Literature DB >> 19502004

Bias, optimal linear estimation, and the differences between open-loop simulation and closed-loop performance of spiking-based brain-computer interface algorithms.

Steven M Chase1, Andrew B Schwartz, Robert E Kass.   

Abstract

The activity of dozens of simultaneously recorded neurons can be used to control the movement of a robotic arm or a cursor on a computer screen. This motor neural prosthetic technology has spurred an increased interest in the algorithms by which motor intention can be inferred. The simplest of these algorithms is the population vector algorithm (PVA), where the activity of each cell is used to weight a vector pointing in that neuron's preferred direction. Off-line, it is possible to show that more complicated algorithms, such as the optimal linear estimator (OLE), can yield substantial improvements in the accuracy of reconstructed hand movements over the PVA. We call this open-loop performance. In contrast, this performance difference may not be present in closed-loop, on-line control. The obvious difference between open and closed-loop control is the ability to adapt to the specifics of the decoder in use at the time. In order to predict performance gains that an algorithm may yield in closed-loop control, it is necessary to build a model that captures aspects of this adaptation process. Here we present a framework for modeling the closed-loop performance of the PVA and the OLE. Using both simulations and experiments, we show that (1) the performance gain with certain decoders can be far less extreme than predicted by off-line results, (2) that subjects are able to compensate for certain types of bias in decoders, and (3) that care must be taken to ensure that estimation error does not degrade the performance of theoretically optimal decoders.

Entities:  

Mesh:

Year:  2009        PMID: 19502004      PMCID: PMC2783655          DOI: 10.1016/j.neunet.2009.05.005

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  37 in total

1.  Real-time prediction of hand trajectory by ensembles of cortical neurons in primates.

Authors:  J Wessberg; C R Stambaugh; J D Kralik; P D Beck; M Laubach; J K Chapin; J Kim; S J Biggs; M A Srinivasan; M A Nicolelis
Journal:  Nature       Date:  2000-11-16       Impact factor: 49.962

2.  Learning of visuomotor transformations for vectorial planning of reaching trajectories.

Authors:  J W Krakauer; Z M Pine; M F Ghilardi; C Ghez
Journal:  J Neurosci       Date:  2000-12-01       Impact factor: 6.167

3.  Shrinkage estimators for covariance matrices.

Authors:  M J Daniels; R E Kass
Journal:  Biometrics       Date:  2001-12       Impact factor: 2.571

4.  Direct cortical control of 3D neuroprosthetic devices.

Authors:  Dawn M Taylor; Stephen I Helms Tillery; Andrew B Schwartz
Journal:  Science       Date:  2002-06-07       Impact factor: 47.728

5.  Divide-and-conquer approach for brain machine interfaces: nonlinear mixture of competitive linear models.

Authors:  Sung-Phil Kim; Justin C Sanchez; Deniz Erdogmus; Yadunandana N Rao; Johan Wessberg; Jose C Principe; Miguel Nicolelis
Journal:  Neural Netw       Date:  2003 Jun-Jul

6.  Cortical control of a prosthetic arm for self-feeding.

Authors:  Meel Velliste; Sagi Perel; M Chance Spalding; Andrew S Whitford; Andrew B Schwartz
Journal:  Nature       Date:  2008-05-28       Impact factor: 49.962

7.  Adaptation of arm trajectory during continuous drawing movements in different dynamic environments.

Authors:  Tamami Fukushi; James Ashe
Journal:  Exp Brain Res       Date:  2002-11-12       Impact factor: 1.972

8.  Instant neural control of a movement signal.

Authors:  Mijail D Serruya; Nicholas G Hatsopoulos; Liam Paninski; Matthew R Fellows; John P Donoghue
Journal:  Nature       Date:  2002-03-14       Impact factor: 49.962

9.  Primary motor cortex tuning to intended movement kinematics in humans with tetraplegia.

Authors:  Wilson Truccolo; Gerhard M Friehs; John P Donoghue; Leigh R Hochberg
Journal:  J Neurosci       Date:  2008-01-30       Impact factor: 6.167

10.  Decoding trajectories from posterior parietal cortex ensembles.

Authors:  Grant H Mulliken; Sam Musallam; Richard A Andersen
Journal:  J Neurosci       Date:  2008-11-26       Impact factor: 6.167

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  49 in total

1.  Behavioral and neural correlates of visuomotor adaptation observed through a brain-computer interface in primary motor cortex.

Authors:  Steven M Chase; Robert E Kass; Andrew B Schwartz
Journal:  J Neurophysiol       Date:  2012-04-11       Impact factor: 2.714

2.  Comparison of brain-computer interface decoding algorithms in open-loop and closed-loop control.

Authors:  Shinsuke Koyama; Steven M Chase; Andrew S Whitford; Meel Velliste; Andrew B Schwartz; Robert E Kass
Journal:  J Comput Neurosci       Date:  2009-11-11       Impact factor: 1.621

3.  The impact of command signal power distribution, processing delays, and speed scaling on neurally-controlled devices.

Authors:  A R Marathe; D M Taylor
Journal:  J Neural Eng       Date:  2015-07-14       Impact factor: 5.379

4.  A high performing brain-machine interface driven by low-frequency local field potentials alone and together with spikes.

Authors:  Sergey D Stavisky; Jonathan C Kao; Paul Nuyujukian; Stephen I Ryu; Krishna V Shenoy
Journal:  J Neural Eng       Date:  2015-05-06       Impact factor: 5.379

5.  Single-unit activity, threshold crossings, and local field potentials in motor cortex differentially encode reach kinematics.

Authors:  Sagi Perel; Patrick T Sadtler; Emily R Oby; Stephen I Ryu; Elizabeth C Tyler-Kabara; Aaron P Batista; Steven M Chase
Journal:  J Neurophysiol       Date:  2015-07-01       Impact factor: 2.714

6.  Distinct types of neural reorganization during long-term learning.

Authors:  Xiao Zhou; Rex N Tien; Sadhana Ravikumar; Steven M Chase
Journal:  J Neurophysiol       Date:  2019-02-06       Impact factor: 2.714

Review 7.  Physiological properties of brain-machine interface input signals.

Authors:  Marc W Slutzky; Robert D Flint
Journal:  J Neurophysiol       Date:  2017-06-14       Impact factor: 2.714

8.  Adaptive neuron-to-EMG decoder training for FES neuroprostheses.

Authors:  Christian Ethier; Daniel Acuna; Sara A Solla; Lee E Miller
Journal:  J Neural Eng       Date:  2016-06-01       Impact factor: 5.379

9.  Intention estimation in brain-machine interfaces.

Authors:  Joline M Fan; Paul Nuyujukian; Jonathan C Kao; Cynthia A Chestek; Stephen I Ryu; Krishna V Shenoy
Journal:  J Neural Eng       Date:  2014-02       Impact factor: 5.379

10.  Power-saving design opportunities for wireless intracortical brain-computer interfaces.

Authors:  Nir Even-Chen; Dante G Muratore; Sergey D Stavisky; Leigh R Hochberg; Jaimie M Henderson; Boris Murmann; Krishna V Shenoy
Journal:  Nat Biomed Eng       Date:  2020-08-03       Impact factor: 25.671

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