Title: Eigenmannia: Glass Knife Fish A Weakly Electric Fish
1Eigenmannia Glass Knife FishA Weakly Electric
Fish
- Electrical organ discharges (EODs)
- Individually fixed between 250 and 600 Hz
- Method of electrolocation and communication
- Electroreceptors
- Respond to phase (T-type)
- Respond to amplitude (P-type)
2Jamming Avoidance Response
- Two fish will adjust EOD if frequencies are
similar enough. - Before Fish A 304 Hz, Fish B 300 Hz.
- After Fish A 312 Hz, Fish B 292 Hz.
- Uses T-type and P-type receptors to compute
whether EODs should be raised or lowered. - Role of T-type well understood. This paper
examines the role of P-type.
Electrical Field
3The P-type Receptor Cells
- Single afferent projections to Electrosensory
Lateral Line (ELL) lobe of the medulla - Tuned to the EOD frequency of the individual
- Loosely phase locked
- Fire lt 1 per electric cycle, though as amplitude
increase firings/per cycle goes to one
4Stimulus and Electrophysiology
- T Blank Tape Produces White Noise (the
stimulus) - Can vary the Standard Deviation
- BF Output passed through low-pass filter with
variable cut-food frequency - Can Vary the Cut-Off Frequency (fc)
- FG function generator (next slide)
- Electrodes in Mouth and Near tail produce
electric field, to which receptors respond
Insert 1A here
5The Function Generator
- A0 is the Mean Amplitude
- s(t) is the white noise after it has passed
through a filter - fcarrier is equal to the EOD
6Recordings
- Recordings of P-type receptors at the animals
trunk - Identified P-type receptors by 3 criteria
- Probability of firing per cycle lt 1
- Spontaneous activity was irregular
- Units phase locked with large jitter
- 26 units selected
- Recordings of 135 seconds for 3 Protocols
- Spontaneous activity
- Response to wide-band white noise (fc 740 Hz)
- Varying fc, Ao, and standard deviation of s(t) in
a pseudo random manner
7Theory
- ti spike occurrence time
- X0 mean firing rate.
8- h(t) was chosen to minimize the square error
between - the stimulus and the stimulus estimate
- The integration is over the duration of the
experiment (T135sec) - fc is cut-off frequency
- Ssx is Fourier transform of the cross
correlation function of the stimulus and the
spike train. - Sxx is the Fourier transform of the auto
correlation function stimulus and the spike
train.
9- Now we can determine
- We determine noise, as the distance between the
original stimulus and the estimated stimulus
- Signal To Noise Ratio, SNR(f), as the power
spectrum of the - of the stimulus divided by the power
spectrum of the noise
Measure the amount of signal power present at a
given frequency relative to the noise.
SNR 1 means that it is impossible to differ the
signal from the noise.
10 Measure of rate of mutual information that
is transmitted by the reconstructions about the
stimulus.
- Coding Fraction, a normalized measure of the
quality - of reconstruction
(Mean square error in the reconstruction)
( 0 lt ? lt 1 ), and for max error ? is 0
- Dividing by the firing rate ? , yields the mutual
information transmitted per spike IsIe/ ?
11Data Analysis
- How we obtained the data for the above
equations - Spike Sample
- The spike peak occurrences times were selected
and resample at 2KHz together with the
stimulus.(2KHz because we saw that we are
interested in frequencies bellow 740, say 1000
and then nyquist) - Filter
- - Estimate of the cross correlation between
spike trains and stimulus was obtained by Fast
Fourier transform. (Ssx,Sxx) - SNR
- - Estimate of the stimulus and spikes power
spectra were obtained using Fast Fourier
transform and averaging 130 samples of data, each
1024msec long.
12- The stimulus estimation were obtained by
convolving the filter and the spike train in the
frequency domain using Fast Fourier Transform.
Here to avoid contamination by the carrier
frequency of the spike train, they set the filter
to zero for frequencies greater than fcarrier
30Hz. - Experimental errors were either obtained directly
by repeated measurements or by error propagation
13Results
- Response to sinusoidal stochastic amplitude
modulations spontaneous activity - P-type receptor afferent units fire with
increased probability when the amplitude of the
external electric field is raised. -
10Hz sinusoidal amplitude modulation and the
corresponding poststimulus histogram.
14- The spontaneous activity of P units appears
consistent with the assumptions of stationary
probability density for the spike distribution.
15- Increasing mean stimulus amplitude, increase the
probability of firing.
A1.0, ?233
A0.8, ?208
A0.6, ?174
A0.5, ?152
A0.4, ?112
A0.3, ? 98
A0.2, ? 55
A0.1, ? 24
16- Temporal Bandwidth
- For wide band white noise stimulus 740Hz,
checking over - 13 units
- SNR always equal to 1 for frequencies gt 200Hz.
- and reconstruction is poor ? 0.0024 (lt2.5)
- For white noise stimulus 175Hz, while keeping
- power spectrum constant.
