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Dive into the research topics where Katie Z. Zhuang is active.

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Featured researches published by Katie Z. Zhuang.


Nature | 2011

Active tactile exploration using a brain-machine-brain interface

Joseph E. O’Doherty; Mikhail A. Lebedev; Peter J. Ifft; Katie Z. Zhuang; Solaiman Shokur; Hannes Bleuler; Miguel A. L. Nicolelis

Brain–machine interfaces use neuronal activity recorded from the brain to establish direct communication with external actuators, such as prosthetic arms. It is hoped that brain–machine interfaces can be used to restore the normal sensorimotor functions of the limbs, but so far they have lacked tactile sensation. Here we report the operation of a brain–machine–brain interface (BMBI) that both controls the exploratory reaching movements of an actuator and allows signalling of artificial tactile feedback through intracortical microstimulation (ICMS) of the primary somatosensory cortex. Monkeys performed an active exploration task in which an actuator (a computer cursor or a virtual-reality arm) was moved using a BMBI that derived motor commands from neuronal ensemble activity recorded in the primary motor cortex. ICMS feedback occurred whenever the actuator touched virtual objects. Temporal patterns of ICMS encoded the artificial tactile properties of each object. Neuronal recordings and ICMS epochs were temporally multiplexed to avoid interference. Two monkeys operated this BMBI to search for and distinguish one of three visually identical objects, using the virtual-reality arm to identify the unique artificial texture associated with each. These results suggest that clinical motor neuroprostheses might benefit from the addition of ICMS feedback to generate artificial somatic perceptions associated with mechanical, robotic or even virtual prostheses.


Nature Methods | 2014

Chronic, wireless recordings of large-scale brain activity in freely moving rhesus monkeys

David Schwarz; Mikhail A. Lebedev; Timothy L. Hanson; Dragan F. Dimitrov; Gary Lehew; Jim Meloy; Sankaranarayani Rajangam; Vivek Subramanian; Peter J. Ifft; Zheng Li; Arjun Ramakrishnan; Andrew Tate; Katie Z. Zhuang; Miguel A. L. Nicolelis

Advances in techniques for recording large-scale brain activity contribute to both the elucidation of neurophysiological principles and the development of brain-machine interfaces (BMIs). Here we describe a neurophysiological paradigm for performing tethered and wireless large-scale recordings based on movable volumetric three-dimensional (3D) multielectrode implants. This approach allowed us to isolate up to 1,800 neurons (units) per animal and simultaneously record the extracellular activity of close to 500 cortical neurons, distributed across multiple cortical areas, in freely behaving rhesus monkeys. The method is expandable, in principle, to thousands of simultaneously recorded channels. It also allows increased recording longevity (5 consecutive years) and recording of a broad range of behaviors, such as social interactions, and BMI paradigms in freely moving primates. We propose that wireless large-scale recordings could have a profound impact on basic primate neurophysiology research while providing a framework for the development and testing of clinically relevant neuroprostheses.


Clinics | 2011

Future developments in brain-machine interface research

Mikhail A. Lebedev; Andrew Tate; Timothy L. Hanson; Zheng Li; Joseph E. O'Doherty; Jesse A. Winans; Peter J. Ifft; Katie Z. Zhuang; Nathan A. Fitzsimmons; David Schwarz; Andrew M. Fuller; Je Hi An; Miguel A. L. Nicolelis

Neuroprosthetic devices based on brain-machine interface technology hold promise for the restoration of body mobility in patients suffering from devastating motor deficits caused by brain injury, neurologic diseases and limb loss. During the last decade, considerable progress has been achieved in this multidisciplinary research, mainly in the brain-machine interface that enacts upper-limb functionality. However, a considerable number of problems need to be resolved before fully functional limb neuroprostheses can be built. To move towards developing neuroprosthetic devices for humans, brain-machine interface research has to address a number of issues related to improving the quality of neuronal recordings, achieving stable, long-term performance, and extending the brain-machine interface approach to a broad range of motor and sensory functions. Here, we review the future steps that are part of the strategic plan of the Duke University Center for Neuroengineering, and its partners, the Brazilian National Institute of Brain-Machine Interfaces and the École Polytechnique Fédérale de Lausanne (EPFL) Center for Neuroprosthetics, to bring this new technology to clinical fruition.


