| By Virtualization News |
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| January 28, 2008 02:15 PM EST |
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IBM, The Cancer Institute of New Jersey (CINJ) and Rutgers, The State University of New Jersey, announced a
collaborative research effort to develop diagnostic tools which can improve the
accuracy of predicting patients' responses to treatment and related clinical
outcomes. Through the use of advanced computer and imaging technologies that
facilitate comparisons of cancerous tissues, cell and radiology studies,
researchers and physicians expect to determine more accurate cancer prognoses,
more personalized therapy planning and, subsequently, the discovery and
development of new cancer drugs.
This new project is a natural extension of the "Help
Defeat Cancer" (HDC) project in which IBM's World Community Grid was used
to demonstrate the effectiveness of characterizing different types and stages
of disease based upon the underlying staining patterns exhibited by digitally
imaged cancer tissues. World Community Grid is a virtual supercomputer that
gains its resources by thousands of volunteers donating their unused computer
time.
Leveraging the experimental results gathered during the
course of the HDC project, the team has recently received a $2.5-million grant
through competitive funding from the National Institutes of Health. The central
objective of this project is to build a deployable, grid-enabled decision support
system to help researchers, physicians and scientists to automatically analyze
and classify imaged cancer specimens with improved accuracy. It will be a
useful tool for supporting the selection of personalized treatments for people
with cancer based upon how patients with similar protein expression signatures
and cancers have reacted to treatments.
The team is expanding the first phase of the project that
studied breast, colon and head and neck cancers to include other cancers as
well. From the World Community Grid project, CINJ created a reference library
of expression signatures and demonstrated a reliable means for performing
high-throughput analysis of tissue micro-arrays.
In addition, investigators at CINJ also are establishing a
Center for High-Throughput Data Analysis for Cancer Research that will tap into
state-of-the-art computing resources and a Shared University Research Award
provided by IBM. The primary objective of the Center is to develop pattern
recognition algorithms that can simultaneously take into consideration
information contained in digitally archived cancer specimens, radiology images
and proteomic and genomic data for improved assessment of disease onset and
progression.
David J. Foran, Ph.D., director of the Center for Biomedical
Imaging & Informatics at CINJ and professor of pathology and laboratory
medicine at UMDNJ-Robert
Wood Johnson
Medical School,
is the lead investigator for the project. "World Community Grid enabled us
to validate our imaging and pattern recognition algorithms and establish a
reference library of expression signatures for more than 100,000 digitally imaged
tissue samples. The overarching goal of the new NIH grant is to expand the
library to include signatures for a wider range of disorders and make it, along
with the decision support technology, available to the research and clinical
communities as grid-enabled deployable software. Through the use of mirror
sites at CINJ and Ohio
State University,
and with the support of the NCI-funded cancer Biomedical Informatics Grid
(caBIG) program at NIH, we hope to deploy these technologies to other cancer
research centers around the nation," said Dr. Foran. "We look forward
to addressing some of the most pressing challenges in clinical informatics
today, working side-by-side with our collaborating team of world-class
scientists from IBM, Rutgers and other
research partners."
Leiguang Gong, Ph.D., of IBM's T.J. Watson
Research Center
is leading a team of experts in high performance medical imaging and
informatics. In this venture, he and his colleagues at the IBM research and
technical labs will collaborate closely with Foran's team at CINJ and
investigators at Rutgers. Co-principal
investigators for the project are Gyan Bhanot, Ph.D., member of CINJ and
professor of biomedical engineering and the BioMaPS Institute at Rutgers
University, who is an internationally recognized computational biologist in
cancer research and a leading expert in evolutionary genetics; and Manish
Parashar, Ph.D., professor of electrical and computer engineering and associate
director of the Center for Advanced Information Processing (CAIP) at Rutgers
University, who is an internationally recognized expert in distributed and
autonomic computing.
As part of the new Center, IBM is donating High Performance
P6 570 Series Class Systems, which will provide additional computational power
for the project. The Center will utilize grid technology to provide access to
the software and database to collaborating investigators at Arizona State
University, the Ohio State University and the University of
Pennsylvania School of Medicine. The consortium will serve as a network-based
testbed for optimizing the software during iterative prototyping. "This is
an ambitious initiative that will push the frontiers of medicine and science by
modernizing the collection, interpretation and distribution of cancer research,"
said Jai Menon, vice president Technical Strategy and University Relations IBM.
"A new diagnostic tool with capabilities to analyze diverse types of
cancer tissue has the potential to yield breakthrough advances for cancer
research worldwide."
Collaborative Innovation
One key focus of the project will be to foster interaction
and exchange of innovative ideas among those individuals who have formal
training in engineering and computer science, physics, mathematics and
statistics and those with strong backgrounds in the areas of biological
sciences and medicine. Rutgers
University also will play
a major role in the development of the joint project and will address
computational and distributed computing issues at the system and application
levels. IBM researchers will work onsite at CINJ and at Rutgers
to develop the state-of-the art image processing, machine learning and pattern
recognition methods used in this collaboration by conducting deep analysis of
the data and by leveraging the computational power of IBM's latest technologies
and platforms. The Center also will work closely with the NSF
Industry/University Cooperative Research Center on Automatic Computing (CAC)
being established at Rutgers. CAC will
investigate core technologies for enabling autonomic systems and applications,
which will directly benefit the Center. In addition, the effort will yield
internship opportunities for Ph.D. candidates at the Graduate School of
Biomedical Sciences at UMDNJ-Robert Wood Johnson
Medical School
and Rutgers University by encouraging and
recommending the brightest among them to work in IBM's T.J. Watson lab
beginning this year.