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Dive into the research topics where P. Grace Harrell is active.

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Featured researches published by P. Grace Harrell.


The Journal of Neuroscience | 2014

A Transition in Brain State during Propofol-Induced Unconsciousness

Eran A. Mukamel; Elvira Pirondini; Behtash Babadi; Kin Foon Kevin Wong; Eric T. Pierce; P. Grace Harrell; John Walsh; Andres F. Salazar-Gomez; Sydney S. Cash; Emad N. Eskandar; Veronica S. Weiner; Emery N. Brown; Patrick L. Purdon

Rhythmic oscillations shape cortical dynamics during active behavior, sleep, and general anesthesia. Cross-frequency phase-amplitude coupling is a prominent feature of cortical oscillations, but its role in organizing conscious and unconscious brain states is poorly understood. Using high-density EEG and intracranial electrocorticography during gradual induction of propofol general anesthesia in humans, we discovered a rapid drug-induced transition between distinct states with opposite phase-amplitude coupling and different cortical source distributions. One state occurs during unconsciousness and may be similar to sleep slow oscillations. A second state occurs at the loss or recovery of consciousness and resembles an enhanced slow cortical potential. These results provide objective electrophysiological landmarks of distinct unconscious brain states, and could be used to help improve EEG-based monitoring for general anesthesia.


Annals of the New York Academy of Sciences | 2009

Simultaneous electroencephalography and functional magnetic resonance imaging of general anesthesia.

Patrick L. Purdon; Eric T. Pierce; Giorgio Bonmassar; John Walsh; P. Grace Harrell; Jean Kwo; Daniel G. Deschler; Margaret Barlow; Rebecca C. Merhar; Camilo Lamus; Catherine M. Mullaly; Mary Sullivan; Sharon Maginnis; Debra Skoniecki; Helen-Anne Higgins; Emery N. Brown

It has been long appreciated that anesthetic drugs induce stereotyped changes in electroencephalogram (EEG), but the relationships between the EEG and underlying brain function remain poorly understood. Functional imaging methods including positron emission tomography (PET) and functional magnetic resonance imaging (fMRI), have become important tools for studying how anesthetic drugs act in the human brain to induce the state of general anesthesia. To date, no investigation has combined functional MRI with EEG to study general anesthesia. We report here a paradigm for conducting combined fMRI and EEG studies of human subjects under general anesthesia. We discuss the several technical and safety problems that must be solved to undertake this type of multimodal functional imaging and show combined recordings from a human subject. Combined fMRI and EEG exploits simultaneously the high spatial resolution of fMRI and the high temporal resolution of EEG. In addition, combined fMRI and EEG offers a direct way to relate established EEG patterns induced by general anesthesia to changes in neural activity in specific brain regions as measured by changes in fMRI blood oxygen level dependent (BOLD) signals.


Journal of Neuroscience Methods | 2014

Statistical modeling of behavioral dynamics during propofol-induced loss of consciousness.

Kin Foon Kevin Wong; Anne C. Smith; Eric T. Pierce; P. Grace Harrell; John Walsh; Andres F. Salazar-Gomez; Casie L. Tavares; Patrick L. Purdon; Emery N. Brown

BACKGROUND Accurate quantitative analysis of the changes in responses to external stimuli is crucial for characterizing the timing of loss and recovery of consciousness induced by anesthetic drugs. We studied induction and emergence from unconsciousness achieved by administering a computer-controlled infusion of propofol to ten human volunteers. We evaluated loss and recovery of consciousness by having subjects execute every 4s two interleaved computer delivered behavioral tasks: responding to verbal stimuli (neutral words or the subjects name), or less salient stimuli of auditory clicks. NEW METHOD We analyzed the data using state-space methods. For each stimulus type the observation model is a two-stage binomial model and the state model is two dimensional random walk in which one cognitive state governs the probability of responding and the second governs the probability of correctly responding given a response. We fit the model to the experimental data using Bayesian Monte Carlo methods. RESULTS During induction subjects lost responsiveness to less salient clicks before losing responsiveness to the more salient verbal stimuli. During emergence subjects regained responsiveness to the more salient verbal stimuli before regaining responsiveness to the less salient clicks. COMPARISON WITH EXISTING METHOD(S) The current state-space model is an extension of previous model used to analyze learning and behavioral performance. In this study, the probability of responding on each trial is obtained separately from the probability of behavioral performance. CONCLUSIONS Our analysis provides a principled quantitative approach for defining loss and recovery of consciousness in experimental studies of general anesthesia.


