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Machine
Learning Could Speed Up Radiation Therapy for Cancer Patients
The
automatic radiation planning algorithm results in beamlet
intensities that produce equal-dose contours. The prostate
(center) receives a high dose, while nearby tissue receives
a low dose.
Image
by Rensselaer/Richard Radke
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Troy, N.Y. — A new
computer-based technique could eliminate hours of manual
adjustment associated with a popular cancer treatment. In a paper
published in the Feb. 7 issue of Physics
in Medicine and Biology,
researchers from Rensselaer Polytechnic Institute describe an
approach that has the potential to automatically determine
acceptable radiation plans in a matter of minutes, without
compromising the quality of treatment.
“Intensity Modulated
Radiation Therapy (IMRT) has exploded in popularity, but the
technique can require hours of manual tuning to determine an
effective radiation treatment for a given patient,” said
Richard Radke, assistant professor of electrical, computer, and
systems engineering at Rensselaer. Radke is leading a team of
engineers and medical physicists to develop a “machine
learning” algorithm that could cut hours from the process.
A subfield of artificial
intelligence, machine learning is based on the development of
algorithms that allow computers to learn relationships in large
datasets from examples. Radke and his coworkers have tested their
algorithm on 10 prostate cancer patients. They found that for 70
percent of the cases, the algorithm automatically determined an
appropriate radiation therapy plan in about 10 minutes.
“The main goal of
radiation therapy is to irradiate a tumor with a very high dose,
while avoiding all of the healthy organs,” Radke said. He
described early versions of radiation therapy as a “fire
hose” approach, applying a uniform stream of particles to
overwhelm cancer cells with radiation.
IMRT adds nuance and
flexibility to radiation therapy, increasing the likelihood of
treating a tumor without endangering surrounding healthy tissue.
Each IMRT beam is composed of thousands of tiny “beamlets”
that can be individually modulated to deliver the right level of
radiation precisely where it is needed.
But the semi-automatic process
of developing a treatment plan can be extremely time-consuming —
up to about four hours for prostate cancer and up to an entire
day for more complicated cancers in the head and neck, according
to Radke.
A radiation planner must
perform a CT scan, analyze the image to determine the exact
locations of the tumor and healthy tissues, and define the
radiation levels that each area should receive. Then the planner
must give weight to various constraints set by a doctor, such as
allowing no more than a certain level of radiation to hit a
nearby organ, while assuring that the tumor receives enough to
kill the cancerous cells.
This is currently achieved by
manually determining the settings of up to 20 different
parameters, or “knobs,” deriving the corresponding
radiation plan, and then repeating the process if the plan does
not meet the clinical constraints. “Our goal is to automate
this knob-turning process, saving the planner’s time by
removing decisions that don’t require their expert
intuition,” said Radke.
The researchers first performed
a sensitivity analysis, which showed that many of the parameters
could be eliminated completely because they had little effect on
the outcome of the treatment. They then showed that an automatic
search over the smaller set of sensitive parameters could
theoretically lead to clinically acceptable plans.
The procedure was put to the
test by developing radiation plans for 10 patients with prostate
cancer. In all 10 cases the process took between five and 10
minutes, Radke said. Four cases would have been immediately
acceptable in the clinic; three needed only minor “tweaking”
by an expert to achieve an acceptable radiation plan; and three
would have demanded more attention from a radiation planner.
Radke and his coworkers plan to
develop a more robust prototype that can be installed on hospital
computers and evaluated in a clinical setting. He hopes to see a
clinical prototype in the next few years. The researchers also
plan to test the approach on tumors that are more difficult to
treat with radiation therapy, such as head and neck cancers.
In a related project, Radke is
collaborating with colleagues at Boston’s Massachusetts
General Hospital to create computer vision algorithms that offer
accurate estimates of the locations of tumors. This automatic
modeling and segmentation process could help radiation planning
at an earlier stage by automatically outlining organs of interest
in each image of a CT scan, which is another time-consuming
manual step.
The research is supported by
the National Cancer Institute and the Center for Subsurface
Sensing and Imaging Systems (CenSSIS) at Rensselaer, which is
funded by the National Science Foundation. Renzhi Lu, a graduate
student in electrical engineering at Rensselaer, also contributed
to the research.
Source
/ Credit: Rensselaer Polytechnic Institute
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