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The Journal of Neuroscience, August 15, 1998, 18(16):6608-6622
Sensitivity to Interaural Time Differences in the Medial Superior
Olive of a Small Mammal, the Mexican Free-Tailed Bat
Benedikt
Grothe1 and
Thomas J.
Park2
1 Zoologisches Institut, Universität
München, D-80333 München, Germany, and
2 Neurobiology Group, Department of Biological Sciences,
University of Illinois at Chicago, Chicago, Illinois 60607-7060
 |
ABSTRACT |
Neurons in the medial superior olive (MSO) are thought to encode
interaural time differences (ITDs), the main binaural cues used for
localizing low-frequency sounds in the horizontal plane. The underlying
mechanism is supposed to rely on a coincidence of excitatory inputs
from the two ears that are phase-locked to either the stimulus
frequency or the stimulus envelope. Extracellular recordings from MSO
neurons in several mammals conform with this theory. However, there are
two aspects that remain puzzling. The first concerns the role of the
MSO in small mammals that have relatively poor low-frequency hearing
and whose heads generate only very small ITDs. The second puzzling
aspect of the scenario concerns the role of the prominent binaural
inhibitory inputs to MSO neurons.
We examined these two unresolved issues by recording from MSO cells in
the Mexican free-tailed bat. Using sinusoidally amplitude-modulated tones, we found that the ITD sensitivities of many MSO cells in the bat
were remarkably similar to those reported for larger mammals. Our data
also indicate an important role for inhibition in sharpening ITD
sensitivity and increasing the dynamic range of ITD functions. A simple
model of ITD coding based on the timing of multiple inputs is proposed.
Additionally, our data suggest that ITD coding is a by-product of a
neuronal circuit that processes the temporal structure of sounds.
Because of the free-tailed bat's small head size, ITD coding is most
likely not the major function of the MSO in this small mammal and
probably other small mammals.
Key words:
medial superior olive; interaural time disparities; coincidence detection; inhibition; bat; amplitude modulation; mammalian
auditory brainstem
 |
INTRODUCTION |
Interaural time differences (ITDs)
are a major cue for localizing sounds. ITD processing is thought to be
accomplished by neurons that work as coincidence detectors (Jeffress,
1948
). This idea is based on the assumption of three main
features: (1) phase-locked inputs, (2) coincidence detection,
and (3) delay lines. The first assumption is that the discharge of the
neurons projecting to coincidence detector neurons encode the temporal
structure of a stimulus, e.g., exhibit a phase-locked discharge to the
pressure waves of low-frequency tones or the envelopes of
high-frequency tones. The second assumption is that binaurally
innervated detector neurons respond with a facilitated rate when
excitatory inputs from the two ears arrive coincidentally. The third
assumption is the existence of an array of cells receiving inputs with
systematically varying combinations of axonal length from both ears,
so-called "delay lines," thereby creating a place code of azimuthal
position.
The medial superior olive (MSO) seems to comprise all the features that
are necessary to work as an ITD-sensitive coincidence detector as
proposed by Jeffress (1948)
: (1) its neurons receive bilateral
excitatory inputs and respond with a phase-locked discharge; (2) the
neurons respond with a strongly facilitated rate to particular ITDs
(for review, see Irvine, 1986
, 1992
); and (3) different MSO neurons
are tuned to different characteristic ITDs (Yin and Chan, 1990
), conforming with the idea of an array of delay lines.
However, two major concerns remain. One is that ITD detection should be
used only in mammals with good low-frequency hearing and a sufficient
inter-ear distance capable of creating biologically useful ITDs
(Harrison and Irving, 1966
; Irving and Harrison, 1967
; Masterton and
Diamond, 1967
). For mammals with small inter-ear distances and
predominantly high-frequency hearing, like small rodents and bats,
interaural intensity differences (IIDs) are the main cues for
lateralization. However, because a number of studies have shown that
many small mammals possess an MSO (for review, see Covey and Casseday,
1995
), the question becomes what its function is in these animals.
The second concern is the role of the inhibitory projections to the MSO
(see Fig. 1A). Although the Jeffress model does not incorporate a role for inhibition, much evidence suggests that inhibition is involved in ITD coding in the MSO (Clark, 1969
; Goldberg
and Brown, 1969
; Perkins, 1973
; Yin and Chan, 1990
; Grothe and
Sanes, 1994
).
Here we examine the two concerns described above. We investigated
whether the MSO in the free-tailed bat shows ITD sensitivity similar to
that of other mammals and whether ITD coding is its major function. One
advantage of studying the MSO of the free-tailed bat is that many of
its cells receive the full complement of the common MSO inputs,
bilateral excitation and bilateral inhibition, whereas other cells
receive less than the full complement (Grothe et al., 1997
). In other
words, the free-tailed bat MSO has neurons receiving different subsets
of the common MSO inputs, allowing us, by means of comparison, to gain
information about the role of different inputs
the inhibitory inputs
in particular
for creating ITD sensitivity.
 |
MATERIALS AND METHODS |
Six Mexican free-tailed bats, Tadarida brasiliensis
mexicana, from Texas were used in this study. During surgery the
bats were anesthetized with sodium pentobarbital (15 mg/kg) and
methoxyflurane inhalation. Skin and muscles were deflected from the
upper part of the skull, and a metal rod was mounted to the skull using
cyanoacrylate and dental cement that was later used to secure the
bat's head during recordings. A small hole (0.5-1 mm diameter) was
cut over the inferior colliculus on one side. The stereotaxic procedure described by Schuller et al. (1986)
was used to define the position and
angle of penetration of the recording electrode. After the skin and
muscles from the bats skull were deflected, the sagittal profile of the
skull was scanned at the midline and at 100 µm lateral off the
midline on both sides in 50 µm steps. Additionally, the transversal
profile was scanned at two different rostrocaudal positions. The
individual scans were compared with an averaged standard profile for
skull and brain (derived from 10 free-tailed bats from earlier
studies). The use of a fixed reference point in the custom-made
stereotactic apparatus allowed us to predict the penetration
coordinates for hitting the MSO (error less than ±100 µm) (see Fig.
2, insert in top left corner). The histological analysis at the end of the experiment (see Fig. 2) allowed us to
precisely reconstruct each recording site. For more details see
Schuller et al. (1986)
.
Recording started after full recovery of the bat in a sound-attenuated
and heated room (27-30C°). Water was offered repeatedly to the bat
during recording sessions. If the animal emitted alarm calls or
struggled (signs of discomfort), the local anesthetic was refreshed,
and an additional subanesthetic injection of sodium pentobarbital (10 mg/kg body weight) was given subcutaneously. This dosage of
pentobarbital never induced anesthesia. The bats were still awake;
their eyes were open, they drank water when it was offered, and they
responded when their face or ears were touched gently. There were no
noticeable, systematic changes in neuronal response properties from the
pentobarbital. These additional pentobarbital injections were
administered on only several occasions and then only once during a
given recording session. Recording sessions generally lasted from 3 to
5 hr/d to minimize the animals' discomfort from being restrained, and
individual animals were usually tested on 5 consecutive d.
