Dr. Igor Jurisica
The ScienceDaily article IBM World Community Grid Squeezes Decades Of Cancer Research Into Two Years said
Canadian researchers expect to accelerate the war on cancer by tapping into a global network of hundreds of thousands of people who volunteer their idle computer time to tackle some of the world’s most complex problems.
The research team, led by Dr. Igor Jurisica at the Ontario Cancer Institute (OCI), and scientists at Princess Margaret Hospital and University Health Network, are the first from Canada to use the World Community Grid, a network of PCs and laptops with the power equivalent to one of the globe’s top five fastest supercomputers.
The team will use the World Community Grid to analyze the results of experiments on proteins using data collected by scientists at the Hauptman-Woodward Medical Research Institute in Buffalo, New York. This analysis would take conventional computer systems 162 years to complete. However, using World Community Grid, Dr. Jurisica anticipates the analysis could be finished in one to two years, and will provide researchers with a better way to study how proteins function, insight that could lead to the development of more effective cancer-fighting drugs.
Igor Jurisica, Ph.D. is
Canada Research Chair in Integrative Computational Biology and
Senior Scientist,
Ontario Cancer Institute, PMH/UHN,
Toronto Medical Discovery Tower,
Division of Signaling Biology,
IBM Life Sciences Discovery Centre.
He is also Associate Professor,
Departments of Computer Science and
Medical Biophysics,
University of Toronto;
Adjunct Professor,
School of Computing,
Queen’s University;
Visiting Scientist,
IBM Centre for Advance Studies,
IBM Toronto Lab; and Editor-in-Chief of
Cancer Informatics.
Igor focuses on cancer research. To significantly impact cancer
research, novel therapeutic approaches for targeting metastatic disease,
and diagnostic markers reflective of changes associated with disease
onset that can detect early stage disease must be discovered. Better
drugs must be rationally designed, and current drugs made more
efficacious either by re-engineering or by information-based combination
therapy.
To tackle these complex biological problems and
impact
high-throughput biology requires integrative computational biology,
i.e., considering multiple data types, developing and applying diverse
algorithms for heterogeneous data analysis, and visualization. Improved
analysis and reasoning algorithms will in turn advance disease diagnosis
by finding better markers, and improve patient management by supporting
information-based medicine. Combined, this will 1) advance computational
algorithms; 2) help to fathom cancer biology; and 3) lead to creating
computational models of cancer.
His research focuses on integrative computational biology, and
representation, analysis, and visualization of high dimensional data
generated by high-throughput biology experiments, in the context of
Cancer Informatics. Of particular interest is the use of comparative
analysis for the mining of integrated different datasets such as
protein-protein interaction, gene expression profiling, and
high-throughput screens for protein crystallization.
Igor coauthored
Knowledge Discovery in Proteomics,
Molecular Profiling of Non-Small Cell Lung Cancer and Correlation
with
Disease-free Survival,
High-Throughput Mapping of a Dynamic Signaling Network in
Mammalian Cells,
Online Predicted Human Interaction Database,
Intelligent decision support for protein crystal growth,
A Statistical Approach to Solving the EBL Utility Problem,
Molecular Evidence of Placental Hypoxia in Preeclampsia, and
CpG Island microarray probe sequences derived
from a physical library are representative of
CpG Islands annotated on the human genome,
and coedited
Cancer Informatics in the Post Genomic Era: Toward Information-Based
Medicine.
Read the
full list of his publications!
Igor earned his Dipl. Ing. degree in Computer Science and Engineering
from
the Slovak Technical University in 1991, his M.Sc. in Computer Science
from the University of Toronto in 1993, and his Ph.D. in Computer
Science from the University of Toronto in 1998. He holds patent
Dynamic semi-structured repository for mining software and
software-related information.