This application for """"""""Neurotechnology Research, Development, and Enhancement"""""""" (PA-04-006) proposes the development of innovative technologies, methodologies, and instrumentation to advance our understanding of neural control mechanisms of muscle force production through a non-invasive means of recording neuronal firing patterns. The project will develop an automatic system to accurately and quickly decompose the surface Electromyographic (sEMG) signal into its constituent action potentials and provide the timing of the firings of concurrently active motor units. The goal is to achieve an accuracy of >85% in the automatic mode and >96% with the assistance of an interactive editor. This information will enable a wide range of studies to investigate the workings of the healthy and diseased neuromuscular system by simply placing a sensor above a muscle with no assault to the CNS. The sEMG Decomposition System will replace existing technology that relies on invasive procedures to detect the EMG signal through needle or fine-wire electrodes. The proposed work includes: 1) mathematical modeling and empirical studies to develop a sEMG electrode array that maximizes shape differences of motor unit firings and thereby facilitates sEMG signal decomposition; 2) algorithm development using artificial intelligence technology of our own design combined with Principal Component Analysis techniques; and 3) data acquisition/processing software and hardware to build a portable prototype surface decomposition system. Performance testing of the system will be conducted using data collection experiments to ensure that the system is comparable in motor unit yield, processing speed, and accuracy to the current state-of-the art indwelling decomposition system. We will also prove that the signal decomposition is performed correctly by decomposing two separately collected signals and matching the results. A dissemination plan is included to make this technology available to the Motor Control community. Commercialization will be realized through Altec Inc. This technology will enable researchers in the fields of Motor Control, Aging, Exercise Physiology, Space Medicine, and Ergonomics, where it is of interest to understand how the CNS controls muscles, and how that control is altered as a consequence of aging, exercise, exposure to microgravity, fatigue, and excessive and prolonged force production. It will be useful to clinicians for assessing the degree of dysfunction in upper motoneuron diseases such as Cerebral Palsy, Parkinson's Disease, ALS, Stroke, and other disorders. ? ? ? ?

Agency
National Institute of Health (NIH)
Institute
National Institute of Neurological Disorders and Stroke (NINDS)
Type
Research Project (R01)
Project #
5R01NS058250-03
Application #
7489322
Study Section
Motor Function, Speech and Rehabilitation Study Section (MFSR)
Program Officer
Gnadt, James W
Project Start
2006-09-01
Project End
2010-08-31
Budget Start
2008-09-01
Budget End
2009-08-31
Support Year
3
Fiscal Year
2008
Total Cost
$455,129
Indirect Cost
Name
Altec, Inc.
Department
Type
DUNS #
011279168
City
Boston
State
MA
Country
United States
Zip Code
02215
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De Luca, C J; Kline, J C (2012) Influence of proprioceptive feedback on the firing rate and recruitment of motoneurons. J Neural Eng 9:016007
De Luca, Carlo J; Contessa, Paola (2012) Hierarchical control of motor units in voluntary contractions. J Neurophysiol 107:178-95
Contessa, P; Nawab, S H; De Luca, C J (2011) A model of motoneuron behavior and muscle-force generation for sustained isometric contractions. Conf Proc IEEE Eng Med Biol Soc 2011:4072-5
De Luca, Carlo J; Hostage, Emily C (2010) Relationship between firing rate and recruitment threshold of motoneurons in voluntary isometric contractions. J Neurophysiol 104:1034-46
Nawab, S Hamid; Chang, Shey-Sheen; De Luca, Carlo J (2010) High-yield decomposition of surface EMG signals. Clin Neurophysiol 121:1602-15
Nawab, S Hamid; Chang, Shey-Sheen; De Luca, Carlo J (2009) Surface EMG signal decomposition using empirically sustainable biosignal separation principles. Conf Proc IEEE Eng Med Biol Soc 2009:4986-9
Lee, Jin; Adam, Alexander; De Luca, Carlo J (2008) A simulation study for a surface EMG sensor that detects distinguishable motor unit action potentials. J Neurosci Methods 168:54-63