about
Compressive biological sequence analysis and archival in the era of high-throughput sequencing technologiesSpeeding up the Consensus Clustering methodology for microarray data analysisValWorkBench: an open source Java library for cluster validation, with applications to microarray data analysis.A basic analysis toolkit for biological sequences.ARG-based genome-wide analysis of cacao cultivars.Comparative exomics of Phalaris cultivars under salt stressA methodology to assess the intrinsic discriminative ability of a distance function and its interplay with clustering algorithms for microarray data analysis.iXora: exact haplotype inferencing and trait association.Comparing sequencing assays and human-machine analyses in actionable genomics for glioblastoma.Sampling ARG of multiple populations under complex configurations of subdivision and admixture.The intrinsic combinatorial organization and information theoretic content of a sequence are correlated to the DNA encoded nucleosome organization of eukaryotic genomes.Epigenomic k-mer dictionaries: shedding light on how sequence composition influences in vivo nucleosome positioning.IRiS: construction of ARG networks at genomic scales.GenomicTools: a computational platform for developing high-throughput analytics in genomics.Enhancing Next-Generation Sequencing-Guided Cancer Care Through Cognitive Computing.Effect of sampling on the extent and accuracy of the inferred genetic history of recombining genome.Linear time algorithms to construct populations fitting multiple constraint distributions at genomic scales.In vitro versus in vivo compositional landscapes of histone sequence preferences in eucaryotic genomesLiquid versus tissue biopsy for detecting acquired resistance and tumor heterogeneity in gastrointestinal cancersAuthor Correction: Liquid versus tissue biopsy for detecting acquired resistance and tumor heterogeneity in gastrointestinal cancersDark-matter matters: Discriminating subtle blood cancers using the darkest DNAFunctional pathways in respiratory tract microbiome separate COVID-19 from community-acquired pneumonia patients
P50
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P50
description
onderzoeker
@nl
researcher
@en
հետազոտող
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name
Filippo Utro
@ast
Filippo Utro
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Filippo Utro
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Filippo Utro
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type
label
Filippo Utro
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Filippo Utro
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Filippo Utro
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Filippo Utro
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Filippo Utro
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Filippo Utro
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Filippo Utro
@es
Filippo Utro
@nl
P106
P1153
23098849400
P2456
P31
P496
0000-0003-3226-7642