10 results on '"Bianchi, Anna"'
Search Results
2. EEG indices correlate with sustained attention performance in patients affected by diffuse axonal injury
- Author
-
Coelli, Stefania, Barbieri, Riccardo, Reni, Gianluigi, Zucca, Claudio, and Bianchi, Anna Maria
- Published
- 2018
- Full Text
- View/download PDF
3. Analysis of A-phase transitions during the cyclic alternating pattern under normal sleep
- Author
-
Mendez, Martin Oswaldo, Chouvarda, Ioanna, Alba, Alfonso, Bianchi, Anna Maria, Grassi, Andrea, Arce-Santana, Edgar, Milioli, Guilia, Terzano, Mario Giovanni, and Parrino, Liborio
- Published
- 2016
- Full Text
- View/download PDF
4. Assessment of Singularities in the EEG During A-Phases of Sleep Based on Wavelet Decomposition.
- Author
-
Medina-Ibarra, D. I., Chouvarda, I., Murguia, J. S., Alba, Alfonso, Arce-Santana, Edgar R., Bianchi, Anna M., and Mendez, Martin O.
- Subjects
ELECTROENCEPHALOGRAPHY ,SLEEP stages ,WAVELETS (Mathematics) ,SLEEP ,TIME-frequency analysis - Abstract
Electroencephalography (EEG) signals convey information related to different processes that take place in the brain. From the EEG fluctuations during sleep, it is possible to establish the sleep stages and identify short events, commonly related to a specific physiological process or pathology. Some of these short events (called A-phases) present an organization and build up the concept of the Cyclic Alternating Pattern (CAP) phenomenon. In general, the A-phases abruptly modify the EEG fluctuations, and a singular behavior could occur. With the aim to quantify the abrupt changes during A-phases, in this work the wavelet analysis is considered to compute Hölder exponents, which measure the singularity strength. We considered time windows of 2s outside and 5s inside A-phases onset (or offset). A total number of 5121 A-phases from 9 healthy participants and 10 patients with periodic leg movements were analyzed. Within an A-phase the Hölder numerical value tends to be 0.6, which implies a less abrupt singularity. Whereas outside of A-phases, it is observed that the Hölder value is approximately equal to 0.3, which implies stronger singularities, i.e., a more evident discontinuity in the signal behavior. In addition, it seems that the number of singularities increases inside of A-phases. The numerical results suggest that the EEG naturally conveys singularities modified by the A-phase occurrence, and this information could help to conceptualize the CAP phenomenon from a new perspective based on the sharpness of the EEG instead of the oscillatory way. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
5. Effective Connectivity During Rest and Music Listening: An EEG Study on Parkinson's Disease.
- Author
-
Maggioni, Eleonora, Arienti, Federica, Minella, Stella, Mameli, Francesca, Borellini, Linda, Nigro, Martina, Cogiamanian, Filippo, Bianchi, Anna Maria, Cerutti, Sergio, Barbieri, Sergio, Brambilla, Paolo, and Ardolino, Gianluca
- Subjects
PARKINSON'S disease ,ELECTROENCEPHALOGRAPHY ,COGNITIVE ability ,LISTENING - Abstract
Music-based interventions seem to enhance motor, sensory and cognitive functions in Parkinson's disease (PD), but the underlying action mechanisms are still largely unknown. This electroencephalography (EEG) study aimed to investigate the effective connectivity patterns characterizing PD in the resting state and during music listening. EEG recordings were obtained from fourteen non-demented PD patients and 12 healthy controls, at rest and while listening to three music tracks. Theta- and alpha-band power spectral density and multivariate partial directed coherence were computed. Power and connectivity measures were compared between patients and controls in the four conditions and in music vs. rest. Compared to controls, patients showed enhanced theta-band power and slightly enhanced alpha-band power, but markedly reduced theta- and alpha-band interactions among EEG channels, especially concerning the information received by the right central channel. EEG power differences were partially reduced by music listening, which induced power increases in controls but not in patients. Connectivity differences were slightly compensated by music, whose effects largely depended on the track. In PD, music enhanced the frontotemporal inter-hemispheric communication. Our findings suggest that PD is characterized by enhanced activity but reduced information flow within the EEG network, being only partially normalized by music. Nevertheless, music capability to facilitate inter-hemispheric communication might underlie its beneficial effects on PD pathophysiology and should be further investigated. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
6. Bicoherence Interpretation in EEG Requires Signal to Noise Ratio Quantification: An Application to Sensorimotor Rhythms.
