32 results on '"Bigdely-Shamlo, Nima"'
Search Results
2. Automated EEG mega-analysis II: Cognitive aspects of event related features
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Bigdely-Shamlo, Nima, Touryan, Jonathan, Ojeda, Alejandro, Kothe, Christian, Mullen, Tim, and Robbins, Kay
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- 2020
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3. Measure projection analysis: A probabilistic approach to EEG source comparison and multi-subject inference
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Bigdely-Shamlo, Nima, Mullen, Tim, Kreutz-Delgado, Kenneth, and Makeig, Scott
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- 2013
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4. A disk-aware algorithm for time series motif discovery
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Mueen, Abdullah, Keogh, Eamonn, Zhu, Qiang, Cash, Sydney S., Westover, M. Brandon, and Bigdely-Shamlo, Nima
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- 2011
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5. How Sensitive Are EEG Results to Preprocessing Methods: A Benchmarking Study.
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Robbins, Kay A., Touryan, Jonathan, Mullen, Tim, Kothe, Christian, and Bigdely-Shamlo, Nima
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ELECTROENCEPHALOGRAPHY ,BENCHMARKING (Management) ,OPEN-ended questions ,BEST practices - Abstract
Although several guidelines for best practices in EEG preprocessing have been released, even studies that strictly adhere to those guidelines contain considerable variation in the ways that the recommended methods are applied. An open question for researchers is how sensitive the results of EEG analyses are to variations in preprocessing methods and parameters. To address this issue, we analyze the effect of preprocessing methods on downstream EEG analysis using several simple signal and event-related measures. Signal measures include recording-level channel amplitudes, study-level channel amplitude dispersion, and recording spectral characteristics. Event-related methods include ERPs and ERSPs and their correlations across methods for a diverse set of stimulus events. Our analysis also assesses differences in residual signals both in the time and spectral domains after blink artifacts have been removed. Using fully automated pipelines, we evaluate these measures across 17 EEG studies for two ICA-based preprocessing approaches (LARG, MARA) plus two variations of Artifact Subspace Reconstruction (ASR). Although the general structure of the results is similar across these preprocessing methods, there are significant differences, particularly in the low-frequency spectral features and in the residuals left by blinks. These results argue for detailed reporting of processing details as suggested by most guidelines, but also for using a federation of automated processing pipelines and comparison tools to quantify effects of processing choices as part of the research reporting. [ABSTRACT FROM AUTHOR]
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- 2020
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6. Isolating Discriminant Neural Activity in the Presence of Eye Movements and Concurrent Task Demands.
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Touryan, Jon, Lawhern, Vernon J., Connolly, Patrick M., Bigdely-Shamlo, Nima, and Ries, Anthony J.
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LATERAL geniculate body ,EYE movements ,EYE contact ,EYE examination ,RAPID eye movement sleep - Abstract
A growing number of studies use the combination of eye-tracking and electroencephalographic (EEG) measures to explore the neural processes that underlie visual perception. In these studies, fixation-related potentials (FRPs) are commonly used to quantify early and late stages of visual processing that follow the onset of each fixation. However, FRPs reflect a mixture of bottom-up (sensory-driven) and top-down (goal-directed) processes, in addition to eye movement artifacts and unrelated neural activity. At present there is little consensus on how to separate this evoked response into its constituent elements. In this study we sought to isolate the neural sources of target detection in the presence of eye movements and over a range of concurrent task demands. Here, participants were asked to identify visual targets (Ts) amongst a grid of distractor stimuli (Ls), while simultaneously performing an auditory N-back task. To identify the discriminant activity, we used independent components analysis (ICA) for the separation of EEG into neural and non-neural sources. We then further separated the neural sources, using a modified measure-projection approach, into six regions of interest (ROIs): occipital, fusiform, temporal, parietal, cingulate, and frontal cortices. Using activity from these ROIs, we identified target from non-target fixations in all participants at a level similar to other state-of-the-art classification techniques. Importantly, we isolated the time course and spectral features of this discriminant activity in each ROI. In addition, we were able to quantify the effect of cognitive load on both fixation-locked potential and classification performance across regions. Together, our results show the utility of a measure-projection approach for separating task-relevant neural activity into meaningful ROIs within more complex contexts that include eye movements. [ABSTRACT FROM AUTHOR]
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- 2017
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7. BLINKER: Automated Extraction of Ocular Indices from EEG Enabling Large-Scale Analysis.
