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Dive into the research topics where Theresa M. Vaughan is active.

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Featured researches published by Theresa M. Vaughan.


Journal of Neural Engineering | 2006

A comparison of classification techniques for the P300 Speller.

Dean J. Krusienski; Eric W. Sellers; François Cabestaing; Sabri Bayoudh; Dennis J. McFarland; Theresa M. Vaughan; Jonathan R. Wolpaw

This study assesses the relative performance characteristics of five established classification techniques on data collected using the P300 Speller paradigm, originally described by Farwell and Donchin (1988 Electroenceph. Clin. Neurophysiol. 70 510). Four linear methods: Pearsons correlation method (PCM), Fishers linear discriminant (FLD), stepwise linear discriminant analysis (SWLDA) and a linear support vector machine (LSVM); and one nonlinear method: Gaussian kernel support vector machine (GSVM), are compared for classifying offline data from eight users. The relative performance of the classifiers is evaluated, along with the practical concerns regarding the implementation of the respective methods. The results indicate that while all methods attained acceptable performance levels, SWLDA and FLD provide the best overall performance and implementation characteristics for practical classification of P300 Speller data.


Journal of Neuroscience Methods | 2008

Toward enhanced P300 speller performance

Dean J. Krusienski; Eric W. Sellers; Dennis J. McFarland; Theresa M. Vaughan; Jonathan R. Wolpaw

This study examines the effects of expanding the classical P300 feature space on the classification performance of data collected from a P300 speller paradigm [Farwell LA, Donchin E. Talking off the top of your head: toward a mental prosthesis utilizing event-related brain potentials. Electroenceph Clin Neurophysiol 1988;70:510-23]. Using stepwise linear discriminant analysis (SWLDA) to construct a classifier, the effects of spatial channel selection, channel referencing, data decimation, and maximum number of model features are compared with the intent of establishing a baseline not only for the SWLDA classifier, but for related P300 speller classification methods in general. By supplementing the classical P300 recording locations with posterior locations, online classification performance of P300 speller responses can be significantly improved using SWLDA and the favorable parameters derived from the offline comparative analysis.


IEEE Transactions on Biomedical Engineering | 2004

The BCI competition 2003: progress and perspectives in detection and discrimination of EEG single trials

Benjamin Blankertz; Klaus-Robert Müller; Gabriel Curio; Theresa M. Vaughan; Jonathan R. Wolpaw; Alois Schlögl; Christa Neuper; Gert Pfurtscheller; Thilo Hinterberger; Michael Schröder; Niels Birbaumer

Interest in developing a new method of man-to-machine communication-a brain-computer interface (BCI)-has grown steadily over the past few decades. BCIs create a new communication channel between the brain and an output device by bypassing conventional motor output pathways of nerves and muscles. These systems use signals recorded from the scalp, the surface of the cortex, or from inside the brain to enable users to control a variety of applications including simple word-processing software and orthotics. BCI technology could therefore provide a new communication and control option for individuals who cannot otherwise express their wishes to the outside world. Signal processing and classification methods are essential tools in the development of improved BCI technology. We organized the BCI Competition 2003 to evaluate the current state of the art of these tools. Four laboratories well versed in EEG-based BCI research provided six data sets in a documented format. We made these data sets (i.e., labeled training sets and unlabeled test sets) and their descriptions available on the Internet. The goal in the competition was to maximize the performance measure for the test labels. Researchers worldwide tested their algorithms and competed for the best classification results. This paper describes the six data sets and the results and function of the most successful algorithms.


Clinical Neurophysiology | 2008

A P300-based brain–computer interface for people with amyotrophic lateral sclerosis

Femke Nijboer; Eric W. Sellers; Jürgen Mellinger; M.A. Jordan; Tamara Matuz; Adrian Furdea; Sebastian Halder; U. Mochty; Dean J. Krusienski; Theresa M. Vaughan; Jonathan R. Wolpaw; Niels Birbaumer; Andrea Kübler

