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The Journal of Neurophysiology Vol. 86 No. 6 December 2001, pp. 2754-2760
Copyright ©2001 by the American Physiological Society
1Section of Neurobiology, Yale University School of Medicine, New Haven, Connecticut 06520-8001; 2Institute of Advanced Diagnostic Methodologies, National Research Council, 90146 Palermo; 3Department of Psychology, Palermo University, 90128 Palermo; and 4Oasi Institute for Research on Mental Retardation and Brain Aging (IRCCS), 94018 Troina, Italy
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ABSTRACT |
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Migliore, M., L. Messineo, M. Cardaci, and G. F. Ayala. Quantitative Modeling of Perception and Production of Time Intervals. J. Neurophysiol. 86: 2754-2760, 2001. The accurate perception/production of durations in the seconds and minutes range is important in a number of everyday activities, but the lack of direct experimental evidence on the neural circuits that could be involved has precluded the detailed elucidation of the underlying physiological mechanisms. We show, using a basic biophysical model of a timekeeping system and experimental data on time intervals produced or estimated under different conditions, that experimental values, variability, and distributions can be quantitatively explained in terms of a background synaptic activity such as that generated by attention. The model provides a plausible neural substrate for encoding time intervals, and the findings suggest how it may interplay at the single neuron level with the attentional system, to elaborate a subjective representation of the elapsing time.
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INTRODUCTION |
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How do we calculate time
intervals? No sensory input is required to keep track of the elapsing
time between two arbitrary events, and the accuracy of this calculation
depends on a number of factors such as age (Block et al.
1998
; Craik and Hay 1999
), drugs use
(Frankenhaeuser 1959
), body temperature (Hancock
1993
), degenerative brain diseases (Nichelli et al.
1993
), and concurrent cognitive loads (Marmaras et al.
1995
; Zakay 1993
). Simply counting spikes could
appear, at first, as the most natural choice for an internal
time-keeping system. However, simple pacemaker-based systems
(Treisman 1963
) cannot be reconciled with distinctive features of the variability in the subjects responses, which is large,
it is essentially independent from the interval length and it decreases
with training. To take into account these effects, memory stages and
decision processes (Gibbon et al. 1984
) or fallible stochastic counters (Killeen and Taylor 2000
) have been
included in pacemaker-based systems, and alternative theories using
memory dynamics (Staddon and Higa 1999
), neural networks
(Miall 1996
), or connectionist models (Church
1989
; Church and Broadbent 1991
) have been
proposed. Both kinds of implementations, reviewed by Ivry
(1996)
and Gibbon et al. (1997)
, have features
based on experimental observations but do not give insights into the
biophysical processes that could be involved at the single neuron
level. Although it has been found that the basal ganglia are activated
during time intervals encoding (Rao et al. 2001
), there
is still no direct experimental evidence on what kind of neural
circuits we use. Since linking behavioral data to biophysical
mechanisms is an important step to elucidate the neural substrates of
time interval perception, we used a different approach with a
biophysical model. Experiments suggested that the calculation of a time
interval requires attentional resources (Zakay and Block
1996
) and that excitation and inhibition are the driving forces
of selective attention (Ghatan et al. 1998
;
Kastner et al. 1998
). Thus we have implemented a simple
time-keeping system with a counter and a neuron, which was activated by
a background synaptic input representing attentional effects. We
hypothesized that the properties of the excitatory and inhibitory
components of this background activity could quantitatively represent
the characteristics of the attentional state and determine the
subjective calculation of the elapsing time. We found that the strength
of the inhibitory component, and the variability of the excitatory one,
were the only parameters required to quantitatively reproduce the
subjective production and estimation of time intervals.
