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Dive into the research topics where Manuela Petti is active.

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Featured researches published by Manuela Petti.


Annals of Neurology | 2015

Brain-computer interface boosts motor imagery practice during stroke recovery

Floriana Pichiorri; Giovanni Morone; Manuela Petti; Jlenia Toppi; Iolanda Pisotta; Marco Molinari; Stefano Paolucci; M. Inghilleri; Laura Astolfi; Febo Cincotti; Donatella Mattia

Motor imagery (MI) is assumed to enhance poststroke motor recovery, yet its benefits are debatable. Brain–computer interfaces (BCIs) can provide instantaneous and quantitative measure of cerebral functions modulated by MI. The efficacy of BCI‐monitored MI practice as add‐on intervention to usual rehabilitation care was evaluated in a randomized controlled pilot study in subacute stroke patients.


PLOS ONE | 2016

Investigating Cooperative Behavior in Ecological Settings: An EEG Hyperscanning Study

Jlenia Toppi; Gianluca Borghini; Manuela Petti; Eric J. He; Vittorio De Giusti; Bin He; Laura Astolfi; Fabio Babiloni

The coordinated interactions between individuals are fundamental for the success of the activities in some professional categories. We reported on brain-to-brain cooperative interactions between civil pilots during a simulated flight. We demonstrated for the first time how the combination of neuroelectrical hyperscanning and intersubject connectivity could provide indicators sensitive to the humans’ degree of synchronization under a highly demanding task performed in an ecological environment. Our results showed how intersubject connectivity was able to i) characterize the degree of cooperation between pilots in different phases of the flight, and ii) to highlight the role of specific brain macro areas in cooperative behavior. During the most cooperative flight phases pilots showed, in fact, dense patterns of interbrain connectivity, mainly linking frontal and parietal brain areas. On the contrary, the amount of interbrain connections went close to zero in the non-cooperative phase. The reliability of the interbrain connectivity patterns was verified by means of a baseline condition represented by formal couples, i.e. pilots paired offline for the connectivity analysis but not simultaneously recorded during the flight. Interbrain density was, in fact, significantly higher in real couples with respect to formal couples in the cooperative flight phases. All the achieved results demonstrated how the description of brain networks at the basis of cooperation could effectively benefit from a hyperscanning approach. Interbrain connectivity was, in fact, more informative in the investigation of cooperative behavior with respect to established EEG signal processing methodologies applied at a single subject level.


Journal of Neural Engineering | 2014

Investigating the effects of a sensorimotor rhythm-based BCI training on the cortical activity elicited by mental imagery

Jlenia Toppi; Monica Risetti; Lucia Rita Quitadamo; Manuela Petti; Luigi Bianchi; Serenella Salinari; Fabio Babiloni; Febo Cincotti; Donatella Mattia; Laura Astolfi

OBJECTIVE It is well known that to acquire sensorimotor (SMR)-based brain-computer interface (BCI) control requires a training period before users can achieve their best possible performances. Nevertheless, the effect of this training procedure on the cortical activity related to the mental imagery ability still requires investigation to be fully elucidated. The aim of this study was to gain insights into the effects of SMR-based BCI training on the cortical spectral activity associated with the performance of different mental imagery tasks. APPROACH Linear cortical estimation and statistical brain mapping techniques were applied on high-density EEG data acquired from 18 healthy participants performing three different mental imagery tasks. Subjects were divided in two groups, one of BCI trained subjects, according to their previous exposure (at least six months before this study) to motor imagery-based BCI training, and one of subjects who were naive to any BCI paradigms. MAIN RESULTS Cortical activation maps obtained for trained and naive subjects indicated different spectral and spatial activity patterns in response to the mental imagery tasks. Long-term effects of the previous SMR-based BCI training were observed on the motor cortical spectral activity specific to the BCI trained motor imagery task (simple hand movements) and partially generalized to more complex motor imagery task (playing tennis). Differently, mental imagery with spatial attention and memory content could elicit recognizable cortical spectral activity even in subjects completely naive to (BCI) training. SIGNIFICANCE The present findings contribute to our understanding of BCI technology usage and might be of relevance in those clinical conditions when training to master a BCI application is challenging or even not possible.


international conference of the ieee engineering in medicine and biology society | 2014

Time varying effective connectivity for describing brain network changes induced by a memory rehabilitation treatment

Jlenia Toppi; Donatella Mattia; Alessandra Anzolin; Monica Risetti; Manuela Petti; Febo Cincotti; Fabio Babiloni; Laura Astolfi

