Literature DB >> 26170261

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

A R Marathe1, D M Taylor.   

Abstract

OBJECTIVE: Decoding algorithms for brain-machine interfacing (BMI) are typically only optimized to reduce the magnitude of decoding errors. Our goal was to systematically quantify how four characteristics of BMI command signals impact closed-loop performance: (1) error magnitude, (2) distribution of different frequency components in the decoding errors, (3) processing delays, and (4) command gain. APPROACH: To systematically evaluate these different command features and their interactions, we used a closed-loop BMI simulator where human subjects used their own wrist movements to command the motion of a cursor to targets on a computer screen. Random noise with three different power distributions and four different relative magnitudes was added to the ongoing cursor motion in real time to simulate imperfect decoding. These error characteristics were tested with four different visual feedback delays and two velocity gains. MAIN
RESULTS: Participants had significantly more trouble correcting for errors with a larger proportion of low-frequency, slow-time-varying components than they did with jittery, higher-frequency errors, even when the error magnitudes were equivalent. When errors were present, a movement delay often increased the time needed to complete the movement by an order of magnitude more than the delay itself. Scaling down the overall speed of the velocity command can actually speed up target acquisition time when low-frequency errors and delays are present. SIGNIFICANCE: This study is the first to systematically evaluate how the combination of these four key command signal features (including the relatively-unexplored error power distribution) and their interactions impact closed-loop performance independent of any specific decoding method. The equations we derive relating closed-loop movement performance to these command characteristics can provide guidance on how best to balance these different factors when designing BMI systems. The equations reported here also provide an efficient way to compare a diverse range of decoding options offline.

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Mesh:

Year:  2015        PMID: 26170261      PMCID: PMC4547796          DOI: 10.1088/1741-2560/12/4/046031

Source DB:  PubMed          Journal:  J Neural Eng        ISSN: 1741-2552            Impact factor:   5.379


  29 in total

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Authors:  Steven M Chase; Robert E Kass; Andrew B Schwartz
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2.  Functional network reorganization during learning in a brain-computer interface paradigm.

Authors:  Beata Jarosiewicz; Steven M Chase; George W Fraser; Meel Velliste; Robert E Kass; Andrew B Schwartz
Journal:  Proc Natl Acad Sci U S A       Date:  2008-12-01       Impact factor: 11.205

3.  Real-time decoding of nonstationary neural activity in motor cortex.

Authors:  Wei Wu; Nicholas G Hatsopoulos
Journal:  IEEE Trans Neural Syst Rehabil Eng       Date:  2008-06       Impact factor: 3.802

4.  Decoding position, velocity, or goal: does it matter for brain-machine interfaces?

Authors:  A R Marathe; D M Taylor
Journal:  J Neural Eng       Date:  2011-03-24       Impact factor: 5.379

5.  A closed-loop human simulator for investigating the role of feedback control in brain-machine interfaces.

Authors:  John P Cunningham; Paul Nuyujukian; Vikash Gilja; Cindy A Chestek; Stephen I Ryu; Krishna V Shenoy
Journal:  J Neurophysiol       Date:  2010-10-13       Impact factor: 2.714

6.  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

7.  Decoding continuous limb movements from high-density epidural electrode arrays using custom spatial filters.

Authors:  A R Marathe; D M Taylor
Journal:  J Neural Eng       Date:  2013-04-23       Impact factor: 5.379

8.  Internal models engaged by brain-computer interface control.

Authors:  Matthew D Golub; Byron M Yu; Steven M Chase
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2012

9.  Humans use continuous visual feedback from the hand to control fast reaching movements.

Authors:  Jeffrey A Saunders; David C Knill
Journal:  Exp Brain Res       Date:  2003-08-06       Impact factor: 1.972

10.  Emergence of a stable cortical map for neuroprosthetic control.

Authors:  Karunesh Ganguly; Jose M Carmena
Journal:  PLoS Biol       Date:  2009-07-21       Impact factor: 8.029

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  6 in total

1.  A Comparison of Intention Estimation Methods for Decoder Calibration in Intracortical Brain-Computer Interfaces.

Authors:  Francis R Willett; Brian A Murphy; Daniel R Young; William D Memberg; Christine H Blabe; Chethan Pandarinath; Brian Franco; Jad Saab; Benjamin L Walter; Jennifer A Sweet; Jonathan P Miller; Jaimie M Henderson; Krishna V Shenoy; John D Simeral; Beata Jarosiewicz; Leigh R Hochberg; Robert F Kirsch; Abidemi Bolu Ajiboye
Journal:  IEEE Trans Biomed Eng       Date:  2017-12-14       Impact factor: 4.538

2.  Signal-independent noise in intracortical brain-computer interfaces causes movement time properties inconsistent with Fitts' law.

Authors:  Francis R Willett; Brian A Murphy; William D Memberg; Christine H Blabe; Chethan Pandarinath; Benjamin L Walter; Jennifer A Sweet; Jonathan P Miller; Jaimie M Henderson; Krishna V Shenoy; Leigh R Hochberg; Robert F Kirsch; A Bolu Ajiboye
Journal:  J Neural Eng       Date:  2017-02-08       Impact factor: 5.379

3.  Recursive Exponentially Weighted N-way Partial Least Squares Regression with Recursive-Validation of Hyper-Parameters in Brain-Computer Interface Applications.

Authors:  Andrey Eliseyev; Vincent Auboiroux; Thomas Costecalde; Lilia Langar; Guillaume Charvet; Corinne Mestais; Tetiana Aksenova; Alim-Louis Benabid
Journal:  Sci Rep       Date:  2017-11-24       Impact factor: 4.379

Review 4.  Data-Driven Transducer Design and Identification for Internally-Paced Motor Brain Computer Interfaces: A Review.

Authors:  Marie-Caroline Schaeffer; Tetiana Aksenova
Journal:  Front Neurosci       Date:  2018-08-15       Impact factor: 4.677

5.  Principled BCI Decoder Design and Parameter Selection Using a Feedback Control Model.

Authors:  Francis R Willett; Daniel R Young; Brian A Murphy; William D Memberg; Christine H Blabe; Chethan Pandarinath; Sergey D Stavisky; Paymon Rezaii; Jad Saab; Benjamin L Walter; Jennifer A Sweet; Jonathan P Miller; Jaimie M Henderson; Krishna V Shenoy; John D Simeral; Beata Jarosiewicz; Leigh R Hochberg; Robert F Kirsch; A Bolu Ajiboye
Journal:  Sci Rep       Date:  2019-06-20       Impact factor: 4.379

6.  Penalized Multi-Way Partial Least Squares for Smooth Trajectory Decoding from Electrocorticographic (ECoG) Recording.

Authors:  Andrey Eliseyev; Tetiana Aksenova
Journal:  PLoS One       Date:  2016-05-19       Impact factor: 3.240

  6 in total

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