Action potentials were recorded extracellularly using glass pipettes
filled with 1 M NaCl. Impedance of the recording electrodes ranged from 5 to 20 M
. The electrodes were advanced with a
piezoelectric drive (Burleigh Inc.) controlled from outside the
recording chamber. Spikes from single units were fed via a recording
amplifier, a bandpass filter (0.3-5 kHz), and a window discriminator
into a computer. Criteria for recording single neurons were stable
waveforms and amplitudes from spike to spike that systematically
changed when the electrode was moved slightly in 1 µm steps. In all
cases, signal-to-noise ratio was >60%. In contrast to the MSO in
other mammals, the neurophonics that make it particularly difficult to
isolate single neurons (Yin and Chan, 1990
) are much less
prominent in the bat MSO. This may be attributable to the sharp
frequency tuning of single neurons resulting in a relatively small
number of MSO inputs activated by pure tones. The software used for
controlling stimulus presentation and recording was programmed by M. Baumann and S. Kieslich (Zoologisches Institut, Universität
München). Programming for Tucker-Davis-Technology
equipment was provided by John H. Casseday (Department of
Psychology, University of Washington).
Acoustic stimuli were presented via custom-made earphones (Schlegel,
1977
; Schuller, 1997
) fitted to the ears with probe tubes (5 mm
diameter). The earphones were calibrated using a one-quarter inch Bruel
& Kjaer microphone, and they showed a variability of less than ±3 dB
over the frequency range used (15-80 kHz). Acoustic isolation between
the two ears was better than 40 dB for all frequencies used in our
experiments. Intensities between the two earphones did not vary more
than ±3 dB.
Pure tones and sinusoidally amplitude-modulated stimuli (SAM) (100%
modulation depth) were used as search stimuli. The stimuli were
presented at a rate of four per second. A unit's best (characteristic) frequency and thresholds for both ears were determined to set stimuli
parameters for subsequent control by computer. Binaural characteristics
of neurons were tested by keeping the intensity at one ear 20 dB above
threshold and changing the intensity of the opposite ear (10 dB steps)
and vice versa, using pure tones (40 msec duration) as well as using
SAM stimuli at 100 and 200 Hz modulation rate (100 msec duration). The
existence of ipsilateral or contralateral inhibition was additionally
determined by using the following combination of features as indicators
of inhibitory inputs: phasic on-responses to pure tones, nonmonotonic
rate level functions, and low-pass filter characteristics for amplitude
modulation rates. Because these features are usually not seen in the
lower centers that project to the MSO, they are thought to be mediated by inhibition acting at the target MSO cell (cf. Grothe et al., 1997
).
ITDs were created digitally using either custom-made hardware
("Delayus") or Tucker-Davis-Technology-Systems. ITDs ranged from
±1 µsec to ±20 msec. In one animal, 1 sec binaural beat SAM stimuli
with beat frequencies of 2 or 5 Hz were additionally used to test ITD
sensitivity.
Each test signal was presented either 20 times (normal SAM stimuli) or
30 times (binaural beat), if not indicated differently in text or
figure legends. Spike count-based as well as vector strength-based (VS)
ITD functions were calculated. VS values range from 0 to 1 and indicate
how well neuronal discharges are correlated with the phase of the SAM
modulation frequency (calculations according to Goldberg and Brown,
1969
). Only statistically significant VS values that fulfilled the
p < 0.001 level in the Rayleigh test (Mardia, 1972
)
were used. To define the characteristic interaural delay (CD) and
characteristic phase (CP) of a neuron, mean vectors of interaural phase
difference (IPD) functions where calculated (cf. Yin and Kuwada, 1983
).
Again, only measurements that were statistically significant (see
above) were used. IPD functions that had a mean vector with a vector
strength below 0.2 were excluded from the analysis.
Recording sites were confirmed by small HRP injections at the end of
each experiment. Perfusion and histology procedures followed Vater and
Feng (1990)
.
 |
RESULTS |
In a preceding paper (Grothe et al., 1997
) we showed that the MSO
of the free-tailed bat contains neurons receiving different combinations of the common MSO inputs (Figs.
1A,
2). Many neurons receive
excitatory and inhibitory projections from both ears (EI/EI) defined by
indirect evidence such as phasic response patterns, nonmonotonic
rate-level functions, and low-filter cut-offs for amplitude-modulated
stimuli. These response characteristics are abundant in bat MSO neurons
but unusual for anteroventral cochlear nucleus (AVCN) bushy
cells, the cells that send excitatory projections to MSO (Vater,
1982
). Additionally, MSO cells frequently show strong inhibitory
effects at particular IIDs, which cannot be compensated for by changing
ITDs [Grothe et al. (1997)
, and see below]. Each of the inhibitory
effects described above are consistent with the anatomical input
patterns to the MSO (Grothe et al., 1994
, 1997
), and they can be
blocked pharmacologically in the mustached bat (Grothe, 1994
) and the
species used in this study (B. Grothe and L. Yang, unpublished
results). However, there were subpopulations ofcells that failed to
show excitatory effects from the ipsilateral ear (I/EI) or that failed
to show prominent inhibitory effects from both ears (E/E). There were
also monaural cells that responded only to one ear.

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Figure 1.
A, The principal connections of the
MSO include not one but two sets of inputs. First, AVCN
spherical bushy cells from both sides project directly to MSO neurons
providing binaural excitation. Second, glycinergic inhibitory neurons
in the MNTB (evoked by contralateral stimulation) and
LNTB (evoked by ipsilateral stimulation) project to the MSO.
B, PST histograms (PSTHs) for the three sources
of MSO inputs: AVCN (ipsilateral and contralateral; from
Vater, 1982 ); MNTB (contralateral), and
LNTB (ipsilateral). All of the four inputs show
phase-locking in response to SAM stimuli (temporal resolution of the
PSTH: 0.1 msec).
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Figure 2.
Reconstruction of recording sites in one of the
bats used in this study. After the stereotactic procedure described by
Schuller et al. (1986) , the profile of the skull was measured in the
sagittal (top right inset) and the horizontal plane
(bottom left inset). The profiles were fitted to
standard sections as shown in the top right inset. This
way the position of the MSO could be predicted with an error of less
than ±100 µm. A small HRP injection (arrow) during
one of the first penetrations and a large HRP injection (black
area in section 3, black dots in
insets) 24 hr before killing the animal were used to
confirm the stereotactic calculations and to precisely reconstruct all
recording sites. The shaded areas in the two areas give
the range of penetrations in this particular animal. The tilted
lines labeled 1-5 (top left
inset) give the planes of sectioning.
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Here we present data from 51 binaural MSO neurons in response to ITDs.
In addition, 11 monaural cells were encountered but not included in the
analyses below. Furthermore, we recorded from 19 medical nucleus of the
trapezoid body (MNTB) and 12 lateral nucleus of the trapezoid
body (LNTB) cells to explore the temporal response patterns of
the inhibitory MSO inputs. We will turn first to a general description
of ITD sensitivity. We then turn to a more specific analysis of the ITD
functions found in the different subsets of MSO cells. Differences in
the ways that these subgroups respond to ITDs will be used to suggest
what role each input plays in ITD coding. Finally, we will propose a
simple model of how the excitatory and inhibitory inputs might interact
in creating ITD sensitivity. Most data presented were obtained using
SAM tones with high-frequency carriers (at each neuron's best
frequency) presented as 100 msec stimuli. In some cases we used 1 sec SAM stimuli with modulation frequencies that differed by 2 or 5 Hz between the two ears, creating a 2 or 5 Hz binaural beat. The carrier
frequency was always kept at the characteristic (best) frequency of a
neuron, 20 dB above threshold of the contralateral ear. Unless stated
otherwise, the IID was set to 0 dB.
