Researchers
develop method to rapidly identify
optimal drug cocktails
New scheme holds promise for treating cancer, other diseases

UCLA researchers have developed
a feedback control scheme that can search for the most effective
drug combinations to treat a variety of conditions, including
cancers and infections. The discovery could play a significant
role in facilitating new clinical drug-cocktail trials.
The best known use of drug cocktails
has been in the fight against HIV, the virus that causes AIDS.
Drug cocktails also have been used to combat several types of
cancer. Often, drugs that might not be effective in combating
diseases individually do much better in combination.
With the use of the new closed-loop
feedback control scheme, an approach guided by a stochastic
search algorithm, researchers at the UCLA Henry Samueli School
of Engineering and Applied Science and UCLA's Jonsson Comprehensive
Cancer Center have devised an invaluable means of identifying
potent drug combinations fast and efficiently. Their findings
appear in the March 17 online version of the journal Proceedings
of the National Academy of Sciences.
It has long been a difficult challenge
for clinical researchers to determine the optimal dose of individual
drugs used in combination. For example, a researcher testing
10 different concentrations of six drugs in every possible arrangement
would be faced with 1 million potential combinations.
"With the development of this
optimization method, we've overcome a major roadblock,"
said study author Chih-Ming Ho, UCLA's Ben Rich-Lockheed Martin
Professor and a member of the National Academy of Engineering.
"There have always been too many choices and too many combinations
to sort through. It was like finding a needle in a haystack."
In one test case, the research
team examined how to best prevent a viral infection of host
cells. Using the closed-loop optimization scheme, they were
able to identify, out of 100,000 possible combinations, the
drug cocktails that completely inhibited viral infection after
only about a dozen trials. In addition, they found that total
inhibition of the virus occurred at much lower drug doses than
would be necessary if the drugs were used alone; in fact, the
concentrations of the drugs were only about 10 percent of that
required when used individually.
"Viruses grow very rapidly
and change rapidly as well. Because of that, a virus can become
resistant to a particular drug," said Genhong Cheng, a
member of the research team at the UCLA Center for Cell Control
and UCLA's Jonsson Comprehensive Cancer Center. "This is
why it's so important to be able to use a combination of more
than one drug. If the virus mutates to become resistant to one
drug, it is still sensitive to the other drugs."
Drug combinations can also be used
effectively to inhibit infectious diseases because resistance
to a single drug is very common, according to Ren Sun, UCLA
professor of molecular and medical pharmacology and a member
of the research team.
"If we can apply multiple
drugs against one infectious agent, it probably will prevent
the occurrence of drug resistance," said Sun, who is also
a researcher at the Jonsson Cancer Center. "But, of course,
when you use multiple drugs, side effects will be strong. With
this model, there is a way to optimize the combination to reduce
the side effects while maintaining efficacy that will be very
beneficial."
"What the search scheme does
is it tries to detect trends for optimal output," said
Pak Wong, a former UCLA graduate student who participated in
the study and is now an assistant professor of mechanical engineering
at the University of Arizona. "Basically, the algorithm
sees a trend and a direction and drives the trend in that direction.
It's like mountain climbing and finding a way to get to the
peak. So you keep going, and soon you rapidly find the peak
while being guided by a smart search scheme."
In an example used to illustrate
the prevention of viral infection of host cells, researchers
started with arbitrarily chosen dosages of the drugs. The percentage
of non-infected cells under this initial drug-cocktail treatment
was fed into the stochastic search algorithm, which essentially
helps guide a random search process. The algorithm then suggested
the next drug concentrations for producing a higher percentage
of non-infected cells. This closed-loop feedback control scheme
is carried out continuously until the best combination is found.
Randomness is built into the search decision, preventing the
trap at local optimum levels and allowing the search process
to continue until the optimal drug cocktail is identified.
The model also provides an alternative
approach to studying cellular functions. Molecular biologists
can identify all the players of a particular regulatory pathway
in order to decipher how to block or augment that pathway. Cells
are complex systems with many redundant functions, and it is
difficult to predict how a cell will respond to multiple stimulations
at one time. The model overlooks these details and lets the
system determine what works best for itself. If researchers
are more interested in how the cellular network functions, this
approach can provide an initial bird's-eye view, but it also
allows them to home in on the important molecular activities
controlled by the best drug combinations.
This search scheme is an extremely
effective and versatile tool that can be applied to combat numerous
diseases, including cancer, the researchers say, and its multidimensional
properties will likely make it useful in a wide variety of additional
situations.
The next steps are animal and clinical
testing.
The study was funded and supported
by the Center for Cell Control, a nanomedicine development center
funded by the National Institutes of Health through the Roadmap
for Medical Research, and by the Institute for Cell Mimetic
Space Exploration, a NASA-sponsored institute.
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