international conference of the ieee engineering in medicine and biology society | 2011

Robust time-varying multivariate coherence estimation: Application to electroencephalogram recordings during general anesthesia

Kin Foon Kevin Wong; Eran A. Mukamel; Andres Felipe Salazar; Eric T. Pierce; P. Grace Harrell; John Walsh; Aaron L. Sampson; Emery N. Brown; Patrick L. Purdon

Coherence analysis characterizes frequency-dependent covariance between signals, and is useful for multivariate oscillatory data often encountered in neuroscience. The global coherence provides a summary of coherent behavior in high-dimensional multivariate data by quantifying the concentration of variance in the first mode of an eigenvalue decomposition of the cross-spectral matrix. Practical application of this useful method is sensitive to noise, and can confound coherent activity in disparate neural populations or spatial locations that have a similar frequency structure. In this paper we describe two methodological enhancements to the global coherence procedure that increase robustness of the technique to noise, and that allow characterization of how power within specific coherent modes change through time.


PubMed Central | 2009

Simultaneous Electroencephalography and Functional Magnetic Resonance Imaging of General Anesthesia

Patrick L. Purdon; Eric T. Pierce; Giorgio Bonmassar; John Walsh; P. Grace Harrell; Jean Kwo; Daniel G. Deschler; Margaret Barlow; Rebecca C. Merhar; Camilo Lamus Garcia Herreros; Catherine M. Mullaly; Sharon Maginnis; Debra Skoniecki; Helen-Anne Higgins; Emery N. Brown


PMC | 2014

Statistical modeling of behavioral dynamics during propofol-induced loss of consciousness

Kin Foon Kevin Wong; Anne C. Smith; Eric T. Pierce; P. Grace Harrell; John Walsh; Casie L. Tavares; Patrick L. Purdon; Emery N. Brown; Andres F. Salazar-Gomez


PMC | 2011

Bayesian analysis of trinomial data in behavioral experiments and its application to human studies of general anesthesia

Patrick L. Purdon; Emery N. Brown; Kin Foon Kevin Wong; Anne C. Smith; Eric T. Pierce; P. Grace Harrell; John Walsh; Andres Felipe Salazar; Casie L. Tavares; Michael J. Prerau; Eran A. Mukamel; Aaron L. Sampson


PubMed Central | 2010

Dynamic Assessment of Baroreflex Control of Heart Rate During Induction of Propofol Anesthesia Using a Point Process Method

Zhe Chen; Patrick L. Purdon; P. Grace Harrell; Eric T. Pierce; John Walsh; Emery N. Brown; Riccardo Barbieri


IEEE | 2009

Linear and nonlinear quantification of respiratory sinus arrhythmia during propofol general anesthesia

Eric T. Pierce; P. Grace Harrell; John Walsh; Andres Felipe Salazar; Casie L. Tavares; Zhe Chen; Patrick L. Purdon; Emery N. Brown; Riccardo Barbieri


IEEE | 2009

Assessment of Baroreflex Control of Heart Rate During General Anesthesia Point Process Method

Eric T. Pierce; P. Grace Harrell; Zhe Chen; Patrick L. Purdon; Emery N. Brown; Riccardo Barbieri

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Emery N. Brown

Picower Institute for Learning and Memory

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Anne C. Smith

University of California

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