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The Journal of Neuroscience, December 15, 2002, 22(24):10519-10523
BRIEF COMMUNICATION
A Reciprocal Relationship between Reliability and Responsiveness
in Developing Visual Cortical Neurons
Nicole C.
Rust1,
Simon
R.
Schultz1, 2, and
J. Anthony
Movshon1, 2
1 Center for Neural Science and 2 Howard
Hughes Medical Institute, New York University, New York, New York 10003
 |
ABSTRACT |
As the visual cortex matures, developmental modifications change
the visually evoked firing patterns of single neurons. To explore the
relationship between these developmental changes and the fidelity with
which neurons transmit information, we measured the reliability of
neuronal responses during postnatal development. Infant neurons have
lower variability and higher dependence of transmitted
information on firing rate than adult cells. Fewer spikes are needed by
the infant cortex to convey the same amount of information. The
increase in firing rates that occurs during development is largely
offset, therefore, by a decrease in the reliability of responses. We
propose that these changes are a consequence of the increasing ability
of cortical cells to encode rapid changes in the visual environment.
Key words:
contrast; primary visual cortex; development; reliability; neuronal variability; information theory; information per
spike
 |
INTRODUCTION |
The spatial vision of infant
primates is poor; in particular, infant monkeys and humans are 5-10
times less sensitive to contrast than adults (Banks and Salapatek,
1981 ; Boothe et al., 1988 ). The visually evoked responses of cortical
neurons in infant monkeys are relatively weak, and during development
firing rates increase, receptive fields become smaller, and temporal
resolution improves (Wiesel and Hubel, 1974 ; Blakemore, 1990 ; Chino et
al., 1997 ). It is believed that the postnatal increase in visual
sensitivity reflects postnatal maturation of visual cortical response properties.
However, it is not only the absolute firing rate that determines how
accurately a neuron can signal the presence or character of a
particular stimulus. Information in a neuronal response is limited not
only by firing rate but also by variability. Presented with the same
stimulus on repeated trials, a neuron responds with a variable number
of spikes. If there were a constant relationship between variability
and firing rate throughout development, the low firing rates of infant
neurons would imply that the information they can transmit increases
with age. However, if the variability of responses in infant neurons
were lower, this might compensate for their lower spike rates and
permit them to transmit more information than their sluggish responses
might suggest.
We wanted to determine whether the changes in firing rate and tuning
properties observed during development are associated with an increase
in the information content of the visual signals carried by cortical
neurons. To quantify the efficiency with which neurons signaled
information during different stages of development, we calculated two
measures: a ratio of the variance-to-mean spike count and an
information theory-based measure that relates the amount of information
in a response to the number of spikes used to convey that information.
Both measures suggested that the responses of infant neurons were more
reliable than those of adult neurons, and that the increase in
responsiveness during development is paralleled by a decrease in
reliability. Therefore, the information that infant cortical neurons
transmit need not limit, by itself, the contrast sensitivity of infant vision.
 |
MATERIALS AND METHODS |
We made single-unit recordings from the primary visual cortex of
11 anesthetized, paralyzed pigtail macaques (Macaca
nemestrina) between 1 and 99 weeks of age, using conventional
methods described previously (Carandini et al., 1997 ). All experiments
were performed in compliance with the National Institutes of Health
Guide for the Care and Use of Laboratory Animals and with
guidelines of the New York University Animal Welfare Committee.
After isolating each recorded neuron, we tested the more effective eye
and optimized the orientation, spatial frequency, temporal frequency,
and area of drifting achromatic sinusoidal gratings of 0.5 contrast
presented on a gray background. The time- and space-average luminance
of the display was 33 cd/m2. We then
measured the response of each neuron to gratings at six contrasts
ranging from 0 to 0.5. Stimuli drifted across the screen at a rate
chosen so that an integer (1-8) number of cycles occurred in a 640 msec period (1.6-12.5 Hz). For the neurons reported here, 10 640 msec trials were collected for each contrast; stimuli were interleaved
and presented in pseudorandom order. The f1/f0 ratio of the response to
drifting gratings was used to classify cells as simple or complex
(Skottun et al., 1991 ). A few simple cells with a high spontaneous rate
were excluded from the analysis because spike-count-based techniques do
not capture correctly the information that these neurons transmit.