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Kleifges, Kelly, Bigdely-Shamlo, Nima, Kerick, Scott E., and Robbins, Kay A.
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ELECTROENCEPHALOGRAPHY ,BLINKING (Physiology) ,MACHINE learning - Abstract
Electroencephalography (EEG) offers a platform for studying the relationships between behavioral measures, such as blink rate and duration, with neural correlates of fatigue and attention, such as theta and alpha band power. Further, the existence of EEG studies covering a variety of subjects and tasks provides opportunities for the community to better characterize variability of these measures across tasks and subjects. We have implemented an automated pipeline (BLINKER) for extracting ocular indices such as blink rate, blink duration, and blink velocity-amplitude ratios from EEG channels, EOG channels, and/or independent components (ICs). To illustrate the use of our approach, we have applied the pipeline to a large corpus of EEG data (comprising more than 2000 datasets acquired at eight different laboratories) in order to characterize variability of certain ocular indicators across subjects. We also investigate dependence of ocular indices on task in a shooter study. We have implemented our algorithms in a freely available MATLAB toolbox called BLINKER. The toolbox, which is easy to use and can be applied to collections of data without user intervention, can automatically discover which channels or ICs capture blinks. The tools extract blinks, calculate common ocular indices, generate a report for each dataset, dump labeled images of the individual blinks, and provide summary statistics across collections. Users can run BLINKER as a script or as a plugin for EEGLAB. The toolbox is available at https://github.com/VisLab/EEG-Blinks. User documentation and examples appear at http://vislab.github.io/EEG-Blinks/. [ABSTRACT FROM AUTHOR]
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- 2017
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8. Selective Transfer Learning for EEG-Based Drowsiness Detection.
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Wei, Chun-Shu, Lin, Yuan-Pin, Wang, Yu-Te, Jung, Tzyy-Ping, Bigdely-Shamlo, Nima, and Lin, Chin-Teng
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- 2015
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9. MindMusic: Playful and Social Installations at the Interface Between Music and the Brain.
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Mullen, Tim, Khalil, Alexander, Ward, Tomas, Iversen, John, Leslie, Grace, Warp, Richard, Whitman, Matt, Minces, Victor, McCoy, Aaron, Ojeda, Alejandro, Bigdely-Shamlo, Nima, Chi, Mike, and Rosenboom, David
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- 2015
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10. Hierarchical Event Descriptors (HED): Semi-Structured Tagging for Real-World Events in Large-Scale EEG.
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Bigdely-Shamlo, Nima, Cockfield, Jeremy, Makeig, Scott, Rognon, Thomas, La Valle, Chris, Miyakoshi, Makoto, Robbins, Kay A., Gerkin, Richard C., and Irimia, Andrei
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ELECTROENCEPHALOGRAPHY ,USER interfaces ,VIRTUAL reality - Abstract
Real-world brain imaging by EEG requires accurate annotation of complex subject-environment interactions in event-rich tasks and paradigms. This paper describes the evolution of the Hierarchical Event Descriptor (HED) system for systematically describing both laboratory and real-world events. HED version 2, first described here, provides the semantic capability of describing a variety of subject and environmental states. HED descriptions can include stimulus presentation events on screen or in virtual worlds, experimental or spontaneous events occurring in the real world environment, and events experienced via one or multiple sensory modalities. Furthermore, HED 2 can distinguish between the mere presence of an object and its actual (or putative) perception by a subject. Although the HED framework has implicit ontological and linked data representations, the user-interface for HED annotation is more intuitive than traditional ontological annotation. We believe that hiding the formal representations allows for a more user-friendly interface, making consistent, detailed tagging of experimental, and real-world events possible for research users. HED is extensible while retaining the advantages of having an enforced common core vocabulary. We have developed a collection of tools to support HED tag assignment and validation; these are available at hedtags.org. A plug-in for EEGLAB (sccn.ucsd.edu/eeglab), CTAGGER, is also available to speed the process of tagging existing studies. [ABSTRACT FROM AUTHOR]
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- 2016
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11. PWC-ICA: A Method for Stationary Ordered Blind Source Separation with Application to EEG.
