4.5 Article

Current Source Density Reconstruction from Incomplete Data

期刊

NEURAL COMPUTATION
卷 22, 期 1, 页码 48-60

出版社

M I T PRESS
DOI: 10.1162/neco.2009.07-08-831

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  1. Polish Ministry of Science and Higher Education [N401 146 31/3239, PBZ/MNiSW/07/2006/11]
  2. Foundation for Polish Science

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We propose two ways of estimating current source density (CSD) from measurements of voltage on a Cartesian grid with missing recording points using the inverse CSD method. The simplest approach is to substitute local averages ( LA) in place of missing data. A more elaborate alternative is to estimate a smaller number of CSD parameters than the actual number of recordings and to take the least-squares fit (LS). We compare the two approaches in the three-dimensional case on several sets of surrogate and experimental data, for varying numbers of missing data points, and discuss their advantages and drawbacks. One can construct CSD distributions for which one or the other approach is better. However, in general, the LA method is to be recommended as being more stable and more robust to variations in the recorded fields.

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