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May
6, 2003
UCSD Bioengineers Develop First
Genome-Scale Computational
Model of Gene Regulation, Results Published in May 6 Issue of
Nature
By Denine Hagen
It
has taken more than 50 years to accumulate the current body
of knowledge on Escherichia coli, a bacterium which is one of
the best studied organisms in biology. Now, bioengineers at
the University of California, San Diego have integrated this
knowledge into the first genome-scale model of the gene regulatory
system in E.coli. The computational model helps to define the
rules governing cell function and quickly enabled an exponential
increase in the understanding of the regulatory system in E.
coli. Their work, which is published in the May 6, 2004 issue
of Nature, represents a new way to systematically drive
biological discovery.
“This research is evidence of how much more quickly biological
discovery is going to progress now, given that we have high-throughput
experimental tools for gathering large volumes of data, and
the use of these tools can be guided by computer models,”
said Bernhard Palsson, professor of bioengineering at the UCSD
Jacobs School of Engineering. Palsson co-authored the study
with his UCSD bioengineering student Markus Covert, who is now
a post-doctoral researcher at the California Institute of Technology.
“We have demonstrated that we can reverse-engineer a cellular
regulatory system at the genome scale, and then use that model
to systematically gain new knowledge about how the cell functions,”
said Palsson.
In 2000, Palsson completed an in silico (computational) model
of E. coli metabolism that is now being used by scientists worldwide
to design and interpret laboratory experiments as well as engineer
strains for industrial purposes. In this more recent work, Covert
modeled the regulatory network in E. coli representing how the
cell responds to environmental cues and expresses genes involved
in cellular metabolism. He scoured the scientific literature
to reconstruct an E. coli model incorporating all known data
about regulatory network components, their functions and their
actions.
The UCSD model now includes a network for 1,010 genes, including
104 regulatory genes, whose products together with other molecules
regulate the expression of 479 of the 906 genes known to be
involved in metabolism.
The team conducted a series of experiments focused on E. coli’s
response to oxygen deprivation. They made predictions of cellular
behavior through simulations with the in silico model. These
predictions guided high-throughput data-gathering experiments
using gene chip technology. In the laboratory, the team created
strains of E. coli in which genes involved in oxygen regulation
were deleted, and then subjected the strains to experiments
both with and without oxygen. When the predicted outcomes did
not match the experimental outcomes, the experimental data was
used to update the in silico model.
Through this process, the team uncovered surprising new details
about how E. coli responds to oxygen deprivation.
“We went into the experiments thinking that oxygen regulation
is fairly well understood. But in one fell swoop, we identified
115 previously unknown regulatory mechanisms,” said Covert.
“For example, one interesting finding was that in several
cases when a protein that transcribes a gene is active, the
expression level of that gene is actually reduced. We also identified
new regulatory interactions for genes that no one previously
had described, basically opening up a whole new research frontier
in terms of characterizing regulatory networks in E. coli.”
Another observation by the team was that E. coli’s regulatory
network is much more complex than might be expected for such
a relatively simple single-cell microbe. And that, Covert says,
means that lessons learned through the E. coli modeling process
will help scientists model much more advanced organisms such
as mice and even humans.
UCSD has filed a patent on the model and is negotiating a license
agreement. Palsson’s group at UCSD will continue to develop
the E. coli model, and is also beginning to model the regulatory
network in yeast, a single-cell organism more closely related
to human cells. Meanwhile Covert at Caltech is focusing on signaling
transduction pathways in the mouse.
In addition to Palsson and Covert, the other researchers involved
in the study include Eric M. Knight, Jennifer L. Reed, and Markus
J. Herrgard. Funding was provided through the National Institutes
of Health.
Media Contact:
Denine Hagen, 858-534-2920
www.jacobsschool.ucsd.edu
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