Spelling suggestions: "subject:"diagnostic image retrieval"" "subject:"hiagnostic image retrieval""
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Semantic Assisted, Multiresolution Image Retrieval in 3D Brain MR VolumesQuddus, Azhar January 2010 (has links)
Content Based Image Retrieval (CBIR) is an important research area in the field of multimedia information retrieval. The application of CBIR in the medical domain has been attempted before, however the use of CBIR in medical diagnostics is a daunting task. The goal of diagnostic medical image retrieval is to provide diagnostic support by displaying relevant past cases, along with proven pathologies as ground truths. Moreover, medical image retrieval can be extremely useful as a training tool for medical students and residents, follow-up studies, and for research purposes. Despite the presence of an impressive amount of research in the area of CBIR, its acceptance for mainstream and practical applications is quite limited. The research in CBIR has mostly been conducted as an academic pursuit, rather than for providing the solution to a need. For example, many researchers proposed CBIR systems where the image database consists of images belonging to a heterogeneous mixture of man-made objects and natural scenes while ignoring the practical uses of such systems. Furthermore, the intended use of CBIR systems is important in addressing the problem of "Semantic Gap". Indeed, the requirements for the semantics in an image retrieval system for pathological applications are quite different from those intended for training and education. Moreover, many researchers have underestimated the level of accuracy required for a useful and practical image retrieval system. The human eye is extremely dexterous and efficient in visual information processing; consequently, CBIR systems should be highly precise in image retrieval so as to be useful to human users. Unsurprisingly, due to these and other reasons, most of the proposed systems have not found useful real world applications. In this dissertation, an attempt is made to address the challenging problem of developing a retrieval system for medical diagnostics applications. More specifically, a system for semantic retrieval of Magnetic Resonance (MR) images in 3D brain volumes is proposed. The proposed retrieval system has a potential to be useful for clinical experts where the human eye may fail. Previously proposed systems used imprecise segmentation and feature extraction techniques, which are not suitable for precise matching requirements of the image retrieval in this application domain. This dissertation uses multiscale representation for image retrieval, which is robust against noise and MR inhomogeneity. In order to achieve a higher degree of accuracy in the presence of misalignments, an image registration based retrieval framework is developed. Additionally, to speed-up the retrieval system, a fast discrete wavelet based feature space is proposed. Further improvement in speed is achieved by semantically classifying of the human brain into various "Semantic Regions", using an SVM based machine learning approach. A novel and fast identification system is proposed for identifying a 3D volume given a 2D image slice. To this end, we used SVM output probabilities for ranking and identification of patient volumes. The proposed retrieval systems are tested not only for noise conditions but also for healthy and abnormal cases, resulting in promising retrieval performance with respect to multi-modality, accuracy, speed and robustness. This dissertation furnishes medical practitioners with a valuable set of tools for semantic retrieval of 2D images, where the human eye may fail. Specifically, the proposed retrieval algorithms provide medical practitioners with the ability to retrieve 2D MR brain images accurately and monitor the disease progression in various lobes of the human brain, with the capability to monitor the disease progression in multiple patients simultaneously. Additionally, the proposed semantic classification scheme can be extremely useful for semantic based categorization, clustering and annotation of images in MR brain databases. This research framework may evolve in a natural progression towards developing more powerful and robust retrieval systems. It also provides a foundation to researchers in semantic based retrieval systems on how to expand existing toolsets for solving retrieval problems.
