Making brain–machine interfaces robust to future neural variability
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David Sussillo | K. Shenoy | S. Ryu | S. Stavisky | J. Kao
[1] David Sussillo,et al. Making brain–machine interfaces robust to future neural variability , 2016, Nature Communications.
[2] Elad Alon,et al. Wireless Recording in the Peripheral Nervous System with Ultrasonic Neural Dust , 2016, Neuron.
[3] Henrik Zetterberg,et al. Neurofilament Light: A Dynamic Cross-Disease Fluid Biomarker for Neurodegeneration , 2016, Neuron.
[4] Nicolas Y. Masse,et al. Virtual typing by people with tetraplegia using a self-calibrating intracortical brain-computer interface , 2015, Science Translational Medicine.
[5] Anish A. Sarma,et al. Clinical translation of a high-performance neural prosthesis , 2015, Nature Medicine.
[6] Sagi Perel,et al. Single-unit activity, threshold crossings, and local field potentials in motor cortex differentially encode reach kinematics. , 2015, Journal of neurophysiology.
[7] Nicolas Y. Masse,et al. Neural Point-and-Click Communication by a Person With Incomplete Locked-In Syndrome , 2015, Neurorehabilitation and neural repair.
[8] R. Andersen,et al. Decoding motor imagery from the posterior parietal cortex of a tetraplegic human , 2015, Science.
[9] Paul Nuyujukian,et al. A high performing brain–machine interface driven by low-frequency local field potentials alone and together with spikes , 2015, bioRxiv.
[10] M L Boninger,et al. Ten-dimensional anthropomorphic arm control in a human brain−machine interface: difficulties, solutions, and limitations , 2015, Journal of neural engineering.
[11] Vikash Gilja,et al. Comparison of spike sorting and thresholding of voltage waveforms for intracortical brain–machine interface performance , 2015, Journal of neural engineering.
[12] Stephen I. Ryu,et al. A High-Performance Keyboard Neural Prosthesis Enabled by Task Optimization , 2015, IEEE Transactions on Biomedical Engineering.
[13] Krishna V. Shenoy,et al. Combining Decoder Design and Neural Adaptation in Brain-Machine Interfaces , 2014, Neuron.
[14] Paul Nuyujukian,et al. Performance sustaining intracortical neural prostheses , 2014, Journal of neural engineering.
[15] Jose M. Carmena,et al. Closed-Loop Decoder Adaptation Shapes Neural Plasticity for Skillful Neuroprosthetic Control , 2014, Neuron.
[16] Shaomin Zhang,et al. Reliability of directional information in unsorted spikes and local field potentials recorded in human motor cortex , 2014, Journal of neural engineering.
[17] Krishna V. Shenoy,et al. Information Systems Opportunities in Brain–Machine Interface Decoders , 2014, Proceedings of the IEEE.
[18] Byron M. Yu,et al. Self-recalibrating classifiers for intracortical brain–computer interfaces , 2014, Journal of neural engineering.
[19] Kelvin So,et al. Subject-specific modulation of local field potential spectral power during brain–machine interface control in primates , 2014, Journal of neural engineering.
[20] Matthew T. Kaufman,et al. Supplementary materials for : Cortical activity in the null space : permitting preparation without movement , 2014 .
[21] Justin C. Sanchez,et al. Using Reinforcement Learning to Provide Stable Brain-Machine Interface Control Despite Neural Input Reorganization , 2014, PloS one.
[22] Paul Nuyujukian,et al. Intention estimation in brain–machine interfaces , 2014, Journal of neural engineering.
[23] J. Donoghue,et al. Failure mode analysis of silicon-based intracortical microelectrode arrays in non-human primates , 2013, Journal of neural engineering.
[24] Robert D Flint,et al. Long term, stable brain machine interface performance using local field potentials and multiunit spikes , 2013, Journal of neural engineering.
[25] Mark L. Homer,et al. Sensors and decoding for intracortical brain computer interfaces. , 2013, Annual review of biomedical engineering.
[26] Nicolas Y. Masse,et al. Advantages of closed-loop calibration in intracortical brain–computer interfaces for people with tetraplegia , 2013, Journal of neural engineering.
[27] Surya Ganguli,et al. Investigating the role of firing-rate normalization and dimensionality reduction in brain-machine interface robustness , 2013, 2013 35th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).
[28] Gerhard Friehs,et al. Intra-day signal instabilities affect decoding performance in an intracortical neural interface system , 2013, Journal of neural engineering.
[29] A. Schwartz,et al. High-performance neuroprosthetic control by an individual with tetraplegia , 2013, The Lancet.
[30] Michael L Boninger,et al. Functional priorities, assistive technology, and brain-computer interfaces after spinal cord injury. , 2013, Journal of rehabilitation research and development.
[31] John P. Cunningham,et al. A High-Performance Neural Prosthesis Enabled by Control Algorithm Design , 2012, Nature Neuroscience.
[32] Nitish Srivastava,et al. Improving neural networks by preventing co-adaptation of feature detectors , 2012, ArXiv.
[33] Robert D Flint,et al. Local field potentials allow accurate decoding of muscle activity. , 2012, Journal of neurophysiology.
