257 research outputs found

    Marker-less respiratory motion modeling using the Microsoft Kinect for Windows

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    Detección del movimiento cardiaco mediante técnicas de registro elástico

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    Esta Tesis Doctoral profundiza en el estudio de métodos de registro elástico para la estimación de movimiento. Se centra en la estimación del movimiento cardiaco a partir de secuencias de imágenes de ecocardiografía. Las técnicas propuestas en esta Tesis Doctoral pueden aportar datos cuantitativos y objetividad en el análisis de la función regional del ventrículo izquierdo, que generalmente se realiza de forma cualitativa por inspección visual. Se proponen nuevos métodos de registro elástico espacio-temporal para la estimación del movimiento a partir de una sencuencia de imágenes. La aplicación específica es la estimación del campo de desplazamiento cardiaco a partir de secuencias bidimensionales de ultrasonidos. La idea básica es encontrar la deformación espacio-temporal que compensa el movimiento de la secuencia. La clave del método es el uso de modelos de transformación paramétricos semilocales, que permiten controlar la suavidad de la transformación. Se utilizan métodos de optimización multirresolución para asegurar velocidad y robustez en el proceso. El campo de desplazamiento es el punto de partida para el cálculo de otros parámetros que caracterizan el movimiento del miocardio, como la velocidad o la deformación local (strain). Los métodos propuestos se ajustan y validan sobre secuencias sintéticas que simulan el movimiento del corazón y el proceso de adquisición de las imágenes de ecografía. Estas secuencias estimar la exactitud de los métodos propuestos en distintas circunstancias de ruido, así como ajustar sus parámetros adecuadamente. Por otra parte, se han validado los resultados obtenidos sobre imágenes reales con otro método de medida del movimiento, como es la técnica de Doppler Tisular. Los métodos propuestos aportan una ventaja fundamental sobre las técnicas Doppler como es el cálculo de todas las componentes del movimiento y no únicamente al proyección del movimiento sobre el haz de ultrasonidos. Por último, los métodos propuestos se han aplicado al estudio del análisis regional del ventrículo izquierdo en un conjunto de secuencias de enfermos isquémicos y voluntarios sanos. Se confirma que la propuesta permite obtener diferencias signicativas entre segmentos normales y patológicos, ilustrando su aplicabilidad clínica

    Automatic motion compensation of free breathing acquired myocardial perfusion data by using independent component analysis

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    Images acquired during free breathing using first-pass gadolinium-enhanced myocardial perfusion magnetic resonance imaging (MRI) exhibit a quasiperiodic motion pattern that needs to be compensated for if a further automatic analysis of the perfusion is to be executed. In this work, we present a method to compensate this movement by combining independent component analysis (ICA) and image registration: First, we use ICA and a time?frequency analysis to identify the motion and separate it from the intensity change induced by the contrast agent. Then, synthetic reference images are created by recombining all the independent components but the one related to the motion. Therefore, the resulting image series does not exhibit motion and its images have intensities similar to those of their original counterparts. Motion compensation is then achieved by using a multi-pass image registration procedure. We tested our method on 39 image series acquired from 13 patients, covering the basal, mid and apical areas of the left heart ventricle and consisting of 58 perfusion images each. We validated our method by comparing manually tracked intensity profiles of the myocardial sections to automatically generated ones before and after registration of 13 patient data sets (39 distinct slices). We compared linear, non-linear, and combined ICA based registration approaches and previously published motion compensation schemes. Considering run-time and accuracy, a two-step ICA based motion compensation scheme that first optimizes a translation and then for non-linear transformation performed best and achieves registration of the whole series in 32 ± 12 s on a recent workstation. The proposed scheme improves the Pearsons correlation coefficient between manually and automatically obtained time?intensity curves from .84 ± .19 before registration to .96 ± .06 after registratio

    Segmentation of RV in 4D Cardiac MR Volumes using region-merging graph cuts

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    Non-invasive quantitative assessment of the right ventricular anatomical and functional parameters is a challenging task. We present a semi-automatic approach for right ventricle (RV) segmentation from 4D MR images in two variants, which differ in the amount of user interaction. The method consists of three main phases: First, foreground and background markers are generated from the user input. Next, an over-segmented region image is obtained applying a watershed transform. Finally, these regions are merged using 4D graph-cuts with an intensity based boundary term. For the first variant the user outlines the inside of the RV wall in a few end-diastole slices, for the second two marker pixels serve as starting point for a statistical atlas application. Results were obtained by blind evaluation on 16 testing 4D MR volumes. They prove our method to be robust against markers location and place it favourably in the ranks of existing approaches

    Assembling models of embryo development: Image analysis and the construction of digital atlases

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    Digital atlases of animal development provide a quantitative description of morphogenesis, opening the path toward processes modeling. Prototypic atlases offer a data integration framework where to gather information from cohorts of individuals with phenotypic variability. Relevant information for further theoretical reconstruction includes measurements in time and space for cell behaviors and gene expression. The latter as well as data integration in a prototypic model, rely on image processing strategies. Developing the tools to integrate and analyze biological multidimensional data are highly relevant for assessing chemical toxicity or performing drugs preclinical testing. This article surveys some of the most prominent efforts to assemble these prototypes, categorizes them according to salient criteria and discusses the key questions in the field and the future challenges toward the reconstruction of multiscale dynamics in model organisms

    Diffantom: Whole-Brain Diffusion MRI Phantoms Derived from Real Datasets of the Human Connectome Project.

