5,322 research outputs found

    Focal Spot, Fall 1982

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    https://digitalcommons.wustl.edu/focal_spot_archives/1032/thumbnail.jp

    Naming the Grotesque Body in the Nascent Jurisprudence of Transsexualism

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    After a description of an analytical framework constructed of theories drawn from the writings of Mikhail Bahktin, Roland Barthes, and Sigmund Freud, this Article discusses the discrepancies in courts\u27 use of medical authority in cases considering the rights of transsexuals and then analyzes courts\u27 ultimate refusal to recognize transsexuals\u27 psychological sex. The thrust of this Article is an examination of the forces compelling such inconsistencies. The result is an analysis which interweaves medical, juridical, psychological and mythic perspectives to disclose the underpinnings of courts\u27 antipathy toward transsexuals

    Naming the Grotesque Body in the Nascent Jurisprudence of Transsexualism

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    After a description of an analytical framework constructed of theories drawn from the writings of Mikhail Bahktin, Roland Barthes, and Sigmund Freud, this Article discusses the discrepancies in courts\u27 use of medical authority in cases considering the rights of transsexuals and then analyzes courts\u27 ultimate refusal to recognize transsexuals\u27 psychological sex. The thrust of this Article is an examination of the forces compelling such inconsistencies. The result is an analysis which interweaves medical, juridical, psychological and mythic perspectives to disclose the underpinnings of courts\u27 antipathy toward transsexuals

    Novel Approaches to the Representation and Analysis of 3D Segmented Anatomical Districts

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    Nowadays, image processing and 3D shape analysis are an integral part of clinical practice and have the potentiality to support clinicians with advanced analysis and visualization techniques. Both approaches provide visual and quantitative information to medical practitioners, even if from different points of view. Indeed, shape analysis is aimed at studying the morphology of anatomical structures, while image processing is focused more on the tissue or functional information provided by the pixels/voxels intensities levels. Despite the progress obtained by research in both fields, a junction between these two complementary worlds is missing. When working with 3D models analyzing shape features, the information of the volume surrounding the structure is lost, since a segmentation process is needed to obtain the 3D shape model; however, the 3D nature of the anatomical structure is represented explicitly. With volume images, instead, the tissue information related to the imaged volume is the core of the analysis, while the shape and morphology of the structure are just implicitly represented, thus not clear enough. The aim of this Thesis work is the integration of these two approaches in order to increase the amount of information available for physicians, allowing a more accurate analysis of each patient. An augmented visualization tool able to provide information on both the anatomical structure shape and the surrounding volume through a hybrid representation, could reduce the gap between the two approaches and provide a more complete anatomical rendering of the subject. To this end, given a segmented anatomical district, we propose a novel mapping of volumetric data onto the segmented surface. The grey-levels of the image voxels are mapped through a volume-surface correspondence map, which defines a grey-level texture on the segmented surface. The resulting texture mapping is coherent to the local morphology of the segmented anatomical structure and provides an enhanced visual representation of the anatomical district. The integration of volume-based and surface-based information in a unique 3D representation also supports the identification and characterization of morphological landmarks and pathology evaluations. The main research contributions of the Ph.D. activities and Thesis are: \u2022 the development of a novel integration algorithm that combines surface-based (segmented 3D anatomical structure meshes) and volume-based (MRI volumes) information. The integration supports different criteria for the grey-levels mapping onto the segmented surface; \u2022 the development of methodological approaches for using the grey-levels mapping together with morphological analysis. The final goal is to solve problems in real clinical tasks, such as the identification of (patient-specific) ligament insertion sites on bones from segmented MR images, the characterization of the local morphology of bones/tissues, the early diagnosis, classification, and monitoring of muscle-skeletal pathologies; \u2022 the analysis of segmentation procedures, with a focus on the tissue classification process, in order to reduce operator dependency and to overcome the absence of a real gold standard for the evaluation of automatic segmentations; \u2022 the evaluation and comparison of (unsupervised) segmentation methods, finalized to define a novel segmentation method for low-field MR images, and for the local correction/improvement of a given segmentation. The proposed method is simple but effectively integrates information derived from medical image analysis and 3D shape analysis. Moreover, the algorithm is general enough to be applied to different anatomical districts independently of the segmentation method, imaging techniques (such as CT), or image resolution. The volume information can be integrated easily in different shape analysis applications, taking into consideration not only the morphology of the input shape but also the real context in which it is inserted, to solve clinical tasks. The results obtained by this combined analysis have been evaluated through statistical analysis

