Bioinformatics Successfully Predicts Immune Response To One Of The Most Complex Viruses Known
The use of computers
to advance human disease research – known as bioinformatics -- has received a
major boost from researchers at the La Jolla Institute for Allergy &
Immunology (LIAI), who has used it to successfully predict immune response to
one of the most complex viruses known to man – the vaccinia virus, which is
used in the smallpox vaccine. Immune responses, which are essentially how the
body fights a disease-causing agent, are a crucial element of vaccine
development.
Bioinformatics holds significant interest in the scientific
community because of its potential to move scientific research forward more
quickly and at less expense than traditional laboratory testing.
The research was executed with resulted in "A consensus
epitope prediction approach identifies the breadth of murine TCD8+-cell
responses to vaccinia virus," in the online version of the journal Nature
Biotechnology. LIAI scientist Magdalini Moutaftsi was the lead author on the
paper.
While bioinformatics – which uses computer databases, algorithms
and statistical techniques to analyze biological information -- is already in
use as a predictor of immune response, the LIAI research team's findings were
significant because they demonstrated an extremely high rate of prediction
accuracy (95 percent) in a very complex pathogen – the vaccinia virus. The
vaccinia virus is a non-dangerous virus used in the smallpox vaccine because it
is related to the variola virus, which is the agent of smallpox. The scientific
team was able to prove the accuracy of their computer results through animal
testing.
"Before, we knew that the prediction methods we were using
were working, but this study proves that they work very well with a high degree
of accuracy," Sette said.
The researchers focused their testing on the Major
Histocompatibility Complex (MHC), which binds to certain epitopes and is key to
triggering the immune system to attack a virus-infected cell. Epitopes are
pieces of a virus that the body's immune system focuses on when it begins an
immune response. By understanding which epitopes will bind to the MHC molecule
and cause an immune attack, scientists can use those epitopes to develop a
vaccine to ward off illness – in this case to smallpox.
The scientists were able to find 95 percent of the MHC binding
epitopes through the computer modeling. "This is the first time that bioinformatics
prediction for epitope MHC binding can account for almost all of the (targeted)
epitopes that exist in very complex pathogens like vaccinia," said LIAI
researcher Magdalini Moutaftsi. The LIAI scientists theorize that the
bioinformatics prediction approach for epitope MHC binding will be applicable
to other viruses.
Figure: Showing involvement of antibodies to
destroy the pathogens in blood stream
Figure: Showing involvement of antibodies to
destroy the pathogens in blood stream
"The beauty of the virus used for this study is that it's one of the most complex, large viruses that exist," said Moutaftsi."If we can predict almost all (targeted) epitopes from such a large virus,then we should be able to do that very easily for less complex viruses like influenza, herpes or even HIV, and eventually apply this methodology to larger microbes such as tuberculosis."
The big advantage of using bioinformatics to predict immune system targets, explained Sette, is that it overcomes the need to manufacture and test large numbers of peptides in the laboratory to find which ones will initiate an immune response. Peptides are amino acid pieces that potentially can be recognized by the immune system. "There are literally thousands of
peptides," explained Sette. "You might have to create and test hundreds or even thousands of them to find the right ones," he said."With bioinformatics, the computer does the screening based on very complex mathematical algorithms. And it can do it in much less time and at much less expense than doing the testing in the lab."
The LIAI scientific team verified the accuracy of their computer findings by comparing the results against laboratory testing of the peptides and whole infectious virus in mice. "We studied the total response directed against infected cells," Sette said. "We compared it to the response against the 50 epitopes that had been predicted by the computer. We were pleased to see that our prediction could account for 95% of the total response directed against the virus."
Posted By:-
Bioinformatics Department
Posted By:-
Bioinformatics Department
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