Minimal-invasive
thermal imaging of a malignant tumor: a simple model and algorithm.
Source
Department of Biomedical Engineering, Faculty of
Engineering, Tel-Aviv University, Tel-Aviv 69978, Israel.
Abstract
PURPOSE:
This article deals with
the development of a minimal-invasive, infrared (IR) (8-12 microm spectral
range) imaging technique that would improve upon current methods by using
superparamagnetic nanostructured core/shell particles for imaging as well as
for therapy. This technique may function as a diagnostic tool, thanks to the
ability of specific bioconjugation of these nanoparticles to a tumor's outer
surface. Hence, by applying an alternating magnetic field, the authors could
cause a selective elevation of temperature of the nanoparticles for +1 - +5
degrees C, enabling tumor's imaging. Further elevation of the temperature over
+10 degrees C will cause a necrotic effect, leading to localized irreversible
damage to the cancerous site without harming the surrounding tissues. This
technique may also serve as a targeted therapeutic tool under thermal feedback
control.
METHODS:
Under alternative magnetic
field, these biocompatible nanoparticles can generate heat, which propagates
along the tissue (by thermal conduction), reaching the tissue's surface.
Surface temperature distribution can be acquired by an IR camera and analyzed
to retrieve nanoparticles' temperature and location within the tissue. An
analytical-based steady-state solution for the thermal inverse problem was
developed, considering an embedded point heat source. Based on this solution,
the authors developed an algorithm that generates solutions for the
corresponding forward problem, and based on discovered relations between the
problem's characteristic, can derive the depth and temperature of the embedded
heat source from the surface temperature profile, derived from the thermal image.
RESULTS:
The algorithm was able
to compute the heat source depth and power (proportional to its temperature) in
two phases. Assuming that the surface temperature profile can be fitted to a
Lorentzian curve, the first phase computing the source depth was based on a
linear relation between the depth and the FWHM value of the surface temperature
profile, which is independent of the source power. This relation varies between
different tissues and surface conditions. The second phase computing the power
(Q) was based on an exponential relation between the area (A) curve of the
surface temperature profile and power (Q), dependent on the depth computed in
the first phase. The simulation results show that given the tissue thermal
properties, the surface conductance, and the ambient conditions, an inverse
solution can be applied retrieving the depth and temperature of a point heat
source from a 2D thermal image.
CONCLUSIONS:
The predicted depth and
heat source power were compared to the actual parameters (which were derived).
Differences between the real and estimated values may occur primarily in
computing the forward solution, which was used for the estimation itself. The
fact that the computation is carried out discretely and the spatial resolution
in the radial direction are influencing factors. To improve and eliminate these
factors, the resolution may be increased or suitable interpolation and/or
smoothing may be applied. Applying this algorithm on a spherical heat source
volume may be feasible. A solution for the forward problem was established, yet
incorporation of the source radius has to be further examined.
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