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The Journal of Neuroscience, November 15, 2000, 20(22):8533-8541
Spectral Integration in the Inferior Colliculus of the Mustached
Bat
Scott A.
Leroy and
Jeffrey J.
Wenstrup
Department of Neurobiology and Pharmacology, Northeastern Ohio
Universities College of Medicine, Rootstown, Ohio 44272-0095
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ABSTRACT |
Acoustic behaviors including orientation and social communication
depend on neural integration of information across the sound spectrum.
In many species, spectral integration is performed by combination-sensitive neurons, responding best when distinct spectral elements in sounds are combined. These are generally considered a
feature of information processing in the auditory forebrain. In the
mustached bat's inferior colliculus (IC), they are common in frequency
representations associated with sonar signals but have not been
reported elsewhere in this bat's IC or the IC of other species. We
examined the presence of combination-sensitive neurons in frequency
representations of the mustached bat's IC not associated with
biosonar. Seventy-five single-unit responses were recorded with the
best frequencies in 10-23 or 32-47 kHz bands. Twenty-six displayed
single excitatory tuning curves in one band with no additional
responsiveness to a second signal in another band. The remaining 49 responded to sounds in both 10-23 and 32-47 kHz bands, but response
types varied. Sounds in the higher band were usually excitatory,
whereas sounds in the lower band either facilitated or inhibited
responses to the higher frequency signal. Interactions were usually
strongest when the higher and lower frequency stimuli were presented
simultaneously, but the strength of interactions varied. Over one-third
of the neurons formed a distinct subset; they responded most
sensitively to bandpass noise, and all were combination sensitive. We
suggest that these combination-sensitive interactions are activated by elements of mustached bat social vocalizations. If so, neuronal integration characterizing analysis of social vocalizations in many
species occurs in the IC.
Key words:
auditory pathways; bat; combination sensitive; complex
sounds; frequency integration; inferior colliculus; mustached bat; spectral integration
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INTRODUCTION |
Acoustically guided behavior
requires analyses of spectrally and temporally complex signals. The
auditory system first decomposes sounds into their spectral components
at the cochlea and then transmits the results of these analyses through
frequency-tuned neurons of the auditory nerve. Further information
processing of complex sounds uses the reverse of this spectral
analysis, involving neuronal integration across spectral elements in
sounds. For complex vocal signals, such neuronal integration is
characterized by temporally sensitive facilitatory or inhibitory
interactions between responses to distinct spectral elements. Sometimes
called combination sensitive, these responses have been
described in a variety of vertebrates from frogs to birds to mammals
and are thought to contribute to selective responses to complex
vocalizations (Suga et al., 1978 , 1983 ; Fuzessery and Feng, 1983 ;
Schuller et al., 1991b ; Margoliash and Fortune, 1992 ; Olsen,
1992 ; Rauschecker et al., 1995 ; Ohlemiller et al., 1996 ; Doupe, 1997 ).
It has been further suggested that combination-sensitive neurons
underlie the encoding of phonemic elements of speech sounds (Suga,
1996 ; Sussman et al., 1998 ). Neural interactions that create these
response properties are generally thought to originate in the auditory forebrain (Olsen, 1992 ; Winer et al., 1995 ; Rauschecker, 1998 ).
In the auditory cortex of the mustached bat (Pteronotus
parnellii), combination-sensitive responses occur commonly among
neurons tuned to frequency ranges of the bat's sonar vocalizations
(see Fig. 1A). Most display facilitated
responses to combinations of elements in the sonar call and returning
echoes that may extract information about target features such as
distance and movement (O'Neill and Suga, 1979 ; Suga et al., 1983 ).
Recently, it has become clear that such neurons are abundant in the
mustached bat's inferior colliculus (IC) (Mittmann and
Wenstrup, 1995 ; Yan and Suga, 1996 ; Portfors and Wenstrup, 1999a ).
Their presence in the auditory midbrain may be understandable in the
context of sonar behavior, in which flight adjustments in response to
target movement must be made within the 1-2 sec duration of an
interception sequence. Projections of the IC to premotor centers could
provide highly processed information useful for rapid changes in
vocalization or flight (Schweizer, 1981 ; Frisina et al., 1989 ; Schuller
et al., 1991a ; Wenstrup et al., 1994 ; Casseday and Covey,
1996 ).
Is the presence of these sonar-related neurons in the IC an exception,
or does similar spectral integration occur among neurons analyzing
other types of complex acoustic signals? This report examines whether
combination-sensitive responses occur in frequency representations of
the mustached bat's IC outside those used in biosonar (see Fig.
1A). We found that the majority of neurons responding
to these frequency bands (10-23 and 32-47 kHz) displayed combination-sensitive responses. This indicates that the integration of
information from distinct spectral elements in sounds is performed by a
wide range of IC neurons and is not an exclusive property of neurons
analyzing biosonar information. We suggest that many of these response
properties are well suited for analyses of the mustached bat's social
vocalizations (Kanwal et al., 1994 ). If so, neuronal integration
characterizing analysis of social vocalizations in many species occurs
in the auditory midbrain, not just in the auditory cortex as is
commonly supposed.
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MATERIALS AND METHODS |
Single-unit recordings were obtained from the IC in awake
greater mustached bats (P. parnellii parnellii).
Thirteen bats, captured in Jamaica, West Indies, provided the data used
in this report. All procedures on the bats followed protocols approved by the Institutional Animal Care and Use Committee of the Northeastern Ohio Universities College of Medicine.
Surgical preparation. At least 1 d before surgery, bats
were placed in a holding cage with tetracycline in their drinking water. For surgery, the bats were anesthetized with methoxyflurane (Metofane; Pitman-Moore, Inc., Mundelein, IL) in combination with sodium pentobarbital (5 mg/kg, i.p.; Nembutal; Abbott Labs, Irving, TX) and acepromazine (2 mg/kg, i.p.; Med-Tech, Inc., Buffalo, NY). A midline incision was made over the dorsal surface of the skull,
and the skin and muscles were retracted laterally. A tungsten ground
electrode was then cemented into the skull over the cerebral cortex on
the side opposite to the exposed IC. A metal pin was glued to the skull
to hold the head in the stereotaxic apparatus and ensure the proper
position of the brain during experiments. After a topical antibiotic
and local anesthetic (lidocaine; Elkins-Sinns, Cherry Hill, NJ) were
applied to the wound, the bat was returned to the holding cage and
allowed to recover for at least 1 d before physiological recording.
