292 research outputs found
Doctor of Philosophy
dissertationCine phase contrast (PC) magnetic resonance imaging (MRI) is a useful imaging technique that allows for the quantitative measurement of in-vivo blood velocities over the cardiac cycle. Velocity information can be used to diagnose and learn more about the mechanisms of cardio-vascular disease. Compared to other velocity measuring techniques, PC MRI provides high-resolution 2D and 3D spatial velocity information. Unfortunately, as with many other MRI techniques, PC MRI su ers from long acquisition times which places constraints on temporal and spatial resolution. This dissertation outlines the use of temporally constrained reconstruction (TCR) of radial PC data in order to signi cantly reduce the acquisition time so that higher temporal and spatial resolutions can be achieved. A golden angle-based acquisition scheme and a novel self-gating method were used in order to allow for exible selection of temporal resolution and to ameliorate the di culties associated with external electrocardiogram (ECG) gating. Finally, image reconstruction times for TCR are signi cantly reduced by implementation on a high-performance computer cluster. The TCR algorithm is executed in parallel across multiple GPUs achieving a 50 second reconstruction time for a very large cardiac perfusion data set
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Quantitative Statistical Methods for Image Quality Assessment
Quantitative measures of image quality and reliability are critical for both qualitative interpretation and quantitative analysis of medical images. While, in theory, it is possible to analyze reconstructed images by means of Monte Carlo simulations using a large number of noise realizations, the associated computational burden makes this approach impractical. Additionally, this approach is less meaningful in clinical scenarios, where multiple noise realizations are generally unavailable. The practical alternative is to compute closed-form analytical expressions for image quality measures. The objective of this paper is to review statistical analysis techniques that enable us to compute two key metrics: resolution (determined from the local impulse response) and covariance. The underlying methods include fixed-point approaches, which compute these metrics at a fixed point (the unique and stable solution) independent of the iterative algorithm employed, and iteration-based approaches, which yield results that are dependent on the algorithm, initialization, and number of iterations. We also explore extensions of some of these methods to a range of special contexts, including dynamic and motion-compensated image reconstruction. While most of the discussed techniques were developed for emission tomography, the general methods are extensible to other imaging modalities as well. In addition to enabling image characterization, these analysis techniques allow us to control and enhance imaging system performance. We review practical applications where performance improvement is achieved by applying these ideas to the contexts of both hardware (optimizing scanner design) and image reconstruction (designing regularization functions that produce uniform resolution or maximize task-specific figures of merit)
Novel high performance techniques for high definition computer aided tomography
Mención Internacional en el título de doctorMedical image processing is an interdisciplinary field in which multiple research areas are involved:
image acquisition, scanner design, image reconstruction algorithms, visualization, etc.
X-Ray Computed Tomography (CT) is a medical imaging modality based on the attenuation
suffered by the X-rays as they pass through the body. Intrinsic differences in attenuation properties
of bone, air, and soft tissue result in high-contrast images of anatomical structures. The
main objective of CT is to obtain tomographic images from radiographs acquired using X-Ray
scanners. The process of building a 3D image or volume from the 2D radiographs is known as
reconstruction. One of the latest trends in CT is the reduction of the radiation dose delivered
to patients through the decrease of the amount of acquired data. This reduction results in artefacts
in the final images if conventional reconstruction methods are used, making it advisable to
employ iterative reconstruction algorithms.
There are numerous reconstruction algorithms available, from which we can highlight two
specific types: traditional algorithms, which are fast but do not enable the obtaining of high
quality images in situations of limited data; and iterative algorithms, slower but more reliable
when traditional methods do not reach the quality standard requirements. One of the priorities
of reconstruction is the obtaining of the final images in near real time, in order to reduce the
time spent in diagnosis. To accomplish this objective, new high performance techniques and methods
for accelerating these types of algorithms are needed. This thesis addresses the challenges
of both traditional and iterative reconstruction algorithms, regarding acceleration and image
quality. One common approach for accelerating these algorithms is the usage of shared-memory
and heterogeneous architectures. In this thesis, we propose a novel simulation/reconstruction
framework, namely FUX-Sim. This framework follows the hypothesis that the development of
new flexible X-ray systems can benefit from computer simulations, which may also enable performance
to be checked before expensive real systems are implemented. Its modular design
abstracts the complexities of programming for accelerated devices to facilitate the development
and evaluation of the different configurations and geometries available. In order to obtain near
real execution times, low-level optimizations for the main components of the framework are
provided for Graphics Processing Unit (GPU) architectures.
Other alternative tackled in this thesis is the acceleration of iterative reconstruction algorithms
by using distributed memory architectures. We present a novel architecture that unifies
the two most important computing paradigms for scientific computing nowadays: High Performance
Computing (HPC). The proposed architecture combines Big Data frameworks with the
advantages of accelerated computing.
The proposed methods presented in this thesis provide more flexible scanner configurations
as they offer an accelerated solution. Regarding performance, our approach is as competitive as
the solutions found in the literature. Additionally, we demonstrate that our solution scales with
the size of the problem, enabling the reconstruction of high resolution images.El procesamiento de imágenes médicas es un campo interdisciplinario en el que participan múltiples
áreas de investigación como la adquisición de imágenes, diseño de escáneres, algoritmos de
reconstrucción de imágenes, visualización, etc. La tomografía computarizada (TC) de rayos X es
una modalidad de imágen médica basada en el cálculo de la atenuación sufrida por los rayos X a
medida que pasan por el cuerpo a escanear. Las diferencias intrínsecas en la atenuación de hueso,
aire y tejido blando dan como resultado imágenes de alto contraste de estas estructuras anatómicas.