MSO inputs phase-lock to SAM stimuli
Auditory neurons in the free-tailed bat are tuned to high
frequencies and hence do not phase-lock to pure tones; therefore, we
used SAM stimuli. The rationale of using SAM stimuli is that the MSO
neuron receives inputs from both ears that are phase-locked to the
stimulus envelope and that can be presented with an interaural phase
difference. The phase-locked nature of the MSO inputs has been shown in
the cat for the two excitatory AVCN inputs as well as for the
inhibitory MNTB projection (Smith et al., 1993
). The poststimulus-time
(PST) histograms in Figure 1B show examples of
how MNTB (n = 19) and LNTB (n = 12)
neurons in the free-tailed bat phase-lock to the stimulus envelope of
SAM stimuli. For both MNTB and LNTB, the phase-locking was robust up to
high-modulation frequencies (>800 Hz) in all neurons tested. Whether
the inputs are phase-locked to the carrier frequency or the stimulus
envelope should not make a difference for the ITD detection mechanism. For example, Yin and Chan (1990)
described a cat MSO neuron that was tuned to high frequencies and did not phase-lock to pure tones but
exhibited an ITD sensitivity to the stimulus envelope comparable to the
ITD sensitivity of low-frequency neurons in response to pure tones.
Batra et al. (1989)
showed similar results for the rabbit inferior
colliculus in response to SAM stimuli, and they argued that these
results reflect an input from high-frequency MSO neurons. MSO neurons
in the free-tailed bat respond to monaurally as well as binaurally
presented 100 msec SAM stimuli, with a robust phase-locked discharge
correlated to each cycle of the SAM stimulus (Grothe et al., 1997
).
Typically there is a decrease in discharge rate over the first 50-80
msec of stimulation. However, despite the initial decrease in spike
count, there is still a consistent, phase-locked response throughout
the remaining portion of the stimulus, independent of its duration.
MSO neurons show ITD sensitivity
To measure the ITD sensitivity of the bat's MSO, we tested each
cell using a range of ITDs that spanned at least the duration of one
full SAM cycle in each direction (±360° IPD) for every SAM
rate tested. Figure 3 shows PST
histograms for the response to selected ITDs for a typical EI/EI neuron
tested with a 200 Hz SAM stimulus. Spike counts diminished
progressively as the two stimuli were presented more and more out of
phase in either direction. For this cell, the response to the first SAM
cycle was not affected, as was the case in about half of the neurons tested. In the remaining half, the on-response was reduced by at least
25%, and in some cells by up to 90%. However, in contrast to the late
responses, it never fully disappeared.

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Figure 3.
Effects of ITDs on the response of an MSO neuron
to 20 repetitions of a 200 Hz SAM tone. The PSTHs show how the cell
responded for five different ITDs, ranging from 2 to +2 msec. The
neuron responded with good phase-locking to ITDs near 0. When the
signal to either ear was delayed, the phase-locked response disappeared
and only the first on-response remained (temporal resolution of the
PSTH: 0.1 msec).
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Figure 4 shows the complete ITD function
for the EI/EI cell described above. This function spans the range of a
full SAM cycle in both directions, revealing a cyclic ITD function for
both the spike count and the synchronization coefficient (vector
strength). The peak spike count occurred when the ITD was near 0. Also,
the peak spike count for this binaurally derived function was
substantially higher than the spike counts evoked by monaural
stimulation of either ear (Fig. 4, arrows). Minimum spike
counts occurred when the stimuli were shifted approximately
one-half of the SAM cycle and were clearly below that for
monaural stimulation. The spike count peaked again when the two stimuli
were shifted approximately one full SAM cycle in either direction.
Thus, the ITD function of this neuron showed an in-phase maximum and
out-of-phase minimum, typical of the ITD functions reported previously
for MSO cells in other mammals. The majority of MSO cells (90%)
exhibited such cyclic ITD functions. As laid out in detail below, the
principal positions of peaks and troughs, however, was different in the different subsets of cells (EI/EI, E/E, I/EI).

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Figure 4.
ITD functions from the neuron shown in Figure 2,
again in response to 200 Hz SAM. The triangles give the
normalized spike rate as a function of ITD; the dots
give the calculated vector strength as a function of ITD. Note that a 5 msec ITD equals one cycle of the 200 Hz SAM. Both functions were
calculated from 20 stimulus repetitions at each ITD. The
arrows give the response to monaural stimulation.
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Is the ITD sensitivity in the biologically relevant range for the
free-tailed bat?
To get an index of ITD sensitivity, we measured the distance from
the peak of the ITD function to the point where the function declined
to 75% of the peak. Although the ITD functions that we measured were
cyclical, they were not necessarily symmetrical: the steepness of the
two halves of the cyclic functions were often not identical. Therefore,
we chose to measure the distance from the peak to the 75% decline at
the side closer to 0 ITD (Fig. 5A). Because the slope of the
ITD functions depends on the phase relationship and hence on the
modulation rate, we used the highest SAM rate that gave a robust
response (spikes/cycle
0.5) that was available in our data set,
usually 200-400 Hz (n = 38; neurons tested only with
SAM rates below 200 Hz are not included). However, because we used 100 Hz (or sometimes 50 Hz) SAM rate steps, our measures most likely
underestimate the cells' best ITD sensitivity.

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Figure 5.
Sensitivity of MSO neurons to ITDs calculated for
the highest modulation rate to which each neuron responded (>0.5
spikes per cycle and stimulus presentation). A, The
distance from the peak of the ITD function to the 75% point closest to
0 ITD was taken as an index of ITD sensitivity (indicated by the
shaded area). B, Distribution of ITD
sensitivity of 37 MSO neurons. Note that maximal ITD sensitivity
depends in part on the maximal SAM rate to which a neuron responds (for
details, see text).
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|
We found that ITD sensitivity varied from cell to cell. The
distribution of sensitivity values is shown in Figure 5B.
The majority of neurons exhibited ITD sensitivity values below 1000 µsec, but only six neurons had values below 200 µsec.
The distribution of ITD sensitivities described above shows that none
of the neurons had an ITD sensitivity in the range relevant for the
free-tailed bat, because the bat's small head can only generate ITDs
up to ~30 µsec (Pollak, 1988
). However, nearly half of the neurons
tested exhibited ITD sensitivities in the range relevant for larger
mammals such as dogs or cats. The striking similarity between ITD
functions from bat MSO neurons and those from cat MSO neurons is
illustrated in Figure 6. For means of comparison we transformed the ITD functions into IPDs of the modulation frequency. Figure 6A shows an IPD function from
a cat MSO neuron in response to a 300 Hz pure tone (data from
Yin and Chan, 1990
). Figure 6B shows a typical
IPD function from a free-tailed bat MSO neuron in response to a 200 Hz
SAM stimulus. One can see very little difference between these two
functions. However, although the ITD function is within the range of
naturally occurring ITDs (Fig. 6, shaded area) for the cat,
it is far outside of that for the free-tailed bat.