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METHODS |
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Experiments
To test our model, among the many experiments investigating
interval timing in humans, we selected three representative examples (from different laboratories). The selected experiments were designed to investigate using a prospective paradigm different questions, such
as the dependence on interval length under control conditions (Predebon 1995
), the effects of different cognitive
loads (Marmaras et al. 1995
), and the difference between
production and estimation of the same interval under the same cognitive
load (Zakay 1993
). To simplify the interpretation of the
results, we did not take into account experiments based on
retrospective paradigms or temporal discriminations, where interplay of
time-keeping activities with additional processes, such as the internal
replay of memorized events, could be expected. Thus, in all cases,
subjects were informed that an interval production or estimation would
be requested. Complete details about the different experimental setup
can be found in the original papers. Here we briefly discuss only those relevant to our work. Predebon (1995)
used intervals of
10, 18, 26, 34, 42, and 50 s estimated under control conditions
("empty" time). Intervals were estimated by independent groups of
18 subjects. Zakay (1993)
used a single control interval
(12 s) to show how interval production or estimation depended on
concurrent cognitive loads, of increasing complexity, based on the
Stroop color-word test. Each interval under each cognitive load
(including empty time) was produced or estimated by an independent
group of 20 subjects. Marmaras et al. (1995)
reported
intervals of 15, 30, and 60 s produced under different cognitive
loads of increasing complexity. Cognitive loads were simple tasks, such
as watching a ball in motion on a screen (condition C2), listening to a
news radio program (C3), counting the times the ball touched the edges of the screen (C4), or more demanding tasks, such as solving easy arithmetic problems (C5) and answering to questions requiring a memory
search (C6). In contrast to the previous experiments, in this case all
subjects (n = 92) were involved in all tests. In
addition, the raw data were made available (courtesy of G. Dounias,
University of Aegean, Greece).
Model
COMPUTATIONAL DETAILS. The network connectivity and the passive and active properties of the neurons involved in interval timing are not known. A simple implementation of a timekeeping system requires a neuron (representing a probable network and not necessarily with pacemaker properties), a suprathreshold synaptic input, a basic reference interval at which the neuron is expected to fire action potentials (INTEXP), and a spike counting mechanism.
Our model is schematically shown in Fig. 1A. The network was reduced to a single neuron, which fired action potentials (APs) according to a synaptic background activity representing the effects of the attentional network. The neuron was modeled with two compartments: a soma (with diameter and length of 10 µm) and an apical dendrite (10 connected segments, each of 1-µm diam and 40-µm length). Test simulations, using a realistic morphology based on a three-dimensional reconstruction of a pyramidal neuron (Migliore et al. 1999
65 mV. To
obtain a realistic reproduction of the action potentials, accurate
kinetics for the sodium, DR- and A-type potassium ionic conductances
were used (Migliore et al. 1999
80 mV for the excitatory
and inhibitory synapse, respectively. The peak conductance of each
excitatory synaptic pulse was fixed at the suprathreshold value of 1nS.
Because we were interested to link behavioral data with physiological
data, we have chosen to use electroencephalographic (EEG) rhythms
associated with attention, perception, and cognition (Basar et
al. 2001
ar et al. 2001
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INTERVALS CALCULATION AND FITTING PARAMETERS.
Following experimental suggestions (Ivry and Hazeltine
1995
), the same mechanism (counting the spikes generated by the
model neuron, in our case) was used to estimate or produce an interval. However, the production and the estimation of a time interval are two
rather different operations. In a time-estimation protocol, the
experimenter himself/herself starts and stops the interval. When an
interval production is requested, the subject himself/herself controls
the start and stop signals. In both cases, we assume that a subject
produces or estimates intervals by using the (internal) expected
frequency, 1/INTEXP, and the number of output
spikes, NS. Thus, in our simulations,
the estimate (TE) of a control
interval (TC) was calculated from the
number of spikes generated by simulations TC-s long as
TE = NS * INTEXP.
To produce a control interval, a simulation lasted until the neuron
generated the expected number of spikes,
NS = TC/INTEXP. The
total simulation length was the model production of a
TC = NS * INTEXP-s
interval. An 8-s window of the somatic membrane potential from a
typical simulation is shown in Fig. 1A.


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RESULTS |
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Experimentally, produced intervals showed a positive relationship
with increasing cognitive loads, whereas estimated intervals were
negatively related (Zakay 1993
). In Fig. 1B,
we show a series of simulations of production and estimation of a 10-s
control interval as a function of the inhibitory synaptic strength
(peak conductance, 
) and estimation decreased (Fig. 1B,
)
with the strength of the inhibitory conductance, reproducing the
experimental findings and suggesting that the inhibitory input could be
a useful indicator of the concurrently attended activities unrelated
with timing. Another distinctive feature of psychological experiments on interval timing is the large range of values observed for the CV of
the subjects responses (Gibbon et al. 1997
;
Marmaras et al. 1995
; Predebon 1995
;
Zakay 1993
), and its independence from experimental
conditions (such as interval length or strength of cognitive load). In
Fig. 1C (left) we present simulations findings for production (
) and estimation (
) of a 10-s interval as a function of SD, the variability of the excitatory mean ISI. The CV
strongly increased with SD for both production and estimation, spanning
the entire range of values observed experimentally (Gibbon et
al. 1997
). A small change was found with the interval length, as shown in Fig. 1C (right) for intervals
produced (
) of estimated (
) using different values of SD. In
agreement with a general experimental finding (Block et al.
