Many of preterm babies suffer from neural disorders caused by birth complications. Hence, early prediction of neural disorders, in preterm infants, is extremely crucial for neuroprotective intervention. In this scope, the goal of this research was to propose an automatic way to study preterm babies Electroencephalograms (EEG). EEG were preprocessed and a time series of standard deviation was computed. These series were thresholded to detect Inter Burst Intervals (IBI). Features were extracted from bursts and IBI and were then classified as Abnormal or Normal using a Multiple Linear Regression. The method was successfully validated on a corpus of 100 infants with no early indication of brain injury. It was also implemented with a user-friend...
Hemodynamic changes during neonatal transition increase the vulnerability of the preterm brain to in...
To extract useful information from preterm electroencephalogram (EEG) for diagnosis and long-term pr...
Background: The electroencephalographic (EEG) background pattern of preterm infants changes with pos...
To aid with prognosis and stratification of clinical treatment for preterm infants, a method for aut...
Around 10 percent of all human births is premature, which means about 15 million babies are born bef...
EEG signal contains some specific patterns that predict neuro-developmental impairments of a prematu...
This PhD project aims to define specific EEG maturational features in premature infants and to devel...
Analyzing and discussing the relationship between brain injury in preterm infants and related risk f...
Aim: To develop a method that segments preterm EEG into bursts and inter-bursts by extracting and co...
Objective: To describe the characteristics of activity bursts in the early preterm EEG, to assess in...
International audienceObjective: The study of electroencephalographic (EEG) bursts in preterm infant...
The aim of this paper is to find the best intelligent model that allows predicting the future of pre...
Within this thesis the automated algorithms for the EEG-based assessment of the brain f unctioning ...
Release for paper: JM O' Toole, GB Boylan, RO Lloyd, RM Goulding, S Vanhatalo, and NJ Stevenson, "D...
Objective To develop a standardised scheme for assessing normal and abnormal electroencephalography ...
Hemodynamic changes during neonatal transition increase the vulnerability of the preterm brain to in...
To extract useful information from preterm electroencephalogram (EEG) for diagnosis and long-term pr...
Background: The electroencephalographic (EEG) background pattern of preterm infants changes with pos...
To aid with prognosis and stratification of clinical treatment for preterm infants, a method for aut...
Around 10 percent of all human births is premature, which means about 15 million babies are born bef...
EEG signal contains some specific patterns that predict neuro-developmental impairments of a prematu...
This PhD project aims to define specific EEG maturational features in premature infants and to devel...
Analyzing and discussing the relationship between brain injury in preterm infants and related risk f...
Aim: To develop a method that segments preterm EEG into bursts and inter-bursts by extracting and co...
Objective: To describe the characteristics of activity bursts in the early preterm EEG, to assess in...
International audienceObjective: The study of electroencephalographic (EEG) bursts in preterm infant...
The aim of this paper is to find the best intelligent model that allows predicting the future of pre...
Within this thesis the automated algorithms for the EEG-based assessment of the brain f unctioning ...
Release for paper: JM O' Toole, GB Boylan, RO Lloyd, RM Goulding, S Vanhatalo, and NJ Stevenson, "D...
Objective To develop a standardised scheme for assessing normal and abnormal electroencephalography ...
Hemodynamic changes during neonatal transition increase the vulnerability of the preterm brain to in...
To extract useful information from preterm electroencephalogram (EEG) for diagnosis and long-term pr...
Background: The electroencephalographic (EEG) background pattern of preterm infants changes with pos...