about
Genome-scale identification of Legionella pneumophila effectors using a machine learning approachChanges in exon-intron structure during vertebrate evolution affect the splicing pattern of exons.Identification of novel Coxiella burnetii Icm/Dot effectors and genetic analysis of their involvement in modulating a mitogen-activated protein kinase pathway.The average common substring approach to phylogenomic reconstruction.New CRISPR-Cas systems from uncultivated microbes.Native homing endonucleases can target conserved genes in humans and in animal models.Accurate, multi-kb reads resolve complex populations and detect rare microorganisms.A machine learning approach to identify hydrogenosomal proteins in Trichomonas vaginalis.Large-scale comparative analysis of splicing signals and their corresponding splicing factors in eukaryotes.Analysis of five complete genome sequences for members of the class Peribacteria in the recently recognized Peregrinibacteria bacterial phylum.Major bacterial lineages are essentially devoid of CRISPR-Cas viral defence systems.Computational modeling and experimental validation of the Legionella and Coxiella virulence-related type-IVB secretion signal.DNA motifs determining the efficiency of adaptation into the Escherichia coli CRISPR array.Genomic analysis of 38 Legionella species identifies large and diverse effector repertoires.Identical bacterial populations colonize premature infant gut, skin, and oral microbiomes and exhibit different in situ growth ratesPotential for microbial H2 and metal transformations associated with novel bacteria and archaea in deep terrestrial subsurface sediments.Identification of novel Xanthomonas euvesicatoria type III effector proteins by a machine-learning approach.Novel type III effectors in Pseudomonas aeruginosa.Two distinct RNase activities of CRISPR-C2c2 enable guide-RNA processing and RNA detection.CoPAP: Coevolution of presence-absence patterns.Uncovering the co-evolutionary network among prokaryotic genes.Retroelement-guided protein diversification abounds in vast lineages of Bacteria and Archaea.Genomic resolution of a cold subsurface aquifer community provides metabolic insights for novel microbes adapted to high CO2 concentrations.Novel Microbial Diversity and Functional Potential in the Marine Mammal Oral Microbiome.Differential GC Content between Exons and Introns Establishes Distinct Strategies of Splice-Site RecognitionProgrammed DNA destruction by miniature CRISPR-Cas14 enzymesHydrogen-based metabolism as an ancestral trait in lineages sibling to the CyanobacteriaA Functional Mini-Integrase in a Two-Protein-type V-C CRISPR SystemAuthor Correction: Hydrogen-based metabolism as an ancestral trait in lineages sibling to the CyanobacteriaThe distinction of CPR bacteria from other bacteria based on protein family contentMediterranean grassland soil C-N compound turnover is dependent on rainfall and depth, and is mediated by genomically divergent microorganismsTiny Hidden Genes within Our Microbiome
P50
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P50
description
hulumtues
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onderzoeker
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researcher
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հետազոտող
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חוקר
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name
David Burstein
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David Burstein
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David Burstein
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David Burstein
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דוד בורשטיין
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type
label
David Burstein
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David Burstein
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David Burstein
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David Burstein
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דוד בורשטיין
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Dudu Burstein
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דודו בורשטיין
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prefLabel
David Burstein
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David Burstein
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David Burstein
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David Burstein
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דוד בורשטיין
@he
P106
P1960
SfeKvjEAAAAJ
P21
P31
P496
0000-0002-6219-1880