Developing implant technologies and evaluating brain-machine interfaces using information theory

Brain-machine interfaces (BMIs) hold promise for restoring motor functions in severely paralyzed individuals. Invasive BMIs are capable of recording signals from individual neurons and typically provide the highest signal-to-noise ratio. Despite many efforts in the scientific community, BMI technolo...

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Main Author: Panko, Mikhail
Language:en_US
Published: 2016
Subjects:
Online Access:https://hdl.handle.net/2144/15341
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spelling ndltd-bu.edu-oai-open.bu.edu-2144-153412019-01-08T15:37:31Z Developing implant technologies and evaluating brain-machine interfaces using information theory Panko, Mikhail Neurosciences Utah array Brain-computer interface Brain-machine interface Information theory Information transfer rate Neurotrophic electrode Brain-machine interfaces (BMIs) hold promise for restoring motor functions in severely paralyzed individuals. Invasive BMIs are capable of recording signals from individual neurons and typically provide the highest signal-to-noise ratio. Despite many efforts in the scientific community, BMI technology is still not reliable enough for widespread clinical application. The most prominent challenges include biocompatibility, stability, longevity, and lack of good models for informed signal processing and BMI comparison. To address the problem of low signal quality of chronic probes, in the first part of the thesis one such design, the Neurotrophic Electrode, was modified by increasing its channel capacity to form a Neurotrophic Array (NA). Specifically, single wires were replaced with stereotrodes and the total number of recording wires was increased. This new array design was tested in a rhesus macaque performing a delayed saccade task. The NA recorded little single unit spiking activity, and its local field potentials (LFPs) correlated with presented visual stimuli and saccade locations better than did extracted spikes. The second part of the thesis compares the NA to the Utah Array (UA), the only other micro-array approved for chronic implantation in a human brain. The UA recorded significantly more spiking units, which had larger amplitudes than NA spikes. This was likely due to differences in the array geometry and construction. LFPs on the NA electrodes were more correlated with each other than those on the UA. These correlations negatively impacted the NA's information capacity when considering more than one recording site. The final part of this dissertation applies information theory to develop objective measures of BMI performance. Currently, decoder information transfer rate (ITR) is the most popular BMI information performance metric. However, it is limited by the selected decoding algorithm and does not represent the full task information embedded in the recorded neural signal. A review of existing methods to estimate ITR is presented, and these methods are interpreted within a BMI context. A novel Gaussian mixture Monte Carlo method is developed to produce good ITR estimates with a low number of trials and high number of dimensions, as is typical for BMI applications. 2016-03-29T14:58:26Z 2016-03-29T14:58:26Z 2014 2016-03-12T07:11:38Z Thesis/Dissertation https://hdl.handle.net/2144/15341 en_US
collection NDLTD
language en_US
sources NDLTD
topic Neurosciences
Utah array
Brain-computer interface
Brain-machine interface
Information theory
Information transfer rate
Neurotrophic electrode
spellingShingle Neurosciences
Utah array
Brain-computer interface
Brain-machine interface
Information theory
Information transfer rate
Neurotrophic electrode
Panko, Mikhail
Developing implant technologies and evaluating brain-machine interfaces using information theory
description Brain-machine interfaces (BMIs) hold promise for restoring motor functions in severely paralyzed individuals. Invasive BMIs are capable of recording signals from individual neurons and typically provide the highest signal-to-noise ratio. Despite many efforts in the scientific community, BMI technology is still not reliable enough for widespread clinical application. The most prominent challenges include biocompatibility, stability, longevity, and lack of good models for informed signal processing and BMI comparison. To address the problem of low signal quality of chronic probes, in the first part of the thesis one such design, the Neurotrophic Electrode, was modified by increasing its channel capacity to form a Neurotrophic Array (NA). Specifically, single wires were replaced with stereotrodes and the total number of recording wires was increased. This new array design was tested in a rhesus macaque performing a delayed saccade task. The NA recorded little single unit spiking activity, and its local field potentials (LFPs) correlated with presented visual stimuli and saccade locations better than did extracted spikes. The second part of the thesis compares the NA to the Utah Array (UA), the only other micro-array approved for chronic implantation in a human brain. The UA recorded significantly more spiking units, which had larger amplitudes than NA spikes. This was likely due to differences in the array geometry and construction. LFPs on the NA electrodes were more correlated with each other than those on the UA. These correlations negatively impacted the NA's information capacity when considering more than one recording site. The final part of this dissertation applies information theory to develop objective measures of BMI performance. Currently, decoder information transfer rate (ITR) is the most popular BMI information performance metric. However, it is limited by the selected decoding algorithm and does not represent the full task information embedded in the recorded neural signal. A review of existing methods to estimate ITR is presented, and these methods are interpreted within a BMI context. A novel Gaussian mixture Monte Carlo method is developed to produce good ITR estimates with a low number of trials and high number of dimensions, as is typical for BMI applications.
author Panko, Mikhail
author_facet Panko, Mikhail
author_sort Panko, Mikhail
title Developing implant technologies and evaluating brain-machine interfaces using information theory
title_short Developing implant technologies and evaluating brain-machine interfaces using information theory
title_full Developing implant technologies and evaluating brain-machine interfaces using information theory
title_fullStr Developing implant technologies and evaluating brain-machine interfaces using information theory
title_full_unstemmed Developing implant technologies and evaluating brain-machine interfaces using information theory
title_sort developing implant technologies and evaluating brain-machine interfaces using information theory
publishDate 2016
url https://hdl.handle.net/2144/15341
work_keys_str_mv AT pankomikhail developingimplanttechnologiesandevaluatingbrainmachineinterfacesusinginformationtheory
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