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    Clasificaci贸n autom谩tica de registros ECG para la detecci贸n de Fibrilaci贸n Auricular y otros ritmos cardiacos

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    La importancia cl铆nica de las arritmias cardiacas est谩 aumentando, junto con su incidencia y prevalencia, principalmente asociadas con el envejecimiento de la poblaci贸n. Entre estas enfermedades destaca la Fibrilaci贸n Auricular (FA) ya que es el tipo de arritmia sostenida m谩s com煤n en adultos con una tendencia creciente m谩s significativa, siendo en muchas ocasiones dif铆cil de diagnosticar debido a un comportamiento parox铆stico y/o la ausencia de s铆ntomas en algunos casos. Por otro lado, hoy en d铆a estamos en un escenario en el que los dispositivos port谩tiles o 驴wearables驴 est谩n ganando gran inter茅s como dispositivos de monitorizaci贸n, tanto en investigaci贸n como en 谩mbitos cl铆nicos. Sin embargo, los m茅todos autom谩ticos para proporcionar un diagn贸stico fiable de la FA utilizando las se帽ales de electrocardiograma (ECG) proporcionadas por dispositivos port谩tiles son todav铆a un reto, especialmente si tambi茅n se consideran otros ritmos normales o patol贸gicos. El objetivo de este Trabajo Final de M谩ster es proporcionar diversos modelos de clasificaci贸n junto con su rendimiento para discriminar registros cortos de ECG de una 煤nica derivaci贸n entre cuatro grupos: ritmo normal (N), FA (A), otros ritmos (O) y ruidoso (~). Como base de datos para este estudio se utilizaron 8.528 registros de ECG de una 煤nica derivaci贸n con duraciones entre 9 y 60 segundos, proporcionados en el contexto de la competici贸n 2017 PhysioNet/Computing in Cardiology Challenge. La estrategia propuesta en este trabajo se basa inicialmente en la extracci贸n autom谩tica de caracter铆sticas derivadas de la actividad ventricular de las se帽ales ECG. Posteriormente se realiz贸 una selecci贸n de caracter铆sticas utilizando dos metodolog铆as distintas: Backward Elimination y Forward Selection. Finalmente, las caracter铆sticas seleccionadas se utilizaron para entrenar y evaluar mediante validaci贸n cruzada el rendimiento de diferentes modelos de clasificaci贸n, principalmente redes neuronales de tipo feedforward (FFNN), as铆 como modelos Na茂ve Bayes y Support Vector Machine (SVM). A cada uno de estos modelos se le realiz贸 un ajuste de par谩metros de entrenamiento mediante grid-search durante la fase de validaci贸n. Los resultados mostraron que los modelos que presentaban mejor rendimiento de clasificaci贸n fueron las redes neuronales (F1=0.75), seguidas de cerca por los modelos SVM (F1=0.73), mientras que Na茂ve Bayes present贸 el menor rendimiento (F1=0.67). Asimismo, tambi茅n se demostr贸 que la mayor dificultad de este problema se encuentra en la identificaci贸n de otros ritmos an贸malos distintos a la fibrilaci贸n auricular, as铆 como de los registros ruidosos. Dado que las se帽ales utilizadas comparten muchas caracter铆sticas con las adquiridas con dispositivos m贸viles, los modelos de clasificaci贸n resultantes podr铆an ser buenos candidatos para ser implementados en sistemas de gesti贸n de pacientes con dispositivos wearables, ya que este enfoque tiene un bajo consumo computacional durante la clasificaci贸n.The clinical importance of cardiac arrhythmias is increasing, along with its incidence and prevalence, mainly associated with the aging of the population. Among these diseases Atrial Fibrillation (AF) stands out since it is the type of sustained arrhythmia most common in adults with a more significant growing tendency, being in many cases difficult to diagnose due to a paroxysmal behavior and/or the absence of symptoms in some patients. On the other hand, today we are in a scenario in which mobile devices or 驴wearables驴 are gaining great interest as monitoring devices, both in research and in clinical settings. However, automatic methods to provide a reliable diagnosis of AF using electrocardiogram signals (ECG) provided by mobile devices are still a challenge, especially if other normal or pathological rhythms are also considered. The main objective of this Final Master's Thesis is to provide different classification models together with their performance to discriminate short ECG single-lead records among four different groups: normal rhythm (N), FA (A), other rhythms (O) and noisy (~). As database for this study, 8,528 single-lead ECG records lasting among 9 and 60 seconds were used, provided in the context of the 2017 PhysioNet/Computing in Cardiology Challenge. The proposed strategy in this work is initially based on the automatic extraction of features mainly derived from the ventricular activity of the ECG signals. Next, a selection of characteristics was made using two different methodologies: Backward Elimination and Forward Selection. Finally, the selected features were used to train and evaluate through cross-validation the performance of different classification models, mainly feedforward neural networks (FFNN), as well as Na茂ve Bayes and Support Vector Machine (SVM) models. The training parameters for each of these models were tuned though a grid-search validation process. Results showed that the models with the best classification performance were the neural networks (F_1=0.75), followed closely by the SVM models (F_1=0.73), while Na茂ve Bayes presented the lowest performance (F_1=0.67). Likewise, it was also proved that the greatest difficulty of this problem lies on the identification of other anomalous rhythms other than atrial fibrillation, as well as in the noisy registers. Since the signals used share many characteristics with those acquired with mobile devices, the resulting classification models could be good candidates to be implemented in patient management systems with wearable devices, since this approach has a low computational consumption during classification.Jim茅nez Serrano, S. (2018). Clasificaci贸n autom谩tica de registros ECG para la detecci贸n de Fibrilaci贸n Auricular y otros ritmos cardiacos. http://hdl.handle.net/10251/111113TFG
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