A direct method was used to calculate the information about
contrast (for review, see Cover and Thomas, 1991 ) as the difference between the total entropy across all contrasts and the mean noise entropy at each contrast:
where r is the number of spikes in a 640 msec trial
and s is the contrast level of the grating. This equation
was used to calculate both the full mutual information (approximately
six contrast levels) and pairwise information (approximately two
contrast levels). To compensate for overestimation of information
caused by the limited number of available trials (mean
n = 28.5 cycles), we applied an analytical correction.
When the number of trials was less than four times the peak spike
count, the responses were quantized into R bins (Panzeri and Treves,
1996 ) with R chosen such that convergence to the large-N asymptote was
observed over the entire data set (this resulted in r = 0.4N in the case of contrast pairs). The effect of this strategy is to
exchange a small degree of underestimation caused by quantization loss
for overestimation caused by sampling bias to obtain the most accurate results over the entire data set. The analysis also was performed with
fixed bin size, and qualitatively identical results were obtained.
We devised a novel metric to compute reliability by relating the
pairwise information available in stimulus-evoked responses to
differences in spike rates; we will refer to this metric as information
density. To calculate information density, mutual information was
calculated about all possible pairs of contrasts (six contrasts, 15 pairs) from spike counts in 640 msec bins. Because information was
calculated about pairs of contrasts, information could be plotted
against the difference in firing rates, which should be related to
information, rather than a potentially less correlated measure such as
the mean rate. The relationship between mutual information and the
difference in spike count was fit with the following curve:
where I is the mutual information, n is
the difference in spike count, S is the number of stimuli
(two), and and are free parameters. This curve asymptotes at
the theoretical limit of I = 1 bit for large values of
n. For = 1, the curve corresponds to an
exponential saturation model in which the information provided by each
spike has a random overlap with that provided by any other; in this
case, measures the extent of that overlap (Gawne and Richmond,
1993 ; Rolls et al., 1997b ). For = 2, the curve corresponds to
the rate at which information grows as the firing rate distributions for two stimuli are separated if those distributions were Gaussian. Allowing to vary allows the function to account for a variety of
firing rate distributions; the value of for our sample varied between 1 and 4. The maximum slope of this function represents the peak
rate of information growth with difference in spike count; we call this
quantity information density to distinguish it from other measures of
information. The values of information density obtained by fitting
other empirically chosen functions were very similar to those obtained
using Equation 2. Neurons were excluded from this and other analyses if
the correlation between pairwise mutual information and spike count did
not achieve significance on an F test
(p < 0.05). The number of neurons so excluded
was small (1 week, 1 of 48 neurons; 4 weeks, 7 of 60 neurons; 16 weeks, 2 of 68 neurons; adults, 6 of 72 neurons).
We wanted to know whether the choice of test contrasts had an effect on
the full (all stimuli) mutual information values that we computed. In
particular, if contrast values were placed too high or too low, most
responses would be either small or large, skewing the distribution of
responses and reducing the amount of information transmitted. We
calculated full mutual information for a Poisson neuron with a
conventional contrast-response function and deliberately skewed the
chosen contrast values. The full mutual information measure proved
quite insensitive to this skewing within the range of skews in our data
set, and we used the simulations to estimate the amount by which our
full mutual information calculations would have been in error for real
neurons. The effect of skewing was modest (<10% underestimate of
information for almost all cases), and there was no difference in our
estimated errors across the four age groups.
We also measured responses to high contrast gratings of optimal
orientation and spatial frequency drifting at frequencies between 0.4 and 25 Hz, and we fit the data with a suitable descriptive function; we
took temporal resolution as the frequency at which the response fell to
1/10 of maximum (Foster et al., 1985 ; Saul and Humphrey, 1992 ).