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Figure 6.
Comparison of the ITD sensitivity of an MSO neuron
in the cat (A) [data from Yin and Chan
(1990) , their Fig. 3] and a neuron in the MSO of the
free-tailed bat (B). As illustrated here, ITD
functions reported for the cat, as well as those we measured from the
bat, showed a correlation of response magnitude with the relative phase
difference of the stimulus at the two ears. Hence, to facilitate a
direct comparison, ITDs were translated into phase differences on the
x-axis of the graphs presented here. In the example
shown for the cat (A), the neuron was tested with
a 300 Hz pure tone, and sensitivity was related to the relative timing
of the 300 cycles/sec at each ear. The stimulus presented to the bat
(B) was a high-frequency tone that was
amplitude-modulated at a rate of 200 cycles/sec, and sensitivity
was related to the relative timing of the amplitude modulations. The
shaded areas on each graph display the range of
corresponding ITDs that naturally occurs for these species.
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Most EI/EI neurons exhibit typical MSO-type ITD functions
We tested 31 EI/EI neurons for ITD sensitivity to SAM stimuli.
These cells were classified as EI/EI because they showed clear evidence
of both binaural excitation and binaural inhibition (see Materials and
Methods). The responses to ITDs already described for the cell in
Figures 3 and 4 were typical for all but one of the 31 EI/EI neurons.
In 21 of the 31 EI/EI cells, the binaural response at best ITD was more
than 1.3 times that of the summation of the two monaural responses.
Thus, there was considerable facilitation in the majority of these
cells, a crucial factor in the Jeffress model of coincidence detection.
The averaged facilitation for the 31 cells at the best ITD was 1.52 (SD
0.74).
Another key feature of the Jeffress coincidence detector model is that
a cell's best interaural time difference remains stable for different
stimulus frequencies. MSO neurons in the cat (Yin and Chan,
1990
) and gerbil (Spitzer and Semple, 1995
) respond in this way.
To determine whether ITD sensitivity in the bat's MSO also shows this
feature, we obtained ITD functions for three or more modulation
frequencies (between 50 and 750 Hz) from 18 of the EI/EI neurons. The
cyclic shape of the ITD function described above was observed for every
SAM rate that the cells could follow with a phase-locked discharge.
Figure 7A gives an example of
a neuron that was tested with three different modulation rates; 100, 200, and 300 Hz. All three functions peaked near 0 ITD, and the troughs
occurred at ITDs corresponding to approximately one-half of the SAM
cycle. For the 100 Hz SAM, troughs occurred at approximately ±5 msec,
which is the duration of half a cycle for a SAM of 100 Hz. Presenting a
200 and 300 Hz SAM to the same cell generated troughs at approximately
±2.5 and ±3.33 msec, respectively, which is again the duration of
half a cycle. The same type of cyclic pattern was observed for the
corresponding vector strength functions, although vector strength-based
ITDs never showed as precise a match of the peaks for different SAM
rates. These observations suggest that the ITD sensitivity of this cell
is consistent with the coincidence mechanism proposed by Jeffress
(1948)
.

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Figure 7.
ITD sensitivity of a neuron that receives binaural
excitation and inhibition in response to SAM stimuli. A,
Normalized discharge rates to SAM stimuli with 100, 200, and 300 Hz
modulation rates. Note that the peaks are rather stable, whereas the
troughs shift as a function of the modulation frequency.
B, The corresponding values of synchronization (vector
strength). C, Histograms showing the monaural responses
to 100 Hz SAM as a function of modulation phase (left
panels) and best interaural phase diagram (right
panel). The regression line indicates an EE coincidence
mechanism. For details, see text.
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For each cell tested, we quantified the measures described above. To
this end, we first converted ITD functions into IPD functions. This
allowed us to perform a detailed phase analysis that takes into account
the entire shape of the function, not only the peak or trough (cf.
Goldberg and Brown, 1969
; Yin and Kuwada, 1983
). First, we calculated
the interaural phase delays in degrees as a function of the SAM
frequency. The interaural phase delay gives the peak in the IPD
functions, which corresponds to the peak in the ITD function. By
calculating the interaural phase delays for different functions, one
can calculate a CP relationship of the two inputs (equals the intercept
of the regression line derived from the measured interaural phase
delays for different frequencies with the y-axis). For a
Jeffress coincidence detector neuron this CP would be 0 (0°) or 1 (360°). As depicted in Figure 7C, bottom panel, the neuron
in fact resembles this aspect of a coincidence detector neuron in that
its CP is close to one (0.982 cycles = contralateral leading by
0.018 cycles). Moreover, for a Jeffress coincidence detector neuron,
the interaural phase delay at a certain modulation frequency should be
predictable from the monaural response to the same frequency and
intensity. For example, if the response to ipsilateral stimulation has
a different latency than the contralateral response, presenting this
difference as ITD should bring the two responses into register. Hence,
a coincidence detector neuron should respond maximally to this
particular ITD. For the neuron shown in Figure 7, we calculated the
phase histograms for the monaural responses (Fig. 7C shows
the phase histograms for 100 Hz SAM). The interaural phase delays
predicted from these histograms in fact matched the interaural phase
delays that we measured: the calculated phase difference for 100 Hz
(0.979) differed only ~0.003 cycles from the measured phase delay.
Similar values derive from the comparisons for 200 Hz (0.011) and 300 Hz (0.006). Additionally, the steepness of the regression line gives
the CD of the contralateral input. The steepness of 0.0002 of the
interaural phase delay function indicates a CD of 200 µsec.
Of the 18 EI/EI cells, 10 behaved as described above. This suggests
that MSO cells in the bat and other mammals share a common underlying
mechanism for creating ITD sensitivity. Moreover, these neurons seem to
conform with the Jeffress model. The characteristics of the ITD and IPD
functions shown by the remaining EI/EI cells will be addressed in
detail below.
Results from four additional EI/EI cells tested with binaural beat
stimuli also support a coincidence mechanism for bat MSO cells. We used
binaural beat stimuli because this stimulus has been used as a standard
test for ITD sensitivity in a number of previous studies (Yin and Chan,
1990
; Spitzer and Semple, 1995
).
To generate binaural beat stimuli, we presented SAM tones to both ears,
with a modulation rate at the ipsilateral ear that was 2 or 5 Hz higher
than that presented to the contralateral ear so that the cycles of the
two stimuli went in and out of phase 2 or 5 times per second,
respectively. Hence, the stimuli are said to "beat" at 5 Hz. This
stimulus paradigm was presented to each of four EI/EI cells, using six
different combinations of SAM rates from 75 Hz at the contralateral ear
and 77 (2 Hz beat) or 80 Hz (5 Hz beat) at the ipsilateral ear, up to
225 Hz at the contralateral ear and 227 or 230 Hz at the ipsilateral
ear.
The response pattern from one of the four EI/EI cells to the beat
stimuli is shown in Figure
8A (for reasons of
clarity only five curves are shown). Each curve represents the response
to a different combination of SAM rates, each of which beats at 5 Hz.