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Ball, Kenneth, Bigdely-Shamlo, Nima, Mullen, Tim, and Robbins, Kay
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BLIND source separation , *BIVECTORS , *DIPOLE interactions , *TOOLBOXES , *VECTOR-valued measures - Abstract
Independent component analysis (ICA) is a class of algorithms widely applied to separate sources in EEG data. Most ICA approaches use optimization criteria derived from temporal statistical independence and are invariant with respect to the actual ordering of individual observations. We propose a method of mapping real signals into a complex vector space that takes into account the temporal order of signals and enforces certain mixing stationarity constraints. The resulting procedure, which we call Pairwise Complex Independent Component Analysis (PWC-ICA), performs the ICA in a complex setting and then reinterprets the results in the original observation space. We examine the performance of our candidate approach relative to several existing ICA algorithms for the blind source separation (BSS) problem on both real and simulated EEG data. On simulated data, PWC-ICA is often capable of achieving a better solution to the BSS problem than AMICA, Extended Infomax, or FastICA. On real data, the dipole interpretations of the BSS solutions discovered by PWC-ICA are physically plausible, are competitive with existing ICA approaches, and may represent sources undiscovered by other ICA methods. In conjunction with this paper, the authors have released a MATLAB toolbox that performs PWC-ICA on real, vector-valued signals. [ABSTRACT FROM AUTHOR]
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- 2016
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12. Preparing Laboratory and Real-World EEG Data for Large-Scale Analysis: A Containerized Approach.
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Bigdely-Shamlo, Nima, Makeig, Scott, Robbins, Kay A., Stephen, Julia, Perez, Fernando, and Abbass, Hussein
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ELECTROENCEPHALOGRAPHY ,LARGE scale systems ,NEUROINFORMATICS - Abstract
Large-scale analysis of EEG and other physiological measures promises new insights into brain processes and more accurate and robust brain-computer interface models. However, the absence of standardized vocabularies for annotating events in a machine understandable manner, the welter of collection-specific data organizations, the difficulty in moving data across processing platforms, and the unavailability of agreed-upon standards for preprocessing have prevented large-scale analyses of EEG. Here we describe a "containerized" approach and freely available tools we have developed to facilitate the process of annotating, packaging, and preprocessing EEG data collections to enable data sharing, archiving, large-scale machine learning/data mining and (meta-)analysis. The EEG Study Schema (ESS) comprises three data "Levels," each with its own XML-document schema and file/folder convention, plus a standardized (PREP) pipeline to move raw (Data Level 1) data to a basic preprocessed state (Data Level 2) suitable for application of a large class of EEG analysis methods. Researchers can ship a study as a single unit and operate on its data using a standardized interface. ESS does not require a central database and provides all the metadata data necessary to execute a wide variety of EEG processing pipelines. The primary focus of ESS is automated in-depth analysis and meta-analysis EEG studies. However, ESS can also encapsulate meta-information for the other modalities such as eye tracking, that are increasingly used in both laboratory and real-world neuroimaging. ESS schema and tools are freely available at www.eegstudy.org and a central catalog of over 850 GB of existing data in ESS format is available at studycatalog.org. These tools and resources are part of a larger effort to enable data sharing at sufficient scale for researchers to engage in truly large-scale EEG analysis and data mining (BigEEG.org). [ABSTRACT FROM AUTHOR]
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- 2016
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13. Basis selection for maximally independent EEG sources.
