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Dive into the research topics where Jordi Solé-Casals is active.

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Featured researches published by Jordi Solé-Casals.


Sensors | 2013

On the Selection of Non-Invasive Methods Based on Speech Analysis Oriented to Automatic Alzheimer Disease Diagnosis

Karmele López-de-Ipiña; Jesus-Bernardino Alonso; Carlos M. Travieso; Jordi Solé-Casals; Harkaitz Egiraun; Marcos Faundez-Zanuy; Aitzol Ezeiza; Nora Barroso; Miriam Ecay-Torres; Pablo Martinez-Lage; Unai Martinez de Lizardui

The work presented here is part of a larger study to identify novel technologies and biomarkers for early Alzheimer disease (AD) detection and it focuses on evaluating the suitability of a new approach for early AD diagnosis by non-invasive methods. The purpose is to examine in a pilot study the potential of applying intelligent algorithms to speech features obtained from suspected patients in order to contribute to the improvement of diagnosis of AD and its degree of severity. In this sense, Artificial Neural Networks (ANN) have been used for the automatic classification of the two classes (AD and control subjects). Two human issues have been analyzed for feature selection: Spontaneous Speech and Emotional Response. Not only linear features but also non-linear ones, such as Fractal Dimension, have been explored. The approach is non invasive, low cost and without any side effects. Obtained experimental results were very satisfactory and promising for early diagnosis and classification of AD patients.


Journal of Neuroscience Methods | 2012

Multiway array decomposition analysis of EEGs in Alzheimer's disease.

Charles-Francois Vincent Latchoumane; Francois-Benois Vialatte; Jordi Solé-Casals; Monique Maurice; Sunil Wimalaratna; Nigel R. Hudson; Jaeseung Jeong; Andrzej Cichocki

Methods for the extraction of features from physiological datasets are growing needs as clinical investigations of Alzheimers disease (AD) in large and heterogeneous population increase. General tools allowing diagnostic regardless of recording sites, such as different hospitals, are essential and if combined to inexpensive non-invasive methods could critically improve mass screening of subjects with AD. In this study, we applied two state of the art multiway array decomposition (MAD) methods to extract unique features from electroencephalograms (EEGs) of AD patients obtained from multiple sites. In comparison to MAD, spectral-spatial average filter (SSFs) of control and AD subjects were used as well as a common blind source separation method, algorithm for multiple unknown signal extraction (AMUSE), and singular value decomposition (SVD) coupled to tensor unfolding. We trained a feed-forward multilayer perceptron (MLP) to validate and optimize AD classification from two independent databases. Using a third EEG dataset, we demonstrated that features extracted from MAD outperformed features obtained from SSFs AMUSE in terms of root mean squared error (RMSE) and reaching up to 100% of accuracy in test condition. We propose that MAD maybe a useful tool to extract features for AD diagnosis offering great generalization across multi-site databases and opening doors to the discovery of new characterization of the disease.


Cognitive Computation | 2015

On Automatic Diagnosis of Alzheimer’s Disease Based on Spontaneous Speech Analysis and Emotional Temperature

Karmele López-de-Ipiña; Jesús B. Alonso; Jordi Solé-Casals; Nora Barroso; Patricia Henríquez; Marcos Faundez-Zanuy; Carlos M. Travieso; Miriam Ecay-Torres; Pablo Martinez-Lage; Harkaitz Eguiraun

Alzheimer’s disease (AD) is the most prevalent form of progressive degenerative dementia; it has a high socioeconomic impact in Western countries. Therefore, it is one of the most active research areas today. Alzheimer’s disease is sometimes diagnosed by excluding other dementias, and definitive confirmation is only obtained through a postmortem study of the brain tissue of the patient. The work presented here is part of a larger study that aims to identify novel technologies and biomarkers for early AD detection, and it focuses on evaluating the suitability of a new approach for early diagnosis of AD by noninvasive methods. The purpose is to examine, in a pilot study, the potential of applying machine learning algorithms to speech features obtained from suspected Alzheimer’s disease sufferers in order to help diagnose this disease and determine its degree of severity. Two human capabilities relevant in communication have been analyzed for feature selection: spontaneous speech and emotional response. The experimental results obtained were very satisfactory and promising for the early diagnosis and classification of AD patients.