El objetivo principal de la TC es obtener imágenes tomográficas a partir estas radiografías
obtenidas mediante escáneres de rayos X. El proceso de construir una imagen o volumen en 3D a
partir de las radiografías 2D se conoce como reconstrucción. Una de las últimas tendencias en la
tomografía computarizada es la reducción de la dosis de radiación administrada a los pacientes
a través de la reducción de la cantidad de datos adquiridos. Esta reducción da como resultado
artefactos en las imágenes finales si se utilizan métodos de reconstrucción convencionales, por
lo que es aconsejable emplear algoritmos de reconstrucción iterativos.
Existen numerosos algoritmos de reconstrucción disponibles a partir de los cuales podemos
destacar dos categorías: algoritmos tradicionales, rápidos pero no permiten obtener imágenes de
alta calidad en situaciones en las que los datos son limitados; y algoritmos iterativos, más lentos
pero más estables en situaciones donde los métodos tradicionales no alcanzan los requisitos en
cuanto a la calidad de la imagen. Una de las prioridades de la reconstrucción es la obtención
de las imágenes finales en tiempo casi real, con el fin de reducir el tiempo de diagnóstico. Para
lograr este objetivo, se necesitan nuevas técnicas y métodos de alto rendimiento para acelerar
estos algoritmos.
Esta tesis aborda los desafíos de los algoritmos de reconstrucción tradicionales e iterativos,
con respecto a la aceleración y la calidad de imagen. Un enfoque común para acelerar estos
algoritmos es el uso de arquitecturas de memoria compartida y heterogéneas. En esta tesis,
proponemos un nuevo sistema de simulación/reconstrucción, llamado FUX-Sim. Este sistema se
construye alrededor de la hipótesis de que el desarrollo de nuevos sistemas de rayos X flexibles
puede beneficiarse de las simulaciones por computador, en los que también se puede realizar
un control del rendimiento de los nuevos sistemas a desarrollar antes de su implementación
física. Su diseño modular abstrae las complejidades de la programación para aceleradores con el
objetivo de facilitar el desarrollo y la evaluación de las diferentes configuraciones y geometrías
disponibles. Para obtener ejecuciones en casi tiempo real, se proporcionan optimizaciones de
bajo nivel para los componentes principales del sistema en las arquitecturas GPU.
Otra alternativa abordada en esta tesis es la aceleración de los algoritmos de reconstrucción
iterativa mediante el uso de arquitecturas de memoria distribuidas. Presentamos una arquitectura
novedosa que unifica los dos paradigmas informáticos más importantes en la actualidad:
computación de alto rendimiento (HPC) y Big Data. La arquitectura propuesta combina sistemas
Big Data con las ventajas de los dispositivos aceleradores.
Los métodos propuestos presentados en esta tesis proporcionan configuraciones de escáner
más flexibles y ofrecen una solución acelerada. En cuanto al rendimiento, nuestro enfoque es tan
competitivo como las soluciones encontradas en la literatura. Además, demostramos que nuestra
solución escala con el tamaño del problema, lo que permite la reconstrucción de imágenes de
alta resolución.This work has been mainly funded thanks to a FPU fellowship (FPU14/03875) from the Spanish
Ministry of Education.
It has also been partially supported by other grants:
• DPI2016-79075-R. “Nuevos escenarios de tomografía por rayos X”, from the Spanish Ministry
of Economy and Competitiveness.
• TIN2016-79637-P Towards unification of HPC and Big Data Paradigms from the Spanish
Ministry of Economy and Competitiveness.
• Short-term scientific missions (STSM) grant from NESUS COST Action IC1305.
• TIN2013-41350-P, Scalable Data Management Techniques for High-End Computing Systems
from the Spanish Ministry of Economy and Competitiveness.
• RTC-2014-3028-1 NECRA Nuevos escenarios clinicos con radiología avanzada from the
Spanish Ministry of Economy and Competitiveness.Programa Oficial de Doctorado en Ciencia y Tecnología InformáticaPresidente: José Daniel García Sánchez.- Secretario: Katzlin Olcoz Herrero.- Vocal: Domenico Tali
Three-Dimensional Photoacoustic Computed Tomography: Imaging Models and Reconstruction Algorithms
Photoacoustic computed tomography: PACT), also known as optoacoustic tomography, is a rapidly emerging imaging modality that holds great promise for a wide range of biomedical imaging applications. Much effort has been devoted to the investigation of imaging physics and the optimization of experimental designs. Meanwhile, a variety of image reconstruction algorithms have been developed for the purpose of computed tomography. Most of these algorithms assume full knowledge of the acoustic pressure function on a measurement surface that either encloses the object or extends to infinity, which poses many difficulties for practical applications. To overcome these limitations, iterative image reconstruction algorithms have been actively investigated. However, little work has been conducted on imaging models that incorporate the characteristics of data acquisition systems. Moreover, when applying to experimental data, most studies simplify the inherent three-dimensional wave propagation as two-dimensional imaging models by introducing heuristic assumptions on the transducer responses and/or the object structures. One important reason is because three-dimensional image reconstruction is computationally burdensome. The inaccurate imaging models severely limit the performance of iterative image reconstruction algorithms in practice. In the dissertation, we propose a framework to construct imaging models that incorporate the characteristics of ultrasonic transducers. Based on the imaging models, we systematically investigate various iterative image reconstruction algorithms, including advanced algorithms that employ total variation-norm regularization. In order to accelerate three-dimensional image reconstruction, we develop parallel implementations on graphic processing units. In addition, we derive a fast Fourier-transform based analytical image reconstruction formula. By use of iterative image reconstruction algorithms based on the proposed imaging models, PACT imaging scanners can have a compact size while maintaining high spatial resolution. The research demonstrates, for the first time, the feasibility and advantages of iterative image reconstruction algorithms in three-dimensional PACT
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