1 |
Sequence analysis, pathogenicity and cytokine gene expression patterns associated with fowl adenovirus infectionGrgic, Helena 15 May 2012 (has links)
The family Adenoviridae consists of five genera, including the genus Aviadenovirus, which infects avian species. The genus Aviadenovirus currently comprises five fowl (Fowl adenovirus A-E), one falcon (Falcon adenovirus A), and one goose (Goose adenovirus) adenovirus species. Fowl adenoviruses (FAdVs) have a worldwide distribution. Some are associated with diseases such as inclusion body hepatitis (IBH), while FAdV species C serotype 4 (FAdV-4) has been associated with hydropericardium-hepatitis syndrome (HHS).
In this study, the complete nucleotide sequence of fowl adenovirus serotype 8 (FAdV-8) was determined. The full genome was 44,055 nucleotides (nt) in length, with an organization similar to that of the FAdV-1 and FAdV-9 genomes. No regions homologous to early regions E1, E3, and E4 of mastadenoviruses were recognized
Pathogenicity of FAdV-8 and FAdV-4 were studied in specific-pathogen-free chickens following oral and intramuscular inoculations. Pathogenicity was determined on the basis of clinical signs and gross and histological lesions. Additionally, virus shedding and viral genome copy numbers in liver, cecal tonsil, and bursa of Fabricius were determined.
The role of interleukins (IL) in the pathogenicity of and immune response to FAdVs is unknown. Therefore, in a chicken experiment, interferon-γ, IL-10, IL-18, and IL-8 gene expression was evaluated following FAdV-8 and FAdV-4 infection. Cytokine gene expression was examined in the liver, spleen, and cecal tonsils. This study explored the ability of fowl adenoviruses to subvert the host cell’s secretion of cytokines in response to infection as an important viral mechanism for immune evasion during infection.
Variations in virulence of FAdVs are likely to be determined by the fiber alone as shown by Pallister et al. (1996). Therefore, we compared and analyzed the nt and amino acid (aa) sequences of the fiber gene of pathogenic and non-pathogenic FAdVs representing species groups D (FAdV-11) and E (FAdV-8). According to our data, virulence might not be associated only with sequence of the fiber gene.
This work is a continuation of our efforts towards better understanding of the molecular biology of FAdVs and the pathogenesis of the disease, with an emphasis on the role of interleukins, an unknown area.
|
2 |
The Modelling of Biological Growth: a Pattern Theoretic ApproachPortman, Nataliya 07 December 2009 (has links)
Mathematical and statistical modeling and analysis of biological growth using images collected over time are important for understanding of normal and abnormal development. In computational anatomy, changes in the shape of a growing
anatomical structure have been modeled by means of diffeomorphic transformations in the background coordinate space. Various image and landmark matching
algorithms have been developed for inference of large transformations that perform image registration consistent with the material properties of brain anatomy
under study. However, from a biological perspective, it is not material constants
that regulate growth, it is the genetic control system. A pattern theoretic model
called the Growth as Random Iterated Diffeomorphisims (GRID) introduced by
Ulf Grenander (Brown University) constructs growth-induced transformations according to fundamental biological principles of growth. They are governed by an
underlying genetic control that is expressed in terms of probability laws governing
the spatial-temporal patterns of elementary cell decisions (e.g., cell division/death).
This thesis addresses computational and stochastic aspects of the GRID model
and develops its application to image analysis of growth. The first part of the thesis introduces the original GRID view of growth-induced deformation on a fine time
scale as a composition of several, elementary, local deformations each resulting from
a random cell decision, a highly localized event in space-time called a seed. A formalization of the proposed model using theory of stochastic processes is presented,
namely, an approximation of the GRID model by the diffusion process and the
Fokker-Planck equation describing the evolution of the probability density of seed
trajectories in space-time. Its time-dependent and stationary numerical solutions
reveal bimodal distribution of a random seed trajectory in space-time.
The second part of the thesis considers the growth pattern on a coarse time
scale which underlies visible shape changes seen in images. It is shown that such
a "macroscopic" growth pattern is a solution to a deterministic integro-differential
equation in the form of a diffeomorphic flow dependent on the GRID growth variables such as the probability density of cell decisions and the rate of contraction/expansion. Since the GRID variables are unobserved, they have to be estimated from image data. Using the GRID macroscopic growth equation such an
estimation problem is formulated as an optimal control problem. The estimated
GRID variables are optimal controls that force the image of an initial organism to be
continuously transformed into the image of a grown organism. The GRID-based inference method is implemented for inference of growth properties of the Drosophila
wing disc directly from confocal micrographs of Wingless gene expression patterns.
