Implantable neural recording interface IC for motor prosthesis

Paralysis has impacted the lives of millions of people, limiting not just their movement and quality of lives but also their mental health. Cortical neural prosthetics is a possible way to cure and if not help these paralyzed patients—by capturing patients’ thought straight from their brain, then pr...

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Main Author: Liu, Lei
Other Authors: Je Minkyu
Format: Theses and Dissertations
Language:English
Published: 2014
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Online Access:https://hdl.handle.net/10356/61742
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Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-61742
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Electrical and electronic engineering::Electronic circuits
spellingShingle DRNTU::Engineering::Electrical and electronic engineering::Electronic circuits
Liu, Lei
Implantable neural recording interface IC for motor prosthesis
description Paralysis has impacted the lives of millions of people, limiting not just their movement and quality of lives but also their mental health. Cortical neural prosthetics is a possible way to cure and if not help these paralyzed patients—by capturing patients’ thought straight from their brain, then processing the information and translating them to electronic control signals to the assistive technologies such as computer interfaces, robotic arms and nerve stimulators. By using these implantable microelectromechanical system (MEMS) electrode arrays that are implanted into the brain, researchers are able to watch the simultaneous activities of many neurons, to understand and appreciate the brain functions. The immediate mission of this research is hence to record neural signals from the human brain, not just adequately but appropriately. In the design of neural recording interface, the neural amplifier must have an input-referred noise that is low enough to detect the weak neural signals, and the power dissipation needs to be ultra-low to avoid tissue damage. Thus, the trade-off between noise and power becomes very important. A noise efficiency factor (NEF) is used to evaluate this trade-off and a lower NEF means better noise-power trade-off. Based on the proposed noise reduction technique, the low noise front-end amplifier developed in this design is able to achieve less than 4 µVrms noise with about 1 µW power consumption over a 5-kHz signal bandwidth. The NEF of the front-end amplifiers developed ranges from 2.2 to 3.6, which are among the lowest reported to-date. Balanced MOS-bipolar active pseudo-resistor structure has been adopted in the neural recording amplifiers to realize the ultra-low high-pass cutoff frequency and good signal linearity. For chronic neural recording, the impedance of the implanted electrode interface with the tissue will increase with time, which must be considered during neural recording amplifier design because the amplifier interfaces directly with the electrode. To further enhance the recording quality of the neural amplifier, another impedance-boosting neural amplifier is developed to boost the input impedance of the amplifier by ten times, which greatly removes the interference arise from the electrode mismatch. The signal to noise ratio does not degrade much even with long term neural recording, and the reliability of the neural recording system is demonstrated to be better than the classic design represented by Harrison’s work. Multi-channel recording is essential because a good amount of useful information can be simultaneously recorded from a large population of neuronal cells and their networks to enable more robust and sophisticated control of prosthetic devices. A 100-channel neural recording interface integrated circuit (IC) is fabricated and verified through hardware measurements. To further reduce the overall power consumption of the neural implant, a neural recording interface IC intended for simultaneous neural recording with action potential (AP) detection for data compression in wireless multichannel neural implants is presented. The proposed neural recording interface IC detects the neural spikes and sends only the preserved AP information for wireless transmission in order to reduce the overall power consumption. Wireless transmission of the recorded neural signal waveform is enabled only during the presence of neural spikes, and hence, the data rate can be effectively reduced by more than ten times when compared to the conventional wireless neural recording system. Furthermore, the complete neural AP information can be securely preserved with adaptive AP recording windows.
author2 Je Minkyu
author_facet Je Minkyu
Liu, Lei
format Theses and Dissertations
author Liu, Lei
author_sort Liu, Lei
title Implantable neural recording interface IC for motor prosthesis
title_short Implantable neural recording interface IC for motor prosthesis
title_full Implantable neural recording interface IC for motor prosthesis
title_fullStr Implantable neural recording interface IC for motor prosthesis
title_full_unstemmed Implantable neural recording interface IC for motor prosthesis
title_sort implantable neural recording interface ic for motor prosthesis
publishDate 2014
url https://hdl.handle.net/10356/61742
_version_ 1772826067848921088
spelling sg-ntu-dr.10356-617422023-07-04T17:12:59Z Implantable neural recording interface IC for motor prosthesis Liu, Lei Je Minkyu Goh Wang Ling School of Electrical and Electronic Engineering A*STAR Institute of Microelectronics Centre for Integrated Circuits and Systems DRNTU::Engineering::Electrical and electronic engineering::Electronic circuits Paralysis has impacted the lives of millions of people, limiting not just their movement and quality of lives but also their mental health. Cortical neural prosthetics is a possible way to cure and if not help these paralyzed patients—by capturing patients’ thought straight from their brain, then processing the information and translating them to electronic control signals to the assistive technologies such as computer interfaces, robotic arms and nerve stimulators. By using these implantable microelectromechanical system (MEMS) electrode arrays that are implanted into the brain, researchers are able to watch the simultaneous activities of many neurons, to understand and appreciate the brain functions. The immediate mission of this research is hence to record neural signals from the human brain, not just adequately but appropriately. In the design of neural recording interface, the neural amplifier must have an input-referred noise that is low enough to detect the weak neural signals, and the power dissipation needs to be ultra-low to avoid tissue damage. Thus, the trade-off between noise and power becomes very important. A noise efficiency factor (NEF) is used to evaluate this trade-off and a lower NEF means better noise-power trade-off. Based on the proposed noise reduction technique, the low noise front-end amplifier developed in this design is able to achieve less than 4 µVrms noise with about 1 µW power consumption over a 5-kHz signal bandwidth. The NEF of the front-end amplifiers developed ranges from 2.2 to 3.6, which are among the lowest reported to-date. Balanced MOS-bipolar active pseudo-resistor structure has been adopted in the neural recording amplifiers to realize the ultra-low high-pass cutoff frequency and good signal linearity. For chronic neural recording, the impedance of the implanted electrode interface with the tissue will increase with time, which must be considered during neural recording amplifier design because the amplifier interfaces directly with the electrode. To further enhance the recording quality of the neural amplifier, another impedance-boosting neural amplifier is developed to boost the input impedance of the amplifier by ten times, which greatly removes the interference arise from the electrode mismatch. The signal to noise ratio does not degrade much even with long term neural recording, and the reliability of the neural recording system is demonstrated to be better than the classic design represented by Harrison’s work. Multi-channel recording is essential because a good amount of useful information can be simultaneously recorded from a large population of neuronal cells and their networks to enable more robust and sophisticated control of prosthetic devices. A 100-channel neural recording interface integrated circuit (IC) is fabricated and verified through hardware measurements. To further reduce the overall power consumption of the neural implant, a neural recording interface IC intended for simultaneous neural recording with action potential (AP) detection for data compression in wireless multichannel neural implants is presented. The proposed neural recording interface IC detects the neural spikes and sends only the preserved AP information for wireless transmission in order to reduce the overall power consumption. Wireless transmission of the recorded neural signal waveform is enabled only during the presence of neural spikes, and hence, the data rate can be effectively reduced by more than ten times when compared to the conventional wireless neural recording system. Furthermore, the complete neural AP information can be securely preserved with adaptive AP recording windows. DOCTOR OF PHILOSOPHY (EEE) 2014-09-12T02:14:58Z 2014-09-12T02:14:58Z 2014 2014 Thesis Liu, L. (2014). Implantable neural recording interface IC for motor prosthesis. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/61742 10.32657/10356/61742 en 160 p. application/pdf