OBJECTIVE The current study evaluates the efficacy of a P300-based brain-computer interface (BCI) communication device for individuals with advanced ALS. METHODS Participants attended to one cell of a N x N matrix while the N rows and N columns flashed randomly. Each cell of the matrix contained one character. Every flash of an attended character served as a rare event in an oddball sequence and elicited a P300 response. Classification coefficients derived using a stepwise linear discriminant function were applied to the data after each set of flashes. The character receiving the highest discriminant score was presented as feedback. RESULTS In Phase I, six participants used a 6 x 6 matrix on 12 separate days with a mean rate of 1.2 selections/min and mean online and offline accuracies of 62% and 82%, respectively. In Phase II, four participants used either a 6 x 6 or a 7 x 7 matrix to produce novel and spontaneous statements with a mean online rate of 2.1 selections/min and online accuracy of 79%. The amplitude and latency of the P300 remained stable over 40 weeks. CONCLUSIONS Participants could communicate with the P300-based BCI and performance was stable over many months. SIGNIFICANCE BCIs could provide an alternative communication and control technology in the daily lives of people severely disabled by ALS.


Brain Topography | 2000

Mu and Beta Rhythm Topographies During Motor Imagery and Actual Movements

Dennis J. McFarland; Laurie A. Miner; Theresa M. Vaughan; Jonathan R. Wolpaw

People can learn to control the 8-12 Hz mu rhythm and/or the 18-25 Hz beta rhythm in the EEG recorded over sensorimotor cortex and use it to control a cursor on a video screen. Subjects often report using motor imagery to control cursor movement, particularly early in training. We compared in untrained subjects the EEG topographies associated with actual hand movement to those associated with imagined hand movement. Sixty-four EEG channels were recorded while each of 33 adults moved left- or right-hand or imagined doing so. Frequency-specific differences between movement or imagery and rest, and between right- and left-hand movement or imagery, were evaluated by scalp topographies of voltage and r spectra, and principal component analysis. Both movement and imagery were associated with mu and beta rhythm desynchronization. The mu topographies showed bilateral foci of desynchronization over sensorimotor cortices, while the beta topographies showed peak desynchronization over the vertex. Both mu and beta rhythm left/right differences showed bilateral central foci that were stronger on the right side. The independence of mu and beta rhythms was demonstrated by differences for movement and imagery for the subjects as a group and by principal components analysis. The results indicated that the effects of imagery were not simply an attenuated version of the effects of movement. They supply evidence that motor imagery could play an important role in EEG-based communication, and suggest that mu and beta rhythms might provide independent control signals.


Neurology | 2005

Patients with ALS can use sensorimotor rhythms to operate a brain-computer interface

Andrea Kübler; Femke Nijboer; Jürgen Mellinger; Theresa M. Vaughan; H. Pawelzik; Dennis J. McFarland; Niels Birbaumer; Jonathan R. Wolpaw

People with severe motor disabilities can maintain an acceptable quality of life if they can communicate. Brain-computer interfaces (BCIs), which do not depend on muscle control, can provide communication. Four people severely disabled by ALS learned to operate a BCI with EEG rhythms recorded over sensorimotor cortex. These results suggest that a sensorimotor rhythm–based BCI could help maintain quality of life for people with ALS.


Biological Psychology | 2006

A P300 event-related potential brain–computer interface (BCI): The effects of matrix size and inter stimulus interval on performance

Eric W. Sellers; Dean J. Krusienski; Dennis J. McFarland; Theresa M. Vaughan; Jonathan R. Wolpaw

We describe a study designed to assess properties of a P300 brain-computer interface (BCI). The BCI presents the user with a matrix containing letters and numbers. The user attends to a character to be communicated and the rows and columns of the matrix briefly intensify. Each time the attended character is intensified it serves as a rare event in an oddball sequence and it elicits a P300 response. The BCI works by detecting which character elicited a P300 response. We manipulated the size of the character matrix (either 3 x 3 or 6 x 6) and the duration of the inter stimulus interval (ISI) between intensifications (either 175 or 350 ms). Online accuracy was highest for the 3 x 3 matrix 175-ms ISI condition, while bit rate was highest for the 6 x 6 matrix 175-ms ISI condition. Average accuracy in the best condition for each subject was 88%. P300 amplitude was significantly greater for the attended stimulus and for the 6 x 6 matrix. This work demonstrates that matrix size and ISI are important variables to consider when optimizing a BCI system for individual users and that a P300-BCI can be used for effective communication.


international conference of the ieee engineering in medicine and biology society | 2000

Brain-computer interface research at the Wadsworth Center

Jonathan R. Wolpaw; Dennis J. McFarland; Theresa M. Vaughan

Studies at the Wadsworth Center over the past 14 years have shown that people with or without motor disabilities can learn to control the amplitude of mu or beta rhythms in electroencephalographic (EEG) activity recorded from the scalp over sensorimotor cortex and can use that control to move a cursor on a computer screen in one or two dimensions. This EEG-based brain-computer interface (BCI) could provide a new augmentative communication technology for those who are totally paralyzed or have other severe motor impairments. Present research focuses on improving the speed and accuracy of BCI communication.