Response latency also provides a measure of integration time (Maunsell
and Gibson, 1992 ; Gonzalez et al., 2001 ). We measured response latency
by plotting response histograms (in 5 msec bins) over multiple data
sets and estimating latency as the first bin in which the response was
greater than the mean spontaneous rate measured in response to a gray
screen. For simple cells, a latency was recorded only if
cycle-triggered averages indicated that at least one stimulus started
in the excitatory phase of the cell. For a few cells (19 of 232), we
could not determine latency reliably, and those cells were omitted from
the latency analysis.
 |
RESULTS |
Consider the two cells for which data are shown in Figure
1. Figure 1, a and
b, shows the mean responses of an infant and an adult
neuron, respectively, to an otherwise optimal grating stimulus at six
different contrasts; error bars indicate the SD of the firing
rate distributions. As is typical of visual cortical neurons, firing
rate grew with contrast and saturated at high contrasts for both cells.
To discriminate two stimuli perfectly, a neuron with high
trial-to-trial variability like the adult cell must signal two
different stimuli with very different mean firing rates. Conversely, a
neuron with low variability like the infant cell can convey the same
amount of information with a smaller dynamic range.

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Figure 1.
Calculation of information density and
variance-to-mean ratio for two cells. a,
b, Mean ± SD of the responses of a neuron from a
4-week-old infant (a) and from an adult
(b) to an optimized, drifting sinusoidal grating
stimulus at six different contrasts evenly spaced between 0 and 0.5. The mutual information about selected contrast pairs is indicated.
c, d, Mutual information about every
possible pair of the six contrasts (15 pairs) in a and
b is plotted against the difference in the mean firing
rate between each pair of contrasts. These data are fit with a
function, the maximal slope of which is a measure of information
density (see Materials and Methods). Information density has units of
bits per spike, and the computed information densities for each cell
are indicated. This measure, unlike total mutual information, does not
depend on the specific contrasts tested, which differed somewhat from
cell to cell. e, f, Spike count variance
at each contrast is plotted against mean spike count for the example
cells in a and b. The variance-to-mean
ratio (VMR) is taken from the best fitting line with
slope = 1; horizontal ticks mark the ratios for
each cell. The counting window was 640 msec and contained an integer
number of temporal cycles of the drifting stimulus.
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We used Shannon's mutual information to measure how accurately
different stimuli can be distinguished based on the number of spikes
elicited from a neuron during repeated stimulus presentations (Werner
and Mountcastle, 1965 ; Tolhurst, 1989 ; Rolls et al., 1997a ). The
information is related to the distance between the two firing rate
distributions and is similar to the d' measure used in
signal detection theory (Parker and Newsome, 1998 ). To illustrate the relationship between the firing rate and information, Figure 1, a and b, also shows the information transmitted
by each neuron about selected pairs of contrasts. Note that both the
infant and the adult neuron were capable of perfectly discriminating a
zero-contrast stimulus (mean gray background) from the highest stimulus
contrast, yielding one bit of information. However, the infant neuron
signaled this information with fewer spikes.
To quantify the relationship between information and the number of
spikes needed to convey that information, we plotted the information
conveyed by a neuron about each of the 15 different contrast pairs
against the mean firing rate difference between the members of each
pair (Fig. 1c,d). Information about a contrast pair cannot
exceed one bit, representing perfect discrimination, and therefore we
fit these points with a curve, the form of which accounts for this
saturation. The maximum slope of this function captures the shape of
the relationship between information and spikes; we call the maximum
slope of this curve the information density (see Materials and
Methods), with units of bits per spike. This measure differs from the
more usual full mutual information in that it depends only on pair
comparisons and not on the total number of stimuli used (Tolhurst,
1989 ; Rolls et al., 1997a ). Neurons with larger values of information
density use fewer spikes to convey information (Fig. 1c).
Neurons with smaller values require a larger dynamic range to
discriminate contrast pairs (Fig. 1d).
Another way to capture the change in firing patterns is to analyze the
relationship between response mean and variance for the example cells.
The variance of cortical neuron spike counts increases in proportion to
their mean (Tolhurst et al., 1981 , 1983 ), and the ratio of the two is
inversely related to the amount of information transmitted by cortical
cells (de Ruyter van Steveninck et al., 1997 ). Figure 1, e
and f, shows the relationship between response variance and
mean for the two example cells. As indicated by the reference lines at
a spike count of 1, the infant cell had a lower variance-to-mean ratio
than the adult cell, as would be expected from its higher information density.