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Balkan, Ozgur, Bigdely-Shamlo, Nima, Kreutz-Delgado, Kenneth, and Makeig, Scott
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- 2014
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14. The PREP pipeline: standardized preprocessing for large-scale EEG analysis.
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Bigdely-Shamlo, Nima, Mullen, Tim, Kothe, Christian, Kyung-Min Su, and Robbins, Kay A.
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BRAIN imaging ,ELECTROENCEPHALOGRAPHY ,UBIQUITOUS computing ,MACHINE learning ,BIG data - Abstract
The technology to collect brain imaging and physiological measures has become portable and ubiquitous, opening the possibility of large-scale analysis of real-world human imaging. By its nature, such data is large and complex, making automated processing essential. This paper shows how lack of attention to the very early stages of an EEG preprocessing pipeline can reduce the signal-to-noise ratio and introduce unwanted artifacts into the data, particularly for computations done in single precision. We demonstrate that ordinary average referencing improves the signal-to-noise ratio, but that noisy channels can contaminate the results. We also show that identification of noisy channels depends on the reference and examine the complex interaction of filtering, noisy channel identification, and referencing. We introduce a multi-stage robust referencing scheme to deal with the noisy channel-reference interaction. We propose a standardized early-stage EEG processing pipeline (PREP) and discuss the application of the pipeline to more than 600 EEG datasets. The pipeline includes an automatically generated report for each dataset processed. Users can download the PREP pipeline as a freely available MATLAB library from http://eegstudy.org/prepcode. [ABSTRACT FROM AUTHOR]
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- 2015
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15. Towards an EEG search engine.
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Bigdely-Shamlo, Nima, Kreutz-Delgado, Ken, Kothe, Christian, and Makeig, Scott
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- 2013
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16. CTAGGER: Semi-structured community tagging for annotation and data-mining in event-rich contexts.
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Rognon, Thomas, Strautman, Rebecca, Jett, Lauren, Bigdely-Shamlo, Nima, Makeig, Scott, Johnson, Tony, and Robbins, Kay
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- 2013
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17. Hierarchical Event Descriptor (HED) tags for analysis of event-related EEG studies.
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Bigdely-Shamlo, Nima, Kreutz-Delgado, Kenneth, Robbins, Kay, Miyakoshi, Makoto, Westerfield, Marissa, Bel-Bahar, Tarik, Kothe, Christian, Hsi, Jessica, and Makeig, Scott
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- 2013
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18. EyeCatch: Data-mining over half a million EEG independent components to construct a fully-automated eye-component detector.
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Bigdely-Shamlo, Nima, Kreutz-Delgado, Ken, Kothe, Christian, and Makeig, Scott
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- 2013
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19. Comparison of averaging and regression techniques for estimating Event Related Potentials.
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Burns, Matthew D., Bigdely-Shamlo, Nima, Smith, Nathaniel J., Kreutz-Delgado, Kenneth, and Makeig, Scott
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- 2013
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20. First Demonstration of a Musical Emotion BCI.
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Makeig, Scott, Leslie, Grace, Mullen, Tim, Sarma, Devpratim, Bigdely-Shamlo, Nima, and Kothe, Christian
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- 2011
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21. MATLAB-Based Tools for BCI Research.