Acoustic stimulation and physiological recording. On the
first day of recording, bats were anesthetized with methoxyflurane, and
a small piece of the skull (<0.5 mm in diameter) was removed to expose
the IC. During recording sessions, the animals were placed in a
stereotaxic apparatus to orient the head in a standard position. The
apparatus was housed in a heated and humidified sound-attenuating
chamber, lined with polyurethane foam to reduce echoes. In addition,
the surface of the stereotaxic apparatus was covered with cotton to
reduce echoes. If a bat struggled or showed other signs of discomfort,
it was returned to its holding cage. Between electrode penetrations,
the bats were given water, and the exposed brain tissue was covered
with petroleum jelly to keep it moist. Recording sessions generally
lasted 4-6 hr.
Stimulus generation and data acquisition were computer-controlled. Two
different tone or noise bursts (duration varied; 0.5 msec rise-fall
time; 3-4/sec) were separately generated (WaveTek model 395), switched
(Tucker-Davis Technologies model SW2), and attenuated (Tucker-Davis
Technologies model PA4). The signals were combined (Tucker-Davis
Technologies model SM3) and then sent to a power amplifier (Parasound
model HCA-800II) and a speaker (Technics leaf tweeter) placed 10 cm
away from the bat and 25° into the sound field contralateral to the
recording electrode.
The acoustic system was calibrated several times over the course of the
experiments. A calibrated microphone (Brüel and Kjaer model 4135)
was placed in the position of the bat's head during experiments. There
was a smooth, consistent decrease of 2.7 dB per 10 kHz from 10 to 120 kHz. The microphone output was digitized (National Instruments model
NB-A2000), and a fast Fourier transform was computed. Distortion
components were not detectable 60 dB below the peak signal level.
Single-unit activity was recorded with micropipette electrodes filled
with 3 M KCl and having resistances of 8-15 M . In many experiments, multiunit responses were also recorded to compare the
single-unit responses with the surrounding population. Electrodes were
positioned for recording in the IC by the use of surface landmarks and
advanced with a hydraulic micropositioner (David Kopf Instruments model
650). Extracellular action potentials were amplified and then sent
through a bandpass filter (500-6000 Hz) and a window discriminator
(Frederick Haer and Company model 74-60-3). The output of the
discriminator was then digitized at 10 kHz for analysis of spike times
(National Instruments model NB-MIO-16X). The laboratory software
generated histograms, raster displays, and statistics on neural
responses within a 100 msec peristimulus window for 32 stimulus
presentations. Usually, spike counts were based on the entire 100 msec
window. The duration of the window was reduced to 50 or 60 msec if
there was high spontaneous activity that obscured differences in
response magnitude or for display purposes (e.g., see Figs. 3, 7). In
no case did shortening the window duration eliminate an observable
response. The output of the window discriminator was also sent to an
oscilloscope and a speaker for audiovisual display and estimates of
response thresholds (see below).
Neurons were stimulated with tone bursts or bandpass noise bursts
(roll-offs exceeded 100 dB per octave). Signal duration was typically
30 msec but was changed for neurons that responded better to shorter
(as short as 3 msec) or longer (up to 70 msec) stimuli. When a single
unit was isolated, we obtained its best frequency, threshold, and
tuning curve by monitoring the oscilloscope and audio monitor, i.e.,
audiovisually. We defined best frequency as the frequency
requiring the lowest intensity to elicit stimulus-locked spikes and
threshold as the lowest intensity required to elicit a consistent spike
response. For units that were excited by sounds within two different
frequency bands, we tuned the response in each frequency band and refer
to a best high-frequency response and a best low-frequency response.
For some neurons that responded poorly to tones, frequency tuning was
tested with 5-kHz-wide noise bands.
By the use of a two-stimulus paradigm, single units were tested for
sensitivity to combinations of tone or noise bursts as described
previously (Portfors and Wenstrup, 1999a ; Wenstrup, 1999 ). Sensitivity
to delay between the low- and high-frequency signals was initially
assessed audiovisually by varying the delay, usually in steps of 2 msec. If we noted a detectable change in response as a function of
delay, quantitative data were collected at the delay that evoked the
largest change in response. This was compared with the unit's response
magnitude to the two stimuli presented separately. Quantitative data
were then obtained as a function of delay. The range of delays tested
included those in which the low-frequency signal was presented first
and the high-frequency signal was delayed and also those in which the high-frequency signal was presented first and the low-frequency signal
was delayed. The delay between the low- and high-frequency signals that
elicited the greatest response (or the least response in the case of an
inhibited combination-sensitive effect) was defined as the neuron's
best delay.
We then tuned the facilitated or inhibited response. For facilitated
neurons, we tuned both the low- and high-frequency sounds. To assess
the low frequencies that elicited a facilitated response, the
high-frequency signal was held constant, and the low frequencies eliciting a facilitated response (a detectable change in the response rate evaluated audiovisually) at various intensities were recorded. Then the low-frequency signal was held constant, and the responses to
the high frequencies were tuned across intensities. For inhibited neurons, we determined the range of low frequencies that inhibited the
high-frequency response while the high-frequency sound was held
constant. For both facilitated and inhibited responses, the sound held
constant was typically presented at 10 dB above threshold.
Single-unit responses were considered to be combination sensitive if
they met three criteria: (1) the response to the two signals
presented together was 20% more (for facilitation) or 20% less (for
inhibition) than the sum of responses to the signals presented
separately, (2) the facilitatory or inhibitory interactions were tuned
to clearly distinct frequency bands (separated by a half octave or
more), and (3) the facilitatory or inhibitory interaction displayed
temporal sensitivity as revealed in delay tests. The degree of
facilitation or inhibition was quantified as the index of interaction
(I), according to the following formula:
I = (Rc Rl Rh)/(Rc + Rl + Rh), where
Rc, Rl, and Rh are the neuron's responses to the combination of the
low- and high-frequency signals, the low-frequency signal alone, and
the high-frequency signal alone, respectively. An interaction index
value of 0.09 corresponds to 20% facilitation, the criterion for
combination-sensitive facilitation. Negative numbers indicate
combination-sensitive inhibition. Interaction index values of 1 and 1
indicate maximum facilitation and inhibition, respectively. These
criteria are identical to those used in similar studies of
sonar-related combination-sensitive neurons in the IC (Portfors and
Wenstrup, 1999a ) and medial geniculate body (MGB) (Wenstrup, 1999 ).
