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Angie S Hinrichs

Showing results (1-10 of 57) with videos related to

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Current Protocols in Bioinformatics|December 4, 2009
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Current Protocols in Bioinformatics|December 21, 2012
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Current Protocols in Bioinformatics|April 23, 2008
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Current Protocols in Human Genetics|October 7, 2011
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Nature Genetics|May 11, 2021
Ultrafast Sample placement on Existing tRees (UShER) enables real-time phylogenetics for the SARS-CoV-2 pandemicYatish Turakhia, Bryan Thornlow, Angie S Hinrichs, et al.
Biorxiv : the Preprint Server for Biology|April 6, 2021
A daily-updated database and tools for comprehensive SARS-CoV-2 mutation-annotated treesJakob McBroome, Bryan Thornlow, Angie S Hinrichs, et al.
BMC Bioinformatics|October 2, 2012
G-NEST: a gene neighborhood scoring tool to identify co-conserved, co-expressed genesDanielle G Lemay, William F Martin, Angie S Hinrichs, et al.
Biorxiv : the Preprint Server for Biology|October 7, 2020
Ultrafast Sample Placement on Existing Trees (UShER) Empowers Real-Time Phylogenetics for the SARS-CoV-2 PandemicYatish Turakhia, Bryan Thornlow, Angie S Hinrichs, et al.
Molecular Biology and Evolution|September 1, 2021
A Daily-Updated Database and Tools for Comprehensive SARS-CoV-2 Mutation-Annotated TreesJakob McBroome, Bryan Thornlow, Angie S Hinrichs, et al.
Biorxiv : the Preprint Server for Biology|May 25, 2022
Online Phylogenetics using Parsimony Produces Slightly Better Trees and is Dramatically More Efficient for Large SARS-CoV-2 Phylogenies than <i>de novo</i> and Maximum-Likelihood ApproachesBryan Thornlow, Alexander Kramer, Cheng Ye, et al.
Pageof 6

Showing results (1-10 of 57) with videos related to

Sort By:
Pageof 6
Current Protocols in Bioinformatics|December 4, 2009
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Current Protocols in Bioinformatics|December 21, 2012
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Current Protocols in Bioinformatics|April 23, 2008
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Current Protocols in Human Genetics|October 7, 2011
The UCSC Genome BrowserDonna Karolchik, Angie S Hinrichs, W James Kent
Nature Genetics|May 11, 2021
Ultrafast Sample placement on Existing tRees (UShER) enables real-time phylogenetics for the SARS-CoV-2 pandemicYatish Turakhia, Bryan Thornlow, Angie S Hinrichs, et al.
Biorxiv : the Preprint Server for Biology|April 6, 2021
A daily-updated database and tools for comprehensive SARS-CoV-2 mutation-annotated treesJakob McBroome, Bryan Thornlow, Angie S Hinrichs, et al.
BMC Bioinformatics|October 2, 2012
G-NEST: a gene neighborhood scoring tool to identify co-conserved, co-expressed genesDanielle G Lemay, William F Martin, Angie S Hinrichs, et al.
Biorxiv : the Preprint Server for Biology|October 7, 2020
Ultrafast Sample Placement on Existing Trees (UShER) Empowers Real-Time Phylogenetics for the SARS-CoV-2 PandemicYatish Turakhia, Bryan Thornlow, Angie S Hinrichs, et al.
Molecular Biology and Evolution|September 1, 2021
A Daily-Updated Database and Tools for Comprehensive SARS-CoV-2 Mutation-Annotated TreesJakob McBroome, Bryan Thornlow, Angie S Hinrichs, et al.
Biorxiv : the Preprint Server for Biology|May 25, 2022
Online Phylogenetics using Parsimony Produces Slightly Better Trees and is Dramatically More Efficient for Large SARS-CoV-2 Phylogenies than <i>de novo</i> and Maximum-Likelihood ApproachesBryan Thornlow, Alexander Kramer, Cheng Ye, et al.
Pageof 6