    Real-time Ultrasound Signals Processing: Denoising and Super-resolution

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    Ultrasound acquisition is widespread in the biomedical field, due to its properties of low cost, portability, and non-invasiveness for the patient. The processing and analysis of US signals, such as images, 2D videos, and volumetric images, allows the physician to monitor the evolution of the patient's disease, and support diagnosis, and treatments (e.g., surgery). US images are affected by speckle noise, generated by the overlap of US waves. Furthermore, low-resolution images are acquired when a high acquisition frequency is applied to accurately characterise the behaviour of anatomical features that quickly change over time. Denoising and super-resolution of US signals are relevant to improve the visual evaluation of the physician and the performance and accuracy of processing methods, such as segmentation and classification. The main requirements for the processing and analysis of US signals are real-time execution, preservation of anatomical features, and reduction of artefacts. In this context, we present a novel framework for the real-time denoising of US 2D images based on deep learning and high-performance computing, which reduces noise while preserving anatomical features in real-time execution. We extend our framework to the denoise of arbitrary US signals, such as 2D videos and 3D images, and we apply denoising algorithms that account for spatio-temporal signal properties into an image-to-image deep learning model. As a building block of this framework, we propose a novel denoising method belonging to the class of low-rank approximations, which learns and predicts the optimal thresholds of the Singular Value Decomposition. While previous denoise work compromises the computational cost and effectiveness of the method, the proposed framework achieves the results of the best denoising algorithms in terms of noise removal, anatomical feature preservation, and geometric and texture properties conservation, in a real-time execution that respects industrial constraints. The framework reduces the artefacts (e.g., blurring) and preserves the spatio-temporal consistency among frames/slices; also, it is general to the denoising algorithm, anatomical district, and noise intensity. Then, we introduce a novel framework for the real-time reconstruction of the non-acquired scan lines through an interpolating method; a deep learning model improves the results of the interpolation to match the target image (i.e., the high-resolution image). We improve the accuracy of the prediction of the reconstructed lines through the design of the network architecture and the loss function. %The design of the deep learning architecture and the loss function allow the network to improve the accuracy of the prediction of the reconstructed lines. In the context of signal approximation, we introduce our kernel-based sampling method for the reconstruction of 2D and 3D signals defined on regular and irregular grids, with an application to US 2D and 3D images. Our method improves previous work in terms of sampling quality, approximation accuracy, and geometry reconstruction with a slightly higher computational cost. For both denoising and super-resolution, we evaluate the compliance with the real-time requirement of US applications in the medical domain and provide a quantitative evaluation of denoising and super-resolution methods on US and synthetic images. Finally, we discuss the role of denoising and super-resolution as pre-processing steps for segmentation and predictive analysis of breast pathologies

    Focal Spot, Spring 1996

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    https://digitalcommons.wustl.edu/focal_spot_archives/1072/thumbnail.jp

    Recent Research Trends in Medical and Health Sciences

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    The present volume is based on the contributions made by various authors on different important topic of “Recent Research Trends in Medical and Health Sciences” and introduces the subject along the following topics: Methods in Improving Short Term Memory: A Brief Review; Are Children Falling into the Trench of Fast Food?; Biomedical Research Ethics: Past, Present and Future; Early (Short-Term) Side-Effects of Chemotherapy in Pediatric Solid Tumors; Health and Pollution in Banbishnupur village, Haldia, West Bengal; A Study to Evaluate the Morphometric measures of Gonial angle and Bi-gonial width for Healthy Individuals in Garden City university dental camp; Prevalence of Overweight and Obesity (overnutrition) among the Bengali Adolescent Girls: A Cross-Sectional Study from Darjeeling District, West Bengal (India). We must place on record our sincere gratitude to the authors not only for their effort in preparing the papers for the present volume, but also their patience in waiting to see their work in print

    Legal Recognition of Neocortical Death

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