about
A comparison of MCC and CEN error measures in multi-class predictionThe MicroArray Quality Control (MAQC)-II study of common practices for the development and validation of microarray-based predictive models.The concordance between RNA-seq and microarray data depends on chemical treatment and transcript abundanceDTW-MIC Coexpression Networks from Time-Course Data.Discovery of A-type procyanidin dimers in yellow raspberries by untargeted metabolomics and correlation based data analysisAlgebraic comparison of partial lists in bioinformaticsClinical value of prognosis gene expression signatures in colorectal cancer: a systematic review.Minerva and minepy: a C engine for the MINE suite and its R, Python and MATLAB wrappers.Stability indicators in network reconstruction.Machine learning methods for predictive proteomics.Systems biology of host-mycobiota interactions: dissecting Dectin-1 and Dectin-2 signalling in immune cells with DC-ATLAS.Identification of Biomarkers for Defense Response to Plasmopara viticola in a Resistant Grape Variety.An interactive real-time visualization environment for patients with heart failure.Pathway Inspector: a pathway based web application for RNAseq analysis of model and non-model organisms.Transcriptome and Cell Physiological Analyses in Different Rice Cultivars Provide New Insights Into Adaptive and Salinity Stress Responses.A practical tool for maximal information coefficient analysis.A Machine Learning Pipeline for Identification of Discriminant PathwaysA Machine Learning Pipeline for Discriminant Pathways IdentificationThe HIM glocal metric and kernel for network comparison and classificationReNette: a web-infrastructure for reproducible network analysisParenting dimensions in mothers and fathers of children with Autism Spectrum Disorders
P50
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P50
description
onderzoeker
@nl
researcher, ORCID id # 0000-0002-9737-8274
@en
name
Samantha Riccadonna
@ast
Samantha Riccadonna
@en
Samantha Riccadonna
@es
Samantha Riccadonna
@nl
type
label
Samantha Riccadonna
@ast
Samantha Riccadonna
@en
Samantha Riccadonna
@es
Samantha Riccadonna
@nl
prefLabel
Samantha Riccadonna
@ast
Samantha Riccadonna
@en
Samantha Riccadonna
@es
Samantha Riccadonna
@nl
P106
P31
P496
0000-0002-9737-8274