NEW MEDICAL IMAGING TECHNIQUE IMPROVES CHANCES
OF EARLY CANCER DETECTION
By Dr. Jonathan Ophir
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This ovine (sheep) kidney was imaged using
both traditional sonogram and the experimental elastogram.
Although the sonogram (left) sufficiently shows the general
kidney's outline, the elastogram (center) reveals more of
the kidney's interior structure, as compared to the anatomy
diagram of the kidney (right). |
June 16, 1998, Pittsburgh, Pennsylvania - Physicians use
a variety of technologies to detect tumors and determine which
are malignant and which are benign. These techniques include x-ray,
ultrasound, biopsy and physical examination. While each of these
tests can provide valuable information, my colleagues and I at
the University of Texas Medical School (UTMS) at Houston, the
University of Kansas Medical Center (UKMC), Baylor College of
Medicine (BCM) and the Ecole Polytechnique in Montreal are developing
a new method for detecting and differentiating cancer using a
new type of medical imaging we call elastography.
Elastography relies on imaging the strains induced in the tissue
as a result of a small external mechanical compression. To develop
this imaging technique, we have employed a valuable modeling and
analysis tool from the computer-aided engineering (CAE) field:
the Finite Element Analysis (FEA) software of Pittsburgh-based
Algor, Inc.
How Elastography Works
The elasticity of soft tissues depends to a large extent on their
molecular building blocks (fat, collagen, etc.), and on the microscopic
and macroscopic structural organization of these blocks. In the
normal breast, for example, the glandular structure may be firmer
than the surrounding connective tissue, which in turn is firmer
than the subcutaneous fat. The standard medical practice of soft
tissue palpation is based on qualitative assessment of the stiffness
of tissue.
This new technology allows the hardness or stiffness of biological
tissues to be estimated and imaged using modified conventional
ultrasound instruments. It is known that certain pathologic conditions,
such as malignant tumors, often manifest themselves as changes
in the mechanical properties of tissue; this, in fact, is the
principle behind tissue palpation. In many cases, despite the
differences in stiffness, the small size of a pathological lesion
and/or its location deep in the body preclude its detection and
evaluation by palpation. In many cases, the lesion may not be
ultrasonically detectable.
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These cross-sectional images were taken from
a cranio-caudal scan of a breast of a volunteer patient using
a modified Diasonics Spectra™ ultrasound scanner operating
with a 5 MHz transducer array. The sonogram and the corresponding
elastogram were taken simultaneously from the identical anatomical
site. The sonogram shows the presence of a solitary hypoechoic
(echo-free, or dark) lesion. The elastogram displays the hard
tissues as dark, and the soft tissues as light. It shows the
same lesion as being hard (typical of most breast cancers)
and larger, most likely due to desmoplasia that causes hardening
only around cancerous lesions. It also shows a soft core,
suggestive of a necrotic center. Additionally, a second small
(~6mm) lesion is detected on the elastogram at 10 o'clock
relative to the main lesion. The subcutaneous soft fat layer
(thick white band on the elastogram) is highly visible and
its normal flat shape is distorted by the presence of the
two hard lesions. This anatomical structure is not visible
on the sonogram. The elastogram’s ability to display the smaller
lesion demonstrates its capability of detecting tumors in
earlier stages of development. |
For example, tumors of the prostate or the breast could be invisible
or barely visible in standard ultrasound examinations, yet be
much harder than the embedding tissue. Diffuse diseases such as
cirrhosis of the liver are known to significantly increase the
stiffness of the liver tissue as a whole, yet they may appear
normal in a conventional ultrasound examination. We further believe
that the elastic properties of benign lesions are fairly uniform
throughout a benign tumor. Cancerous tumors, on the other hand,
grow in a very disorganized way. Therefore, within a given malignant
tumor, the elastic properties of one area of a tumor may be significantly
different from those in another area.
The concept relating to the measurement of these tissue changes
is an extension of the basic principles associated with traditional
medical ultrasonic imaging. The principle is based upon the fact
that tissues are deformed slightly when a small displacement is
externally applied. Tissues that are more elastic will deform
more than those tissues that are harder or less elastic. These
internal deformations can then be detected and characterized with
elastography. Since most cancerous tissues are much harder than
normal tissues, it is expected that they will show up well on
the image known as an elastogram.
To create an elastogram, two ultrasound images of the same breast
tissue are taken: one of the tissue in its normal, uncompressed
state, and another one of the tissue in a slightly compressed
state. These images are compared point-by-point by signal processing
methods. Signal processing determines how the tissue elements
moved when compressed, and then converts this information into
an elastogram.
National Cancer Institute Supports Elastography Research
The development of this technique is currently funded by the
National Cancer Institute through a 5-year, multi-million dollar
Program Project Grant (grant # P01-CA54597). The work involves
basic as well as clinical research. In order to study the behavior
of hard tumors that are embedded in softer tissues, we have found
it useful to model certain complicated tumor geometries with Algor
software.
Algor's finite element analysis capabilities enable us to predict
the mechanical behavior of the tissue under compression at every
location. We then use this information, along with additional
models of the ultrasonic properties of the tissue, to create simulated
elastograms. From these simulated elastograms we can learn much
about what we should expect from real tissues, and how we should
optimize the experiment and develop new elastography software
algorithms.
To test the elastography technology, we need to create models
based on varying conditions from a malignant tumor near the chest
cavity to a cyst near glandular tissue. It is impossible to find
human subjects to meet all the criteria that we want to test.
