2,187 research outputs found

    Detecció automàtica i robusta de Bursts en EEG de nounats amb HIE. Enfocament tensorial

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    [ANGLÈS] Hypoxic-Ischemic Encephalopathy (HIE) is an important cause of brain injury in the newborn, and can result in long-term devastating consequences. Burst-suppression pattern is one of several indicators of severe pathology in the EEG signal that may occur after brain damage caused by e.g. asphyxia around the time of birth. The goal of this thesis is to design a robust method to detect burst patterns automatically regardless of the physiologic and extra-physiologic artifacts that may occur at any time. At first, a pre-detector has been designed to obtain potential burst candidates from different patients. Then, a post-classification has been implemented, applying high dimensional feature extraction methods, to get the real burst patterns from these patients with a high sensitivity.[CASTELLÀ] La Hipoxia-Isquemia Encefálica (HIE) es una causa importante de lesión cerebral en los recién nacidos, pudiendo acarrear devastadoras consecuencias a largo plazo. El patrón Burst-Suppression es uno de los indicadores dados en patologías severas en señales EEG los cuales ocurren después de una lesión cerebral causada, por ejemplo, por una asfixia poco después del nacimiento. El objetivo de esta tésis es diseñar un método robusto que detecte automáticamente patrones Burst, prescindiendo de los artefactos fisiológicos y extra-fisiológicos que puedan aparecer en cualquier momento. Primeramente, se ha diseñado un pre-detector para obtener los candidatos potenciales a Burst provenientes de diferentes pacientes. Seguidamente, se ha implementado una post-clasificación, aplicando métodos de extracción de características para altas dimensiones, para obtener patrones reales de Burst con una alta sensitividad.[CATALÀ] La Hipòxia-Isquèmia Encefàlica (HIE) és una causa important de lesió cerebral en nounats, que poden comportar devastadores conseqüències a llarg termini. El patró Burst-Suppression és un dels indicadors donats en patologies severes en els senyals EEG els quals ocorren després d'una lesió cerebral causada, per exemple, per una asfixia poc després del naixement. L'objectiu d'aquesta tesis és dissenyar un mètode robust que detecti automàticament patrons Burst, prescindint dels artefactes fisiològics i extra-fisiològics que poden aparèixer en qualsevol moment. Primerament, s'ha dissenyat un pre-detector per obtenir els candidats potencials a Burst provinents de diferents pacients. Seguidament, s'ha implementat una post-classificació, aplicant mètodes d'extracció de característiques per a altes dimensions, per tal d'obtenir patrons reals de Burst amb una alta sensitivitat

    Bio-signal based control in assistive robots: a survey

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    Recently, bio-signal based control has been gradually deployed in biomedical devices and assistive robots for improving the quality of life of disabled and elderly people, among which electromyography (EMG) and electroencephalography (EEG) bio-signals are being used widely. This paper reviews the deployment of these bio-signals in the state of art of control systems. The main aim of this paper is to describe the techniques used for (i) collecting EMG and EEG signals and diving these signals into segments (data acquisition and data segmentation stage), (ii) dividing the important data and removing redundant data from the EMG and EEG segments (feature extraction stage), and (iii) identifying categories from the relevant data obtained in the previous stage (classification stage). Furthermore, this paper presents a summary of applications controlled through these two bio-signals and some research challenges in the creation of these control systems. Finally, a brief conclusion is summarized

    Medical Big Data: Neurological Diseases Diagnosis Through Medical Data Analysis

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    CES-513 Stages for Developing Control Systems using EMG and EEG Signals: A survey

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    Bio-signals such as EMG (Electromyography), EEG (Electroencephalography), EOG (Electrooculogram), ECG (Electrocardiogram) have been deployed recently to develop control systems for improving the quality of life of disabled and elderly people. This technical report aims to review the current deployment of these state of the art control systems and explain some challenge issues. In particular, the stages for developing EMG and EEG based control systems are categorized, namely data acquisition, data segmentation, feature extraction, classification, and controller. Some related Bio-control applications are outlined. Finally a brief conclusion is summarized.
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