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Delorme, Arnaud, Kothe, Christian, Vankov, Andrey, Bigdely-Shamlo, Nima, Oostenveld, Robert, Zander, Thorsten O., and Makeig, Scott
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We first discuss two MATLAB-centered solutions for real-time data streaming, the environments FieldTrip (Donders Institute, Nijmegen) and DataSuite (Data- River, Producer, MatRiver) (Swartz Center, La Jolla). We illustrate the relative simplicity of coding BCI feature extraction and classification under MATLAB (The Mathworks, Inc.) using a minimalist BCI example, and then describe BCILAB (Team PhyPa, Berlin), a new BCI package that uses the data structures and extends the capabilities of the widely used EEGLAB signal processing environment. We finally review the range of standalone and MATLAB-based software currently freely available to BCI researchers. [ABSTRACT FROM AUTHOR]
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- 2010
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22. Mind-Mirror: EEG-Guided Image Evolution.
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Bigdely Shamlo, Nima and Makeig, Scott
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We propose a brain-computer interface (BCI) system for evolving images in real-time based on subject feedback derived from electroencephalography (EEG). The goal of this system is to produce a picture best resembling a subject΄s `imagined΄ image. This system evolves images using Compositional Pattern Producing Networks (CPPNs) via the NeuroEvolution of Augmenting Topologies (NEAT) genetic algorithm. Fitness values for NEAT-based evolution are derived from a real-time EEG classifier as images are presented using rapid serial visual presentation (RSVP). Here, we report the design and performance, for a pilot training session, of a BCI system for real-time single-trial binary classification of viewed images based on participant-specific brain response signatures present in 128-channel EEG data. Selected training-session image clips created by the image evolution algorithm were presented in 2-s bursts at 8/s. The subject indicated by subsequent button press whether or not each burst included an image resembling two eyes. Approximately half the bursts included such an image. Independent component analysis (ICA) was used to extract a set of maximally independent EEG source time-courses and their 100 minimally-redundant low-dimensional informative features in the time and time-frequency amplitude domains from the (94%) bursts followed by correct manual responses. To estimate the likelihood that the post-image EEG contained EEG `flickers΄ of target recognition, we applied two Fisher discriminant classifiers to the time and/or time-frequency features. The area under the receiver operating characteristic (ROC) curve by tenfold cross-validation was 0.96 using time-domain features, 0.97 using time-frequency domain features, and 0.98 using both domain features. [ABSTRACT FROM AUTHOR]
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- 2009
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23. MoBILAB: an open source toolbox for analysis and visualization of mobile brain/body imaging data.
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Ojeda, Alejandro, Bigdely-Shamlo, Nima, and Makeig, Scott
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BRAIN imaging ,VISUALIZATION ,COGNITION ,HUMAN behavior ,SIGNAL processing ,EVOKED potentials (Electrophysiology) - Abstract
A new paradigm for human brain imaging, mobile brain/body imaging (MoBI), involves synchronous collection of human brain activity (via electroencephalography, EEG) and behavior (via body motion capture, eye tracking, etc.), plus environmental events (scene and event recording) to study joint brain/body dynamics supporting natural human cognition supporting performance of naturally motivated human actions and interactions in 3-D environments (Makeig et al., 2009). Processing complex, concurrent, multi-modal, multi-rate data streams requires a signal-processing environment quite different from one designed to process single-modality time series data. Here we describe MoBILAB (more details available at sccn.ucsd.edu/wiki/MoBILAB), an open source, cross platform toolbox running on MATLAB (The Mathworks, Inc.) that supports analysis and visualization of any mixture of synchronously recorded brain, behavioral, and environmental time series plus time-marked event stream data. MoBILAB can serve as a pre-processing environment for adding behavioral and other event markers to EEG data for further processing, and/or as a development platform for expanded analysis of simultaneously recorded data streams. [ABSTRACT FROM AUTHOR]
- Published
- 2014
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24. Evolving Signal Processing for Brain–Computer Interfaces.
