Literature DB >> 28626356

Pilot Study for Grip Force Prediction Using Neural Signals from Different Brain Regions.

Mohammad Bataineh1, David McNiel2, John Choi2, John Hessburg2, Joseph Francis1,2.   

Abstract

The design of brain machine interfaces (BMI) has been improving over the past decade. Such improvements have led to advanced capability in terms of restoring the functionality of a paralyzed/amputated limb and producing fine controlled movements of a robotic arm and hand. However, there is still more to be invested towards producing advanced BMI features such as producing appropriate forces when gripping and carrying an object using an artificial limb. This feature requires direct supervision and control from the brain to produce accurate results. Toward this goal, this work investigates the processing of neural signals from four brain regions in a nonhuman primate to predict maximum grip force. The signals received from each of the primary motor (M1) cortex, primary somatosensory (S1) cortex, dorsal premotor (PmD) cortex, and ventral premotor (PmV) cortex are used to build regression models to predict the applied maximum grip force. Comparisons of model prediction results are presented. The relative prediction accuracy from all brain regions would assist in further investigation to build robust approaches for controlling the force values. The brain regions and their interactions could eventually be summed in a weighted manner to complete the targeted approach.

Entities:  

Year:  2016        PMID: 28626356      PMCID: PMC5470728          DOI: 10.1109/SBEC.2016.12

Source DB:  PubMed          Journal:  Proc South Biomed Eng Conf        ISSN: 1086-4105


  7 in total

1.  Contrasting properties of monkey somatosensory and motor cortex neurons activated during the control of force in precision grip.

Authors:  T M Wannier; M A Maier; M C Hepp-Reymond
Journal:  J Neurophysiol       Date:  1991-03       Impact factor: 2.714

2.  Comparison of force and power generation patterns and their predictions under different external dynamic environments.

Authors:  Pratik Y Chhatbar; Joseph T Francis
Journal:  Annu Int Conf IEEE Eng Med Biol Soc       Date:  2010

3.  Toward an autonomous brain machine interface: integrating sensorimotor reward modulation and reinforcement learning.

Authors:  Brandi T Marsh; Venkata S Aditya Tarigoppula; Chen Chen; Joseph T Francis
Journal:  J Neurosci       Date:  2015-05-13       Impact factor: 6.167

4.  Combining decoder design and neural adaptation in brain-machine interfaces.

Authors:  Krishna V Shenoy; Jose M Carmena
Journal:  Neuron       Date:  2014-11-19       Impact factor: 17.173

5.  Towards a miniaturized brain-machine-spinal cord interface (BMSI) for restoration of function after spinal cord injury.

Authors:  Shahab Shahdoost; Shawn Frost; Gustaf Van Acker; Stacey DeJong; Caleb Dunham; Scott Barbay; Randolph Nudo; Pedram Mohseni
Journal:  Conf Proc IEEE Eng Med Biol Soc       Date:  2014

6.  A brain-machine interface enables bimanual arm movements in monkeys.

Authors:  Peter J Ifft; Solaiman Shokur; Zheng Li; Mikhail A Lebedev; Miguel A L Nicolelis
Journal:  Sci Transl Med       Date:  2013-11-06       Impact factor: 17.956

7.  Learning to control a brain-machine interface for reaching and grasping by primates.

Authors:  Jose M Carmena; Mikhail A Lebedev; Roy E Crist; Joseph E O'Doherty; David M Santucci; Dragan F Dimitrov; Parag G Patil; Craig S Henriquez; Miguel A L Nicolelis
Journal:  PLoS Biol       Date:  2003-10-13       Impact factor: 8.029

  7 in total

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