Computer Program Developed to Detect, Measure Brain Tumors
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By MedImaging International staff writers Posted on 01 Jul 2009 |
The same techniques used to detect suspicious activity in airports, and other public places are now being utilized by the researcher who invented them to find and measure potentially life-threatening brain tumors.
Dr. Mubarak Shah, a professor of computer science at the University of Central Florida (UCF; Orlando, USA), and one of the world's most eminent researchers in the rapidly developing field of computer imaging, has received US$400,000 from the U.S. National Institutes of Health (Bethesda, MD, USA) to develop a computer program to analyze brain scans produced by magnetic resonance imaging (MRI.)
The two-year grant is the first UCF has received from money allocated by the American Recovery and Reinvestment Act stimulus program. The funding will enable Dr. Shah and his collaborators--Dr. Nicholas Avgeropoulos, a neuro-oncologist with Orlando Health System, and Dr. David Rippe, a neuroradiologist with Sunshine Radiology at Florida Hospital Zephyrhills--to work together on the complicated task of automatically measuring and comparing the size of a tumor in three-dimensions (3D) from MRI scans.
Nearly 10 years ago, Dr. Shah approached Dr. Rippe, who at that time was chairman of the radiology department at Florida Hospital Orlando, looking for ways to use computer technology to help those in the medical profession. The alliance was "a natural fit,” Dr. Rippe noted. "Radiologists use computers to look at scans, but this is taking the next step--allowing computers to help radiologists analyze the pictures and enabling an automated method to calculate the size of tumors.”
Radiologists are typically hindered in their analyses by a variety of factors, such as tumors that are irregular in shape or have jagged edges, tumors with liquefied centers, or surrounding tissue that is deformed or changing shape. "Not only are the changes visually hard to see, we also want numbers to quantify the types of changes we are talking about,” Dr. Rippe said. Those numbers help determine whether a particular treatment plan such as radiation or chemotherapy is working.
Automated analysis of a small data set using Dr. Shah's preliminary method has been shown to be up to 90% accurate compared to the analyses provided by the radiologists.
According to Dr. Shah, some of the hurdles of this project include making sure the typically low-resolution scans can be converted to the high-resolution images needed for computers to precisely measure tumors. He also must perform extensive experiments with a large data set to validate his method. He has partnered with a UCF biostatistician, Xiaogang Su, to ensure that the measurements are statistically correct.
Related Links:
University of Central Florida
Dr. Mubarak Shah, a professor of computer science at the University of Central Florida (UCF; Orlando, USA), and one of the world's most eminent researchers in the rapidly developing field of computer imaging, has received US$400,000 from the U.S. National Institutes of Health (Bethesda, MD, USA) to develop a computer program to analyze brain scans produced by magnetic resonance imaging (MRI.)
The two-year grant is the first UCF has received from money allocated by the American Recovery and Reinvestment Act stimulus program. The funding will enable Dr. Shah and his collaborators--Dr. Nicholas Avgeropoulos, a neuro-oncologist with Orlando Health System, and Dr. David Rippe, a neuroradiologist with Sunshine Radiology at Florida Hospital Zephyrhills--to work together on the complicated task of automatically measuring and comparing the size of a tumor in three-dimensions (3D) from MRI scans.
Nearly 10 years ago, Dr. Shah approached Dr. Rippe, who at that time was chairman of the radiology department at Florida Hospital Orlando, looking for ways to use computer technology to help those in the medical profession. The alliance was "a natural fit,” Dr. Rippe noted. "Radiologists use computers to look at scans, but this is taking the next step--allowing computers to help radiologists analyze the pictures and enabling an automated method to calculate the size of tumors.”
Radiologists are typically hindered in their analyses by a variety of factors, such as tumors that are irregular in shape or have jagged edges, tumors with liquefied centers, or surrounding tissue that is deformed or changing shape. "Not only are the changes visually hard to see, we also want numbers to quantify the types of changes we are talking about,” Dr. Rippe said. Those numbers help determine whether a particular treatment plan such as radiation or chemotherapy is working.
Automated analysis of a small data set using Dr. Shah's preliminary method has been shown to be up to 90% accurate compared to the analyses provided by the radiologists.
According to Dr. Shah, some of the hurdles of this project include making sure the typically low-resolution scans can be converted to the high-resolution images needed for computers to precisely measure tumors. He also must perform extensive experiments with a large data set to validate his method. He has partnered with a UCF biostatistician, Xiaogang Su, to ensure that the measurements are statistically correct.
Related Links:
University of Central Florida
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