BMC Neuroscience | 2009

Bump time-frequency toolbox: a toolbox for time-frequency oscillatory bursts extraction in electrophysiological signals

Francios B. Vialatte; Jordi Solé-Casals; Justin Dauwels; Monique Maurice; Andrzej Cichocki

Backgroundoscillatory activity, which can be separated in background and oscillatory burst pattern activities, is supposed to be representative of local synchronies of neural assemblies. Oscillatory burst events should consequently play a specific functional role, distinct from background EEG activity – especially for cognitive tasks (e.g. working memory tasks), binding mechanisms and perceptual dynamics (e.g. visual binding), or in clinical contexts (e.g. effects of brain disorders). However extracting oscillatory events in single trials, with a reliable and consistent method, is not a simple task.Resultsin this work we propose a user-friendly stand-alone toolbox, which models in a reasonable time a bump time-frequency model from the wavelet representations of a set of signals. The software is provided with a Matlab toolbox which can compute wavelet representations before calling automatically the stand-alone application.ConclusionThe tool is publicly available as a freeware at the address: http://www.bsp.brain.riken.jp/bumptoolbox/toolbox_home.html


Physiological Measurement | 2008

EEG windowed statistical wavelet scoring for evaluation and discrimination of muscular artifacts

François-Benoît Vialatte; Jordi Solé-Casals; Andrzej Cichocki

EEG recordings are usually corrupted by spurious extra-cerebral artifacts, which should be rejected or cleaned up by the practitioner. Since manual screening of human EEGs is inherently error prone and might induce experimental bias, automatic artifact detection is an issue of importance. Automatic artifact detection is the best guarantee for objective and clean results. We present a new approach, based on the time-frequency shape of muscular artifacts, to achieve reliable and automatic scoring. The impact of muscular activity on the signal can be evaluated using this methodology by placing emphasis on the analysis of EEG activity. The method is used to discriminate evoked potentials from several types of recorded muscular artifacts-with a sensitivity of 98.8% and a specificity of 92.2%. Automatic cleaning of EEG data is then successfully realized using this method, combined with independent component analysis. The outcome of the automatic cleaning is then compared with the Slepian multitaper spectrum based technique introduced by Delorme et al (2007 Neuroimage 34 1443-9).


international conference on neural information processing | 2009

Improving the Quality of EEG Data in Patients with Alzheimer's Disease Using ICA

François-Benoît Vialatte; Jordi Solé-Casals; Monique Maurice; Charles Latchoumane; Nigel R. Hudson; Sunil Wimalaratna; Jaeseung Jeong; Andrzej Cichocki

Does Independent Component Analysis (ICA) denature EEG signals? We applied ICA to two groups of subjects (mild Alzheimer patients and control subjects). The aim of this study was to examine whether or not the ICA method can reduce both group differences and within-subject variability. We found that ICA diminished Leave-One-Out root mean square error (RMSE) of validation (from 0.32 to 0.28), indicative of the reduction of group difference. More interestingly, ICA reduced the inter-subject variability within each group (?= 2.54 in the ? range before ICA, ?= 1.56 after, Bartlett p = 0.046 after Bonferroni correction). Additionally, we present a method to limit the impact of human error (? 13.8%, with 75.6% inter-cleaner agreement) during ICA cleaning, and reduce human bias. These findings suggests the novel usefulness of ICA in clinical EEG in Alzheimers disease for reduction of subject variability.


international conference of the ieee engineering in medicine and biology society | 2012

Diagnosis of Alzheimer's disease from EEG by means of synchrony measures in optimized frequency bands

Esteve Gallego-Jutglà; Mohamed Elgendi; François B. Vialatte; Jordi Solé-Casals; Andrzej Cichocki; Charles-François Vincent Latchoumane; Jaeseung Jeong; Justin Dauwels