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Semantic Assisted, Multiresolution Image Retrieval in 3D Brain MR VolumesQuddus, Azhar January 2010 (has links)
Content Based Image Retrieval (CBIR) is an important research area in the field of multimedia information retrieval. The application of CBIR in the medical domain has been attempted before, however the use of CBIR in medical diagnostics is a daunting task. The goal of diagnostic medical image retrieval is to provide diagnostic support by displaying relevant past cases, along with proven pathologies as ground truths. Moreover, medical image retrieval can be extremely useful as a training tool for medical students and residents, follow-up studies, and for research purposes. Despite the presence of an impressive amount of research in the area of CBIR, its acceptance for mainstream and practical applications is quite limited. The research in CBIR has mostly been conducted as an academic pursuit, rather than for providing the solution to a need. For example, many researchers proposed CBIR systems where the image database consists of images belonging to a heterogeneous mixture of man-made objects and natural scenes while ignoring the practical uses of such systems. Furthermore, the intended use of CBIR systems is important in addressing the problem of "Semantic Gap". Indeed, the requirements for the semantics in an image retrieval system for pathological applications are quite different from those intended for training and education. Moreover, many researchers have underestimated the level of accuracy required for a useful and practical image retrieval system. The human eye is extremely dexterous and efficient in visual information processing; consequently, CBIR systems should be highly precise in image retrieval so as to be useful to human users. Unsurprisingly, due to these and other reasons, most of the proposed systems have not found useful real world applications. In this dissertation, an attempt is made to address the challenging problem of developing a retrieval system for medical diagnostics applications. More specifically, a system for semantic retrieval of Magnetic Resonance (MR) images in 3D brain volumes is proposed. The proposed retrieval system has a potential to be useful for clinical experts where the human eye may fail. Previously proposed systems used imprecise segmentation and feature extraction techniques, which are not suitable for precise matching requirements of the image retrieval in this application domain. This dissertation uses multiscale representation for image retrieval, which is robust against noise and MR inhomogeneity. In order to achieve a higher degree of accuracy in the presence of misalignments, an image registration based retrieval framework is developed. Additionally, to speed-up the retrieval system, a fast discrete wavelet based feature space is proposed. Further improvement in speed is achieved by semantically classifying of the human brain into various "Semantic Regions", using an SVM based machine learning approach. A novel and fast identification system is proposed for identifying a 3D volume given a 2D image slice. To this end, we used SVM output probabilities for ranking and identification of patient volumes. The proposed retrieval systems are tested not only for noise conditions but also for healthy and abnormal cases, resulting in promising retrieval performance with respect to multi-modality, accuracy, speed and robustness. This dissertation furnishes medical practitioners with a valuable set of tools for semantic retrieval of 2D images, where the human eye may fail. Specifically, the proposed retrieval algorithms provide medical practitioners with the ability to retrieve 2D MR brain images accurately and monitor the disease progression in various lobes of the human brain, with the capability to monitor the disease progression in multiple patients simultaneously. Additionally, the proposed semantic classification scheme can be extremely useful for semantic based categorization, clustering and annotation of images in MR brain databases. This research framework may evolve in a natural progression towards developing more powerful and robust retrieval systems. It also provides a foundation to researchers in semantic based retrieval systems on how to expand existing toolsets for solving retrieval problems.
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ARQUITETURA PARA RECUPERAÇÃO DE IMAGENS DIAGNÓSTICAS BASEADA EM CONTEÚDO: UMA FERRAMENTA PARA AUXÍLIO À RADIOLOGIA EM AMBIENTE PACS / ARCHITECTURE FOR CONTENT-BASED DIAGNOSTIC IMAGE RETRIEVAL: A TOOL TO AID IN RADIOLOGY PACS ENVIRONMENTBerni, Cristiano Albiero 08 November 2012 (has links)
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior / One of the main forms of diagnosis used nowadays matches the exams performed by
analysis of diagnostic images. Due to a growing request for this kind of diagnostic and the
repetitive manual procedure of the used methods by radiologists new ways are emerging to aid
procedures. A tool that can help the physician to report a diagnosis is searching similar cases for
that which is being held with the main function of increased safety to the radiologist in his notes.
For this, a modular architecture for content-based diagnostic image retrieval was developed as a
tool to aid diagnosis. Through the DICOM SR standard used to store radiological findings and
measurements - commonly from CAD - was implemented in a PACS environment a structure
that will provide storage and query contents extracted from diagnostic images. The contents
extraction from images can be done by different processing methods that generate different
parameters for storage and retrieval. The project was developed in partnership with a provider
of solutions for PACS and the Applied Computing Laboratory of the Federal University of Santa
Maria. / Uma das principais formas de diagnóstico utilizadas atualmente corresponde aos exames
realizados por meio da análise de imagens diagnósticas. Devido à demanda crescente por
esse tipo de exame e ao processo manual e repetitivo dos métodos utilizados pelos médicos
radiologistas, começam a surgir novos meios para auxiliar os procedimentos. Uma ferramenta
que pode ajudar o médico na formulação de diagnósticos é a busca de casos semelhantes àquele
que está sendo realizado, tendo como função principal conferir maior segurança ao radiologista
em seus apontamentos. Para tanto, foi desenvolvida uma arquitetura modular para recuperação
de imagens diagnósticas baseada em conteúdo como uma ferramenta de auxílio a diagnósticos.
Através do padrão DICOM SR, utilizado para armazenar achados radiológicos e mensurações
- comumente provenientes de CAD - implementou-se, em um ambiente PACS, uma estrutura
capaz de permitir o armazenamento e consulta de características extraídas das imagens diagnósticas.
A extração de características das imagens pode ocorrer através de diferentes métodos de
processamento que, por sua vez, geram diferentes parâmetros para armazenamento e consulta.
O projeto foi desenvolvido em conjunto com uma empresa fornecedora de soluções de PACS e
com o Laboratório de Computação Aplicada da Universidade Federal de Santa Maria.
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