|
3 |
The Modelling of Biological Growth: a Pattern Theoretic ApproachPortman, Nataliya 07 December 2009 (has links)
Mathematical and statistical modeling and analysis of biological growth using images collected over time are important for understanding of normal and abnormal development. In computational anatomy, changes in the shape of a growing
anatomical structure have been modeled by means of diffeomorphic transformations in the background coordinate space. Various image and landmark matching
algorithms have been developed for inference of large transformations that perform image registration consistent with the material properties of brain anatomy
under study. However, from a biological perspective, it is not material constants
that regulate growth, it is the genetic control system. A pattern theoretic model
called the Growth as Random Iterated Diffeomorphisims (GRID) introduced by
Ulf Grenander (Brown University) constructs growth-induced transformations according to fundamental biological principles of growth. They are governed by an
underlying genetic control that is expressed in terms of probability laws governing
the spatial-temporal patterns of elementary cell decisions (e.g., cell division/death).
This thesis addresses computational and stochastic aspects of the GRID model
and develops its application to image analysis of growth. The first part of the thesis introduces the original GRID view of growth-induced deformation on a fine time
scale as a composition of several, elementary, local deformations each resulting from
a random cell decision, a highly localized event in space-time called a seed. A formalization of the proposed model using theory of stochastic processes is presented,
namely, an approximation of the GRID model by the diffusion process and the
Fokker-Planck equation describing the evolution of the probability density of seed
trajectories in space-time. Its time-dependent and stationary numerical solutions
reveal bimodal distribution of a random seed trajectory in space-time.
The second part of the thesis considers the growth pattern on a coarse time
scale which underlies visible shape changes seen in images. It is shown that such
a "macroscopic" growth pattern is a solution to a deterministic integro-differential
equation in the form of a diffeomorphic flow dependent on the GRID growth variables such as the probability density of cell decisions and the rate of contraction/expansion. Since the GRID variables are unobserved, they have to be estimated from image data. Using the GRID macroscopic growth equation such an
estimation problem is formulated as an optimal control problem. The estimated
GRID variables are optimal controls that force the image of an initial organism to be
continuously transformed into the image of a grown organism. The GRID-based inference method is implemented for inference of growth properties of the Drosophila
wing disc directly from confocal micrographs of Wingless gene expression patterns.
|
4 |
Métodos adaptativos de segmentação aplicados à recuperação de imagens por conteúdo / Adaptative segmentation methods applied to Content-Based Image RetrievalBalan, André Guilherme Ribeiro 14 May 2007 (has links)
A possibilidade de armazenamento de imagens no formato digital favoreceu a evolução de diversos ramos de atividades, especialmente as áreas de pesquisa e clínica médica. Ao mesmo tempo, o volume crescente de imagens armazenadas deu origem a um problema de relevância e complexidade consideráveis: a Recuperação de Imagens Baseada em Conteúdo, que, em outras palavras, diz respeito à capacidade de um sistema de armazenamento processar operações de consulta de imagens a partir de características visuais, extraídas automaticamente por meio de métodos computacionais. Das principais questões que constituem este problema, amplamente conhecido pelo termo CBIR - Content-Based Image Retrieval, fazem parte as seguintes: Como interpretar ou representar matematicamente o conteúdo de uma imagem? Quais medidas que podem caracterizar adequadamente este conteúdo? Como recuperar imagens de um grande repositório utilizando o conteúdo extraído? Como estabelecer um critério matemático de similaridade entre estas imagens? O trabalho desenvolvido e apresentado nesta tese busca, exatamente, responder perguntas deste tipo, especialmente para os domínios de imagens médicas e da biologia genética, onde a demanda por sistemas computacionais que incorporam técnicas CBIR é consideravelmente alta por diversos motivos. Motivos que vão desde a necessidade de se buscar informação visual que estava até então inacessível pela falta de anotações textuais, até o interesse em poder contar com auxílio computacional confiável para a importante tarefa de diagnóstico clínico. Neste trabalho são propostos métodos e soluções inovadoras para o problema de segmentação e extração de características de imagens médicas e imagens de padrões espaciais de expressão genética. A segmentação é o processo de delimitação automático de regiões de interesse da imagem que possibilita uma caracterização bem mais coerente do conteúdo visual, comparado com as tradicionais técnicas de caracterização global e direta da imagem. Partindo desta idéia, as técnicas de extração de características desenvolvidas neste trabalho empregam métodos adaptativos de segmentação de imagens e alcançam resultados excelentes na tarefa de recuperação baseada em conteúdo / Storing images in digital format has supported the evolution of several branches of activities, specially the research area and medical clinic. At the same time, the increasing volume of stored images has originated a topic of considerable relevance and complexity: the Content- Based Imagem Retrieval, which, in other works, is related to the ability of a computational system in processing image