1998
), the CV for intervals estimation was greater than for
production, especially for larger SD values.
To test the model on more quantitative grounds, we fitted the
experimental results on production and estimation of time intervals obtained from human subjects under different cognitive loads from the
above-mentioned authors (Marmaras et al. 1995
;
Predebon 1995
; Zakay 1993
). A comparison
between experiments and model findings is shown in Fig.
2. In Fig. 2A, intervals of
different lengths were estimated under control conditions, i.e., no
additional activities (Predebon 1995
). Average values
and SDs obtained from the model were in quantitative agreement with
experiments (Wilcoxon test, P > 0.1). In the next
example, Fig. 2B, model findings are compared with
experiments on production and estimation of a 12-s control interval
under increasing cognitive loads based on the Stroop color-word test
(Zakay 1993
). Quantitative agreement with experiments (P > 0.9) was obtained in both cases. Finally, Fig.
2C, intervals of 15, 30, and 60 s were produced under
increasing cognitive loads (indicated as C1, ... , C6). It should
be stressed that conditions C1, ... , C4 refer to basic
information processing, whereas conditions C5 and C6 involved higher
brain function (see METHODS). Quantitative agreement with
experiments (P > 0.3) was also obtained for these cases.
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Often, experimental distributions of intervals are not symmetric but
show some skewness, suggesting an asymmetrical source of variance in
the time-keeping systems. In rats trained for a temporal generalization
task (Church et al. 1991
), it resulted largely from
responses not controlled by timing. Its origin and the basic
biophysical mechanisms for perception or production of intervals in
humans are unknown. Our model suggests a simple and physiologically
plausible explanation. In fact, from trial to trial, the excitatory
mean ISI was changed, from its average value, according to a normally
distributed random variable with a standard deviation of SD, one of our
fitting parameters. High SD values increase the probability to have
very long or very short ISIs. However, whereas long ISIs result in the
production of long intervals, very short ISIs cannot produce very short
intervals, since several synaptic pulses will be missed because of the
membrane properties and the refractory period of the neuron. As
illustrated in Fig. 3, this increases the
asymmetry in the distributions. The model was able to quantitatively
predict both shape and location of interval distributions, as
illustrated by the typical examples shown in Fig.
4. Experimental distributions from one
laboratory (Marmaras et al. 1995
) are compared with
simulation findings for 15-, 30-, and 60-s control intervals under
three different cognitive loads (C1, C3, and C6). In all cases
(including those not shown in Fig. 4), the Kolmogorv-Smirnov two-sample
test confirmed that the distributions obtained from experiments and
simulations were the same (Fig. 4, P values are shown in the
inset of each panel).
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The model parameters fitting the experimental data are summarized in
Fig. 5. The inhibitory component
increased with the cognitive load for both production and estimation
(Fig. 5A, left), supporting our assumption that it could be
a useful indicator of the concurrent level of nontemporal information
processing. Interval estimation systematically involved additional
processing (i.e., higher inhibition), with respect to production under
the same cognitive load (Fig. 5A, left, compare
and
). Concurrent processing of simple cognitive loads was essentially
independent from the length of the interval to produce (Fig. 5A,
right, C1, ... , C4). Complex tasks (Fig. 5A, right, C5 and C6), however, required higher values for the
inhibitory conductance, suggesting that higher brain functions use
additional attentional resources that progressively inhibit the
time-keeping system with the length of the interval to produce. Because
cognitive load and interval length did not influence the variability of the excitatory mean ISI (Fig. 5B), our model supports the
view that additional processes not related to timing, such as the
actual attentional context, possibly influenced by personal experiences or training, affect the spread of the produced/estimated intervals. However, under the same cognitive load, time estimation systematically resulted in a lower variability for the excitatory frequency, with
respect to production of the same interval (Fig. 5B, left, compare
and
).
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DISCUSSION |
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Models of interval timing (reviewed by Gibbon et al.