- Author
-
Tacchino, Giulia, Coelli, Stefania, Reali, Pierluigi, Galli, Manuela, and Bianchi, Anna Maria
- Subjects
SIGNAL-to-noise ratio ,BRAIN waves ,BETA rhythm ,RHYTHM - Abstract
Objective: In the electroencephalogram (EEG) the quadratic phase coupling (QPC) phenomenon indicates the presence of non-linear interactions among brain rhythms that could affect the interpretation of their physiological meaning. We propose the use of the bicoherence as a QPC quantification method to understand the nature of brain rhythm interplay. Methods: We firstly provide a simulation study to show under which condition of signal to noise ratio (SNR) the bicoherence is a reliable QPC quantifier and how to interpret the results. Secondly, in the light of the simulation results, we applied the bicoherence analysis to real EEG data acquired on thirteen volunteers during a cue-paced reaching motor task to quantify coupling and decoupling between mu and beta rhythms. An inter-trial averaging procedure was adopted in order to allow the correct calculation of the bicoherence during a motor task. Results: Simulations demonstrated that SNR has a strong impact on the correct quantification of bicoherence and that a reliable detection of QPC is possible when the SNR is favorable (>−5 dB). Results from EEG data demonstrated a QPC between mu and beta rhythms during the resting state and its fading during movement planning and execution, providing valuable information for the interpretation of their dynamics. Conclusion: The bicoherence was proven to be an effective tool for the investigation of coupling between the sensorimotor rhythms during all the phases of a motor task. This was assessed in relation to the physiological changing of the SNR characterizing the frequency components of interest. [ABSTRACT FROM AUTHOR]
- Published
- 2020
- Full Text
- View/download PDF
7. Selecting methods for a modular EEG pre-processing pipeline: An objective comparison.
- Author
-
Coelli, Stefania, Calcagno, Alessandra, Cassani, Chiara Maria, Temporiti, Federico, Reali, Pierluigi, Gatti, Roberto, Galli, Manuela, and Bianchi, Anna Maria
- Subjects
INDEPENDENT component analysis ,STANDARD hydrogen electrode ,MOTOR imagery (Cognition) ,ELECTROENCEPHALOGRAPHY ,BIOMEDICAL signal processing - Abstract
• An evaluation framework is proposed based on quantitative metrics to \ort the choice of the preferable EEG pre-processing strategy. • The effect of different pre-processing approaches is explored and quantified on an illustrative application. • The most critical steps result to be the segmentation of the data and the re-reference method, while the Independent Component Analysis algorithm has a small effect on the cleaning procedure. Electroencephalography (EEG) to study brain functions has become fundamental in many research settings across very different protocols. Indeed, a plethora of processing methods have been developed, for both data preparation (pre-processing) and analysis. While an effect of the pre-processing on the signal is admitted and accepted, there is an increasing effort to better understand to which extent such an influence may affect the analysis results, and which may be the best practices for the correct data pre-processing. Pre-processing procedures include different steps, and each of them may induce modifications affecting the study results. Thus, we analyze the effect of different methodologies at each step and propose quantitative parameters for the choice of the preferable strategy. We illustrate how method selection may affect the quality of EEG signal in an Action Observation and Motor Imagery protocol, using quantitative indices. We analyzed the effect of different strategies for early-stage data preparation; two independent component analysis (ICA) algorithms (SOBI and Extended Infomax) used for artifact removal; and four re-reference approaches (Common averaged reference-CAR, robust-CAR, reference electrode standardization technique – REST, and reference electrode standardization and interpolation technique – RESIT). The effects of the different pipelines were also evaluated through the computation of event-related spectral perturbation (ERSP) of the sensorimotor rhythm. Results showed that signal segmentation significantly affects the cleaning procedure, while comparable results are obtained across ICA approaches. Finally, similar topographical representations were obtained after the application of CAR, REST, and RESIT re-referencing approaches, where rCAR showed the most different ERSP topographical pattern. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