To test for combination sensitivity unrelated to the processing of
sonar signals, we recorded from the 10-23 and 32-47 kHz representations of the IC. Among Jamaican mustached bats, the frequency
range of the sonar fundamental emitted by resting bats is ~24-31 kHz
(see Fig. 1A), differing slightly among individuals (Kobler et al., 1985 ; Suga et al., 1987 ). In flight, sonar echoes are
shifted upward in frequency as a function of the bat's flight speed
toward the echo source. Mustached bats compensate for upward Doppler
frequency shifts by lowering the frequency of emitted signals
(Schnitzler, 1970 ; Keating et al., 1994 ). In the laboratory, flight
velocities are <5 m/sec (Schnitzler, 1970 ; Lancaster et al., 1992 ).
Although these bats may fly faster in natural habitats, speeds >10
m/sec are unlikely (Norberg, 1987 ). Even if mustached bats compensated
completely for frequency shifts introduced by a flight velocity of 10 m/sec, the lower frequency of the emitted signal would extend down only
to 22 kHz for the fundamental and 44 kHz for the second harmonic. This
suggests that neural responses tuned <22 kHz and between 33 and 44 kHz
are not involved in the analysis of sonar signals.
Histological procedures. In some electrode penetrations, a
tracer was deposited to mark recording sites. Electrodes were filled with dextran conjugates (dextran-rhodamine or biotin dextran amine; Molecular Probes, Eugene, OR) in 0.9% NaCl, iontophoresed with pulsed
current (+5 µA; 7 sec on and 7 sec off) for at least 6 min, or 1%
Fluoro-Gold (Fluorochrome, Inc., Englewood, CO) in 0.9% NaCl,
iontophoresed with pulsed current (+1 µA; 7 sec on and 7 sec off) for
5 min. In all but one animal, each marked penetration used a different tracer.
The animals were perfused within 12 d of deposits. After the bat
was deeply anesthetized with Nembutal (75 mg/kg, i.p.) and reflexes
were eliminated, the chest was opened, and the bat was perfused through
the heart with phosphate buffer and 10% Formalin. The head was
removed, blocked, and refrigerated overnight in 30% sucrose. The brain
was sectioned with a freezing microtome, usually at 40 µm. The
sections were collected in chilled 0.1 M phosphate buffer
and rinsed in 0.05 M phosphate buffer before mounting on slides. At least one of the three series was stained with cresyl violet
to reveal cytoarchitecture.
The majority of single units described in this report responded to
sounds in both the 10-23 and 32-47 kHz bands. Because most units were
not histologically localized, we used physiological and depth criteria
to determine whether a unit was located within the 10-23 or 32-47 kHz
frequency band representations of the tonotopically organized IC. This
analysis is based on previous studies in mustached bats showing that
frequencies in the ~10-59 kHz range are represented in the
anterolateral division of the IC (Zook et al., 1985 ; O'Neill et al.,
1989 ). Here, anatomically defined fibrodendritic laminae (Zook et al.,
1985 ) and physiologically defined frequency-band laminae (O'Neill et
al., 1989 ) extend dorsoventrally and mediolaterally, their edges
curving rostrally. There is an orderly progression from the highest
frequencies located more caudally (59 kHz) to lower frequencies
represented more rostrally. Our penetrations, which were angled
5-25° dorsocaudal to ventrorostral, are expected to encounter
decreasing best frequencies with increasing depth, as have other
studies using similar electrode orientations (Wenstrup et al., 1994 ;
Wenstrup and Grose, 1995 ). All single units in the present study were
recorded at depths of 125-1975 µm, consistent with IC recordings of
10-50 kHz responses in these previous studies using similar electrode angles.
To localize a single-unit response within the physiological tonotopic
organization, we required the penetration to show a descending
progression of best frequencies combined with the presence of singly
tuned responses (single unit or multiunit) to 24-31 kHz, the frequency
representation that intervenes between the 10-23 and 32-47 kHz bands.
Thus, if a combinatorial unit responding to both the 10-23 and 32-47
kHz bands occurred more superficially in the penetration than did a
24-31 kHz response, we concluded that the combinatorial unit was in
the 32-47 kHz representation. If it had occurred deeper, we would
conclude that the combinatorial unit was in the 10-23 kHz
representation. A similar analysis was performed for neurons responding
to only one of the 10-23 or 32-47 kHz frequency bands. By the use of
these criteria, 38 of 75 single-unit responses were localized within
the physiological tonotopic organization of the IC.
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RESULTS |
The anterolateral division of the mustached bat's IC represents
frequencies in the 10-59 kHz range (Fig.
1B,C). This range includes frequency bands used in biosonar (24-31 kHz, first sonar harmonic; 48-59 kHz, second harmonic of the frequency-modulated sonar
component) as well as frequency bands below and above the first sonar
harmonic (10-23 and 32-47 kHz, respectively) (Fig. 1A). This report describes single-unit recordings of
75 neurons tuned to signals in either the 10-23 or 32-47 kHz
frequency bands; we examined tuning to multiple frequency bands and
sensitivity to combinations of tonal or noise stimuli. Multiunit
responses and single units tuned to other frequency bands were also
examined to establish the location of the single-unit responses
described here within the tonotopic map of the IC.

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Figure 1.
A, Schematic sound spectrogram of
the mustached bat's biosonar call. The frequency bands labeled by the
brackets (10-23 and 32-47 kHz) are analyzed by neurons
in the present report. B, C, Schematic illustration of
the organization of the mustached bat's central nucleus of the
inferior colliculus (ICC) in transverse sections.
Numbers at the bottom right of the
sections indicate fractions of the caudal-to-rostral dimension of the
IC; the section in B is more caudal than the section in
C. Numbers below
abbreviations indicate the frequency representation (in
kiloHertz) of each ICC subdivision. In the present study, single units
were recorded from the anterolateral division (ALD) of
the ICC (blackened region). In ALD,
tonotopic representation advances from ~10 kHz at the rostral tip to
frequencies up to 59 kHz more caudally (Zook et al., 1985 ; O'Neill et
al., 1989 ). bic, Brachium of the inferior colliculus;
CG, central gray; D, dorsal;
DC, dorsal cortex of the inferior colliculus;
DPD, dorsoposterior division or the ICC;
Ex, external nucleus of the inferior colliculus;
M, medial; MD, medial division of the ICC;
SC, superior colliculus.