1997
; Ivry 1996
) have been traditionally
implemented along two main lines using systems based on a pacemaker and
a spike counter or representing different intervals with distinct
elements corresponding to specific durations. Both kinds of
implementations have features based on experimental observations, but
none of them uses a realistic (biophysical) implementation and reaches
the kind of quantitative agreement with experiments that we have shown
here. Thus, a direct comparison with our model was not possible. We
have indicated a plausible link between biophysical mechanisms and
behavioral data on interval timing, using a basic framework that, in
principle, could be used as a "canonical model" (Shepherd
1992
) to study other psychophysical measurements that obey to
the same laws. The results suggest to investigate experimentally if the
same brain regions that are activated during production/estimation of
time intervals are also active during production/estimation of lengths
or weights.
All the main characteristics of intervals produced or estimated under
different cognitive loads were quantitatively reproduced without the
use of special purpose circuits or networks. According to our model, an
internal time-keeping system could be composed by a very simple network
(or even single neurons), firing APs elicited by a synaptic input
modulated by attention, and fed into a spike counter. It should be
noted, however, that its in vivo implementation most likely requires a
network rather than a single neuron. This would take into account
problems such as the output robustness with input synchronization,
which we have minimized using simple synaptic inputs to model the
attention-based synchronized activation of different population of
synapses. In fact, both the excitatory and inhibitory inputs could be
generated by afferent fibers activated at different stages of the
cognitive loads. Thus they may not be synchronized, although they may
fire at approximately the same rate. In this case, a network may be the
most appropriate solution to detect and elaborate this kind of features
(Hopfield and Brody 2001
). Although a biophysical
implementation of a spike count detector was outside the scope of the
present work, we would like to note that a spike count network could be
arranged using the intrinsic temporal integration properties of
neurons. However, the relatively slow time constants that would be
involved with intervals in the minutes range make this implementation
unlikely. A time-dependent associative neuronal network, with an output pattern coding the number of input spikes and complemented by an
appropriate learning process, may be a more suitable solution.
Only two fitting parameters were used: the level of inhibition and the variability of the excitation. Both are closely related to the physiological mechanisms that drive a neuron to fire action potentials. Because they indirectly control the mean firing rate and variability, the quantitative reproduction of the experimental average values and SDs may be somewhat expected. However, in contrast with the existing models, we were able to predict, in terms of the background synaptic activity, the experimental distributions of the produced/estimated intervals, which were not used in the fit procedure.
One of the unique features of this model is that it does not explicitly
uses memory stages and dynamics (Staddon and Higa 1999
),
although our assumption of the existence of an expected firing
frequency was an implicit use of a memory store. As we have shown here,
interaction of the timing processes with memory was not necessary to
quantitatively account for the intervals (and their variability)
produced or estimated by humans under different conditions. This,
however, may be a limitation of the model, because it may not take into
account with the same accuracy experiments using retrospective
paradigms or temporal discriminations, which explicitly need memory of
past events to calculate an interval.
It could also be argued that some constrains should be imposed on the
two parameters. For example, because we assumed that they depend on
attention, for a given cognitive load their values should be fixed for
any interval length or experimental protocol (production or
estimation). However, using these constrains it was not possible to
obtain a quantitative fit in all cases. Rather than consider this a
weakness of the model, we interpret this finding as a hint on the
processes underlying attention for specific tasks. For example, the
model suggested that cognitively more demanding tasks (such as C5 and
C6) increase their effects on time production with interval length
(Fig. 5A, right). Furthermore, a given cognitive load could
result in different information processing activities during estimation
or production. In particular, in the experiments using a Stroop
color-word test (Zakay 1993
) and in the model (Fig.
5A), a lower variability was found for estimation with
respect to production. This is surprising since, in general, experimental findings (Block et al. 1998
) and the model
(Fig. 1C), predict a greater variability for estimation when
an interval calculation is hindered by a given task. The model thus
suggests that, in this particular experiment, subjects used additional processes that resulted in estimations more accurate than productions. The effect of these additional processes was reflected in the higher
level of inhibition required by time estimation (Fig. 5A), suggesting that they were not directly related to time calculation. The
model can thus point out specific aspects of the experimental conditions.
One of the fundamental characteristics, that any computational model of
interval timing must be able to reproduce, is the variability of the
experimentally produced/estimated intervals, which does not show a
clear trend among tasks, interval lengths, and species (see Fig. 3 in
Gibbon et al. 1997
). In models using distributed
intervals, interpretation of experimental data assumes that the
underlying timing mechanisms conform to the (empirical) Weber's law,
according to which the observed standard deviation is a constant
proportion of the produced/estimated interval. Clock-based systems use
the Scalar Expectancy Theory (Gibbon 1977
,
1992
), in which memory effects account for the Weber
fraction of the observed variability. In both cases, there are no
detailed indications of the possible mechanisms involved at the single
neuron level. According to our model, the firing variability of the
neuron (or network) involved in the interval calculation depends on the
synaptic background activity. We propose that it is related to the
instantaneous attentional context as suggested by studies showing that
ongoing synaptic activity of neuronal populations is responsible for
the large variability in the evoked cortical responses to the same stimulus (Steinmetz et al. 2000
) and that the
attentional state increases neuronal firing synchronization
(Arieli et al. 1996
).