In clinical practice, cognitive impairment is often observed after stroke. The efficacy of rehabilitative interventions is routinely assessed by means of a neuropsychological test battery. Nowadays, more evidences indicate that the neuroplasticity which occurs after stroke can be better understood by investigating changes in brain networks. In this study we applied advanced methodologies for effective connectivity estimation in combination with graph theory approach, to define EEG derived descriptors of brain networks underlying memory tasks. In particular, we proposed such descriptors to identify substrates of efficacy of a Brain-Computer Interface (BCI) controlled neurofeedback intervention to improve cognitive function after stroke. Electroencephalographic (EEG) data were collected from two stroke patients before and after a neurofeedback-based training for memory deficits. We show that the estimated brain connectivity indices were sensitive to different training intervention outcomes, thus suggesting an effective support to the neuropsychological assessment in the evaluation of the changes induced by the BCI-based cognitive rehabilitative intervention.


Computational Intelligence and Neuroscience | 2016

EEG resting-state brain topological reorganization as a function of age

Manuela Petti; Jlenia Toppi; Fabio Babiloni; Febo Cincotti; Donatella Mattia; Laura Astolfi

Resting state connectivity has been increasingly studied to investigate the effects of aging on the brain. A reduced organization in the communication between brain areas was demonstrated by combining a variety of different imaging technologies (fMRI, EEG, and MEG) and graph theory. In this paper, we propose a methodology to get new insights into resting state connectivity and its variations with age, by combining advanced techniques of effective connectivity estimation, graph theoretical approach, and classification by SVM method. We analyzed high density EEG signals recorded at rest from 71 healthy subjects (age: 20–63 years). Weighted and directed connectivity was computed by means of Partial Directed Coherence based on a General Linear Kalman filter approach. To keep the information collected by the estimator, weighted and directed graph indices were extracted from the resulting networks. A relation between brain network properties and age of the subject was found, indicating a tendency of the network to randomly organize increasing with age. This result is also confirmed dividing the whole population into two subgroups according to the age (young and middle-aged adults): significant differences exist in terms of network organization measures. Classification of the subjects by means of such indices returns an accuracy greater than 80%.


international conference of the ieee engineering in medicine and biology society | 2014

A new descriptor of neuroelectrical activity during BCI-assisted motor imagery-based training in stroke patients

Manuela Petti; Donatella Mattia; Floriana Pichiorri; Jlenia Toppi; Serenella Salinari; F. Babiloni; Laura Astolfi; Febo Cincotti

In BCI applications for stroke rehabilitation, BCI systems are used with the aim of providing patients with an instrument that is capable of monitoring and reinforcing EEG patterns generated by motor imagery (MI). In this study we proposed an offline analysis on data acquired from stroke patients subjected to a BCI-assisted MI training in order to define an index for the evaluation of MI-BCI training session which is independent from the settings adopted for the online control and which is able to describe the properties of neuroelectrical activations across sessions. Results suggest that such index can be adopted to sort the trails within a session according to the adherence to the task.


international conference of the ieee engineering in medicine and biology society | 2013

Aged-related changes in brain activity classification with respect to age by means of graph indexes

Manuela Petti; Jlenia Toppi; Floriana Pichiorri; Febo Cincotti; Serenella Salinari; Fabio Babiloni; Laura Astolfi; Donatella Mattia

Recent studies have investigated changes in the human brain network organization during the normal aging. A reduction of the connectivity between brain areas was demonstrated by combining neuroimaging technologies and graph theory. Clustering, characteristic path length and small-worldness are key topological measures and they are widely used in literature. In this paper we propose a new methodology that combine advanced techniques of effective connectivity estimation, graph theoretical approach and classification by SVM method. EEG signals recording during rest condition from 20 young subjects and 20 mid-aged adults were studied. Partial Directed Coherence was computed by means of General Linear Kalman Filter and graph indexes were extracted from estimated patterns. At last small-worldness was used as feature for the SVM classifier. Results show that topological differences of brain networks exist between young and mid-aged adults: small-worldness is significantly different between the two populations and it can be used to classify the subjects with respect to age with an accuracy of 69%.


