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DEVELOPMENT OF AN AUTOMATED NEURAL SPIKE DISCRIMINATOR

Award Information
Agency: Department of Health and Human Services
Branch: N/A
Contract: N/A
Agency Tracking Number: 16776
Amount: $49,980.00
Phase: Phase I
Program: SBIR
Solicitation Topic Code: N/A
Solicitation Number: N/A
Timeline
Solicitation Year: N/A
Award Year: 1991
Award Start Date (Proposal Award Date): N/A
Award End Date (Contract End Date): N/A
Small Business Information
13904 Grey Colt Dr
Gaitherburg, MD 20878
United States
DUNS: N/A
HUBZone Owned: No
Woman Owned: No
Socially and Economically Disadvantaged: No
Principal Investigator
 Xiaowei Wang
 (301) 972-7100
Business Contact
Phone: () -
Research Institution
N/A
Abstract

WITH THE INCREASING AVAILABILITY OF MULTICHANNEL EXTRACELLULAR MICROELECTRODE ARRAYS AND THE POTENTIALLY LARGE NUMBER OF SIMULTANEOUS RECORDINGS IN NEURAL SYSTEM STUDIES, DATA PROCESSING CAPABILITY AND CAPACITY ARE VERY IMPORTANT. AN AUTOMATED ON-LINE NEURAL SPIKE SEPARATION, SORTED DATA COLLECTION AND ANALYSIS SYSTEM MUST STRIKE A BALANCE BETWEEN PERFORMANCE, SPEED, AND HUMAN INTERVENTION. THE LONG-TERM OBJECTIVE OF THIS WORK IS TO COME UP WITH A COMMERCIAL AUTOMATED SYSTEM FOR IDENTIFICATION OF NEURAL NETWORK TOPOLOGY. THE OBJECTIVE IS TO DEVELOP AN AUTOMATED MULTI-CHANNEL HARDWARE SUBSYSTEM FOR DISCRIMINATION OF NEURAL SPIKES ON-LINE. IN THIS SUBSYSTEM, AN ALGORITHM USING THE HAAR TRANSFORM TECHNIQUE WILL PERFORM RELIABLE DETECTION AND CLASSIFICATION WITHOUT A PRIORI ASSUMPTIONS ABOUT SPIKE SHAPE AND TIMING. THIS ALGORITHM WILL BE TOTALLY AUTOMATED FROM LEARNING SPIKE WAVEFORMS TO CLASSIFYING SPIKES AND EXTENDED TO MULTI-CHANNEL MULTIUNIT DISCRIMINATION IN HARDWARE. THE SYSTEM WILL BE TESTED IN INVIVO EXPERIMENTS. THE DEVELOPMENT OF A MULTI-CHANNEL DISCRIMINATION AND ANALYSIS SYSTEM HAS THE POTENTIAL TO MAKE A GREAT IMPACT ON TRADITIONAL NEUROPHYSIOLOGY, BIOLOGICAL AND COMPUTATIONAL NEURAL NETWORK RESEARCH AND NEURAL CONTROL OF PROSTHETIC DEVICES. WITH THE INCREASING AVAILABILITY OF MULTICHANNEL EXTRACELLULAR MICROELECTRODE ARRAYS AND THE POTENTIALLY LARGE NUMBER OF SIMULTANEOUS RECORDINGS IN NEURAL SYSTEM STUDIES, DATA PROCESSING CAPABILITY AND CAPACITY ARE VERY IMPORTANT. AN AUTOMATED ON-LINE NEURAL SPIKE SEPARATION, SORTED DATA COLLECTION AND ANALYSIS SYSTEM MUST STRIKE A BALANCE BETWEEN PERFORMANCE, SPEED, AND HUMAN INTERVENTION. THE LONG-TERM OBJECTIVE OF THIS WORK IS TO COME UP WITH A COMMERCIAL AUTOMATED SYSTEM FOR IDENTIFICATION OF NEURAL NETWORK TOPOLOGY. THE OBJECTIVE IS TO DEVELOP AN AUTOMATED MULTI-CHANNEL HARDWARE SUBSYSTEM FOR DISCRIMINATION OF NEURAL SPIKES ON-LINE. IN THIS SUBSYSTEM, AN ALGORITHM USING THE HAAR TRANSFORM TECHNIQUE WILL PERFORM RELIABLE DETECTION AND CLASSIFICATION WITHOUT A PRIORI ASSUMPTIONS ABOUT SPIKE SHAPE AND TIMING. THIS ALGORITHM WILL BE TOTALLY AUTOMATED FROM LEARNING SPIKE WAVEFORMS TO CLASSIFYING SPIKES AND EXTENDED TO MULTI-CHANNEL MULTIUNIT DISCRIMINATION IN HARDWARE. THE SYSTEM WILL BE TESTED IN INVIVO EXPERIMENTS. THE DEVELOPMENT OF A MULTI-CHANNEL DISCRIMINATION AND ANALYSIS SYSTEM HAS THE POTENTIAL TO MAKE A GREAT IMPACT ON TRADITIONAL NEUROPHYSIOLOGY, BIOLOGICAL AND COMPUTATIONAL NEURAL NETWORK RESEARCH AND NEURAL CONTROL OF PROSTHETIC DEVICES.

* Information listed above is at the time of submission. *

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