Identification of Multiple-Input Systems with Highly Coupled Inputs: Application to EMG Prediction from Multiple Intracortical Electrodes
- 1 February 2006
- journal article
- Published by MIT Press in Neural Computation
- Vol. 18 (2) , 329-355
- https://doi.org/10.1162/089976606775093855
Abstract
A robust identification algorithm has been developed for linear, time-invariant, multiple-input single-output systems, with an emphasis on how this algorithm can be used to estimate the dynamic relationship between a set of neural recordings and related physiological signals. The identification algorithm provides a decomposition of the system output such that each component is uniquely attributable to a specific input signal, and then reduces the complexity of the estimation problem by discarding those input signals that are deemed to be insignificant. Numerical difficulties due to limited input bandwidth and correlations among the inputs are addressed using a robust estimation technique based on singular value decomposition. The algorithm has been evaluated on both simulated and experimental data. The latter involved estimating the relationship between up to 40 simultaneously recorded motor cortical signals and peripheral electromyograms (EMGs) from four upper limb muscles in a freely moving primate.The algorithm performed well in both cases:it provided reliable estimates of the system output and significantly reduced the number of inputs needed for output prediction. For example, although physiological recordings from up to 40 different neuronal signals were available, the input selection algorithm reduced this to 10 neuronal signals that made signicant contributions to the recorded EMGs.Keywords
This publication has 23 references indexed in Scilit:
- Ascertaining the Importance of Neurons to Develop Better Brain-Machine InterfacesIEEE Transactions on Biomedical Engineering, 2004
- Learning to Control a Brain–Machine Interface for Reaching and Grasping by PrimatesPLoS Biology, 2003
- Divide-and-conquer approach for brain machine interfaces: nonlinear mixture of competitive linear modelsNeural Networks, 2003
- Information conveyed through brain-control: cursor versus robotIEEE Transactions on Neural Systems and Rehabilitation Engineering, 2003
- Brain–machine interfaces: computational demands and clinical needs meet basic neuroscienceTrends in Neurosciences, 2003
- Connecting cortex to machines: recent advances in brain interfacesNature Neuroscience, 2002
- Direct Cortical Control of 3D Neuroprosthetic DevicesScience, 2002
- Applications of cortical signals to neuroprosthetic control: a critical reviewIEEE Transactions on Rehabilitation Engineering, 2000
- The Utah Intracortical Electrode Array: A recording structure for potential brain-computer interfacesPublished by Elsevier ,1999
- Orthogonal least squares learning algorithm for radial basis function networksIEEE Transactions on Neural Networks, 1991