8. ICA-derived cortical responses indexing rapid multi-feature auditory processing in six-month-old infants.
- Author
-
Piazza, Caterina, Cantiani, Chiara, Akalin-Acar, Zeynep, Miyakoshi, Makoto, Benasich, April A., Reni, Gianluigi, Bianchi, Anna Maria, and Makeig, Scott
- Subjects
- *
AUDITORY perception in infants , *LANGUAGE acquisition , *INDEPENDENT component analysis , *CEREBRAL cortex , *EVOKED potentials (Electrophysiology) , *ELECTROENCEPHALOGRAPHY - Abstract
The abilities of infants to perceive basic acoustic differences, essential for language development, can be studied using auditory event-related potentials (ERPs). However, scalp-channel averaged ERPs sum volume-conducted contributions from many cortical areas, reducing the functional specificity and interpretability of channel-based ERP measures. This study represents the first attempt to investigate rapid auditory processing in infancy using independent component analysis (ICA), allowing exploration of source-resolved ERP dynamics and identification of ERP cortical generators. Here, we recorded 60-channel EEG data in 34 typically developing 6-month-old infants during a passive acoustic oddball paradigm presenting ‘standard’ tones interspersed with frequency- or duration-deviant tones. ICA decomposition was applied to single-subject EEG data. The best-fitting equivalent dipole or bilaterally symmetric dipole pair was then estimated for each resulting independent component (IC) process using a four-layer infant head model. Similar brain-source ICs were clustered across subjects. Results showed ERP contributions from auditory cortex and multiple extra-auditory cortical areas (often, bilaterally paired). Different cortical source combinations contributed to the frequency- and duration-deviant ERP peak sequences. For ICs in an ERP-dominant source cluster located in or near the mid-cingulate cortex, source-resolved frequency-deviant response N2 latency and P3 amplitude at 6 months-of-age predicted vocabulary size at 20 months-of-age. The same measures for scalp channel F6 (though not for other frontal channels) showed similar but weaker correlations. These results demonstrate the significant potential of ICA analyses to facilitate a deeper understanding of the neural substrates of infant sensory processing. [ABSTRACT FROM AUTHOR]
- Published
- 2016
- Full Text
- View/download PDF
9. Characterization of A phases during the Cyclic Alternating Pattern of sleep
- Author
-
Mariani, Sara, Manfredini, Elena, Rosso, Valentina, Mendez, Martin O., Bianchi, Anna M., Matteucci, Matteo, Terzano, Mario G., Cerutti, Sergio, and Parrino, Liborio
- Subjects
- *
ELECTROENCEPHALOGRAPHY , *SIGNAL processing , *MICROSTRUCTURE , *SLEEP disorders , *RECEIVER operating characteristic curves , *NEUROLOGY - Abstract
Abstract: Objective: This study aims to identify, starting from a single EEG trace, quantitative distinctive features characterizing the A phases of the Cyclic Alternating Pattern (CAP). Methods: The C3-A2 or C4-A1 EEG leads of the night recording of eight healthy adult subjects were used for this analysis. CAP was scored by an expert and the portions relative to NREM were selected. Nine descriptors were computed: band descriptors (low delta, high delta, theta, alpha, sigma and beta); Hjorth activity in the low delta and high delta bands; differential variance of the EEG signal. The information content of each descriptor in recognizing the A phases was evaluated through the computation of the ROC curves and the statistics sensitivity, specificity and accuracy. Results: The ROC curves show that all the descriptors have a certain significance in characterizing A phases. The average accuracy obtained by thresholding the descriptors ranges from 59.89 (sigma descriptor) to 72.44 (differential EEG variance). Conclusions: The results show that it is possible to attribute a significant quantitative value to the information content of the descriptors. Significance: This study gives a mathematical confirm to the features of CAP generally described qualitatively, and puts the bases for the creation of automatic detection methods. [Copyright &y& Elsevier]
- Published
- 2011
- Full Text
- View/download PDF
10. A robust classifier for the automatic detection of transient events in sleep EEG
- Author
-
