about
Improvements to services at the European Nucleotide ArchiveVelvet: algorithms for de novo short read assembly using de Bruijn graphsThe NGS WikiBook: a dynamic collaborative online training effort with long-term sustainabilityEnsembl 2017Lineage-Specific Genome Architecture Links Enhancers and Non-coding Disease Variants to Target Gene PromotersCHiCAGO: robust detection of DNA looping interactions in Capture Hi-C dataEnsembl 2016Ensembl core software resources: storage and programmatic access for DNA sequence and genome annotationEnsembl 2015An efficient conformational sampling method for homology modeling.Pebble and rock band: heuristic resolution of repeats and scaffolding in the velvet short-read de novo assemblerA new strategy for genome assembly using short sequence reads and reduced representation librariesUsing the Velvet de novo assembler for short-read sequencing technologies.Assemblathon 1: a competitive assessment of de novo short read assembly methods.Punctuated bursts in human male demography inferred from 1,244 worldwide Y-chromosome sequences.WiggleTools: parallel processing of large collections of genome-wide datasets for visualization and statistical analysis.A unifying model of genome evolution under parsimony.The ensembl regulatory buildEnsembl regulation resources.Integrating genomes.Cactus: Algorithms for genome multiple sequence alignment.An analysis of core deformations in protein superfamilies.Building a pan-genome reference for a populationHAL: a hierarchical format for storing and analyzing multiple genome alignments.Ensembl 2018.FAANG, establishing metadata standards, validation and best practices for the farmed and companion animal communityGENCODE reference annotation for the human and mouse genomesCore deformations in protein families: a physical perspectiveEnsembl 2019Ensembl 2020Sequence tube maps: making graph genomes intuitive to commuters
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description
hulumtues
@sq
researcher
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wetenschapper
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հետազոտող
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name
Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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type
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Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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prefLabel
Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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Daniel R Zerbino
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P106
P1960
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P2456
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P496
0000-0001-5350-3056