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Makeig, Scott, Kothe, Christian, Mullen, Tim, Bigdely-Shamlo, Nima, Zhang, Zhilin, and Kreutz-Delgado, Kenneth
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ELECTROPHYSIOLOGY equipment ,BRAIN -- Electromechanical analogies ,COMPUTER interfaces ,HUMAN-machine systems ,SAFETY - Abstract
Because of the increasing portability and wearability of noninvasive electrophysiological systems that record and process electrical signals from the human brain, automated systems for assessing changes in user cognitive state, intent, and response to events are of increasing interest. Brain–computer interface (BCI) systems can make use of such knowledge to deliver relevant feedback to the user or to an observer, or within a human–machine system to increase safety and enhance overall performance. Building robust and useful BCI models from accumulated biological knowledge and available data is a major challenge, as are technical problems associated with incorporating multimodal physiological, behavioral, and contextual data that may in the future be increasingly ubiquitous. While performance of current BCI modeling methods is slowly increasing, current performance levels do not yet support widespread uses. Here we discuss the current neuroscientific questions and data processing challenges facing BCI designers and outline some promising current and future directions to address them. [ABSTRACT FROM PUBLISHER]
- Published
- 2012
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25. EEGLAB, SIFT, NFT, BCILAB, and ERICA: New Tools for Advanced EEG Processing.
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Delorme, Arnaud, Mullen, Tim, Kothe, Christian, Acar, Zeynep Akalin, Bigdely-Shamlo, Nima, Vankov, Andrey, and Makeig, Scott
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NEUROSCIENCES ,ELECTROENCEPHALOGRAPHY ,COMPUTATIONAL neuroscience ,SIGNAL processing ,BRAIN-computer interfaces ,ELECTROPHYSIOLOGY ,COMPUTER software - Abstract
We describe a set of complementary EEG data collection and processing tools recently developed at the Swartz Center for Computational Neuroscience (SCCN) that connect to and extend the EEGLAB software environment, a freely available and readily extensible processing environment running under Matlab. The new tools include (1) a new and flexible EEGLAB STUDY design facility for framing and performing statistical analyses on data from multiple subjects; (2) a neuroelectromagnetic forward head modeling toolbox (NFT) for building realistic electrical head models from available data; (3) a source information flow toolbox (SIFT) for modeling ongoing or event-related effective connectivity between cortical areas; (4) a BCILAB toolbox for building online brain-computer interface (BCI) models from available data, and (5) an experimental real-time interactive control and analysis (ERICA) environment for real-time production and coordination of interactive, multimodal experiments. [ABSTRACT FROM AUTHOR]
- Published
- 2011
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26. Brain Activity-Based Image. Classification From Rapid Serial Visual Presentation.
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Bigdely-Shamlo, Nima, Vankov, Andrey, Ramirez, Rey R., and Makeig, Scott
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BRAIN-computer interfaces ,BRAIN imaging ,ELECTROENCEPHALOGRAPHY ,DIAGNOSIS of brain diseases ,INDEPENDENT component analysis ,BAYESIAN analysis ,TIME-frequency analysis - Abstract
Abstract-We report the design and performance of a brain-computer interface (BCI) system for real-time single-trial binary classification of viewed images based on participant-specific dynamic brain response signatures in high-density (128-channel) electroencephalographic (EEG) data acquired during a rapid serial visual presentation (RSVP) task. Image clips were selected from a broad area image and presented in rapid succession (12/s) in 4.1-s bursts. Participants indicated by subsequent button press whether or not each burst of images included a target airplane feature. Image clip creation and search path selection were designed to maximize user comfort and maintain user awareness of spatial context. Independent component analysis (ICA) was used to extract a set of independent source time-courses and their minimally-redundant low-dimensional informative features in the time and time-frequency amplitude domains from 128-channel EEG data recorded during clip burst presentations in a training session. The naive Bayes fusion of two Fisher discriminant classifiers, computed from the 100 most discriminative time and time-frequency features, respectively, was used to estimate the likelihood that each clip contained a target feature. This estimator was applied online in a subsequent test session. Across eight training/test session pairs from seven participants, median area under the receiver operator characteristic curve, by tenfold cross validation, was 0.97 for within-session and 0.87 for between-session estimates, and was nearly as high (0.83) for targets presented in bursts that participants mistakenly reported to include no target features. [ABSTRACT FROM AUTHOR]
- Published
- 2008
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27. Event-related brain dynamics in ADHD.
