Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
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Transmission or Within-Host Dynamics Driving Pulses of Zoonotic Viruses in Reservoir-Host PopulationsInterpreting whole genome sequencing for investigating tuberculosis transmission: a systematic review.Infectious disease transmission and contact networks in wildlife and livestockERAIZDA: a model for holistic annotation of animal infectious and zoonotic diseasesToward a Literature-Driven Definition of Big Data in HealthcareImpact of Clostridium botulinum genomic diversity on food safety.Timely Reporting and Interactive Visualization of Animal Health and Slaughterhouse Surveillance Data in Switzerland.Using Combined Diagnostic Test Results to Hindcast Trends of Infection from Cross-Sectional Data.Evidence in Practice - A Pilot Study Leveraging Companion Animal and Equine Health Data from Primary Care Veterinary Clinics in New Zealand.Measurably evolving pathogens in the genomic eraInsights from 20 years of bacterial genome sequencing.'Next-Generation' Surveillance: An Epidemiologists' Perspective on the Use of Molecular Information in Food Safety and Animal Health Decision-Making.Use of bacterial whole-genome sequencing to investigate local persistence and spread in bovine tuberculosisWhole-Genome Sequencing Allows for Improved Identification of Persistent Listeria monocytogenes in Food-Associated EnvironmentsBacterial Genomics Reveal the Complex Epidemiology of an Emerging Pathogen in Arctic and Boreal Ungulates.Using whole genome sequencing to investigate transmission in a multi-host system: bovine tuberculosis in New ZealandIdentification of Source of Brucella suis Infection in Human by Using Whole-Genome Sequencing, United States and Tonga.Sellers' Revisited: A Big Data Reassessment of Historical Outbreaks of Bluetongue and African Horse Sickness due to the Long-Distance Wind Dispersion of Culicoides Midges.Translating Big Data into Smart Data for Veterinary Epidemiology.Using contact networks to explore mechanisms of parasite transmission in wildlife.Toward Precision Healthcare: Context and Mathematical ChallengesDisease reservoirs: from conceptual frameworks to applicable criteria.Towards an eco-phylogenetic framework for infectious disease ecology.The Scope of Big Data in One Medicine: Unprecedented Opportunities and Challenges.Shiga Toxin-Producing Escherichia coli O157 Shedding Dynamics in an Australian Beef Herd.Food for contagion: synthesis and future directions for studying host-parasite responses to resource shifts in anthropogenic environments.Big Data's Role in Precision Public Health.Assessing the probability of introduction and spread of avian influenza (AI) virus in commercial Australian poultry operations using an expert opinion elicitation.Genetic profiling of Mycobacterium bovis strains from slaughtered cattle in Eritrea.Stochastic processes constrain the within and between host evolution of influenza virus.What has molecular epidemiology ever done for wildlife disease research? Past contributions and future directions
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P2860
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
description
2014 nî lūn-bûn
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2014 թուականի Մարտին հրատարակուած գիտական յօդուած
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2014 թվականի մարտին հրատարակված գիտական հոդված
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2014年の論文
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2014年論文
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2014年論文
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2014年論文
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2014年論文
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2014年論文
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2014年论文
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name
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
@ast
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
@en
type
label
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
@ast
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
@en
prefLabel
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
@ast
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
@en
P50
P1476
Supersize me: how whole-genome sequencing and big data are transforming epidemiology.
@en
P2093
Pablo R Murcia
P304
P356
10.1016/J.TIM.2014.02.011
P577
2014-03-22T00:00:00Z