Clinical Neurophysiology | 2003

EMG contamination of EEG: spectral and topographical characteristics.

I.I Goncharova; Dennis J. McFarland; Theresa M. Vaughan; Jonathan R. Wolpaw

OBJECTIVE Electromyogram (EMG) contamination is often a problem in electroencephalogram (EEG) recording, particularly, for those applications such as EEG-based brain-computer interfaces that rely on automated measurements of EEG features. As an essential prelude to developing methods for recognizing and eliminating EMG contamination of EEG, this study defines the spectral and topographical characteristics of frontalis and temporalis muscle EMG over the entire scalp. It describes both average data and the range of individual differences. METHODS In 25 healthy adults, signals from 64 scalp and 4 facial locations were recorded during relaxation and during defined (15, 30, or 70% of maximum) contractions of frontalis or temporalis muscles. RESULTS In the average data, EMG had a broad frequency distribution from 0 to >200 Hz. Amplitude was greatest at 20-30 Hz frontally and 40-80 Hz temporally. Temporalis spectra also showed a smaller peak around 20 Hz. These spectral components attenuated and broadened centrally. Even with weak (15%) contraction, EMG was detectable (P<0.001) near the vertex at frequencies >12 Hz in the average data and >8 Hz in some individuals. CONCLUSIONS Frontalis or temporalis muscle EMG recorded from the scalp has spectral and topographical features that vary substantially across individuals. EMG spectra often have peaks in the beta frequency range that resemble EEG beta peaks. SIGNIFICANCE While EMG contamination is greatest at the periphery of the scalp near the active muscles, even weak contractions can produce EMG that obscures or mimics EEG alpha, mu, or beta rhythms over the entire scalp. Recognition and elimination of this contamination is likely to require recording from an appropriate set of peripheral scalp locations.


Clinical Neurophysiology | 2010

A novel P300-based brain―computer interface stimulus presentation paradigm: Moving beyond rows and columns

George Townsend; B.K. LaPallo; C.B. Boulay; Dean J. Krusienski; G.E. Frye; C.K. Hauser; N.E. Schwartz; Theresa M. Vaughan; Jonathan R. Wolpaw; Eric W. Sellers

OBJECTIVE An electroencephalographic brain-computer interface (BCI) can provide a non-muscular means of communication for people with amyotrophic lateral sclerosis (ALS) or other neuromuscular disorders. We present a novel P300-based BCI stimulus presentation - the checkerboard paradigm (CBP). CBP performance is compared to that of the standard row/column paradigm (RCP) introduced by Farwell and Donchin (1988). METHODS Using an 8x9 matrix of alphanumeric characters and keyboard commands, 18 participants used the CBP and RCP in counter-balanced fashion. With approximately 9-12 min of calibration data, we used a stepwise linear discriminant analysis for online classification of subsequent data. RESULTS Mean online accuracy was significantly higher for the CBP, 92%, than for the RCP, 77%. Correcting for extra selections due to errors, mean bit rate was also significantly higher for the CBP, 23 bits/min, than for the RCP, 17 bits/min. Moreover, the two paradigms produced significantly different waveforms. Initial tests with three advanced ALS participants produced similar results. Furthermore, these individuals preferred the CBP to the RCP. CONCLUSIONS These results suggest that the CBP is markedly superior to the RCP in performance and user acceptability. SIGNIFICANCE The CBP has the potential to provide a substantially more effective BCI than the RCP. This is especially important for people with severe neuromuscular disabilities.

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Jonathan R. Wolpaw

New York State Department of Health

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Dennis J. McFarland

New York State Department of Health

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Eric W. Sellers

East Tennessee State University

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Lynn M. McCane

New York State Department of Health

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Debra Zeitlin

New York State Department of Health

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William A. Sarnacki

New York State Department of Health

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Christa Neuper

Graz University of Technology

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