For the excitatory background, we used a mean ISI that was sampled from
a normal distribution from trial to trial (see METHODS). As
already noted by other authors (Gibbon et al. 1984
),
this approach results in a duration-independent variability and
corresponds to a mode of operation in which the attention given to the
elapsing time (modeled by the mean excitatory frequency) is engaged
once the subject starts the trial. However, essentially the same
results would have been obtained by changing (at random times) the mean excitatory frequency during a simulation, modeling fluctuation of
attention during a given trial. This suggests an experimentally testable prediction. In fact, which mode is effectively used by humans
could be tested by comparing the variability of the same interval
produced or estimated many times during a single long trial or during
multiple trials (with no feedback in both cases, to prevent learning
effects). Our model predicts that if the subject's attention is
engaged at the beginning of each trial, the variability should be lower
for intervals obtained during a long trial.
In the experiments, asymmetric distributions were essentially caused by
the occasional production/estimation of intervals much longer (~3-4
times) than the average value, especially under strong cognitive loads
(see, for example, the distributions for condition C6 in Fig. 4). With
the exception of the work by Bugmann (1998)
, who used a
neural network with probabilistic internal feedback to model
experiments on short (<1 s) durations discrimination, none of the
current models is able to explain the asymmetry at the single neuron
level. Our model predicts that it could be caused by the intrinsic
membrane properties and by the refractory period of the neuron, which
prevent very short ISIs to drive the involved neurons at high
frequency. Furthermore, an additional asymmetrical source of variance
is expected from the way in which, according to our model, humans
produce or estimate intervals (see METHODS) and is caused
by the inverse relationship that holds between the estimated interval
(TE) and the average interval between
two spikes (INTE) elicited by the synaptic
activity, TE ~ (TC/INTE)*INTEXP. This may explain why experiments on verbal estimations usually result in CVs higher than production (Block et al. 1998
)
(see also Fig. 1C).
Concluding remarks
The overall picture emerging from this work suggests that all the
main characteristics of estimated or produced time intervals could be
quantitatively explained, at the single neuron level, in terms of
attentional effects. More generally, the model further supports the
view that anytime attention is focused on a given task two essentially
independent processes are activated: an excitatory background on all
the neural systems involved with the task execution, at a mean
frequency that fluctuates according to reasons that are not related to
the specific task, and an inhibitory activity from those brain regions
involved with any concurrently attended, but unrelated, activity (such
as additional cognitive loads, environmental changes, diseases, etc).
Within this framework, for example, the shorter duration estimated for
an auditory stimulus with respect to a visual one (Wearden et
al. 1998
) could be interpreted in terms of the additional
attentional resources required to elaborate a visual input with respect
to an auditory one. Changes in the attention-based processes could also
explain why a number of factors such as age (Block et al.
1998
; Craik and Hay 1999
), drugs use (Frankenhaeuser 1959
), body temperature (Hancock
1993
), degenerative brain diseases (Nichelli et al.
1993
), and concurrent cognitive loads (Marmaras et al.
1995
; Zakay 1993
), interfere with the correct production or perception of a time interval.
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ACKNOWLEDGMENTS |
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We thank D. Zakay for useful comments on the early stages of this
work and G. Dounias for providing the complete set of experimental data
from Marmaras et al. (1995)
.
This work was supported in part by the Consiglio Nazionale delle Ricerche-Institute for Interdisciplinary Applications of Physics and the National Institute on Deafness and Other Communication Disorders (Human Brain Project).
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FOOTNOTES |
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Address for reprint requests: M. Migliore, Section of Neurobiology, Yale University School of Medicine, PO Box 208001, New Haven, CT 06520-8001 (E-mail: migliore{at}iaif.pa.cnr.it).
Received 26 March 2001; accepted in final form 14 August 2001.
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G. Baranauskas and M. Martina Sodium Currents Activate without a Hodgkin and Huxley-Type Delay in Central Mammalian Neurons J. Neurosci., January 11, 2006; 26(2): 671 - 684. [Abstract] [Full Text] [PDF] |
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