European Journal of Neuroscience | 2018

An EEG index of sensorimotor interhemispheric coupling after unilateral stroke: clinical and neurophysiological study

Floriana Pichiorri; Manuela Petti; Stefano Caschera; Laura Astolfi; Febo Cincotti; Donatella Mattia

Brain connectivity has been employed to investigate on post‐stroke recovery mechanisms and assess the effect of specific rehabilitation interventions. Changes in interhemispheric coupling after stroke have been related to the extent of damage in the corticospinal tract (CST) and thus, to motor impairment. In this study, we aimed at defining an index of interhemispheric connectivity derived from electroencephalography (EEG), correlated with CST integrity and clinical impairment. Thirty sub‐acute stroke patients underwent clinical and neurophysiological evaluation: CST integrity was assessed by Transcranial Magnetic Stimulation and high‐density EEG was recorded at rest. Connectivity was assessed by means of Partial Directed Coherence and the normalized Inter‐Hemispheric Strength (nIHS) was calculated for each patient and frequency band on the whole network and in three sub‐networks relative to the frontal, central (sensorimotor) and occipital areas. Interhemipheric coupling as expressed by nIHS on the whole network was significantly higher in patients with preserved CST integrity in beta and gamma bands. The same index estimated for the three sub‐networks showed significant differences only in the sensorimotor area in lower beta, with higher values in patients with preserved CST integrity. The sensorimotor lower beta nIHS showed a significant positive correlation with clinical impairment. We propose an EEG‐based connectivity index which is a measure of the interhemispheric cross‐talking and correlates with functional motor impairment in subacute stroke patients. Such index could be employed to evaluate the effects of training aimed at re‐establishing interhemispheric balance and eventually drive the design of future connectivity‐driven rehabilitation interventions.


international conference of the ieee engineering in medicine and biology society | 2013

A new statistical approach for the extraction of adjacency matrix from effective connectivity networks

Jlenia Toppi; F. De Vico Fallani; Manuela Petti; G. Vecchiato; Anton Giulio Maglione; Febo Cincotti; Serenella Salinari; Donatella Mattia; F. Babiloni; Laura Astolfi

Graph theory is a powerful mathematical tool recently introduced in neuroscience field for quantitatively describing the main properties of investigated connectivity networks. Despite the technical advancements provided in the last few years, further investigations are needed for overcoming actual limitations in the field. In fact, the absence of a common procedure currently applied for the extraction of the adjacency matrix from a connectivity pattern has been leading to low consistency and reliability of ghaph indexes among the investigated population. In this paper we proposed a new approach for adjacency matrix extraction based on a statistical threshold as valid alternative to empirical approaches, extensively used in Neuroscience field (i.e. fixing the edge density). In particular we performed a simulation study for investigating the effects of the two different extraction approaches on the topological properties of the investigated networks. In particular, the comparison was performed on two different datasets, one composed by uncorrelated random signals (null-model) and the other one by signals acquired on a mannequin head used as a phantom (EEG null-model). The results highlighted the importance to use a statistical threshold for the adjacency matrix extraction in order to describe the real existing topological properties of the investigated networks. The use of an empirical threshold led to an erroneous definition of small-world properties for the considered connectivity patterns.


international conference of the ieee engineering in medicine and biology society | 2016

Measuring the agreement between brain connectivity networks

Jlenia Toppi; Nicolina Sciaraffa; Yuri Antonacci; Alessandra Anzolin; Stefano Caschera; Manuela Petti; Donatella Mattia; Laura Astolfi

Investigating the level of similarity between two brain networks, resulting from measures of effective connectivity in the brain, can be of interest from many respects. In this study, we propose and test the idea to borrow measures of association used in machine learning to provide a measure of similarity between the structure of (un-weighted) brain connectivity networks. The measures here explored are the accuracy, Cohens Kappa (K) and Area Under Curve (AUC). We implemented two simulation studies, reproducing two contexts of application that can be particularly interesting for practical applications, namely: i) in methodological studies, performed on surrogate data, aiming at comparing the estimated network with the corresponding ground-truth network; ii) in applications to real data, when it is necessary to compare the structure of a network obtained in a specific subject with a reference (e.g. a baseline condition or normative data). In the simulations, the level of similarity between two networks was manipulated through different factors. We then investigated the effect of such manipulations on the measures of association. Results showed how the three parameters modulated their values according to the level of similarity between the two networks. In particular, the AUC provided the better performances in terms of its capability to synthetize the similarity between two networks, showing high dynamic and sensitivity.

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Laura Astolfi

Sapienza University of Rome

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Donatella Mattia

Sapienza University of Rome

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Jlenia Toppi

Sapienza University of Rome

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Febo Cincotti

Sapienza University of Rome

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Floriana Pichiorri

Sapienza University of Rome

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Serenella Salinari

Sapienza University of Rome

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Fabio Babiloni

Sapienza University of Rome

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F. Babiloni

Sapienza University of Rome

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Alessandra Anzolin

Sapienza University of Rome

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Stefano Caschera

Sapienza University of Rome

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