Processing, visualising and reconstructing network models from single-cell data.
Accepted version
Peer-reviewed
Repository URI
Repository DOI
Change log
Authors
Woodhouse, Steven
Moignard, Victoria https://orcid.org/0000-0001-5089-5875
Göttgens, Berthold
Fisher, Jasmin https://orcid.org/0000-0003-4477-9047
Abstract
New single-cell technologies readily permit gene expression profiling of thousands of cells at single-cell resolution. In this review, we will discuss methods for visualisation and interpretation of single-cell gene expression data, and the computational analysis needed to go from raw data to predictive executable models of gene regulatory network function. We will focus primarily on single-cell real-time quantitative PCR and RNA-sequencing data, but much of what we cover will also be relevant to other platforms, such as the mass cytometry technology for high-dimensional single-cell proteomics.
Description
Keywords
Animals, Bayes Theorem, Cluster Analysis, Computational Biology, Gene Expression Profiling, Gene Regulatory Networks, Genomics, High-Throughput Nucleotide Sequencing, Humans, Principal Component Analysis, Single-Cell Analysis
Journal Title
Immunol Cell Biol
Conference Name
Journal ISSN
0818-9641
1440-1711
1440-1711
Volume Title
94
Publisher
Wiley
Publisher DOI
Sponsorship
Leukaemia & Lymphoma Research (12029)
Cancer Research Uk (None)
Biotechnology and Biological Sciences Research Council (BB/I00050X/1)
Wellcome Trust (097922/Z/11/Z)
Medical Research Council (MC_PC_12009)
Leukemia & Lymphoma Society (7001-12)
Medical Research Council (MR/M008975/1)
Wellcome Trust (097922/Z/11/B)
Cancer Research Uk (None)
Biotechnology and Biological Sciences Research Council (BB/I00050X/1)
Wellcome Trust (097922/Z/11/Z)
Medical Research Council (MC_PC_12009)
Leukemia & Lymphoma Society (7001-12)
Medical Research Council (MR/M008975/1)
Wellcome Trust (097922/Z/11/B)
S.W is supported by a Microsoft Research PhD Scholarship.