We calculated information density for populations of V1 cells recorded
from macaques in four age groups: 1 week, 4 weeks, 16 weeks, and adults
(31-99 weeks). Surprisingly, we found that V1 neurons in the youngest
animals had the highest information density: mean information density
decreased twofold during development (Fig.
2a). We also calculated the
variance-to-mean ratio for the same populations; as expected from the
information density calculation, the variance-to-mean ratio of cortical
cells increased during development (Fig. 2b). Adult cells
tended to have higher variance-to-mean ratios than infant cells even
when cells with similar dynamic range were selected, implying that this
developmental difference cannot be attributed to the subpopulation of
adult cells with high firing rates (data not shown). It is also
interesting to note that simple cells had higher information densities
for each age group (mean information densities for simple cells from
the 1 week, 4 week, 16 week, and adult animals were 0.33, 0.25, 0.20, and 0.12, respectively; for complex cells, the values were 0.19, 0.15, 0.11, and 0.09, respectively); simple cells had correspondingly lower
variance-to-mean ratios than complex cells. A multiple linear regression analysis suggests that these differences cannot be accounted
for by differences in spontaneous rate or dynamic range.

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Figure 2.
Changes in information density and the
variance-to-mean ratio during development. a,
Distributions of information density for neurons from monkeys in the
four age groups (see Materials and Methods for calculation).
Arrows indicate the means. b,
Distributions of the variance-to-mean ratio for each age group (see
Materials and Methods for calculation). Arrows indicate
the geometric means. c, Scatter plot of the data
displayed in a and b for 232 neurons from
animals in the four age groups: 1 week (47), 4 weeks (53), 16 weeks
(66), and adults (66).
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Together, these two measures suggest that the coding properties of
neurons change during development. However, how are they related?
Figure 2c shows that information density and the
variance-to-mean ratio were inversely but imperfectly correlated. This
is because the variance-to-mean ratio measures the average variability
of the response to a single stimulus, whereas the mutual information quantifies the fraction of the total variability that is attributable to the difference between responses. These two measures are comparable in that each indicates the reliability of neuronal firing, and the
regular relationship shown in Figure 2c suggests that during development there was a decrease in the reliability of visual signaling
by cortical neurons.
Despite the decrease in reliability during development, total
information transmission could be maintained if the range between the
lowest and highest firing rates (the dynamic range) also increased. The
mean dynamic range did increase twofold during development, and a plot
of the mean information density- versus the geometric mean-evoked
firing rate for each age reveals the reciprocal relationship between
these two measures (Fig. 3a).
In the youngest infants, information density was high and firing rate
was low, whereas in the adults information density was low and firing
rate was high.

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Figure 3.
The relationship among information density,
dynamic range, and temporal parameters during development.
a, Mean information density and geometric mean dynamic
range are plotted for each age group. Dynamic range is taken as the
largest mean response to a grating target minus the mean baseline
response. The mean transmitted full mutual information for all six
contrasts is indicated beside each point. b, Mean
information density, geometric mean temporal resolution
(filled squares), and geometric mean latency
(open circles) are plotted for each age group. For each
cell, temporal resolution was taken as the drift rate at which the
response of the cell fell to of its peak. Latency was taken
as the time after stimulus onset at which the firing rate first
deviated from baseline. SE are plotted for all axes.
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The mutual information about all of the six contrasts presented in an
experiment (which we term full mutual information to avoid confusion
with the pairwise measure) quantifies the ability of these neurons to
distinguish stimuli and depends on both information density and dynamic
range. However, unlike information density, full mutual information
depends on both the number and the distribution of the contrasts
tested. We did not use the same test contrasts every time because we
tried to place the contrasts so that they spanned the response range of
each cell; however, we verified that the chosen contrasts did not have
an important effect on the full mutual information measure for our
population (see Materials and Methods). Mean full information values
for the four age groups are given next to each point in Figure
3a. The modest and inconsistent change in the full mutual
information values is attributable to the opposing effects of
increasing firing rate and decreasing information density as
development progresses. In other words, infant neurons may fire few
spikes, but each infant spike carries more information. As a result, 1 week infant neurons can transmit 80% of the total information that
adult neurons transmit.