That is where Algor comes in. We use Algor software to run analyses
on various hypothetical tissue arrangements to see how different
types of tissues arranged in different geometries move when pressure
is applied. We chose Algor because of its ability to run efficiently
on a desktop personal computer and reasonable cost, as well as
its proven accuracy, modeling and analysis capabilities.
The Analysis Procedure
For each hypothetical placement of tissues, we use Algor's Superdraw
to create a computer model of the tissue in its normal state.
Most of our FEA models are two-dimensional. Building and analyzing
three-dimensional models for this application does not offer significant
advantages because the image rendered by the elastogram is also
two-dimensional. Using two-dimensional models also enables us
to run analyses quickly and efficiently.
Algor's automatic meshing capabilities provide a finite element
mesh that can be quickly generated. We found a very fine mesh
to be unnecessary for this application. Because the elastogram
renders all areas of a sample with the same resolution, there
is no need to refine the generated mesh in areas of interest.
With a standard mechanical hydraulic testing apparatus, we determined
the material properties of real breast tissues including muscle,
fat, glandular tissues and various types of lesions. Data from
our real-life tests of the various breast tissues is entered into
Algor's data input screens. Once entered, material data is available
for use by the linear stress processor.
Typically, the model of the tissue is compressed about one percent.
Fixed boundary conditions and boundary elements are applied to
simulate pressure. Algor's linear stress analysis software determines
the stress, deflections and strains that result from the simulated
application of pressure.
Comparing Algor Results to Physical Tests
Whereas a design engineer is most interested in the numerical
values calculated by finite element analysis software to determine
whether failure will occur, we look at the visual displays of
displacement and strain results to predict what we will see in
an elastogram. Because elastograms of physical models include
noise, the displays of Algor strain results represent the best
case image we can achieve. Image processing can then be optimized
to the Algor strain display.
From the analysis displays, we can also determine if a particular
tissue arrangement may be difficult to detect. If that is the
case, we perform a real-life test using gelatin-based tissue models
that imitate various lesions and breast tissues.
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A gelatin test object contains a 3/4" diameter
circular inclusion that has the same ultrasonic properties
as the surrounding medium, but is 3-times harder. The sonogram
(left) does not detect the presence of the inclusion, while
the elastogram (center) demonstrates it well. The bright region
centered on the inclusion in the elastogram is a stress-concentration
artifact predicted from the Algor simulation of the sample
at a 45 degree angle (right).
(The test object was created by Dr. T. Hall from the University
of Kansas Medical Center.) |
Using these gelatinous materials has several advantages over
using human test subjects. First, human tissues are more complex.
By constructing gelatin models, we can learn to recognize true
tumors from other kinds of tissues. Second, inconvenience to both
researcher and subject is eliminated.
We have learned much about what we should expect from real tissues
by working with finite element models and gelatin test objects.
Comparing visual results of the finite element analyses with elastograms
of test objects has enabled us to optimize the procedure and develop
new elastography software algorithms.
Clinical Testing Begins
An experimental clinical elastography system is currently being
tested by Dr. Brian Garra at the Department of Radiology at Georgetown
University Medical Center. The protocol being tested relates to
improving the specificity of ultrasound follow-up examinations
of mammographically detected breast lesions. Currently, the most
accepted and the most sensitive means for detecting breast lesions
is with x-ray mammography. While the method is very sensitive
for detecting lesions, only about 20% of those lesions identified
by mammography are found to be cancers when they are biopsied.
Reducing the number of unnecessary biopsies is an important goal
in breast cancer management. The average biopsy costs between
$2,000 and $3,000 and causes considerable stress to patients.
Given both the cost and trauma associated with performing biopsies
in all cases where patients had mammographically detected lesions,
there is a strong incentive to develop additional non-invasive
methods such as elastography to accurately determine if a lesion
is benign or malignant.
To date, the initial results of this clinical work are promising.
Dr. Garra has identified several indicators using this technique,
which suggest means for distinguishing between benign and cancerous
lesions. However, while the results are encouraging, the clinical
work is still in an early stage.
Taking Elastography in New Directions
In the future, we plan to experiment with using the elastography
to detect and evaluate other kinds of cancer, particularly prostate
cancer. Currently, two diagnostic methods are used to detect prostate
cancer: digital rectal examination and traditional sonography.
Even with these two detection options, a large number of prostate
cancer cases go unrecognized.
Successful cancer treatment depends on early detection and evaluation.
As we venture forward in our research, we plan to continue to
use Algor software to analyze the mechanical behavior of the tissues.
This information will enable us to develop and refine elastography
as a tool that physicians can use to detect and diagnose cancer
as early as possible.
Dr. Jonathan Ophir is a Professor of Radiology at
University of Texas Medical School (UTMS) at Houston and is the
Program Director of National Cancer Institute Program Project
# P01-CA64597. Dr. Thomas Krouskop, a Professor at Baylor College
of Medicine in Houston, Dr. Faouzi Kallel, a post-doctoral fellow
at UTMS, and Dr. Michael Insana, Professor of Radiology at the
University of Kansas Medical Center also contributed to this article.
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Researchers at UTMC Houston modeled a cross-section
of semi-tendinous bovine muscle structure, idealizing the
muscle bundles as circular cylinders. The Algor strain simulation
(left) suggests the kind of image that will be produced by
an elastogram of an actual muscle sample (right). |
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