514 research outputs found

    Automatic diagnosis of liver steatosis by ultrasound using autoregressive tissue characterization

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    Liver steatosis is mainly a textural abnormality of the hepatic parenchyma due to fat accumulation on the hepatic vesicles. Today, the assessment is subjectively performed by visual inspection. Here a classifier based on features extracted from ultrasound (US) images is described for the automatic diagnostic of this phatology. The proposed algorithm estimates the original ultrasound radio-frequency (RF) envelope signal from which the noiseless anatomic information and the textural information encoded in the speckle noise is extracted. The features characterizing the textural information are the coefficients of the first order autoregressive model that describes the speckle field. A binary Bayesian classifier was implemented and the Bayes factor was calculated. The classification has revealed an overall accuracy of 100%. The Bayes factor could be helpful in the graphical display of the quantitative results for diagnosis purposes.This work was supported by Fundação para a Ciência e Tecnologia (ISR/IST plurianual funding) through the POS Conhecimento Program which includes FEDER funds

    Global and local detection of liver steatosis from ultrasound

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    Liver steatosis is a common disease usually associated with social and genetic factors. Early detection and quantification is important since it can evolve to cirrhosis. Steatosis is usually a diffuse liver disease, since it is globally affected. However, steatosis can also be focal affecting only some foci difficult to discriminate. In both cases, steatosis is detected by laboratorial analysis and visual inspection of ultrasound images of the hepatic parenchyma. Liver biopsy is the most accurate diagnostic method but its invasive nature suggest the use of other non-invasive methods, while visual inspection of the ultrasound images is subjective and prone to error. In this paper a new Computer Aided Diagnosis (CAD) system for steatosis classification and analysis is presented, where the Bayes Factor, obatined from objective intensity and textural features extracted from US images of the liver, is computed in a local or global basis. The main goal is to provide the physician with an application to make it faster and accurate the diagnosis and quantification of steatosis, namely in a screening approach. The results showed an overall accuracy of 93.54% with a sensibility of 95.83% and 85.71% for normal and steatosis class, respectively. The proposed CAD system seemed suitable as a graphical display for steatosis classification and comparison with some of the most recent works in the literature is also presented

    Fluorescence microscopy imaging denoising with Log-Euclidean priors and photobleaching compensation

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    Fluorescent protein microscopy imaging is nowadays one of the most important tools in biomedical research. However, the resulting images present a low signal to noise ratio and a time intensity decay due to the photobleaching effect. This phenomenon is a consequence of the decreasing on the radiation emission efficiency of the tagging protein. This occurs because the fluorophore permanently loses its ability to fluoresce, due to photochemical reactions induced by the incident light. The Poisson multiplicative noise that corrupts these images, in addition with its quality degradation due to photobleaching, make long time biological observation processes very difficult. In this paper a denoising algorithm for Poisson data, where the photobleaching effect is explicitly taken into account, is described. The algorithm is designed in a Bayesian framework where the data fidelity term models the Poisson noise generation process as well as the exponential intensity decay caused by the photobleaching. The prior term is conceived with Gibbs priors and log-Euclidean potential functions, suitable to cope with the positivity constrained nature of the parameters to be estimated. Monte Carlo tests with synthetic data are presented to characterize the performance of the algorithm. One example with real data is included to illustrate its application

    Fatty liver automatic diagnosis from ultrasound images

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    In this paper an automatic classification algorithm is proposed for the diagnosis of the liver steatosis, also known as, fatty liver, from ultrasound images. The features, automatically extracted from the ultrasound images used by the classifier, are basically the ones used by the physicians in the diagnosis of the disease based on visual inspection of the ultrasound images. The main novelty of the method is the utilization of the speckle noise that corrupts the ultrasound images to compute textural features of the liver parenchyma relevant for the diagnosis. The algorithm uses the Bayesian framework to compute a noiseless image, containing anatomic and echogenic information of the liver and a second image containing only the speckle noise used to compute the textural features. The classification results, with the Bayes classifier using manually classified data as ground truth show that the automatic classifier reaches an accuracy of 95% and a 100% of sensitivity

    An ultrasound based computer-aided diagnosis tool for steatosis detection

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    Liver steatosis is a common disease usually associated with social and genetic factors. Early detection and quantification is important since it can evolve to cirrhosis. In this paper, a new computer-aided diagnosis (CAD) system for steatosis classification, in a local and global basis, is presented. Bayes factor is computed from objective ultrasound textural features extracted from the liver parenchyma. The goal is to develop a CAD screening tool, to help in the steatosis detection. Results showed an accuracy of 93.33%, with a sensitivity of 94.59% and specificity of 92.11%, using the Bayes classifier. The proposed CAD system is a suitable graphical display for steatosis classification

    Dramaturgia dos possíveis: desvios do espetáculo A persistência das últimas coisas

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    Este artigo discute aspectos da montagem baiana de A persistência das últimas coisas, peça escrita por Juan Crespo, e reflete sobre as transformações das práticas cênicas e seus desdobramentos na expansão do conceito de dramaturgia. Para isso, o estudo se baseia no conceito de desvio e na ideia de um teatro dos possíveis, formulados, respectivamente, pelos teóricos franceses Jean-Pierre Sarrazac e Bernard Dort

    Dramaturgias de desvio: um estudo comparativo de textos encenados no Brasil

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    O artigo apresenta uma síntese da tese Dramaturgias de desvio: recorrências em textos encenados no Brasil entre 1995 e 2015, estudo comparativo de cem peças montadas em cidades de diferentes regiões brasileiras. O texto expõe os principais tópicos da pesquisa e suas perspectivas teóricas, com o objetivo de propor caminhos para o mapeamento da produção dramatúrgica contemporânea

    Desvios da peça-conferência Como se tornar estúpido em 60 minutos

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    O artigo discute estratégias de criação da peça-conferência Como se tornar estúpido em 60 minutos, encenada em Salvador nos anos de 2018 e 2019. São abordados aspectos recorrentes no teatro contemporâneo como a enunciação direta para a plateia, o discurso monodramático e as tentativas de emersão do real em cena. A perspectiva teórica do trabalho baseia-se em noções ampliadas de dramaturgia, como a proposta pelo teórico José Sanchez, assim como nas noções de crise do drama e desvio, formuladas respectivamente por Peter Szondi e por Jean-Pierre Sarrazac. O estudo ainda dialoga com o trabalho de outros artistas e teóricos como Fernando Kinas, Patrice Pavis e Erika Fischer-Lichte.

    Convex Total Variation Denoising of Poisson Fluorescence Confocal Images With Anisotropic Filtering

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    Fluorescence confocal microscopy (FCM) is now one of the most important tools in biomedicine research. In fact, it makes it possible to accurately study the dynamic processes occurring inside the cell and its nucleus by following the motion of fluorescent molecules over time. Due to the small amount of acquired radiation and the huge optical and electronics amplification, the FCM images are usually corrupted by a severe type of Poisson noise. This noise may be even more damaging when very low intensity incident radiation is used to avoid phototoxicity. In this paper, a Bayesian algorithm is proposed to remove the Poisson intensity dependent noise corrupting the FCM image sequences. The observations are organized in a 3-D tensor where each plane is one of the images acquired along the time of a cell nucleus using the fluorescence loss in photobleaching (FLIP) technique. The method removes simultaneously the noise by considering different spatial and temporal correlations. This is accomplished by using an anisotropic 3-D filter that may be separately tuned in space and in time dimensions. Tests using synthetic and real data are described and presented to illustrate the application of the algorithm. A comparison with several state-of-the-art algorithms is also presented
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