 |
DISCUSSION |
Our results suggest that lower firing rates in infant neurons are
compensated for partially by lower variability and that infant neurons,
therefore, are more efficient at transmitting information about
contrast than adult neurons. This leads to an interesting puzzle. If
infant neurons can signal 80% of the information that adult neurons
signal, why is it that contrast sensitivity in infant primates is 5- to
10-fold lower than in adults (Boothe et al., 1988 )? One possibility is
that infant neurons have higher contrast thresholds than adult neurons
(compare responses in Fig. 1a,b). Our results might have
been different had we tested infant neurons with very low contrast
targets, but we did not explore systematically the contrast range below
0.1. A second possibility is that the limits to infant contrast
sensitivity are not set by V1 neurons and, instead, lie in downstream
structures (. The low spike rates of infant
neurons might contribute to this by driving downstream neurons less
effectively, even if their responses are reliable.
How might the reciprocal relationship between information density and
firing rate arise? Many aspects of the visual system change during
development, including improvements in the optics of the eye (Kiorpes and Movshon, Williams
and Boothe, 1981 ; Jacobs and Blakemore, 1988 ), migration of cones in
the fovea (Packer et al., 1990 ), increases in spatial resolution, and
decreases in receptive field size (Blakemore, 1990 ; Movshon and
Kiorpes, 1993 ; Wilson, 1993 ; Chino et al., 1997 ; Movshon et al., 2000 ). Our first thought was that developmental decreases in receptive field
size might underlie our observations, but we have shown that these
changes are attributable almost entirely to changes in retinal optical
magnification and cone distribution (Wilson, 1993 ; Movshon et al.,
2000 ) and do not reflect neural changes in receptive field
organization. However, there are marked changes in the temporal
fidelity of responses during development that may drive the change in
information density. Figure 3b plots mean information
densities for the neurons from each of the four age groups against two
temporal measures: the latency of response after stimulus onset and the
highest temporal frequency of drift that elicited a response (temporal
resolution). A relationship between information density and each of
these temporal parameters is clear. The decrease in latency and
increase in temporal resolution with age suggest that infant neurons
integrate their inputs over longer times than adult neurons. A neuron
with a longer integration time would average over more synaptic input
events and therefore reduce variability associated with rapid
fluctuations in those inputs; such a neuron would carry more
information with each spike by sacrificing temporal bandwidth. To
improve their resolution of fine temporal structure, developing V1
neurons decrease their integration times, which would increase the
variability of spiking. Such an increase would increase
variance-to-mean ratios and have a deleterious effect on information
transmission, but these effects could be overcome by increasing dynamic
range (Fig. 3a).
Developmental changes in temporal integration might arise from changes
in either neuronal properties or synaptic properties. Interestingly, in
the gerbil lateral superior olive and rat cortex, EPSPs are of longer
duration in infant neurons than in adult neurons (Burgard and Hablitz,
1993 ; Sanes, 1993 ); this change may be attributable to changes in
patterns of glutamate receptor expression (Krukowski and Miller, 2001 ).
Whatever the biological basis, a shift in coding strategy from high
information density, low bandwidth, and low firing rate to low
information density, high bandwidth, and high firing rate would ensure
that information transmission is not sacrificed as temporal resolution
grows to adult levels.
 |
FOOTNOTES |
Received Aug. 22, 2002; revised Oct. 7, 2002; accepted Oct. 8, 2002.
This work was supported by National Institutes of Health (NIH) Grants
EY02017 (J.A.M.) and EY05864 (Lynne Kiorpes). N.C.R. was supported by a
training grant from the NIH. We thank Stefano Panzeri for help with the
analysis and Michael Hawken for his comments on a previous version of
this manuscript. Lynne Kiorpes, James Cavanaugh, and Michael Hawken
participated in the physiological experiments.
Correspondence should be addressed to J. Anthony Movshon, Center for
Neural Science, New York University, 4 Washington Place, Room 809, New
York, NY 10003. E-mail:
movshon{at}nyu.edu.
 |
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