Authors
Chee Yee Lim, Huange Wang, Steven Woodhouse, Nir Piterman, Lorenz Wernisch, Jasmin Fisher, Berthold Göttgens
Publication date
2016/12
Journal
BMC bioinformatics
Volume
17
Pages
1-18
Publisher
BioMed Central
Description
Background
Rapid technological innovation for the generation of single-cell genomics data presents new challenges and opportunities for bioinformatics analysis. One such area lies in the development of new ways to train gene regulatory networks. The use of single-cell expression profiling technique allows the profiling of the expression states of hundreds of cells, but these expression states are typically noisier due to the presence of technical artefacts such as drop-outs. While many algorithms exist to infer a gene regulatory network, very few of them are able to harness the extra expression states present in single-cell expression data without getting adversely affected by the substantial technical noise present.
Results
Here we introduce BTR, an algorithm for training asynchronous Boolean models with single-cell expression data using a novel Boolean …
Total citations
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