about
The genome sequence of the plant pathogen Xylella fastidiosa. The Xylella fastidiosa Consortium of the Organization for Nucleotide Sequencing and AnalysisPredicting Essential Genes and Proteins Based on Machine Learning and Network Topological Features: A Comprehensive ReviewPrediction of Druggable Proteins Using Machine Learning and Systems Biology: A Mini-ReviewCooperative RNA polymerase molecules behavior on a stochastic sequence-dependent model for transcription elongationGALANT: a Cytoscape plugin for visualizing data as functional landscapes projected onto biological networks.The development of a universal in silico predictor of protein-protein interactions.Towards the prediction of essential genes by integration of network topology, cellular localization and biological process information.A machine learning approach for genome-wide prediction of morbid and druggable human genes based on systems-level data.Prediction of oncogenic interactions and cancer-related signaling networks based on network topology.Transcriptome response signatures associated with the overexpression of a mitochondrial uncoupling protein (AtUCP1) in tobacco.An ensemble framework for identifying essential proteins.The generation and utilization of a cancer-oriented representation of the human transcriptome by using expressed sequence tagsUnravelling the Neospora caninum secretome through the secreted fraction (ESA) and quantification of the discharged tachyzoite using high-resolution mass spectrometry-based proteomics.Impacts of the overexpression of a tomato translationally controlled tumor protein (TCTP) in tobacco revealed by phenotypic and transcriptomic analysis.Genome-wide microRNA screening in Nile tilapia reveals pervasive isomiRs' transcription, sex-biased arm switching and increasing complexity of expression throughout development.The Cytoscape BioGateway App: explorative network building from the BioGateway triple storeCausalTAB: the PSI-MITAB 2.8 updated format for signalling data representation and dissemination
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P50
description
onderzoeker
@nl
researcher
@en
հետազոտող
@hy
name
Marcio Luis Acencio
@ast
Marcio Luis Acencio
@en
Marcio Luis Acencio
@es
Marcio Luis Acencio
@nl
type
label
Marcio Luis Acencio
@ast
Marcio Luis Acencio
@en
Marcio Luis Acencio
@es
Marcio Luis Acencio
@nl
prefLabel
Marcio Luis Acencio
@ast
Marcio Luis Acencio
@en
Marcio Luis Acencio
@es
Marcio Luis Acencio
@nl
P106
P1153
23027062000
P21
P31
P496
0000-0002-8278-240X