A systems biology model of the regulatory network in Populus
leaves reveals interacting regulators and conserved regulation
Nathaniel Robert Street, Stefan Jansson and Torgeir R Hvidsten
BMC Plant Biology 2011, 11:13doi:10.1186/1471-2229-11-13
Abstract
Green plant leaves have always fascinated biologists as hosts for
photosynthesis and providers of basic energy to many food webs.
Today, comprehensive databases of gene expression data enable us to
apply increasingly more advanced computational methods for
reverse-engineering the regulatory network of leaves, and to begin
to understand the gene interactions underlying complex emergent
properties related to stress-response and development. These new
systems biology methods are now also being applied to organisms such
as Populus, a woody perennial tree, in order to understand the
specific characteristics of these species.
We present a systems biology model of the regulatory network of
Populus leaves. The network is reverse-engineered from promoter
information and expression profiles of leaf-specific genes measured
over a large set of conditions related to stress and developmental.
The network model incorporates interactions between regulators, such
as synergistic and competitive relationships, by evaluating
increasingly more complex regulatory mechanisms, and is therefore
able to identify new regulators of leaf development not found by
traditional genomics methods based on pair-wise expression
similarity. The approach is shown to explain available gene function
information and to provide robust prediction of expression levels in
new data. We also use the predictive capability of the model to
identify condition-specific regulation as well as conserved
regulation between Populus and Arabidopsis.
We outline a computationally inferred model of the regulatory
network of Populus leaves, and show how treating genes as
interacting, rather than individual, entities identifies new
regulators compared to traditional genomics analysis. Although
systems biology models should be used with care considering the
complexity of regulatory programs and the limitations of current
genomics data, methods describing interactions can provide
hypotheses about the underlying cause of emergent properties and are
needed if we are to identify target genes other than those
constituting the "low hanging fruit" of genomic analysis.
Fulltext: http://www.biomedcentral.com/1471-2229/11/13
Note that N. Street is an invited speaker at the Comparative
& Regulatory Genomics Conference (April 2011, Ghent)
kind regards,
Klaas Vandepoele