Abstract:
Computed Tomography (CT) is an effective and indispensable imaging tool for
medical image reconstruction application. It comprises positron emission tomography
(PET) and single photon emission computed tomography (SPECT). It provides functional
and anatomical information about physiological processes. The goal of CT is to
reconstruct the distribution of the radio-isotopes in the body by measuring the emitted
photons. Tomographic image reconstruction using statistical methods (e.g. MLEM,
MRP, OSEM etc.) can improve the image quality over the conventional filtered backprojection
(FBP) method. Statistical Iterative Reconstruction (SIR) method offers many
advantages like incorporating physical effects and physical constraints, modeling of
complex imaging geometries, appropriate noise models, imaging at lower X-ray doses
etc. over FBP. But, the use of statistical methods is limited due to many practical problems
like scattering effects, attenuation, noise contamination etc. The major drawbacks
associated with these methods include the problem of slow convergence, choice of optimum
initial point, ill-posedness etc. They also require huge computation and complex
modeling. To address above mentioned issues, simple and computationally efficient
methods based on accurate statistical models are yet to be explored. The objective of
this thesis is to design and develop efficient SIR frameworks for two different applications:
First, for normal dose PET image reconstruction by using provision for proper
initialization and spatial regularization term to alleviate above mentioned drawbacks of
SIR methods. Secondly, for low dose X-ray CT image reconstruction by using statistical
sinogram restoration method to minimize the radiation risks in clinical practice. The
efficient hybrid cascaded framework proposed for first application leads to a reduction
in reconstruction time, accelerates the convergence and provides enhanced results using
the less projection data. It also makes the algorithm robust to the initial guess image.
The obtained results have proven the suitability of the designed framework for the undertaken
objective. Second framework performs well in low dose X-ray CT image reconstruction
by offering several desirable features like superior noise robustness, reduced
computational cost, the improved denoising effect and better edge & structure
preserving properties, overcome of the staircase effect effectively.
First framework consists of the properties of the maximum likelihood expectation
maximization (MLEM) algorithm and its variants. After the mathematical analysis
of these algorithms, it is observed that the choice of optimum initial input data, pixel
updating coefficients, and stopping (convergence) criteria play a significant role during
the update of reconstructed image from current nth iteration to next (n+1)th iteration. For
the analysis of the properties of these algorithms, a PET and SPECT scanner geometry
are simulated using MATLAB Tools. To validate the proposed method, different mathematical
computer generated test phantoms and real test images are utilized.
For image reconstruction using iterative techniques, the calculation of the transition
or system matrix is essential. The transition matrix describes the transition law
between the measured projection data and the estimated image vector. It fully depends
on the geometrical characteristics of the PET scanner. For its calculation, a software
code, based on a parallel projection method, has been developed. The parallel projection
method is preferred for comparison of analytical, statistical and state-of-art methods due
to its lower complexity.
Finally, three different hybrid cascaded framework based on statistical iterative
reconstruction algorithms (e.g. MLEM, MRP, and OSEM) have been proposed for PET
and SPECT imaging modalities. Their performances are evaluated on computer generated
test phantoms and standard thorax real test image. The obtained results are compared
with those of previously reported methods. It is observed that the proposed methods
perform better in terms of visual image quality and detail preservation. For quantitative
analysis, various performance measures such as: SNR, PSNR, RMSE, CP,
MSSIM are used. After, critically comparing the results of all three proposed methods,
it is found that the OSEM based hybrid-cascaded method (accelerated version of
MLEM) outperforms with respect to other proposed models on common projection data.
Hence, we conclude that an OSEM based hybrid-cascaded framework is an efficient
method for PET and SPECT image reconstruction. The proposed framework is independent
of the image size and topology but it is strongly dependent on the number of
detected counts. Therefore, the use of this proposed method in the image reconstruction
of real PET and SPECT studies is possible.
Further, the role of the low dose X-ray CT image reconstruction algorithm was
further studied, and it is found that the potential harmful effects of X-ray radiation including
lifetime risk of genetic, cancerous and other diseases have raised growing concerns
to patients and medical physics community. Therefore, minimizing the radiation
risks is strongly desirable in clinical practices. To realize this objective, numerous studies
have focused on radiation dose reduction of CT examinations. Sinogram smoothing
using non-linear modified anisotropic diffusion (AD) based statistical iterative methods
have been proposed, which have shown great potential to reduce the radiation dose
while maintaining the image quality in X-ray CT as compared with the FBP reconstruction
algorithm.