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Of the 75 single units, 26 (35%) displayed a single excitatory tuning
curve with their best frequencies in either the 10-23 kHz
(n = 6) or 32-47 kHz (n = 20)
frequency bands (Fig. 2). Furthermore, in
the presence of a sound at their best excitatory frequency, these
neurons showed no additional tuned responsiveness, either facilitatory
or inhibitory, to sounds over a wide range of frequencies, even when
tested over a range of delays between the two sounds. On the basis of
our definition (see Materials and Methods), these neurons were not
combination sensitive. In contrast, the majority of neurons in our
sample (49 of 75, 65%) had excitatory responses tuned to one or both
of the 10-23 or 32-47 kHz bands but in addition showed facilitatory
or inhibitory interactions when stimuli in the two frequency bands were
presented together (Fig. 2). Single units with facilitatory
interactions (57%) were slightly more common than were those with
inhibitory interactions (43%).

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Figure 2.
Categories of response to combinations of tone or
noise bursts among single units tuned to 10-23 and 32-47 kHz
frequency bands. Singly tuned neurons had an excitatory
response tuned to only one frequency band. Facilitatory
neurons responded to the combination of two signals from the 10-23 and
32-47 kHz bands at a level higher than the sum of responses to the
separate signals (see Materials and Methods). Inhibitory
neurons showed an excitatory response to one of these frequency bands
that was inhibited by signals in the other band.
Tone-responsive and Noise-responsive
refer to single units that displayed better responses (lower threshold
or more spikes) to tone bursts or bandpass noise bursts,
respectively.
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Facilitatory and inhibitory combination-sensitive interactions
Responses of a single unit in Figure
3A-C illustrate fundamental
properties of combination-sensitive facilitation. In response to single
tone burst stimuli, this unit displayed a sensitive excitatory tuning
curve, centered at 40.4 kHz with the threshold at 19 dB sound pressure
level (SPL). Its responses to signals in the 10-23 kHz band were weak
and insensitive, with threshold responses near 20 kHz obtained only at
levels exceeding 80 dB SPL (Fig. 3A, unfilled
circles and dashed lines). However, the combination of
high- and low-frequency stimuli revealed a low-threshold, facilitating
input that was sharply tuned to 19.2 kHz (Fig. 3A, filled circles and solid lines). The drop in the
threshold response to the lower frequency signal, when presented
together with the facilitating higher frequency signal, was
substantial, 61 dB for the neuron in Figure 3A. The
facilitated response to the high-frequency signal, also sharply tuned,
decreased in threshold but only by 10 dB. The unit did not respond to
signals in the 24-31 kHz band, the frequency of the first sonar
harmonic, in either single- or two-tone presentations. In addition to
its effect on response threshold, the facilitation also increased
response magnitude. The response to combined tone bursts was 123%
greater than the sum of responses to the higher and lower frequency
signals presented separately (Fig. 3B), corresponding to a
facilitation index value of 0.38. This facilitation was also dependent
on the relative timing of the two signals. Strong facilitation was only
obtained when the higher frequency signal was presented simultaneously with or 2 msec after the lower frequency signal (Fig. 3C).
The frequency- and time-dependent facilitation shown for the neuron in
Figure 3A-C satisfies the criteria for combination
sensitivity described in Materials and Methods.

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Figure 3.
Combinatorial interactions of single units
responsive to 10-23 and 32-47 kHz frequency bands.
A-C, Responses of a facilitated combination-sensitive
unit. A, Frequency tuning in response to single tones
and combinations of tones. Dashed lines and
unfilled circles indicate responses to single-tone
bursts. Solid lines and filled circles
indicate tuning curves obtained in the presence of a second tone burst,
the frequency and intensity of which are indicated by the
X placed within the other tuning curve. Each
X also indicates the frequencies and intensities of
signals used in the tests shown in B and
C. The unit did not respond to frequencies in the
fundamental sonar harmonic (24-31 kHz) at any sound level tested.
B, Peristimulus time histograms (PSTHs; 32 stimulus
presentations) showing a facilitated response when signals were
presented simultaneously. Signal timing and duration (3 msec) are
indicated by the unfilled bars (higher frequency
signals) and solid bars (lower frequency signals).
C, Temporal sensitivity of facilitation.
Facilitation only occurred when the two signals were presented
near the 0 msec delay. Error bars indicate 95% confidence limits.
Separate data points indicate responses of single tones
at the indicated frequencies. D-F, Responses of an
inhibited combination-sensitive unit. D, Frequency
tuning in response to single tones and combinations of tones. The
blackened curve indicates tuning of an inhibitory
response that suppresses the excitatory response to the higher
frequency signal marked by the X. The X
symbols also mark the frequencies and intensities of test
signals used in the tests shown in E and
F. E, PSTHs demonstrating moderate
suppression of the higher frequency response by the lower frequency
signal presented 4 msec before the higher frequency signal. The signal
duration was 30 msec. F, Temporal sensitivity of
inhibition.
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For 21 units, the effect of signals in one of the 10-23 or 32-47 kHz
frequency bands was to inhibit responses to signals in the other band
(Fig. 2). The unit in Figure 3D-F had a sensitive excitatory tuning curve in the higher frequency band, tuned to 34.9 kHz
(Fig. 3D). Excitatory responses to the 10-23 kHz band were
tuned near 13 kHz but only obtained at intensities >70 dB SPL. The
combination of low-intensity signals in both frequency bands revealed a
low-frequency inhibitory effect, sharply tuned at 13.2 kHz with a low
threshold, which reduced the excitatory response to the high-frequency
stimulus. At an intensity 9 dB above the threshold for inhibition, the
lower frequency signal suppressed the response to the higher frequency
signal by 41%, with an index of inhibition of 0.37 (Fig.
3E). As with facilitatory interactions, the inhibitory
interactions were sensitive to the timing of the two signals. In the
unit in Figure 3D-F, the inhibitory effect was maximal when
the high-frequency signal followed the lower frequency signal by 4 msec
(Fig. 3F). However, most inhibitory units showed the
greatest suppression when the inhibitory stimulus was presented
simultaneously with the excitatory stimulus (see Temporal sensitivity).
A substantial number of single units (29 of 75, 39%) responded well to
bandpass noise (5-20 kHz). For these neurons, responses to tonal
stimuli either alone or in combination were poor. Among 15 neurons for
which tone and noise thresholds were compared, thresholds to tones were
on average >38 dB higher than thresholds for noise stimuli, on the
basis of decibel attenuation values. The average difference in the
threshold was probably higher, because no tone threshold could be
obtained in 11 of the 15 tested neurons. Responses to noise stimuli and
combinations of noise stimuli could nonetheless be tuned in frequency.
