein-protein networks.Selective analysis of cancer-cell intrinsic transcriptional traits defines novel clinically relevant subtypes of colorectal cancer.A novel Gaussian extrapolation approach for 2D gel electrophoresis saturated protein spots.RALE051: a novel established cell line of sporadic Burkitt lymphoma.A Novel Gaussian Extrapolation Approach for 2-D Gel Electrophoresis Saturated Protein Spots.ANAlyte: A modular image analysis tool for ANA testing with indirect immunofluorescence.Unsupervised HEp-2 mitosis recognition in indirect immunofluorescence imaging.A molecular dynamics study of a miRNA:mRNA interaction.Automated segmentation of cells with IHC membrane staining.Automated segmentation of tissue images for computerized IHC analysis.Convergent Mutations and Kinase Fusions Lead to Oncogenic STAT3 Activation in Anaplastic Large Cell LymphomaA Deep Learning Approach to the Screening of Oncogenic Gene Fusions in HumansExploiting Gene Expression Profiles for the Automated Prediction of Connectivity between Brain RegionsAchieving the way for automated segmentation of nuclei in cancer tissue images through morphology-based approach: a quantitative evaluationMultiscale modeling of cellular actin filaments: from atomistic molecular to coarse-grained dynamics
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description
researcher ORCID ID = 0000-0002-8061-2124
@en
wetenschapper
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name
Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
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Elisa Ficarra
@nl
P106
P1153
10341059800
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P31
P496
0000-0002-8061-2124