The curve that achieved the highest spike counts at its peaks was
derived by presenting a tone with a SAM rate of 75 Hz to the contralateral ear and a tone with a SAM rate of 80 Hz to the
ipsilateral ear. Higher SAM rates (e.g., n SAM rate of 225 to the
contralateral ear and 230 to the ipsilateral ear) generated lower spike
counts. However, in each curve the periodic response to the 5 Hz beat is apparent, showing that the cell responded best to one particular combination of envelope arrival times per beat.

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Figure 8.
A, ITD sensitivity of a binaurally
excited and binaurally inhibited neuron to binaural beat stimuli with
different modulation frequencies. The function for the different SAM
rates lines up because the beat frequency was 5 Hz for all tests.
Hence, the interaural phase difference at a given ITD was identical for
all SAM rates. B, Monaural phase histograms and
interaural phase histogram indicate an EE coincidence mechanism. For
details, see text.
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We used the data from the beat stimuli to construct a plot of
interaural phase as a function of SAM rate, as we did previously for
the static SAM stimuli. Figure 8B gives the
interaural phase plot for the data in Figure 8A. The
characteristic delay for this cell, calculated from the interaural
phase plot, was 1.9 msec. The characteristic phase for this cell, also
calculated from the interaural phase plot, was close to 1 (0.954),
indicating an EE coincidence mechanism. Comparing the calculated and
predicted best IPDs at 100 Hz (0.0038) and 200 Hz (0.029) also supports a coincidence mechanism. Each of the four neurons tested with the beat
stimuli behaved like the cell described above.
Taken together, of the 22 EI/EI cells tested with various SAM rates (18 cells tested with static SAM stimuli and four cells tested with beat
stimuli), 14 had ITD functions indicative of a Jeffress coincidence
mechanism. The responses of the remaining eight EI/EI cells were not
consistent with a Jeffress-type coincidence mechanism. These cells are
described in the next section.
Some EI/EI neurons showed ITD functions not consistent with the
Jeffress coincidence model
Eight cells showed ITD functions and/or interaural phase functions
that were not consistent with a Jeffress-type coincidence mechanism,
despite clear evidence of receiving EI/EI inputs. Three of these
neurons had interaural phase functions that showed unpredictable best
delays with different SAM rates and, correspondingly, CD values far
from 0 or 1. Two units showed ITD functions suggestive of an IE
mechanism: instead of peaking near 0 µsec ITD, their functions had
the lowest spike counts near 0 µsec ITD. The remaining three cells
exhibited double-cyclic ITD functions with unpredictable second peaks,
as explained in detail below. Another feature that distinguished these
cells from the one described in the previous section was that their ITD
functions were highly asymmetric.
An example of a cell that had a double peak in its ITD function is
shown in Figure 9. The phase histograms
(SAM phase-related response over all cycles of the 100 msec stimulus)
for this cell reveal a fundamental difference between the responses to
different SAM rates. At 100 and 200 Hz SAM rates, the neuron responded
to a small range of ITDs of approximately 1.5-3 msec
(ipsilateral leading) to both SAM rates. This is shown in the three
phase histograms in Figure 9B derived from the 200 Hz SAM
stimulus. In contrast, at 400 Hz SAM rate this second peak never
occurred. The peaks of the ITD functions could not be predicted by the
mean phase angles of the monaural responses. For instance, the
interaural phase delay predicted from the two phase histograms for
monaural stimulation with the 200 Hz SAM would have been 0.18 (ipsilateral delayed), but there was no peak at the corresponding ITD
(+0.9 msec).

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Figure 9.
ITD sensitivity of a neuron that receives binaural
excitation and binaural inhibition in response to SAM stimuli. This
neuron exhibited an ITD sensitivity that differed from those described
for other mammals in that the peaks did not line up. A,
Normalized discharge rates to SAM stimuli with 100, 200, and 400 Hz
modulation rates. B, The phase histograms for binaural
responses to 200 Hz SAM exhibit one peak for an ITD of 1 msec but two
peaks for +2 msec. The regression line in the interaural phase delay
diagram (C) does not conform with either an EE or
an EI coincidence mechanism.
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The eight neurons described in this section showed clear evidence for
binaural excitation and binaural inhibition (EI/EI type). Furthermore,
these cells were sensitive to ITDs; they responded differentially to
different ITDs. However, either because the ITD functions of these
cells had unpredictable peaks with different SAM rates and were highly
asymmetric or because they peaked far from 0 µm ITD, they failed to
match the Jeffress coincidence detector model. As we shall explain in
detail below, the data from these cells suggest a complex interaction
of all four inputs, including the inhibitory inputs, in creating ITD
sensitivity. In the following sections we will focus on this issue by
examining other MSO cells that appeared to lack inhibitory or
excitatory inputs.
ITD functions of E/E neurons
Four of the binaural cells that we studied could be driven
monaurally from both ears but showed no signs or only very weak signs
of inhibitory inputs. The spike count-based ITD functions of these
cells failed to show the typical Jeffress-type ITD sensitivity, although they did show a sensitivity in terms of vector strength (two
of these cells were tested with static SAM stimuli and two with beat
stimuli). The ITD functions and selected PST histograms from one E/E
cell are shown in Figure 10. The PST
histograms indicate that the cell responded to both excitatory inputs
at every ITD, causing the spike count-based ITD function to remain
flat. As for vector strength, when the two inputs were out of phase,
the two peaks canceled each other out, resulting in a low vector
strength, but when the two inputs were in phase, the single peak caused a substantial increase in vector strength.

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Figure 10.
Example of a neuron that showed no evidence of
inhibitory inputs. This neuron showed no ITD sensitivity in the spike
count function (A). The phase histograms for
binaural stimulation with 100 Hz SAM (B) show
separate peaks for ITDs far from 0 and coincidence of the two inputs
around 1 msec ITD.
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ITD functions of I/EI neurons
Further evidence of the importance of the inhibition in creating
ITD sensitivity comes from a subset of MSO neurons that showed no sign
of ipsilateral excitation but retained contralateral excitation and
binaural inhibition. One would expect these I/EI neurons to exhibit an
ITD sensitivity typical of I/E neurons as shown for lateral superior
olive (LSO) (Joris and Yin, 1995
; Park et al., 1996
). We tested
16 I/EI neurons. Each of them had cyclic ITD functions for spike counts
and vector strength. Figure
11A shows ITD
functions from an I/EI neuron in response to 100, 200, and 400 Hz SAM
rates. For each SAM rate there was a cyclic ITD function with the
troughs lining up around 0 ITD. Hence, these neurons show ITD functions
consistent with an IE mechanism. This is confirmed by the corresponding
interaural delay function (Fig. 11B) revealing a CP
of 0.48 and a CD of 400 µsec.

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Figure 11.
ITD sensitivity of a neuron that receives only
contralateral excitation but binaural inhibition in response to 100 msec SAM stimuli. A, Normalized discharge rates to SAM
stimuli with 100, 200, and 400 Hz modulation rates. Note that the peaks
shift as a function of the modulation frequency, whereas the troughs
are rather stable. B, Histograms showing the monaural
responses to 100 Hz SAM as a function of the modulation phase
(left panels). The regression line of the interaural
phase delays measured for different SAM rates indicate an EI
coincidence mechanism (right panel). For details,
see text.
