Using Genome Query Language to uncover genetic variation.
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GenAp: a distributed SQL interface for genomic dataContribution of mono and polysaccharides to heterotrophic N2 fixation at the eastern Mediterranean coastline.Gene-microRNA network module analysis for ovarian cancer.GenoMetric Query Language: a novel approach to large-scale genomic data management.Light-weight reference-based compression of FASTQ data.High levels of heterogeneity in diazotroph diversity and activity within a putative hotspot for marine nitrogen fixationSCell: integrated analysis of single-cell RNA-seq dataGORpipe: a query tool for working with sequence data based on a Genomic Ordered Relational (GOR) architecture.Sewage outburst triggers Trichodesmium bloom and enhance N2 fixation rates.dendextend: an R package for visualizing, adjusting and comparing trees of hierarchical clusteringLW-FQZip 2: a parallelized reference-based compression of FASTQ files.The Skyline ecosystem: Informatics for quantitative mass spectrometry proteomics.Identification of prognostic genes and gene sets for early-stage non-small cell lung cancer using bi-level selection methods.High-throughput sequencing of the T-cell receptor repertoire: pitfalls and opportunities.Feature selection using a one dimensional naïve Bayes' classifier increases the accuracy of support vector machine classification of CDR3 repertoires.Do Bacterial Symbionts Govern Aphid's Dropping Behavior?START: a system for flexible analysis of hundreds of genomic signal tracks in few lines of SQL-like queries.Cas-Designer: a web-based tool for choice of CRISPR-Cas9 target sites.
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Using Genome Query Language to uncover genetic variation.
description
article científic
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article scientifique
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articolo scientifico
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artigo científico
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bilimsel makale
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scientific article published on 10 June 2013
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vedecký článok
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vetenskaplig artikel
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videnskabelig artikel
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vědecký článek
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name
Using Genome Query Language to uncover genetic variation.
@en
Using Genome Query Language to uncover genetic variation.
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type
label
Using Genome Query Language to uncover genetic variation.
@en
Using Genome Query Language to uncover genetic variation.
@nl
prefLabel
Using Genome Query Language to uncover genetic variation.
@en
Using Genome Query Language to uncover genetic variation.
@nl
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P2860
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Using Genome Query Language to uncover genetic variation.
@en
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Andrew Heiberg
Christos Kozanitis
George Varghese
P2860
P356
10.1093/BIOINFORMATICS/BTT250
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P50
P577
2013-06-10T00:00:00Z