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Interactive analysis and quality assessment of single-cell copy-number variations
Authors
A Abyzov
AB Olshen
+35 more
B Langmead
C Alkan
C Zong
CF de Bourcy
CN Henrichsen
E Shapiro
EF Kirkness
GD Evrony
Gurinder S Atwal
J Wang
James Hicks
Jude Kendall
M Chen
M Gundry
M Wigler
MG Ross
Michael C Schatz
Michael Wigler
MJ McConnell
N Navin
N Navin
NE Navin
PC Blainey
Robert Aboukhalil
S Lu
SA Smits
T Baslan
T Baslan
T Daley
Timour Baslan
Tyler Garvin
WS Cleveland
X Cai
X Ni
Y Hou
Publication date
1 January 2015
Publisher
'Springer Science and Business Media LLC'
Doi
Cite
View
on
PubMed
Abstract
Single-cell sequencing is emerging as a critical technology for understanding the biology of cancer, neurons, and other complex systems. Here we introduce Ginkgo, a web platform for the interactive analysis and quality assessment of single-cell copy-number alterations. Ginkgo fully automates the process of binning, normalizing, and segmenting mapped reads to infer copy number profiles of individual cells, as well as constructing phylogenetic trees of how those cells are related. We validate Ginkgo by reproducing the results of five major single-cell studies, and discuss how it addresses the wide array of biases that affect single-cell analysis. We also examine the data characteristics of three commonly used single-cell amplification techniques: MDA, MALBAC, and DOP-PCR/WGA4 through comparative analysis of 9 different single-cell datasets. We conclude that DOP-PCR provides the most uniform amplification, while MDA introduces substantial biases into the analysis. Furthermore, given the same level of coverage, our results indicate that data prepared using DOP-PCR can reliably call CNVs at higher resolution than data prepared using either MALBAC or MDA. Ginkgo is freely available at http://qb.cshl.edu/ginkgo.Received November 11, 2014.Accepted November 12, 2014.© 2014, Published by Cold Spring Harbor Laboratory PressThis pre-print is available under a Creative Commons License (Attribution-NonCommercial-NoDerivs 4.0 International), CC BY-NC-ND 4.0, as described at http://creativecommons.org/licenses/by-nc-nd/4.0
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Cold Spring Harbor Laboratory Institutional Repository
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oai:repository.cshl.edu:31141
Last time updated on 06/05/2016
Crossref
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info:doi/10.1038%2Fnmeth.3578
Last time updated on 01/04/2019
Cold Spring Harbor Laboratory Institutional Repository
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oai:repository.cshl.edu:31762
Last time updated on 06/05/2016