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Each of the I/EI neurons retained the cyclic characteristic for all SAM
rates tested; however, there were two features that generally
distinguished the population of I/EI neurons from the population of
EI/EI neurons. First, the peak spike counts from the ITD functions of
the I/EI cells never surpassed the spike counts from monaural
stimulation, whereas they always did so in the EI/EI cells. Second,
although the ITD functions of some of the I/EI cells troughed near 0 µsec ITD, as do E/I cells in the LSO, many of the I/EI cells had
troughs that were far from 0 µsec as did the EI/EI cells. In
some cases, the troughs were 180° away from 0 ITD. In fact, if ITDs
had not been manipulated, four of the I/EI neurons would have been
classified as O/EI cells because of the long latency of the ipsilateral
inhibition relative to the contralateral excitation. Figure
12 gives four examples of I/EI neurons
showing different positions of 75% cut-offs, all in response to a 100 Hz SAM rate. Compared with the distribution of peaks observed for the
EI/EI cells, the peaks for the I/EI cells encompassed a much broader
range of ITDs (p < 0.001; unpaired t
test). However, a substantial number of I/EI cells had peaks within the
range observed for the EI/EI cells.

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Figure 12.
ITD functions of four different I/EI neurons. The
arrows mark the 75% cut-offs, which are distributed
over a wide range of different ITDs.
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In summary, the data from the I/EI cells suggest that ITD sensitivity
in these MSO neurons is a consequence of a simple IE mechanism
(coincidence of an excitatory and an inhibitory input creates a trough
in the ITD function). Therefore, one might suggest that different
subsets of MSO cells rely on fundamentally different mechanisms for
temporal processing. Alternatively, what appears to be differences in
temporal processing might be attributable to variations of a common
mechanism: the relative arrival times of multiple excitatory and
inhibitory inputs. The following sections will describe how such a
temporal interaction might work in creating ITD functions.
Scenario of the interaction of binaural excitation and inhibition
in creating ITDs
So far we presented evidence that the inhibitory inputs play an
important role in shaping ITD functions in the MSO. Moreover, it
appears that the timing of the inhibition might be of particular importance. But how could the complex interaction of the various MSO
inputs play together in creating ITD functions, and why do they differ
in different EI/EI neurons? We approached this question by constructing
a simple scenario that takes into account the time course of each of
the different MSO inputs.
Most of the neurons we recorded from had inputs from at least one ear
that included both excitation and inhibition. In our previous article
(Grothe et al., 1997
) we reported that there are two basic temporal
patterns of these monaural excitatory and inhibitory inputs. In some
neurons inhibition occurred only after excitation, and in other cells
inhibition occurred before excitation as well as after. On average, the
leading input occurred ~2 msec before the lagging input (range,
~0.5 to 5 msec). A similar relationship of monaural excitation and
inhibition was found for the mustached bat MSO (Grothe, 1994
).
Additionally, these previous studies indicate that spikes resulting
from excitation occur within a narrow time window, whereas
inhibition takes place throughout the stimulus duration. In those
neurons that showed inhibition before the excitation as well as after,
it appears that only the transient component of the excitation is
strong enough to overcome the sustained inhibition. For our model we
used the two basic input patterns and the general time parameters
described above. In addition, we also considered monaural inputs that
lack either the excitatory or inhibitory component.
To determine how these various input patterns might affect ITD
sensitivity, we simulated their binaural interactions for different ITDs. Because we do not know the actual underlying EPSPs and IPSPs, we
based our calculation on the observable excitatory and inhibitory effects, resulting in the patterns described above. Furthermore, we
assumed equal strength of the excitatory and inhibitory inputs such
that excitation and inhibition occurring at the same time generate no
output (output = 0). Excitation alone was assigned a value of 1 (output = 1). We assumed a facilitation of ~50% when excitatory
inputs are coincident (output = 3). This value roughly corresponds
to the facilitation we observed in EI/EI cells. However, this
facilitation is not essential for the model because it heightens some
of the peaks and hence has a quantitative effect but does not affect
the shape of the ITD functions. We simulated the response to 100 msec
SAM stimuli with different modulation rates (as used in the
recordings). ITDs were varied from
10 to +10 msec, in 0.5 msec steps.
The net output at each ITD was calculated using a 0.5 msec binwidth.
From these points a smoothed ITD function was calculated using the
formula:
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|
where N is the number of preceding periods that is used
for smoothing, Aj is the actual value at a given point
j, and Fj is the predicted value at point
j.
The first binaural cell type we simulated was I/EI: pure inhibition
from one ear and the most common monaural input pattern from the other
ear (leading excitation with lagging inhibition). The results are shown
in Figure 13A. The schematic
in the left panel show the starting point (ITD = 0) for the 100 and 200 Hz SAM stimulations. Hatched bars represent excitation, and
solid bars represent inhibition. Although we calculated the output for each ITD based on 100 msec stimuli, for convenience we only display the
inputs for two SAM cycles at one ear and for one cycle at the other ear
(the indicated output for each ITD reflects only that of the short
portion shown). Note that the timing of the leading excitation
remains stable, creating a constant time delay but a changing phase
delay of the inhibition. The duration of the cycle-by-cycle inhibition
shortens as modulation rate increases, because the duration that each
cycle remains above threshold becomes shorter (cf. Vater, 1982
;
Grothe, 1994
).

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Figure 13.
A simple model of ITD coding of MSO neurons in
the free-tailed bat via the interaction of multiple excitatory and
inhibitory inputs at 0 ITD. The left panels show the
temporal interaction of the binaural MSO inputs for 100 and 200 Hz SAM.
The right graphs show the calculated ITD function of the
MSO neuron (calculated for 100 msec stimulus duration). Black
bars indicate inhibition; hatched bars indicate
excitation. Inhibition is weighted with 1 and excitation with +1.
Facilitation is assumed to be 50%. The predictions for the three main
MSO response types (I/EI, EI/EI with symmetric timing, EI/EI with
asymmetric timing) are shown in the centered ITD functions. For
details, see text.
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The full ITD functions (calculated for the entire 100 msec stimulus
duration) for three SAM rates (100, 150, and 200 Hz) are shown in the
Figure 13A, right panel. The important feature was that the
troughs around 0 ITD were much more stable than the peaks. This was
typical for the I/EI cells we recorded from (Fig. 12).
The second binaural cell type we simulated was EI/EI, with identical
monaural input patterns of the common type (excitation leading) shown
in Figure 13B, left panel, for 100 and 200 Hz SAM rates.
Again, we assume a fixed time delay of the inhibition compared with the
excitation coming from the same side creating a changing phase
relationship of the two excitatory and inhibitory inputs. As stated
above, the period of effective inhibition shortens at higher rates.
The calculated ITD functions (right panel) were symmetric and showed
stable peaks at 0 ITD and varying troughs. This was typical for most
EI/EI cells that we recorded from (Fig. 8).
However, changing one of the monaural inputs such that inhibition was
leading excitation resulted in very different ITD functions (Fig.
13C). In this case, unlike the previous EI/EI cell, the ITD functions were asymmetrical and resembled those EI/EI cells that did
not match the Jeffress coincidence model (Fig. 9).