Figure 4 shows the tuning properties of
two such neurons, obtained by presenting 5-kHz-wide noise bands at
different center frequencies. As with combination-sensitive neurons
that responded well to tones, these neurons showed either facilitatory
(Fig. 4A) or inhibitory (Fig. 4B)
effects of the lower frequency stimulus. For the facilitated neuron in
Figure 4A, the facilitatory interaction reduced the
threshold to the low-frequency stimulus by 46 dB, whereas the decrease
in threshold for the high-frequency response was smaller (8 dB). A
striking feature of noise-responsive neurons is that all displayed
combination-sensitive interactions between signals in the 10-23 and
32-47 kHz bands; 18 units showed facilitatory interactions, and 11 units showed inhibitory interactions (Fig. 2).

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Figure 4.
Tuning curves for combination-sensitive single
units that respond best to noise stimuli. Thresholds were obtained with
5-kHz-wide noise bands, indicated in the figure by the
circles (center frequency) and horizontal
lines (bandwidth). Dashed lines and
unfilled circles indicate responses to single noise
bursts. Solid lines and filled circles
indicate tuning curves obtained in the presence of a second noise
burst, the center frequency and intensity of which are indicated by the
X placed within the other tuning curve. The
blackened curve shows tuning of an inhibitory response
as described in Figure 3. A, Single unit facilitated by
signals in the 10-23 and 32-47 kHz frequency bands. B,
Single unit excited by signals in the higher frequency band but
inhibited by signals in the lower frequency band. For both units,
combination effects were documented when signals were presented
simultaneously (0 msec delay). The units did not respond to tonal
stimuli in the 10-50 kHz range at levels as high as 80 dB SPL, the
highest tested.
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Frequency sensitivity
Tuning curves in Figures 3 and 4 show that these neurons displayed
two distinct frequency sensitivities that did not overlap, except
possibly at high sound levels. Figure
5A shows the best low and high
frequencies for neurons responding to signals in both frequency bands.
Low best frequencies ranged from 12 to 23 kHz, whereas high best
frequencies ranged from 32 to 47 kHz. Only one neuron was tuned to
exact harmonics, although several were tuned very close to a harmonic
relationship. For the majority, the best high-frequency response was
tuned more than an octave above the best low-frequency response. One
implication of these results is that few of these combination-sensitive
interactions would be activated by signals within the frequency bands
of biosonar signals.

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Figure 5.
Aspects of combinatorial interactions among the
recorded population of single units. A, Frequency tuning
of combination-sensitive interactions. Tone indicates
tone-responsive units, whereas Noise indicates units
responding better to bandpass noise. The line plots an
exact fundamental-second harmonic relationship. Most noise-sensitive
units are not included because their best frequencies were not
measured. These were stimulated with noise bursts including most of the
10-23 or 32-47 kHz bands. B, Strength of interaction,
as measured by the interaction index. Only units with index values of
0.09 and greater (facilitation) or 0.11 or less (inhibition) are
shown. C, Best delays among single units showing
combination-sensitive facilitation (top) or inhibition
(bottom).
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In most neurons, the response to sounds in the higher frequency band
was greater than that to sounds in the lower frequency band. At the
sound levels tested, in which the lower frequency signal was usually
more intense, 21 of 28 facilitated neurons responded more strongly to
the higher frequency signal, 4 neurons responded to the lower and
higher frequencies at the same magnitude, and only 3 facilitated
neurons responded more strongly to the lower frequency signal. For
inhibited neurons, 18 of 21 neurons were excited by the higher
frequency signal and suppressed by the lower frequency signal. The
greater excitatory responses to the higher frequency signal may be
related to the probable location of these neurons in the ICC
representation of the higher frequency band (see below).
Strength of interactions
The strength of combination-sensitive interactions, as expressed
by facilitation or inhibition indexes, varied among the population (Fig. 5B). For 28 facilitatory neurons, the average
facilitation index was 0.32 (SD, 0.24), corresponding to a facilitated
response that was 95% greater than the sum of responses to the low-
and high-frequency stimuli presented separately. Strengths of
facilitation ranged from 20 to 1200% (facilitation index values of
0.09-0.98). For 21 inhibitory neurons, the average inhibitory index
was 0.36 (SD, 0.21), corresponding to suppression of the excitatory
response by 53%. Strengths of inhibition ranged from 20 to 97%
(inhibitory index values of 0.11 to 0.94). However, inhibitory
index values do not indicate the maximum effect of inhibition on these
neurons, because the inhibiting stimulus was typically presented at 10 dB above the threshold for inhibition. Comparing the noise- and tone-responsive units, there was no significant difference in the mean
facilitatory index (unpaired t test; df = 26;
p > 0.5) or the mean inhibitory index (unpaired
t test; df = 19; p > 0.5). However,
all noise-responsive neurons showed combination sensitivity, whereas
many tone-responsive units were singly tuned (Fig. 2).
Temporal sensitivity
The facilitatory interactions in responses to the two frequency
bands showed clear selectivity for the timing of the two signals (Figs.
3C, 6). Most facilitatory
responses were best when the two signals were presented simultaneously,
e.g., 0 msec delay (Fig. 5C). However, the sharpness of this
temporal selectivity, or delay tuning, was variable. Figure 6 offers a
particularly sharp contrast. The unit in Figure 6A
responded well only when the two 50 msec, narrowband noise bursts were
presented within 2 msec of each other. In contrast, the unit in Figure
6B, likewise stimulated with relatively long-duration
(30 msec) signals, responded well as long as some overlap occurred
between the high- and low-frequency signals. Such results suggest a
range of temporal integration properties across the population of
facilitated units.

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Figure 6.
Differences in temporal sensitivity among
facilitated combination-sensitive single units. A,
Strongly facilitated neuron with best delay at 0 msec. Note the narrow
temporal selectivity despite the use of long-duration signals (50 msec). This noise-responsive unit was stimulated with 10-23 and 35-45
kHz noise bands. B, Facilitated unit with very broad
delay sensitivity. This noise-responsive unit was stimulated with
12-22 and 35-45 kHz noise bands. See Figure 3 for an explanation of
figure conventions and symbols.
|
|
Inhibitory combination-sensitive interactions were also sensitive to
timing (Figs. 3F, 7). Most
inhibitory units showed the greatest suppression when the inhibitory
stimulus was presented simultaneously with the excitatory stimulus
(Fig. 5C). As with facilitated units, there was variability
in the width of the inhibitory delay function. The unit in Figure 7
showed very sharp temporal sensitivity of inhibition, whereas that in
Figure 3F was broader.

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Figure 7.