Cortesão, Mariana Duarte Nobre, Bianchi, Anna Maria, and Teixeira, César Alexandre Domingues
- Subjects
transient events ,k-complexes ,complexos K ,EEG ,arousals ,eventos transientes ,Spectrogram ,Spectrograma - Abstract
Trabalho de Projeto do Mestrado Integrado em Engenharia Biomédica apresentado à Faculdade de Ciências e Tecnologia O sono é um estado de descanso que desempenha um papel essencial na vida de muitos seres vivos, inclusive humanos. A actividade do cérebro durante o sono aumenta, o cérebro é ativo e responde aos estímulos externos como um buffer com respostas rápidas e flexíveis, gerando fases de sono. Esta macroestructura do sono descreve as diferentes fases do sono e é caracterizada com base nos diferentes ritmos do eletroencefalograma (EEG). Os eventos transitórios também são uma característica importante para caracterizar o EEG do sono.Nesta tese, propõe-se um classificador robusto para a detecção desses eventos transitórios, especificamente arousals e complexos K. Os arousals são fenômenos periódicos que perturbam o sono e os complexos K são ondas padronizadas estereotipadas do EEG humano. O processo de classificação visual desses dois eventos é usado para inspecionar a qualidade e a fragmentação do sono e ajudar na classificação das fases do sono.Para remover o ruído dos sinais, foram utilizados dois detectores de artefatos diferentes, a primeira análise de entropia com a tecnica Multisclale entropy e a segunda utilizou a análise espectral de potência do sinal de EEG. Em seguida, a romação da interferência de ECG foi também aplicada aos sinais. Para detectar arousals, duas técnicas foram comparadas: técnica de Spectrograma e Multitaper. A detecção de complexos K foi testada usando filtros matched. Esses métodos foram validados em um conjunto de dados de 40 indivíduos de dois bancos de dados diferentes: MESA e MrOS da National Sleep Research Resource. Os algoritmos foram testados alcançando AUC de 0.804 para o espectrograma, 0.853 para a técnica Multitaper na classificação dos arousals. Para a detecção de complexos K, os filtros correspondentes foram testados apenas em um único sujeito que continha a classificação visual, obtendo um AUC de 0.814. A análise qualitativa da detecção do complexo K no conjunto de dados completo mostrou resultados encorajadores em termos de distribuição específica da fase do sono. Sleep is an essential resting state that plays an essential role in the life of many living beings, including humans. The activity of the brain during sleep is increased, the brain is active and responds to external stimuli as a buffer with quick and flexible responses creating sleep stages. This macrostructure of sleep describes the different sleep stages and it is characterized based on the the different rhythms of the electroencephalogram (EEG). Transient events are also an important feature to characterize sleep EEG.In this thesis it is proposed a robust classifier for the detection of these transient events, specifically arousals and K-complexes. Arousals are periodic phenomena that disrupt sleep and K-complexes are a stereotyped pattern waves of the human EEG. The visual scoring of these two events is used to inspect both the quality and fragmentation of sleep and to aid in the scoring of sleep stages.In order to remove the noise from the signals two different artifact detectors were used, the first applied multiscale entropy analysis and the second used the EEG power spectral analysis. Then a ECG interference removal was also applied to the signals. To detect arousals two techniques were compared: Spectrogram and Multitaper technique. The K-complexes detection was attempted using matched filters. These methods were validated on a dataset of 40 subjects from two different databases: MESA and MrOS from the National Sleep Research Resource. The algorithms were tested achieving AUC of 0.804 for the spectrogram, 0.853 for the Multitaper technique in the classification of the arousals. For the detection of K-complexes, the matched filters was tested only on a single subject with the visual scoring, obtaining an AUC of x. Qualitative analysis of K complex detection on the full dataset showed encouraging results in terms of sleep stage-specific distribution.
- Published
- 2017
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.