beautypg.com

Multichannel Systems NeuroExplorer User Manual

Page 118

background image

Summary of Numerical Results


The following information is available in the Summary of Numerical Results

Column

Description

Variable

Variable name.

YMin

Y axis minimum.

YMax

Y axis maximum.

Color Scale Min

Color scale minimum.

Color Scale Max

Color scale maximum.



Algorithm


If Use Log Bins and Axes option is not selected:



Matrix of binCounts[x,y] is created. Each element of the matrix is initialized as zero.


For each spike that occurred at time t[i], the following values are calculated:

Interval_I = t[i] - t[i-1]

binX = (Interval_I – MinInterval)/Bin

Interval_I_Plus_1 = t[i+1] - t[i]

binY = (Interval_I_Plus_1 – MinInterval)/Bin


Then, the corresponding bin count is incremented:

binCounts[binX, binY] = binCounts[binX, binY] + 1


The graph shows binCounts matrix values using color scale.



If Use Log Bins and Axes option is selected:


The i-th bin (i=1,2,...) on each axis is [IntMin * 10 ^ ((i -1)/D), IntMin * 10 ^ (i/D)), where D is Number
of Bins Per Decade.
binX and binY are calculated accordingly:

binX = ( log10(Interval_I) – log10(MinInterval) )* NumBinsPerDecade


Reference


For discussion on using logarithm of interspike intervals, see:


Alan D. Dorval, Probability distributions of the logarithm of inter-spike intervals yield accurate entropy
estimates from small datasets. Journal of Neuroscience Methods 173 (2008) 129–139

Page 116