April 2, 2004
Program Speeds Drug Discovery
The DDASSL software can quickly screen large databases, accurately predicting the molecules that show potential for future medicines.
Troy, N.Y. — Researchers at Rensselaer Polytechnic Institute
today announced the release of a software program capable of
quickly identifying molecules that show promise for future
medicines. The software program enables drug makers to comb
through enormous databases of potential molecules and identify
the ones that have sound medicinal properties.
Rensselaer researchers with skills in computer science,
chemistry, and math allied to create the software program.
Chemistry Professor Curt Breneman, Mathematics Associate
Professor Kristin Bennett, and Decision Sciences and
Engineering Systems Associate Professor Mark Embrechts
collaborated in the Drug Discovery and Semi-Supervised Learning
project (DDASSL, pronounced "dazzle"), supported by a $1.2
million Knowledge and Distributed Intelligence Award from the
National Science Foundation.
"The trick with drug discovery is to have the drug molecule
fit like a key in a lock, because shape affects its
performance," Embrechts said. The safety and effectiveness of
medicines depend on the shape and chemistry of the molecule. To
find the most likely molecules, the new software makes use of
two shortcuts in chemistry and math that enable the computer to
search a vast molecular database rapidly.
The first shortcut describes the molecule, its shape and
chemistry, in terms of numbers a computer can crunch rapidly.
"Dr. Breneman has a technique to calculate electronic
properties on the surface of a molecule very quickly,"
Embrechts said. "It produces a description—basically a set of
numbers—that the computer can use easily."
Then, the second shortcut identifies which molecules have the
right chemistry for a specific therapy. Using advanced
pattern-recognition techniques known as kernel methods, the
software analyzes a small sample database to identify molecules
with the right chemical features. Once the key features are
identified, the software can quickly screen large databases,
accurately predicting the molecules that show potential.
"Conventional techniques are not truly predictive and don't
work," Bennett said. "So we borrowed pattern recognition
techniques already used in the pharmaceutical industry and
added algorithms based on support vector machines. That gives
us a technique to predict which molecules are promising."
Rensselaer researchers noted that predictive modeling is one
of a new breed of drug discovery methods that marks a shift in
industry practice—a shift away from cell-based assays performed
in the lab toward math-based models calculated on the
computer.
"Our program allows researchers to ‘crash test' lots of
molecules quickly and inexpensively," Breneman said. "That
prevents a lot of false starts. The ultimate pay-off of this
methodology may be that it can support the rapid invention of
new drugs when diseases develop quickly and threaten
society."
As drug makers increasingly target complex, chronic illness,
drug development becomes far more costly and time consuming.
Meanwhile, in the search for new drugs, 99.9 percent of
compounds tested ultimately fail. Accordingly, drug makers want
to be able to predict more accurately which compounds will
produce the next blockbuster drug.
The Rensselaer research team will continue work to improve
drug discovery methods, which will be carried out in the new
Rensselaer Center for Biotechnology and Interdisciplinary
Studies, a state-of-the-art facility scheduled to open in
September 2004.
For a print-quality photo, go to
http://www.rpi.edu/dept/NewsComm/sub/Pressimgs/molecule.jpg.
Please credit RPI/Curt Breneman.
Contact: Robert Pini
Phone: (518) 276-6050
E-mail: pinir@rpi.edu