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    Food allergies are believed to be on the rise and currently management relies on the avoidance of the food. Hen's egg allergy is after cow's milk allergy the most common food allergy; eggs are used in many food products and thus difficult to avoid. A technological process using a combination of enzymatic hydrolysis and heat treatment was designed to produce modified hen's egg with reduced allergenic potential. Biochemical (SDS-PAGE, Size exclusion chromatography and LC-MS/MS) and immunological (ELISA, immunoblot, RBL-assays, animal model) analysis showed a clear decrease in intact proteins as well as a strong decrease of allergenicity. In a clinical study, 22 of the 24 patients with a confirmed egg allergy who underwent a double blind food challenge with the hydrolysed egg remained completely free of symptoms. Hydrolysed egg products may be beneficial as low allergenic foods for egg allergic patients to extent their diet. This article is protected by copyright. All rights reserved

    A Lightweight, Rapid and Efficient Deep Convolutional Network for Chest X-Ray Tuberculosis Detection

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    Tuberculosis (TB) is still recognized as one of the leading causes of death worldwide. Recent advances in deep learning (DL) have shown to enhance radiologists' ability to interpret chest X-ray (CXR) images accurately and with fewer errors, leading to a better diagnosis of this disease. However, little work has been done to develop models capable of diagnosing TB that offer good performance while being efficient, fast and computationally inexpensive. In this work, we propose LightTBNet, a novel lightweight, fast and efficient deep convolutional network specially customized to detect TB from CXR images. Using a total of 800 frontal CXR images from two publicly available datasets, our solution yielded an accuracy, F1 and area under the ROC curve (AUC) of 0.906, 0.907 and 0.961, respectively, on an independent test subset. The proposed model demonstrates outstanding performance while delivering a rapid prediction, with minimal computational and memory requirements, making it highly suitable for deployment in handheld devices that can be used in low-resource areas with high TB prevalence. Code publicly available at https://github.com/dani-capellan/LightTBNet.Comment: 5 pages, 3 figures, 3 tables. This paper has been accepted at ISBI 202

    Coronary Artery Tracking in 3D Cardiac CT Images Using Local Morphological Reconstruction Operators

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    Automatic segmentation and tracking of the coronary artery tree from Cardiac Multislice-CT images is an important goal to improve the diagnosis and treatment of coronary artery disease. This paper presents a semi-automatic algorithm (one input point per vessel) based on morphological grayscale local reconstructions in 3D images devoted to the extraction of the coronary artery tree. The algorithm has been evaluated in the framework of the Coronary Artery Tracking Challenge 2008 [1], obtaining consistent results in overlapping measurements (a mean of 70% of the vessel well tracked). Poor results in accuracy measurements suggest that future work should refine the centerline extraction. The algorithm can be efficiently implemented and its general strategy can be easily extrapolated to a completely automated centerline extraction or to a user interactive vessel extractio

    Automatic synthesis of anthropomorphic pulmonary CT phantoms

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    The great density and structural complexity of pulmonary vessels and airways impose limitations on the generation of accurate reference standards, which are critical in training and in the validation of image processing methods for features such as pulmonary vessel segmentation or artery–vein (AV) separations. The design of synthetic computed tomography (CT) images of the lung could overcome these difficulties by providing a database of pseudorealistic cases in a constrained and controlled scenario where each part of the image is differentiated unequivocally. This work demonstrates a complete framework to generate computational anthropomorphic CT phantoms of the human lung automatically. Starting from biological and image-based knowledge about the topology and relationships between structures, the system is able to generate synthetic pulmonary arteries, veins, and airways using iterative growth methods that can be merged into a final simulated lung with realistic features. A dataset of 24 labeled anthropomorphic pulmonary CT phantoms were synthesized with the proposed system. Visual examination and quantitative measurements of intensity distributions, dispersion of structures and relationships between pulmonary air and blood flow systems show good correspondence between real and synthetic lungs (p > 0.05 with low Cohen’s d effect size and AUC values), supporting the potentiality of the tool and the usefulness of the generated phantoms in the biomedical image processing field
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