Sharp temporal sensitivity of low-frequency
inhibition. In contrast to the inhibitory unit in Figure
3F, this single unit displayed strong inhibition with
sharp temporal selectivity. Inhibition was eliminated when the relative
timing of tone bursts was changed by 2 msec. See Figure 3 for an
explanation of figure conventions and
symbols.
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|
Topographic features
Tracer deposits placed in some penetrations showed that both tone-
and noise-responsive combination-sensitive neurons were located in the
ICC (Fig. 8). For 38 of the 75 single
units in our sample, there were sufficient data from other responses in the same penetration to determine the unit's location within the tonotopic organization of the IC (see Materials and Methods). To make
this determination, we required the penetration to show a descending
progression of best frequencies in the dorsocaudal to ventrorostral
penetration, combined with the presence of singly tuned responses
(single unit or multiunit) to 24-31 kHz, the frequency representation
that intervenes between the 10-23 and 32-47 kHz bands (Fig. 8). For
singly tuned neurons, 17 of 18 localized single units were in the
tonotopic representation of 32-47 kHz (e.g., Fig.
8A). For combination-sensitive responses, all 20 localized units were in the 32-47 kHz representation (e.g., Fig. 8).
These results show that combination-sensitive responses are common in the 32-47 kHz representation. Because so few neurons were localized to
the 10-23 kHz representation, it is unclear whether it too contains
combination-sensitive response properties. All combination-sensitive neurons localized to the 32-47 kHz tonotopic representation in the IC
had higher magnitudes of response to signals in that frequency band
than to signals in the 10-23 kHz frequency band, at the sound intensities used to assess combinatorial properties.

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Figure 8.
Locations of tone-responsive and noise-responsive
recording sites in the ALD of the ICC. All deposits of
tracer shown here were made at single-unit recording sites indicated by
filled circles in this figure and had frequency
responses indicated in bold numbers to the
left of the section. Most other responses illustrated in
this figure were multiunit responses. For combination-sensitive
responses, both the higher and lower best frequencies are reported. The
number in the bottom right corner of each
section indicates the location of the section along the
caudal-to-rostral dimension of the IC. A, In the
more caudal section, neurons tuned to the 32-47 kHz band were tone
responsive (T). B, In the more
rostral section, neurons tuned to this frequency band were noise
responsive (N) and combination sensitive.
PAG, Periaqueductal gray.
|
|
 |
DISCUSSION |
This study describes integrative neurons in the IC of mustached
bats responding to combinations of acoustic signals in two frequency
bands, 10-23 and 32-47 kHz. Previous studies showed that
combination-sensitive neurons are common in IC frequency representations analyzing biosonar vocalizations (Mittmann and Wenstrup, 1995 ; Yan and Suga, 1996 ; Portfors and Wenstrup, 1999a ). The
present results show that the type of frequency-time integration performed by combination-sensitive neurons is widespread throughout the
mustached bat's IC and is not a feature unique to the analysis of
biosonar signals. We suggest that some combination-sensitive response
properties in the IC are well suited for analyses of social vocalizations.
Spectral integration in ascending auditory pathways
The spectral integration documented here differs from other forms
of integration described previously in the auditory brainstem and
midbrain. For instance, in comparison with auditory nerve fibers, some
cochlear nucleus neurons display narrower frequency tuning, whereas
others show broader frequency tuning, noise sensitivity, or
facilitatory-inhibitory frequency interactions (Rhode and Greenberg, 1992a ,b ; Young et al., 1992 ; Jiang et al., 1996 ). In the IC, most neurons have frequency tuning curves that differ significantly in shape
from those of auditory nerve fibers (Ehret and Moffat, 1985a ; Ehret and
Merzenich, 1988 ; Ramachandran et al., 1999 ). Among IC neurons, local
application of antagonists to inhibitory neurotransmitters alters
frequency tuning and selectivity for frequency sweeps (Vater et
al., 1992 ; Yang et al., 1992 ; Fuzessery and Hall, 1996 ),
suggesting that mechanisms of spectral integration act in the IC as
well as the cochlear nucleus. These studies generally demonstrate
frequency integration that involves either integration of excitatory
and/or inhibitory inputs tuned to relatively closely related
frequencies or broad integration across a continuous band of
frequencies that supplies inhibition on either side of an excitatory tuning curve. One exception is the multipeaked tuning curve, which may
reflect dual excitatory inputs. However, such tuning curves are quite
rare in the IC (Ehret and Moffat, 1985a ; Casseday and Covey, 1992 ).
In contrast, the integration documented here is specific for widely
separated frequency bands, usually an octave or more, suggesting input
from two neural populations tuned to widely separated frequencies.
These combinatorial properties, characterized by excitation,
facilitation, or inhibition activated by distinct frequency bands of
sounds, have typically been described in areas of the auditory
forebrain (cortex or thalamus) outside of tonotopically organized
regions (Suga et al., 1978 , 1983 ; Fuzessery and Feng, 1983 ; Margoliash
and Fortune, 1992 ; Olsen, 1992 ; Rauschecker et al., 1995 ; Ohlemiller et
al., 1996 ; Doupe, 1997 ). This has supported the view that higher-order
processing of complex sounds performed by combinatorial neurons is
characteristic of forebrain auditory centers, particularly nontonotopic
regions (Olsen, 1992 ; Winer et al., 1995 ; Rauschecker, 1998 ).
Although spectral combinatorial responses may be more common or more
highly organized in nontonotopic auditory cortical areas, they also
occur in tonotopically organized auditory cortex. In mustached bats,
combination-sensitive responses are common in primary auditory cortex
(Fitzpatrick et al., 1993 ; Kanwal et al., 1999 ). Increasingly, similar
spectral combinatorial properties involving facilitation or inhibition
have been described in primary auditory cortices of cats and primates.
These properties include multipeaked excitatory tuning curves (Sutter
and Schreiner, 1991 ), multiple inhibitory tuning curves (Sutter et al.,
1999 ), and time-dependant facilitatory and inhibitory interactions
between different spectral elements (Brosch et al., 1999 ; Kadia et al.,
2000 ). Viewed across species, the data suggest that many neurons in the
primary auditory cortex use facilitatory and/or inhibitory interactions
between distinct spectral sensitivities to analyze complex acoustic signals.