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McLoughlin, Gráinne, Rijskdijk, Fruhling, Kuntsi, Jonna, Asherson, Philip, Bigdely Shamlo, Nima, Palmer, Jason, and Makeig, Scott
- Abstract
Introduction and objective: Independent component analysis (ICA) (Delorme and Makeig 2004) exploits the temporal resolution of EEG to provide a richer characterisation of macroscopic neural differences associated with ADHD. In this study, we investigate the inter-trial variability in EEG indices of ADHD. Methods: 68 twin pairs were recruited from the Twins Early Development Study (TEDS). EEG data was recorded during the fast task (Andreou et al. 2007). Using ICA, neural event-related activity was identified in both conditions of the fast task. Results: We observed that activities of the component processes varied with time and conditions in several frequency bands. Discussion: The use of ICA can reveal the dynamics of brain source activation and synchronization phenomena in ADHD not revealed by standard scalp data averaging methods. The increased variability of these parameters in ADHD suggests that there is not an attentional deficit, per se, in ADHD but an inability to maintain consistent performance over time. Conclusion: These findings will aid in the characterisation of intraindividual variability in ADHD, both at the level of cortical processing and at the level of behavior. [ABSTRACT FROM AUTHOR]
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- 2010
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28. Basis selection for maximally independent EEG sources.
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Balkan O, Bigdely-Shamlo N, Kreutz-Delgado K, and Makeig S
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- Algorithms, Electroencephalography instrumentation, Humans, Learning, Likelihood Functions, Linear Models, Normal Distribution, Probability, Electroencephalography methods, Signal Processing, Computer-Assisted
- Abstract
We suggest a solution to the following problem: "Given multichannel linear source mixture data Y, and an overcomplete dictionary, A, of source projections, ai, how can we construct a complete basis, A0, by selecting columns from A such that the sources X = A0(-1)Y are as statistically independent as possible from each other?". While conventional independent component analysis (ICA) methods learn the mixing matrix A0 from scratch given Y, we restrict ourselves to selecting basis vectors from a known overcomplete dictionary. We develop two methods based on modifications of the maximum likelihood equivalent of the Infomax approach and the reconstruction-ICA (RICA) algorithm. We show that on realistic synthetic electroencephalographic (EEG) data our algorithms can find the true sources in the case of a highly coherent dictionary while requiring relatively fewer data points compared to other algorithms. On real EEG data, our algorithms obtain higher mutual information reduction.
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- 2014
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29. Comparison of averaging and regression techniques for estimating Event Related Potentials.
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Burns MD, Bigdely-Shamlo N, Smith NJ, Kreutz-Delgado K, and Makeig S
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- Humans, Linear Models, Visual Perception, Electroencephalography methods, Evoked Potentials physiology
- Abstract
The traditional method of estimating an Event Related Potential (ERP) is to take the average of signal epochs time locked to a set of similar experimental events. This averaging method is useful as long as the experimental procedure can sufficiently isolate the brain or non-brain process of interest. However, if responses from multiple cognitive processes, time locked to multiple classes of closely spaced events, overlap in time with varying inter-event intervals, averaging will most likely fail to identify the individual response time courses. For this situation, we study estimation of responses to all recorded events in an experiment by a single model using standard linear regression (the rERP technique). Applied to data collected during a Rapid Serial Visual Presentation (RSVP) task, our analysis shows: (1) The rERP technique accounts for more variance in the data than averaging when individual event responses are highly overlapping; (2) the variance accounted for by the estimates is concentrated into a fewer ICA components than raw EEG channel signals.