Furthermore, three sets of digital phantoms and one real test image i.e. Shepp-
Logan head Phantom, (128´128 pixels), PET Test phantom (128´128 pixels), SPECT
Test phantom (128´128 pixels) and Medical thorax image (128´128 pixels), are used
for the simulation and validation purposes. For each one of the phantoms employed,
simulated data sets have been generated, at different activity distribution levels. The
algebraic and statistical iterative reconstruction algorithms (e. g. SART, MLEM, MRP,
and OSEM) are used to reconstruct the projection data. In order to compare
the reconstructed and true images, various performance measures including signal-tonoise
ratio (SNR), the root mean square error (RMSE), the peak signal-to-noise ratio
(PSNR), the correlation parameter (CP), and mean structure similarity index map
(MSSIM) are used for quantitative analysis. The SNR, RMSE and PSNR give the error
measures in reconstruction process. The correlation parameter is a measure of edge
preservation in the reconstructed image. The MSSIM is a measure of preservation of
luminance, contrast and structure of the image after the reconstruction process, which
is necessary for medical images. The brief descriptions of the various chapters of the
thesis are given as follows:
Chapter 1 provides the introduction, motivation and problem description for
the present work including thesis scope/objectives, and contributions. Finally, the chapter
concludes with the organization that describes the coverage of chapter in the thesis.
Chapter 2 presents the theoretical background related to medical image reconstruction.
The section gives an overview of the physics, geometries of imaging system,
more specifically generation and detection techniques. The basic concepts of ill-posedness
and ill-conditioned problems in reconstruction methods also discuss the formulation
of various reconstruction problem. Briefly discussed the state–of-art of image reconstruction
techniques used in used in various medical imaging modalities like
CT/PET/SPECT etc. Further in the last section of the chapter qualitative analysis and
behavior of this reconstruction algorithm is provided. Analysis of different simulated
test phantoms and standard digital test image are also presented for quantitative analysis.
In Chapter 3, various priors have been studied and this chapter focuses on improving
statistical iterative reconstruction algorithms by incorporating a suitable prior
knowledge of the object being scanned. We have presented some statistical maximum
likelihood (ML) based approach for CT, PET, and SPECT image reconstruction methods.
The proposed method investigates and presents various choices of regularization
priors used in standard SIR reconstruction methods like MLE, MRP, and OSEM in literature.
Experimental analysis has been performed over own created mathematical test
phantoms and benchmark Shepp-Logan head phantom plus real thorax test phantom.
The results have been compared with existing methods using six quantitate measures
that are signal-to-noise ratio (SNR), the root mean square error (RMSE), the peak signal-
to-noise ratio (PSNR), the correlation parameter (CP), and mean structure similarity
index map (MSSIM).
In Chapter 4, we have discussed the major drawbacks associated with statistical
iterative reconstruction algorithms include the problem of slow convergence, choice of
optimum initial point and ill-posedness. To alleviate these issues, in this chapter, we
have proposed three different hybrid-cascaded efficient frameworks for MLEM, MRP
and OSEM based SIR reconstruction algorithms. The proposed framework is based on
two consecutive modules viz. Primary and secondary. We have performed experiments
over three different simulated mathematical test phantoms and one standard thorax image.
The results have been evaluated and compared with existing methods in terms of
visual analysis as well as quantitative analysis using SNR, PSNR, RMSE, CP, and
MSSIM performance measures. Hence, in the last section of the chapter, after comparison
with all three proposed methods, we have conclude that OSEM based efficient
hybrid-cascaded framework which is an accelerated version of MLEM performs better
with the projection data which dedicated to PET and SPECT imaging scanner.
Chapter 5 presents a low dose image reconstruction method for computed tomography
(CT). The theoretical background, issues and challenges of low dose CT reconstruction
are discussed. To address the issues in this chapter, we have proposed statistical
sinogram restoration models for low dose CT reconstruction. To examine the
efficacy and usefulness of proposed models an appropriate qualitatively and quantitatively
analysis using simulated test phantom and standard digital image. The obtained
results justify the applicability of the proposed method.
In Chapter 6, we summarize main findings of this thesis and give future perspectives
of the research out in this thesis.