queries based on visual features automatically extracted by computational methods. Among the main questions that constitute this issue, widely known as CBIR, are these: How to mathematically express image content? What measures can suitably characterize this content? How to retrieve images from a large dataset employing the extracted content? How to establish a mathematical criterion of similarity among the imagens? The work developed and presented in this thesis aims at answering questions like those, especially for the medical images domain and genetical biology, where the demand for computational systems that embody CBIR techniques is considerably high for several reasons. Reasons that range from the need for retrieving visual information that was until then inaccessible due to the lack of textual annotations, until the interest in having liable computational support for the important task of clinical diagnosis. In this work are proposed innovative methods and solutions for the problem of image segmentation and feature extraction of medical images and images of gene expression patterns. Segmentation is the process that enables a more coherent representation of image?s visual content than that provided by traditional methods of global and direct representation. Grounded in such idea, the feature extraction techniques developed in this work employ adaptive image segmentation methods, and achieve excellent results on the task of Content-Based Image Retrieval
|
5 |
Métodos adaptativos de segmentação aplicados à recuperação de imagens por conteúdo / Adaptative segmentation methods applied to Content-Based Image RetrievalAndré Guilherme Ribeiro Balan 14 May 2007 (has links)
A possibilidade de armazenamento de imagens no formato digital favoreceu a evolução de diversos ramos de atividades, especialmente as áreas de pesquisa e clínica médica. Ao mesmo tempo, o volume crescente de imagens armazenadas deu origem a um problema de relevância e complexidade consideráveis: a Recuperação de Imagens Baseada em Conteúdo, que, em outras palavras, diz respeito à capacidade de um sistema de armazenamento processar operações de consulta de imagens a partir de características visuais, extraídas automaticamente por meio de métodos computacionais. Das principais questões que constituem este problema, amplamente conhecido pelo termo CBIR - Content-Based Image Retrieval, fazem parte as seguintes: Como interpretar ou representar matematicamente o conteúdo de uma imagem? Quais medidas que podem caracterizar adequadamente este conteúdo? Como recuperar imagens de um grande repositório utilizando o conteúdo extraído? Como estabelecer um critério matemático de similaridade entre estas imagens? O trabalho desenvolvido e apresentado nesta tese busca, exatamente, responder perguntas deste tipo, especialmente para os domínios de imagens médicas e da biologia genética, onde a demanda por sistemas computacionais que incorporam técnicas CBIR é consideravelmente alta por diversos motivos. Motivos que vão desde a necessidade de se buscar informação visual que estava até então inacessível pela falta de anotações textuais, até o interesse em poder contar com auxílio computacional confiável para a importante tarefa de diagnóstico clínico. Neste trabalho são propostos métodos e soluções inovadoras para o problema de segmentação e extração de características de imagens médicas e imagens de padrões espaciais de expressão genética. A segmentação é o processo de delimitação automático de regiões de interesse da imagem que possibilita uma caracterização bem mais coerente do conteúdo visual, comparado com as tradicionais técnicas de caracterização global e direta da imagem. Partindo desta idéia, as técnicas de extração de características desenvolvidas neste trabalho empregam métodos adaptativos de segmentação de imagens e alcançam resultados excelentes na tarefa de recuperação baseada em conteúdo / Storing images in digital format has supported the evolution of several branches of activities, specially the research area and medical clinic. At the same time, the increasing volume of stored images has originated a topic of considerable relevance and complexity: the Content- Based Imagem Retrieval, which, in other works, is related to the ability of a computational system in processing image queries based on visual features automatically extracted by computational methods. Among the main questions that constitute this issue, widely known as CBIR, are these: How to mathematically express image content? What measures can suitably characterize this content? How to retrieve images from a large dataset employing the extracted content? How to establish a mathematical criterion of similarity among the imagens? The work developed and presented in this thesis aims at answering questions like those, especially for the medical images domain and genetical biology, where the demand for computational systems that embody CBIR techniques is considerably high for several reasons. Reasons that range from the need for retrieving visual information that was until then inaccessible due to the lack of textual annotations, until the interest in having liable computational support for the important task of clinical diagnosis. In this work are proposed innovative methods and solutions for the problem of image segmentation and feature extraction of medical images and images of gene expression patterns. Segmentation is the process that enables a more coherent representation of image?s visual content than that provided by traditional methods of global and direct representation. Grounded in such idea, the feature extraction techniques developed in this work employ adaptive image segmentation methods, and achieve excellent results on the task of Content-Based Image Retrieval
|
Page generated in 0.1243 seconds