Do spectral combinatorial properties originate in the primary auditory
cortex? In most species, observations of cortical combinatorial responses are not matched by similar observations in the auditory midbrain or thalamus. However, these latter regions have not been systematically examined using unanesthetized or lightly anesthetized preparations, test paradigms, or natural stimuli that may be related to
recent observations of combinatorial properties in the primary auditory
cortex. Application of these methods may reveal additional spectral
combinatorial responses. For example, previous studies of cat and
monkey MGB found that the complexity of frequency tuning curves
and frequency organization increased when obtained from unanesthetized
or lightly anesthetized animals (Allon et al., 1981 ; Morel et al.,
1987 ). Recent studies of the ventral division of the MGB support the
presence of complex inhibitory frequency tuning (Imig et al.,
1997 ).
In the mustached bat, previous studies and the current results show
that combinatorial response properties are created within the
tonotopically organized ascending pathway below the auditory forebrain.
In IC representations of frequencies within higher harmonics of the
bat's biosonar signal, ~75% of neurons display combination-sensitive response properties (Portfors and Wenstrup, 1999a ). There are many similarities in combination-sensitive responses between those populations and the neurons described here. All are characterized by neural interactions activated by sound in two
distinct frequency bands. These interactions are sensitive to the
relative timing of two signals in the range of milliseconds or tens of
milliseconds. Finally, each of the IC populations of combination-sensitive neurons displays facilitatory and inhibitory interactions between two frequency inputs, with a range in the strength
of interactions.
Most combination-sensitive responses in the mustached bat appear to
originate in one nucleus, the ICC. Thus, patterns of inputs to
combination-sensitive IC neurons from the cochlear and lateral lemniscal nuclei, the lack of combination-sensitive responses in the
lateral lemniscal nuclei, and the ability of strychnine to eliminate
combination-sensitive facilitation in IC neurons all favor the
hypothesis that most sonar-related combination-sensitive properties are
constructed in the ICC (Leroy and Wenstrup, 1999 ; Portfors and
Wenstrup, 1999b ; Wenstrup et al., 1999 , 2000 ). On the basis of the
similarities among combination-sensitive response properties, we
hypothesize that nonsonar neurons also originate in the ICC and depend
on similar neuronal mechanisms.
Despite physiological and possible mechanistic similarities with
sonar-related combination-sensitive neurons, we believe the present
results have broader significance. Although sonar-related combination-sensitive neurons may function in other behavioral contexts
such as social communication (Ohlemiller et al., 1996 ; Esser et al.,
1997 ), their functional roles are closely linked to analyses of
information about sonar objects, e.g., distance and movement (O'Neill
and Suga, 1982 ; Suga et al., 1983 ; Olsen and Suga, 1991a ,b ). Their
presence in the IC might be regarded as a specialized neural feature
unique to a highly specialized behavior. The combination-sensitive
response properties described here do not function in biosonar
behavior. We conclude that the presence of combination-sensitive
properties in the IC is not a sonar-related specialization. Instead,
such response properties may be a general feature of analyses of
complex sounds in the IC.
Possible roles of combination-sensitive response properties
The nonsonar neurons described here do not analyze sonar echoes
but may instead analyze other complex acoustic signals of interest to
mustached bats. These signals include social vocalizations of mustached
bats (Kanwal et al., 1994 ), sonar and social vocalizations of other bat
species (Goodwin, 1970 ), clicks produced by moths to deter bat
predation (Dunning and Roeder, 1965 ; Goldman and Henson, 1977 ), and
other animal-generated sounds. The complex spectral responses of
nonsonar neurons could participate in both identification and
localization of these signals. However, this discussion focuses on
their potential role in discriminating among the mustached bat's
social vocalizations because there is a striking correspondence between
the dual frequency sensitivities of the neurons and spectral peaks
occurring in several mustached bat social vocalizations [Kanwal et al.
(1994) , their Fig. 13].
We predict that spectral and temporal response properties of nonsonar
combination-sensitive neurons should provide selectivity among the
mustached bat's repertoire of social vocalizations. In this regard,
the most obvious response property is dual frequency selectivity, which
will restrict strong responses to those calls with significant energy
in the 10-23 and 32-47 kHz bands. Additional selectivity could result
from the harmonic relationship between lower and higher best
frequencies of nonsonar neurons. For example, in some neurons the two
best frequencies are tuned near a fundamental-second harmonic (1:2)
relationship, so these neurons would respond well to constant frequency
(CF) signals with their fundamental at the neuron's lower best
frequency. Other neurons, not tuned in a 1:2 harmonic relationship,
should respond better to social vocalizations that have low-frequency
fundamentals with many harmonics [e.g., short, quasi CF signals
(Kanwal et al., 1994 )] or have broad bands. Finally, a major source of
variation among social vocalizations of the same category is a call's
fundamental frequency (Kanwal et al., 1994 ). A population of such
neurons, tuned to different frequency combinations, could distinguish
among different versions of the same call, possibly emitted by
different individuals.
A distinctive feature of many nonsonar combination-sensitive neurons is
their requirement for bandpass noise in each of the 10-23 and 32-47
kHz bands. These neurons may respond preferentially to a class of
mustached bat vocalizations containing noise bursts (Kanwal et al.,
1994 ). One such call, a rectangular broadband noise burst used in
agonistic interactions among individual mustached bats (Gupta et al.,
1998 ), should effectively stimulate noise-sensitive facilitated
neurons. These communication signals may elicit fixed behavioral
responses and thus on theoretical grounds may be most appropriate for
processing within the IC (Casseday and Covey, 1996 ).
The above considerations suggest that nonsonar neurons may show
selectivity among social vocalizations, something that has been
examined rarely in the IC (Ehret and Moffat, 1985b ; Aitkin et al.,
1994 ). Direct studies of responses of nonsonar, combination-sensitive neurons to the mustached bat's repertoire of social vocalizations will
be required to test this prediction.
 |
FOOTNOTES |
Received March 27, 2000; revised July 28, 2000; accepted Aug. 24, 2000.
This work was supported by the National Institute on Deafness and Other
Communication Disorders, National Institutes of Health Grant 5 R01 DC
00937. We thank C. V. Portfors for helpful comments on this
manuscript, C. D. Grose for technical assistance, F.-M. Chen for
software, and the Natural Resources Conservation Authority of Jamaica
for permission to collect bats.
Correspondence should be addressed to Dr. Jeffrey J. Wenstrup,
Department of Neurobiology and Pharmacology, Northeastern OH Universities College of Medicine, 4209 State Route 44, Rootstown, OH
44272-0095. E-mail: jjw{at}neoucom.edu.
Dr. Leroy's present address: Abbott Laboratories, Building AP32-LL,
200 Abbott Park Road, Abbott Park, IL 60064.
 |
REFERENCES |
-
Aitkin LM,
Tran L,
Syka J
(1994)
The responses of neurons in subdivisions of the inferior colliculus of cats to tonal, noise and vocal stimuli.
