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Dive into the research topics where João Alexandre Lôbo Marques is active.

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Featured researches published by João Alexandre Lôbo Marques.


Medical Engineering & Physics | 2012

An innovative approach of QRS segmentation based on first-derivative, Hilbert and Wavelet Transforms

João P.V. Madeiro; Paulo César Cortez; João Alexandre Lôbo Marques; Carlos R. Vázquez Seisdedos; Carlos Roberto Martins Rodrigues Sobrinho

The QRS detection and segmentation processes constitute the first stages of a greater process, e.g., electrocardiogram (ECG) feature extraction. Their accuracy is a prerequisite to a satisfactory performance of the P and T wave segmentation, and also to the reliability of the heart rate variability analysis. This work presents an innovative approach of QRS detection and segmentation and the detailed results of the proposed algorithm based on First-Derivative, Hilbert and Wavelet Transforms, adaptive threshold and an approach of surface indicator. The method combines the adaptive threshold, Hilbert and Wavelet Transforms techniques, avoiding the whole ECG signal preprocessing. After each QRS detection, the computation of an indicator related to the area covered by the QRS complex envelope provides the detection of the QRS onset and offset. The QRS detection proposed technique is evaluated based on the well-known MIT-BIH Arrhythmia and QT databases, obtaining the average sensitivity of 99.15% and the positive predictability of 99.18% for the first database, and 99.75% and 99.65%, respectively, for the second one. The QRS segmentation approach is evaluated on the annotated QT database with the average segmentation errors of 2.85±9.90ms and 2.83±12.26ms for QRS onset and offset, respectively. Those results demonstrate the accuracy of the developed algorithm for a wide variety of QRS morphology and the adaptation of the algorithm parameters to the existing QRS morphological variations within a single record.


Medical Engineering & Physics | 2013

New approach for T-wave peak detection and T-wave end location in 12-lead paced ECG signals based on a mathematical model

J. P. V. Madeiro; W.B. Nicolson; Paulo César Cortez; João Alexandre Lôbo Marques; Carlos R. Vázquez-Seisdedos; Narmadha Elangovan; G. André Ng; Fernando S. Schlindwein

This paper presents an innovative approach for T-wave peak detection and subsequent T-wave end location in 12-lead paced ECG signals based on a mathematical model of a skewed Gaussian function. Following the stage of QRS segmentation, we establish search windows using a number of the earliest intervals between each QRS offset and subsequent QRS onset. Then, we compute a template based on a Gaussian-function, modified by a mathematical procedure to insert asymmetry, which models the T-wave. Cross-correlation and an approach based on the computation of Trapeziums area are used to locate, respectively, the peak and end point of each T-wave throughout the whole raw ECG signal. For evaluating purposes, we used a database of high resolution 12-lead paced ECG signals, recorded from patients with ischaemic cardiomyopathy (ICM) in the University Hospitals of Leicester NHS Trust, UK, and the well-known QT database. The average T-wave detection rates, sensitivity and positive predictivity, were both equal to 99.12%, for the first database, and, respectively, equal to 99.32% and 99.47%, for QT database. The average time errors computed for T-wave peak and T-wave end locations were, respectively, -0.38±7.12 ms and -3.70±15.46 ms, for the first database, and 1.40±8.99 ms and 2.83±15.27 ms, for QT database. The results demonstrate the accuracy, consistency and robustness of the proposed method for a wide variety of T-wave morphologies studied.


IEEE Latin America Transactions | 2016

A Fuzzy Intelligent Agent for Analysis and Classification of Fetuses' Cardiac Signals

Jose Natanael Oliveira Fernandes; Paulo César Cortez; João Alexandre Lôbo Marques; Francisco Edson de Lucena Feitosa

The accurate analysis of the fetal heart rate (FHR) and its correlation with uterine contractions (UC) allow the diagnostic and the anticipation of many problems related to fetal distress and the preservation of its life. This paper presents the results of a system based on a fuzzy intelligent agent developed to analyse FHR signal collected by cardiotocography (CTG) exams. The system is developed using MATLAB® v.7. The project is also supported by a multi-institutional agreement between Brazil and Germany, among the DETI (Departamento de Engenharia de Teleinformática of the Universidade Federal do Ceará), the MEAC (Maternidade-Escola Assis Chateaubriand), the TUM (Technische Universität München), and the Trium GmbH, a German company who supplied the database used in this project. The results are very promising with a diagnostic accuracy varying from 84,84% to 100%, according to the type of the proposed diagnostic. The system validation methodology was based on the knowledge of Brazilian obstetricians.


Revista Brasileira de Engenharia Biomédica | 2009

Análise comparativa de desempenho das transformadas Wavelet e Hilbert na detecção do QRS em ECG

J. P. V. Madeiro; Paulo César Cortez; João Alexandre Lôbo Marques


The Journal of Supercomputing | 2018

Nonlinear characterization and complexity analysis of cardiotocographic examinations using entropy measures

João Alexandre Lôbo Marques; Paulo César Cortez; João P. V. Madeiro; Victor Hugo C. de Albuquerque; Simon Fong; Fernando S. Schlindwein


Archive | 2016

Testing Gaussian-based kernels for modelling T-waves and P-waves in ECG signals

E. M. B. E. Dos Santos; J. P. V. Madeiro; Paulo César Cortez; John Hebert da Silva Felix; João Alexandre Lôbo Marques; Fernando S. Schlindwein


Smart CR | 2015

A Heart Rate Variability-based Smart Approach to Analyze Frailty in Older Adults

J. P. V. Madeiro; Paulo César Cortez; Arnaldo Aires Peixoto Júnior; João Alexandre Lôbo Marques; Antônio Alisson Pessoa Guimarães; John Hebert da Silva Felix


Archive | 2014

NONLINEARITY CHARACTERIZATION AND ENTROPY ANALYSIS OF INTRACARDIAC ATRIAL ELECTROGRAM SIGNALS

João Loures Salinet; João Alexandre Lôbo Marques; J. P. V. Madeiro; A. S. M. Salinet; G.A. Ng; Fernando S. Schlindwein


Journal of Life Sciences | 2013

Classification System for Fetal Heart Rate Variability Measures Based on Cardiotocographies

João Alexandre Lôbo Marques; Paulo César Cortez; J. P. V. Madeiro; Fernando S. Schlindwein


international conference on bio-inspired systems and signal processing | 2012

Non-linear Analysis of Fetal Heart Rate in Cardiotocography using Sample Entropy.

João Alexandre Lôbo Marques; Paulo César Cortez; J. P. V. Madeiro; Fernando S. Schlindwein

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Paulo César Cortez

Federal University of Ceará

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J. P. V. Madeiro

Federal University of Ceará

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João P.V. Madeiro

Federal University of Ceará

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G. André Ng

University of Leicester

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G.A. Ng

University of Leicester

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