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- 2013
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30. EyeCatch: data-mining over half a million EEG independent components to construct a fully-automated eye-component detector.
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Bigdely-Shamlo N, Kreutz-Delgado K, Kothe C, and Makeig S
- Subjects
- Artifacts, Automation, Brain physiology, Databases as Topic, Humans, Scalp physiology, Data Mining, Electroencephalography instrumentation, Eye Movements physiology
- Abstract
Independent component analysis (ICA) can find distinct sources of electroencephalographic (EEG) activity, both brain-based and artifactual, and has become a common pre-preprocessing step in analysis of EEG data. Distinction between brain and non-brain independent components (ICs) accounting for, e.g., eye or muscle activities is an important step in the analysis. Here we present a fully automated method to identify eye-movement related EEG components by analyzing the spatial distribution of their scalp projections (scalp maps). The EyeCatch method compares each input scalp map to a database of eye-related IC scalp maps obtained by data-mining over half a million IC scalp maps obtained from 80,006 EEG datasets associated with a diverse set of EEG studies and paradigms. To our knowledge this is the largest sample of IC scalp maps that has ever been analyzed. Our result show comparable performance to a previous state-of-art semi-automated method, CORRMAP, while eliminating the need for human intervention.
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- 2013
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31. Characterization and robust classification of EEG signal from image RSVP events with independent time-frequency features.
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Meng J, Meriño LM, Bigdely Shamlo N, Makeig S, Robbins K, and Huang Y
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- Algorithms, Evoked Potentials physiology, Humans, Models, Theoretical, Electroencephalography
- Abstract
Unlabelled: This paper considers the problem of automatic characterization and detection of target images in a rapid serial visual presentation (RSVP) task based on EEG data. A novel method that aims to identify single-trial event-related potentials (ERPs) in time-frequency is proposed, and a robust classifier with feature clustering is developed to better utilize the correlated ERP features. The method is applied to EEG recordings of a RSVP experiment with multiple sessions and subjects.The results show that the target image events are mainly characterized by 3 distinct patterns in the time-frequency domain, i.e., a theta band (4.3 Hz) power boosting 300-700 ms after the target image onset, an alpha band (12 Hz) power boosting 500-1000 ms after the stimulus onset, and a delta band (2 Hz) power boosting after 500 ms. The most discriminant time-frequency features are power boosting and are relatively consistent among multiple sessions and subjects.Since the original discriminant time-frequency features are highly correlated, we constructed the uncorrelated features using hierarchical clustering for better classification of target and non-target images. With feature clustering, performance (area under ROC) improved from 0.85 to 0.89 on within-session tests, and from 0.76 to 0.84 on cross-subject tests. The constructed uncorrelated features were more robust than the original discriminant features and corresponded to a number of local regions on the time-frequency plane., Availability: The data and code are available at: http://compgenomics.cbi.utsa.edu/rsvp/index.html.
- Published
- 2012
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32. Visual evoked responses during standing and walking.
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Gramann K, Gwin JT, Bigdely-Shamlo N, Ferris DP, and Makeig S
- Abstract
Human cognition has been shaped both by our body structure and by its complex interactions with its environment. Our cognition is thus inextricably linked to our own and others' motor behavior. To model brain activity associated with natural cognition, we propose recording the concurrent brain dynamics and body movements of human subjects performing normal actions. Here we tested the feasibility of such a mobile brain/body (MoBI) imaging approach by recording high-density electroencephalographic (EEG) activity and body movements of subjects standing or walking on a treadmill while performing a visual oddball response task. Independent component analysis of the EEG data revealed visual event-related potentials that during standing, slow walking, and fast walking did not differ across movement conditions, demonstrating the viability of recording brain activity accompanying cognitive processes during whole body movement. Non-invasive and relatively low-cost MoBI studies of normal, motivated actions might improve understanding of interactions between brain and body dynamics leading to more complete biological models of cognition.
- Published
- 2010
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