Scientific Reports | 2015

Computing Arm Movements with a Monkey Brainet

Arjun Ramakrishnan; Peter J. Ifft; Miguel Pais-Vieira; Yoon Woo Byun; Katie Z. Zhuang; Mikhail A. Lebedev; Miguel A. L. Nicolelis

Traditionally, brain-machine interfaces (BMIs) extract motor commands from a single brain to control the movements of artificial devices. Here, we introduce a Brainet that utilizes very-large-scale brain activity (VLSBA) from two (B2) or three (B3) nonhuman primates to engage in a common motor behaviour. A B2 generated 2D movements of an avatar arm where each monkey contributed equally to X and Y coordinates; or one monkey fully controlled the X-coordinate and the other controlled the Y-coordinate. A B3 produced arm movements in 3D space, while each monkey generated movements in 2D subspaces (X-Y, Y-Z, or X-Z). With long-term training we observed increased coordination of behavior, increased correlations in neuronal activity between different brains, and modifications to neuronal representation of the motor plan. Overall, performance of the Brainet improved owing to collective monkey behaviour. These results suggest that primate brains can be integrated into a Brainet, which self-adapts to achieve a common motor goal.


Journal of Neurophysiology | 2014

Joint cross-correlation analysis reveals complex, time-dependent functional relationship between cortical neurons and arm electromyograms

Katie Z. Zhuang; Mikhail A. Lebedev; Miguel A. L. Nicolelis

Correlation between cortical activity and electromyographic (EMG) activity of limb muscles has long been a subject of neurophysiological studies, especially in terms of corticospinal connectivity. Interest in this issue has recently increased due to the development of brain-machine interfaces with output signals that mimic muscle force. For this study, three monkeys were implanted with multielectrode arrays in multiple cortical areas. One monkey performed self-timed touch pad presses, whereas the other two executed arm reaching movements. We analyzed the dynamic relationship between cortical neuronal activity and arm EMGs using a joint cross-correlation (JCC) analysis that evaluated trial-by-trial correlation as a function of time intervals within a trial. JCCs revealed transient correlations between the EMGs of multiple muscles and neural activity in motor, premotor and somatosensory cortical areas. Matching results were obtained using spike-triggered averages corrected by subtracting trial-shuffled data. Compared with spike-triggered averages, JCCs more readily revealed dynamic changes in cortico-EMG correlations. JCCs showed that correlation peaks often sharpened around movement times and broadened during delay intervals. Furthermore, JCC patterns were directionally selective for the arm-reaching task. We propose that such highly dynamic, task-dependent and distributed relationships between cortical activity and EMGs should be taken into consideration for future brain-machine interfaces that generate EMG-like signals.


IEEE Transactions on Neural Systems and Rehabilitation Engineering | 2017

EXiO—A Brain-Controlled Lower Limb Exoskeleton for Rhesus Macaques

Tristan Vouga; Katie Z. Zhuang; Jeremy Olivier; Mikhail A. Lebedev; Miguel A. L. Nicolelis; Mohamed Bouri; Hannes Bleuler


Archive | 2015

and its contribution to generalizable EMG predictions Movement representation in the primary motor cortex

Christian Ethier; Lee E. Miller; Katie Z. Zhuang; Mikhail A. Lebedev; Miguel A. L. Nicolelis; Touria Addou; Nedialko I. Krouchev; John F. Kalaska; Aaron J. Suminski; Philip Mardoum; Timothy P. Lillicrap; Nicholas G. Hatsopoulos


Archive | 2015

Movementsc Activity During Skilled Finger Synchrony Effects in Spike-Triggered Averages of A Spectrum From Pure Post-Spike Effects to

Gil Rivlis; Sagi Perel; Andrew B. Schwartz; Valérie Ventura; Katie Z. Zhuang; Mikhail A. Lebedev; Miguel A. L. Nicolelis; Heather M. Hudson; Darcy M. Griffin; Abderraouf Belhaj-Saïf; Paul D. Cheney


Archive | 2015

Postspike Effects and Cell-Target Muscle Covariation Correlations Between Corticomotoneuronal (CM) Cell

Joanne K. Marcario; Jennifer Hill Karrer; Preston T. J. A. Williams; Sangsoo Kim; John H. Martin; Carl W. Luchies; Paul D. Cheney; Gustaf M. Van Acker; Sommer L. Amundsen; William G. Messamore; Hongyu Y. Zhang; Katie Z. Zhuang; Mikhail A. Lebedev; Miguel A. L. Nicolelis


Archive | 2015

Population Representation During Spiral Tracing Motor Cortical Activity During Drawing Movements

Andrew B. Schwartz; Katie Z. Zhuang; Mikhail A. Lebedev; Miguel A. L. Nicolelis; Touria Addou; Nedialko I. Krouchev; John F. Kalaska; Yaron Meirovitch; Hila Harris; Eran Dayan; Amos Arieli; Tamar Flash

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Mikhail A. Lebedev

National Institutes of Health

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Touria Addou

Université de Montréal

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