[34] Nicolas Y. Masse,et al. Reach and grasp by people with tetraplegia using a neurally controlled robotic arm , 2012, Nature.
[35] David Sussillo,et al. A recurrent neural network for closed-loop intracortical brain–machine interface decoders , 2012, Journal of neural engineering.
[36] Miguel A. L. Nicolelis,et al. Adaptive Decoding for Brain-Machine Interfaces Through Bayesian Parameter Updates , 2011, Neural Computation.
[37] Krishna V. Shenoy,et al. Monkey models for brain-machine interfaces: The need for maintaining diversity , 2011, 2011 Annual International Conference of the IEEE Engineering in Medicine and Biology Society.
[38] J. Huggins,et al. What would brain-computer interface users want? Opinions and priorities of potential users with amyotrophic lateral sclerosis , 2011, Amyotrophic lateral sclerosis : official publication of the World Federation of Neurology Research Group on Motor Neuron Diseases.
[39] Vikash Gilja,et al. Long-term Stability of Neural Prosthetic Control Signals from Silicon Cortical Arrays in Rhesus Macaque Motor Cortex , 2010 .
[40] Vikash Gilja,et al. A closed-loop human simulator for investigating the role of feedback control in brain-machine interfaces. , 2011, Journal of neurophysiology.
[41] Michael J. Black,et al. Neural control of cursor trajectory and click by a human with tetraplegia 1000 days after implant of an intracortical microelectrode array , 2011 .
[42] Justin C. Sanchez,et al. A Symbiotic Brain-Machine Interface through Value-Based Decision Making , 2011, PloS one.
[43] Nicholas G Hatsopoulos,et al. Incorporating Feedback from Multiple Sensory Modalities Enhances Brain–Machine Interface Control , 2010, The Journal of Neuroscience.
[44] Robert E. Kass,et al. Comparison of brain–computer interface decoding algorithms in open-loop and closed-loop control , 2010, Journal of Computational Neuroscience.
[45] Robert E. Kass,et al. 2009 Special Issue: Bias, optimal linear estimation, and the differences between open-loop simulation and closed-loop performance of spiking-based brain-computer interface algorithms , 2009 .
[46] Steven M Chase,et al. Control of a brain–computer interface without spike sorting , 2009, Journal of neural engineering.
[47] J. Carmena,et al. Emergence of a Stable Cortical Map for Neuroprosthetic Control , 2009, PLoS biology.
[48] José Carlos Príncipe,et al. Coadaptive Brain–Machine Interface via Reinforcement Learning , 2009, IEEE Transactions on Biomedical Engineering.
[49] Eilon Vaadia,et al. Kernel-ARMA for Hand Tracking and Brain-Machine interfacing During 3D Motor Control , 2008, NIPS.
[50] Michael J. Black,et al. Neural control of computer cursor velocity by decoding motor cortical spiking activity in humans with tetraplegia , 2008, Journal of neural engineering.
[51] Wei Wu,et al. Real-Time Decoding of Nonstationary Neural Activity in Motor Cortex , 2008, IEEE Transactions on Neural Systems and Rehabilitation Engineering.
[52] John P. Cunningham,et al. Single-Neuron Stability during Repeated Reaching in Macaque Premotor Cortex , 2007, The Journal of Neuroscience.
[53] Uri T Eden,et al. General-purpose filter design for neural prosthetic devices. , 2007, Journal of neurophysiology.
[54] Eran Stark,et al. Predicting Movement from Multiunit Activity , 2007, The Journal of Neuroscience.
[55] K. Shenoy,et al. Temporal complexity and heterogeneity of single-neuron activity in premotor and motor cortex. , 2007, Journal of neurophysiology.
[56] C. Koch,et al. On the origin of the extracellular action potential waveform: A modeling study. , 2006, Journal of neurophysiology.
[57] J. Kalaska,et al. Differential relation of discharge in primary motor cortex and premotor cortex to movements versus actively maintained postures during a reaching task , 1996, Experimental Brain Research.
[58] Merico E. Argentati,et al. Principal Angles between Subspaces in an A-Based Scalar Product: Algorithms and Perturbation Estimates , 2001, SIAM J. Sci. Comput..
[59] Wei Wu,et al. Neural Decoding of Cursor Motion Using a Kalman Filter , 2002, NIPS.
[60] J. Kalaska,et al. Covariation of primate dorsal premotor cell activity with direction and amplitude during a memorized-delay reaching task. , 2000, Journal of neurophysiology.
[61] S. Wise,et al. Changes in motor cortical activity during visuomotor adaptation , 1998, Experimental Brain Research.
[62] Jürgen Schmidhuber,et al. Long Short-Term Memory , 1997, Neural Computation.
[63] A. Riehle,et al. Monkey primary motor and premotor cortex: single-cell activity related to prior information about direction and extent of an intended movement. , 1989, Journal of neurophysiology.
[64] A. P. Georgopoulos,et al. Primate motor cortex and free arm movements to visual targets in three- dimensional space. I. Relations between single cell discharge and direction of movement , 1988, The Journal of neuroscience : the official journal of the Society for Neuroscience.