- SNR improved and more faithful reconstruction ?
0.222.
17- Cutoff Frequency
- The coding fraction ? decreased with increasing
fc. - Decreasing the fc of the stimulus, increase the
SNR at lower frequencies. -
18- Why?
- 1. The power spectra density was increased in the
range of frequencies encoded by the units. - 2. The power spectra density of the signal was
reduced at high frequencies. - Two experiments were made to check these
assumption. - - fc of the stimulus was kept fixed, and the
power density was increased. - - fc of the stimulus was increased, and the
power density was kept constant.
19- Effect of Mean Firing Rate
- Dynamic Range of mean firing rate from
spontaneous firing rate to fcarrier (limit
once/cycle) - Signal-to-Noise Ratio increases as firing rate
increases, but saturates at ½ fcarrier
20- Coding Fraction, Information Rate, Information
Per Spike - Coding Fraction, Information Rate also increases
and saturates at the same points (Figure a and
b), while Information per Spike decreases upon
saturation (c) - Lower Cut-Off Frequency ? Steeper slope in Coding
Fraction - fc 175 vs. fc 88 Hz
- No significant influence of the spontaneous
firing rate on the slope of the coding fraction.
(Fig. A and B) - Significant coding occurred 20-40 Hz above
spontaneous discharge
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22- Standard Deviation and Signal-to-noise Ratio
- Varying the Standard Deviation is the same as
increasing the amplitude - Max. standard deviation set at .25 to avoid phase
changes - Signal-to-Noise Ratio increases with standard
deviation
23- Coding Fraction, Information Rate, Information
- Per Spike
- All three of these increase with Standard
Deviation - Dotted lines are one unit at three mean firing
rates (bottom 70, middle 110, and top 170) - Larger mean firing rates
- Initial slope larger
- Saturation reached at lower standard deviation
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25Discussion
- Studied Encoding Information
- Signal-to-Noise
- Mutual Information Rate
- Coding Fraction
- Despite the Noise, single afferents encode much
of the stimulus
26- Technical Considerations
- The head and tail electric field geometry most
effective in jamming avoidance response - They may have chosen T-Type cells, however their
data suggest otherwise (P-Type).
27- Reverse Correlation and Linear Reconstruction
Filter - Spiked were typically triggered by large positive
slope in the stimulus. - Neither the Biophysical interpretation nor the
computational properties that could be read from
the filter are obvious. - The filter h(t) changes when the statistics of
the stimulus or the mean firing rate of the units
changes.
28- Their observation of the filter argue against the
notion that there is a single cell that
explicitly reconstruct the stimulus. - The results are true for the assumption that the
white noise stimuli is coded with stationary
statistics and that the spike train is stationary
in response to the stimulus.
29- Existence of nonlinearities
- The experiment show that adding high frequencies
to the stimulus reduce the signal to noise ratio
at low frequencies. This indicates that the
receptors response to electric field amplitude
modulation is nonlinear. -
30- Natural stimuli
- 1. A typical power spectrum of natural
amplitude modulations around the fish in its
natural behavior has not been measured. - 2. Amplitude modulations caused by small moving
objects have been estimated to be between 2
80Hz. - They showed that SNR and fraction of signal
encoded in single spike trains increase as the
cutoff frequency of the stimulus decrease between
740-88Hz. (slide18) - More experiments were done, decreasing fc to 2,
20, 50 that verified these results. -
31- mean firing rate, dynamic range spontaneous
activity - The mean firing rate ?, increase with the mean
amplitude A0. - This enable them to study the coding
performances as function of ? by changing A of
the stimulus. - The SNR, mutual information rate and coding
fraction increased with increasing mean firing
rate, for firing rates between the spontaneous
activity and half of fcarrier. - Coding started for mean firing rates 20-40Htz
above the spontaneous discharge.
32- Coding fraction and mutual information both
reached maximum at about half of fcarrier. - There is a differential sensitivity of the coding
fraction and the mutual information transmission
as fc of the stimulus was changed. - Anesthetized fish have lower spontaneous activity
and EOD frequency, thus reduced firing rate than
untreated fish, therefore the measured firing
rate may not be the optimal one.
33Standard Deviation and Contrast
- Coding Fraction, etc. increased with an increase
in Standard Deviation - Because Mean Firing Rate was constant and only
Standard Deviation changed, better performance
was not due to more firing
34Upper Bound on Performance
- Upper Bound fcarrier because max of one spike
per electric cycle - Coding fraction at upper bound given by equation
below. - For these experiments fcarrier 400 Hz and fc
100 Hz, so coding fraction is 0.75 - P receptors can code gt1/2 the information that
can be encoded about a stimulus
35Behavioral Relevance
- Information from the P receptors to the CNS
depends on - Mean firing rate
- fc of the stimulus, as will as its contrast
- Similar results in mammalian visual system?
- Individual P receptors covey accurate and
efficient representation - Convergence makes more accurate and more
efficient?