In the examples shown above, the leading input from both ears arrived
simultaneously. Adding absolute interaural delays would shift the
functions but would not change their fundamental features (e.g., stable
peaks or troughs, shape, etc.).
Our simple model based on the observed timing relationships of the
various MSO inputs can account for most of the basic features of ITD
functions that we observed in the free-tailed bat. This finding
supports the idea that the timing of both the excitatory inputs and the
inhibitory inputs is crucial in shaping ITD sensitivity. Application of
this model to other mammals, in which neurons in the MSO phase-lock to
low-frequency sinusoids, would require taking into account the fact
that the duration of the inhibition would not be frequency-depending.
Nevertheless, the delayed binaural inhibition would still cause a sharp
decline of the MSO output when the ITDs are causing noncoincident
inputs, as shown above.
Are ITD sensitivity and SAM sensitivity related?
In a previous study (Grothe et al., 1997
), we showed that MSO
neurons in the free-tailed bat are sensitive to SAM rate. They act as
low-pass filters for SAM rates in that they respond best to rates below
~400 Hz, and for some cells they are as low as 90 Hz. A similar
sensitivity to SAM rate has also been found in the mustached bat's
MSO. For the mustached bat, it was shown that the mechanism creating
the filter characteristic is based on the temporal interaction of
excitation and inhibition (Grothe, 1994
), which also appears to be the
case in the free-tailed bat. Hence, SAM filter characteristics and ITD
sensitivity might be created by the same basic mechanism. If so, one
would expect an interdependence between ITD functions and the filter
characteristics of SAM filter functions.
We therefore compared the 75% cut-off point on a cell's SAM filter
function [response to SAM stimuli as a function of modulation frequency; for details, see Grothe et al. (1997)
] and the point of
75% discharge on the cell's ITD function. We interpret the striking
correlation shown in Figure 14 for the
I/EI neurons (correlation coefficient = 0.82) and the EI/EI
neurons (correlation coefficient = 0.54) as supporting evidence
that SAM filter sensitivity and ITD sensitivity are created, at least
partly, by the same interaction of excitation and inhibition. The fact
that the correlation is more clear-cut for I/EI neurons compared with
EI/EI neurons is not surprising because the additional excitatory input
to the latter should make for a much more complex interaction between inputs.

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Figure 14.
Correlation of the 75% points in the ITD
functions for 200 Hz SAM and the filter cut-offs in the modulation
transfer function for SAM stimuli calculated for I/EI and EI/EI
neurons.
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The effect of IIDs and absolute intensity on ITD functions
It has been argued by Harnischfeger et al. (1985)
that even the
smallest changes in firing rates that are caused by ITDs could be
useful when integrated over a large population of cells and therefore
that even bats could use ITDs for lateralization. However, one has to
take into account to what extent a neuronal response is affected by
other stimulus parameters that change with azimuthal location, such as
IIDs. Therefore, we tested the impact that behaviorally relevant IIDs
have on ITD functions in the free-tailed bat's MSO. We did not perform
a systematic investigation of how IIDs within the relevant
physiological range affect ITD functions on the entire population of
cells tested. However, we did measure ITD functions using different
IIDs or interaural level differences (ILDs) for 11 EI/EI neurons and 8 I/EI neurons. Positive values indicate IIDs favoring the contralateral
ear, whereas negative values indicate IIDs favoring the ipsilateral
ear.
The effect of IIDs on the ITD functions of I/EI neurons was uniform. As
one would expect if the ipsilateral inhibition is in fact shaping the
ITD function, ITD sensitivity vanished if the intensity at the
ipsilateral ear was decreased (positive IIDs, favoring the excitatory
ear) and was only slightly affected (longer periods of inhibition; data
not shown) for negative IIDs.
Each of the 11 EI/EI cells tested changed their ITD sensitivity with
varying IIDs, and the changes were unpredictable in that they could not
be explained by time intensity trading effects, e.g.,
amplitude-dependent latency shifts (cf. Harnischfeger et al., 1985
;
Fuzessery, 1997
). In all cases tested, IIDs within the
physiological range caused significant changes in the neuronal response
to varying ITDs. Figure
15A,B gives two examples of
neurons that behaved in different ways.

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Figure 15.
A, B, ITD functions measured at
different interaural level differences (ILDs). Positive values:
stimulus at the contralateral ear more intense. C, ITD
functions measured at ILDs of 0 dB but at different absolute
intensities.
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Additionally, in six out of six EI/EI neurons, ITD functions changed
when IID was kept constant, but absolute intensity was changed by 10 dB. In three of these ITD, sensitivity vanished for intensity shifts in
both directions (higher and lower) (Fig. 15C); in the other
three, no significant changes could be seen.
 |
DISCUSSION |
In summary, nearly all neurons in the free-tailed bat exhibited a
sensitivity for ITDs of the SAM stimulus envelope. The ITD sensitivity
observed in most, although not all, EI/EI neurons is comparable to that
shown in the MSO of other mammals. Despite this apparent coherence with
the Jeffress coincidence mechanism, which does not predict a crucial
role for inhibition, we found inhibition to be essential to create ITD
sensitivity. Moreover, it seems likely that a complex temporal
interaction of the four inputs, which are all governed by the temporal
structure of the acoustic stimulus, shapes ITD functions in the
MSO.
Behavioral relevance of ITD coding in the free-tailed bat MSO
The ITD functions obtained from the MSO in the free-tailed bat
seem to be similar to those in other mammals, despite their small
inter-ear distance. This in itself makes it unlikely that the ITD
functions we measured are of behavioral significance. However,
Harnischfeger at al. (1985)
argued that even a very small shift in the
ITD function might be of significance if assessed by a large population
of cells. This argument would hold only if other stimulus parameters do
not cause dramatic changes in the MSO response. We have shown
previously that these neurons are very sensitive to SAM rate as well as
to IIDs, both within biologically significant ranges (Grothe et al.,
1997
). Therefore, the MSO in the free-tailed bat most likely performs a
different role than ITD coding. However, its connectional properties
are capable of processing ITDs in the range of those available for larger mammals. Thus, ITD sensitivity in these MSO neurons is a
by-product of a circuit that in the bat and most likely in other small
mammals codes for other temporal stimulus properties, e.g., frequency
and amplitude modulations. Given the fact that the earliest mammals
were very small (Rowe, 1988
) and adaptations for low-frequency hearing
occurred only in a minority of mammals (Heffner and Heffner, 1990
;
Frost and Masterton, 1994
), neurons like those in the MSO of bats,
which analyzes temporal structures, may have been preadapted for ITD
coding in cases in which animals grow larger during evolution.
Comparison with ITD sensitivity of MSO neurons in
other mammals
The major difference between the free-tailed bat MSO and that in
larger mammals is that MSO neurons in the free-tailed bat are tuned to
high frequencies, and therefore the ITD sensitivity in the free-tailed
bat MSO is restricted to ITDs of the stimulus envelope. Additionally,
there is a higher variability in the basic binaural input pattern
(Grothe et al., 1997
). The main result of the present study, however,
is that the majority of EI/EI neurons in the free-tailed bat MSO
exhibited an ITD sensitivity similar to that shown for the MSO in dogs
(Goldberg and Brown, 1969
), cats (Yin and Chan, 1990
), gerbils
(Spitzer and Semple, 1995
), and rabbits (Batra et al., 1997
). The key
feature is that the ITD sensitivity appears to corroborate the
coincidence detector mechanism proposed by Jeffress (1948)
. The
predictability of the interaural phase for any given frequency (here,
modulation frequency) by the phase histogram for monaural stimulation,
as well as the characteristic delays around 0, suggests that the
coincidence of binaural excitatory inputs dominates the ITD
sensitivity.