Several clinical studies have reported that EEG synchrony is affected by Alzheimers disease (AD). In this paper a frequency band analysis of AD EEG signals is presented, with the aim of improving the diagnosis of AD using EEG signals. In this paper, multiple synchrony measures are assessed through statistical tests (Mann-Whitney U test), including correlation, phase synchrony and Granger causality measures . Moreover, linear discriminant analysis (LDA) is conducted with those synchrony measures as features. For the data set at hand, the frequency range (5-6Hz) yields the best accuracy for diagnosing AD, which lies within the classical theta band (4-8Hz). The corresponding classification error is 4.88% for directed transfer function (DTF) Granger causality measure. Interestingly, results show that EEG of AD patients is more synchronous than in healthy subjects within the optimized range 5-6Hz, which is in sharp contrast with the loss of synchrony in AD EEG reported in many earlier studies. This new finding may provide new insights about the neurophysiology of AD. Additional testing on larger AD datasets is required to verify the effectiveness of the proposed approach.


non linear speech processing | 2009

Maximum likelihood linear programming data fusion for speaker recognition

Enric Monte-Moreno; Mohamed Chetouani; Marcos Faundez-Zanuy; Jordi Solé-Casals

Biometric system performance can be improved by means of data fusion. Several kinds of information can be fused in order to obtain a more accurate classification (identification or verification) of an input sample. In this paper we present a method for computing the weights in a weighted sum fusion for score combinations, by means of a likelihood model. The maximum likelihood estimation is set as a linear programming problem. The scores are derived from a GMM classifier working on different feature extraction techniques. Our experimental results assessed the robustness of the system in front changes on time (different sessions) and robustness in front of changes of microphone. The improvements obtained were significantly better (error bars of two standard deviations) than a uniform weighted sum or a uniform weighted product or the best single classifier. The proposed method scales computationally with the number of scores to be fusioned as the simplex method for linear programming.


Signal Processing | 2005

Fast approximation of nonlinearities for improving inversion algorithms of PNL mixtures and Wiener systems

Jordi Solé-Casals; Christian Jutten; Dinh-Tuan Pham

This paper proposes a very fast method for blindly approximating a nonlinear mapping which transforms a sum of random variables. The estimation is surprisingly good even when the basic assumption is not satisfied. We use the method for providing a good initialization for inverting post-nonlinear mixtures and Wiener systems. Experiments show that speed of the algorithm is strongly improved and the asymptotic performance is preserved with a very low extra computational cost.


Journal of Neural Engineering | 2015

A hybrid feature selection approach for the early diagnosis of Alzheimer's disease

Esteve Gallego-Jutglà; Jordi Solé-Casals; François-Benoît Vialatte; Mohamed Elgendi; Andrzej Cichocki; Justin Dauwels

OBJECTIVE Recently, significant advances have been made in the early diagnosis of Alzheimers disease (AD) from electroencephalography (EEG). However, choosing suitable measures is a challenging task. Among other measures, frequency relative power (RP) and loss of complexity have been used with promising results. In the present study we investigate the early diagnosis of AD using synchrony measures and frequency RP on EEG signals, examining the changes found in different frequency ranges. APPROACH We first explore the use of a single feature for computing the classification rate (CR), looking for the best frequency range. Then, we present a multiple feature classification system that outperforms all previous results using a feature selection strategy. These two approaches are tested in two different databases, one containing mild cognitive impairment (MCI) and healthy subjects (patients age: 71.9 ± 10.2, healthy subjects age: 71.7 ± 8.3), and the other containing Mild AD and healthy subjects (patients age: 77.6 ± 10.0; healthy subjects age: 69.4 ± 11.5). MAIN RESULTS Using a single feature to compute CRs we achieve a performance of 78.33% for the MCI data set and of 97.56% for Mild AD. Results are clearly improved using the multiple feature classification, where a CR of 95% is found for the MCI data set using 11 features, and 100% for the Mild AD data set using four features. SIGNIFICANCE The new features selection method described in this work may be a reliable tool that could help to design a realistic system that does not require prior knowledge of a patients status. With that aim, we explore the standardization of features for MCI and Mild AD data sets with promising results.

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Jesús B. Alonso

University of Las Palmas de Gran Canaria

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Carlos M. Travieso

University of Las Palmas de Gran Canaria

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Karmele López-de-Ipiña

University of the Basque Country

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Andrzej Cichocki

Warsaw University of Technology

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Christian Jutten

Centre national de la recherche scientifique

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Justin Dauwels

Nanyang Technological University

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Ana Adan

University of Barcelona

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