The role of inhibition
Inhibitory inputs to MSO neurons have been suggested for many
years from physiological data (Goldberg and Brown, 1969
; Yin and Chan,
1990
). Most neurons show an "out-of-phase" suppression causing the ITD function to drop below the rate of monaural or even
spontaneous discharge rates when unfavorable ITDs are presented. Additionally, there are two glycinergic, inhibitory pathways to the
MSO: one via the LNTB that is driven by the ipsilateral ear and one via
the MNTB that is driven by the contralateral ear (for review, see Cant,
1991
; Schwartz, 1992
). The same inputs exist in the free-tailed bat
(Grothe et al., 1994
). Additionally, there is evidence from
gerbil (Grothe and Sanes, 1993
) and guinea pig (Smith, 1995
) slice
experiments that glycinergic inhibition is involved in ITD sensitivity.
In the gerbil slice preparation, the timing and strength of inhibition
seems to define at what ITDs action potentials can occur. Additionally,
the inhibition increases the dynamic range of the response (Grothe and
Sanes, 1994
); however, brain slice recordings can only present indirect evidence.
Inhibitory inputs have also been described for another ITD coding
structure, the nucleus laminaris in birds, which is known to function
as a coincidence detector for binaural excitatory inputs. There,
however, the inhibition is mediated by GABA, derives from other nuclei,
and seems to be of more diffuse nature. Recent studies suggest a role
of the inhibition in adjusting excitability, independent from sound
pressure (Pena et al., 1996
; Reyes et al., 1996
; Brückner and
Hyson, 1997
; Viete et al., 1997
). Such a role of inhibition has
also been proposed in a theoretical study by Reed and Durbeck
(1995)
.
In contrast to the data on the nucleus laminaris in birds, the data
presented here suggest a more profound role of inhibition in ITD coding
of the free-tailed bat MSO. First, inhibition seems necessary to
generate Jeffress-type ITD functions, and second, the relative timing
of the inputs, including the inhibitory inputs, determines the
characteristics of a neuron's ITD sensitivity. The evidence from the
present study is threefold. (1) Neurons that lacked inhibitory inputs
did not show any ITD sensitivity in the spike count-based functions.
(2) In cells that lacked one excitatory input (I/EI), a simple
interaction of excitation and inhibition seemed to be responsible for
the ITD sensitivity. (3) Some EI/EI neurons showed an ITD sensitivity
that did not conform with either the Jeffress model or an IE mechanism
(cf. Yin and Kuwada, 1983
) but rather was in between. (4) There
is a correlation of a neuron's filter characteristic for the
modulation rate of SAM stimuli and that of the ITD selectivity. Because
the former has been shown to be a result of a temporal interaction of
excitation and delayed inhibition, it seem to be unlikely that one
would find such a correlation if the latter would be a result of a
fundamentally different mechanism. In the mustached bat, the SAM filter
characteristic has been shown to be a result of an interaction of
excitation and inhibition (Grothe, 1994
) that is very similar to the
temporal filtering found in MSO cells recorded from gerbil brain slices (Grothe and Sanes, 1994
). Such temporal filtering, e.g., low-pass filter characteristics for the SAM rate, has been described in the cat
(Joris, 1996
) and the free-tailed bat MSO (Grothe et al., 1997
). The
obtained filter characteristics in the free-tailed bat were rather
homogeneous over the different subpopulations of MSO neurons. However,
it was impossible to simply predict the cut-off for binaural
stimulation from monaural measurements. Thus, a slightly different
balance in strength or in timing among the four inputs might lead to
very different results in different EI/EI neurons. Consequently, we
favor the conclusion that slightly different timing and strength of the
four inputs determine the type of the ITD function, favoring either EE
or EI mechanisms as suggested by the model presented above.
There are two ways that inhibition might act in shaping the ITD
functions of EI/EI neurons that conform with the Jeffress coincidence
mechanism. First, cycle-by-cycle inhibition that is delayed compared
with the cycle-by-cycle excitatory input from the same ear limits the
time frame when this excitation affects the MSO cell (as well as
suppresses excitation from the other ear, as shown in Fig.
13A). Second, the finding of an inhibition that embraces the
excitation (both from the same ear) implies that the exact moment when
the excitation can be effective is also a result of a competition
between the two inputs from the same side, most likely allowing only
highly synchronized excitatory inputs to affect the MSO cell but
suppressing sustained nonphase-locked inputs. For both cases, the
inhibition takes part in defining when excitation is effective and
hence when coincidence of binaural excitation can create a peak in the
ITD function.
The concept of an interaction of excitation and inhibition in the MSO
cell might present an alternative hypothesis to the concept of the
delay lines. The coincidence model assumes that delay lines generate
coincidence and that this coincidence does not depend on inhibition
(Jeffress, 1948
; Schamma et al., 1989
; Colburn et al., 1990
; Brughera
et al., 1996
). Such delay lines, generated by axonal lengths, have been
shown for the nucleus laminaris inputs in birds (Carr and Konishi,
1990
; Carr and Boudreau, 1993
), but the anatomical evidence for
delay lines in the mammalian MSO is weak for the contralateral and
lacking for ipsilateral inputs (Smith et al., 1993
). As an alternative,
for the excitatory and inhibitory inputs from a given ear, inhibition
occurring at the beginning of the excitation could create a functional
delay of the excitation. In other words, the early inhibition
neutralizes the initial effects of the excitation, hence the delay.
Thus, the inhibition could serve the same function as the delay line in
creating coincidence. This concept fits our data from the free-tailed bat MSO in response to the ITDs of the envelope of high frequency neurons. It might not explain all phenomena seen in low-frequency MSO
neurons in other mammals, particularly for frequencies above 1.5 kHz.
However, this scenario might help to explain the apparent contradiction
that MSO neurons fit the coincidence model and yet depend heavily on
inhibition. Coincidence of excitation seems to be the main mechanism,
but it is generated by inhibition, not delay lines.
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FOOTNOTES |
Received Dec. 4, 1997; revised June 4, 1998; accepted June 9, 1998.
This work was supported by the Deutsche Forschungsgemeinschaft (SFB
204) and the Alexander-von-Humboldt Foundation. We first thank
Gerd Schuller for generous technical support and J. H. Casseday and E. Covey for providing software for running TDT systems. We also
thank Claudia Schulte, Stefan Kieslich, and Horst König for
technical help. We particularly thank R. Batra, J. Casseday, M. Götz, G. Neuweiler, S. Kuwada, G. Pollak, and T. Yin for
important discussions that strongly influenced our work.
Correspondence should be addressed to Dr. Benedikt Grothe, Zoologisches
Institut, Luisenstrasse 14, D-80333 München,
Germany.
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REFERENCES |