Exp Brain Res
98:53-64[Web of Science][Medline].
-
Allon N,
Yeshurun Y,
Wollberg Z
(1981)
Responses of single cells in the medial geniculate body of awake squirrel monkeys.
Exp Brain Res
41:222-232[Web of Science][Medline].
-
Brosch M,
Schulz A,
Scheich H
(1999)
Processing of sound sequences in macaque auditory cortex: response enhancement.
J Neurophysiol
82:1542-1559[Abstract/Free Full Text].
-
Casseday JH,
Covey E
(1992)
Frequency tuning properties of neurons in the inferior colliculus of an FM bat.
J Comp Neurol
319:34-50[Web of Science][Medline].
-
Casseday JH,
Covey E
(1996)
A neuroethological theory of the operation of the inferior colliculus.
Brain Behav Evol
47:311-336[Web of Science][Medline].
-
Doupe AJ
(1997)
Song- and order-selective neurons in the songbird anterior forebrain and their emergence during vocal development.
J Neurosci
17:1147-1167[Abstract/Free Full Text].
-
Dunning DC,
Roeder KD
(1965)
Moth sounds and the insect-catching behavior of bats.
Science
147:173-174[Abstract/Free Full Text].
-
Ehret G,
Merzenich MM
(1988)
Complex sound analysis (frequency resolution, filtering and spectral integration) by single units of the inferior colliculus of the cat.
Brain Res
472:139-163[Medline].
-
Ehret G,
Moffat AJM
(1985a)
Inferior colliculus of the house mouse. II. Single unit responses to tones, noise and tone-noise combinations as a function of sound intensity.
J Comp Physiol [A]
156:619-635.
-
Ehret G,
Moffat AJM
(1985b)
Inferior colliculus of the house mouse. III. Response probabilities and thresholds of single units to synthesized mouse calls compared to tone and noise bursts.
J Comp Physiol [A]
156:637-644.
-
Esser KH,
Condon CJ,
Suga N,
Kanwal JS
(1997)
Syntax processing by auditory cortical neurons in the FM-FM area of the mustached bat Pteronotus parnellii.
Proc Natl Acad Sci USA
94:14019-14024[Abstract/Free Full Text].
-
Fitzpatrick DC,
Kanwal JS,
Butman JA,
Suga N
(1993)
Combination-sensitive neurons in the primary auditory cortex of the mustached bat.
J Neurosci
13:931-940[Abstract].
-
Frisina RD,
O'Neill WE,
Zettel ML
(1989)
Functional organization of mustached bat inferior colliculus. II. Connections of the FM2 region.
J Comp Neurol
284:85-107[Web of Science][Medline].
-
Fuzessery ZM,
Feng AS
(1983)
Mating call selectivity in the thalamus and midbrain of the leopard frog (Rana p. pipiens): single and multiunit analyses.
J Comp Physiol [A]
150:333-344.
-
Fuzessery ZM,
Hall JC
(1996)
Role of GABA in shaping frequency tuning and creating FM sweep selectivity in the inferior colliculus.
J Neurophysiol
76:1059-1073[Abstract/Free Full Text].
-
Goldman LJ,
Henson Jr OW
(1977)
Prey recognition and selection by the constant frequency bat, Pteronotus p. parnellii.
Behav Ecol Sociobiol
2:411-419[Web of Science].
-
Goodwin RE
(1970)
The ecology of Jamaican bats.
J Mammal
51:571-579.
-
Gupta P,
Dietz N,
Kanwal JS
(1998)
Vocal communication and stereotypic behavior patterns in the mustached bat, Pteronotus parnellii.
Assoc Res Otolaryngol Abstr
21:141.
-
Imig TJ,
Poirier P,
Irons WA,
Samson FK
(1997)
Monaural spectral contrast mechanism for neural sensitivity to sound direction in the medial geniculate body of the cat.
J Neurophysiol
78:2754-2771[Abstract/Free Full Text].
-
Jiang D,
Palmer AR,
Winter IM
(1996)
Frequency extent of two-tone facilitation in onset units in the ventral cochlear nucleus.
J Neurophysiol
75:380-395[Abstract/Free Full Text].
-
Kadia S,
Snider R,
Wang X
(2000)
Influence of stimulus components placed outside classical receptive field reveals harmonic structure of the auditory system.
Assoc Res Otolaryngol Abstr
23:54.
-
Kanwal JS,
Matsumura S,
Ohlemiller K,
Suga N
(1994)
Analysis of acoustic elements and syntax in communication sounds emitted by mustached bats.
J Acoust Soc Am
96:1229-1254[Web of Science][Medline].
-
Kanwal JS,
Fitzpatrick DC,
Suga N
(1999)
Facilitatory and inhibitory frequency tuning of combination-sensitive neurons in the primary auditory cortex of mustached bats.
J Neurophysiol
82:2327-2345[Abstract/Free Full Text].
-
Keating AW,
Henson Jr OW,
Henson MM,
Lancaster WC,
Xie DH
(1994)
Doppler-shift compensation by the mustached bat: quantitative data.
J Exp Biol
188:115-129[Abstract].
-
Kobler JB,
Wilson BS,
Henson Jr OW,
Bishop AL
(1985)
Echo intensity compensation by echolocating bats.
Hear Res
20:99-108[Web of Science][Medline].
-
Lancaster WC,
Keating AW,
Henson Jr OW
(1992)
Ultrasonic vocalizations of flying bats monitored by radiotelemetry.
J Exp Biol
173:43-58[Abstract/Free Full Text].
-
Leroy SA,
Wenstrup JJ
(1999)
Role of inhibitory neurotransmitters in responses of combination-sensitive neurons of the mustached bat's inferior colliculus.
Assoc Res Otolaryngol Abstr
22:219.
-
Margoliash D,
Fortune ES
(1992)
Temporal and harmonic combination-sensitive neurons in the zebra finch's HVc.
J Neurosci
12:4309-4326[Abstract].
-
Mittmann DH,
Wenstrup JJ
(1995)
Combination-sensitive neurons in the inferior colliculus.
Hear Res
90:185-191[Web of Science][Medline].
-
Morel A,
Rouiller E,
de Ribaupierre Y,
de Ribaupierre F
(1987)
Tonotopic organization in the medial geniculate body (MGB) of lightly anesthetized cats.
Exp Brain Res
69:24-42[Web of Science][Medline].
-
Norberg UM
(1987)
Wing form and flight mode in bats.
In: Recent advances in the study of bats (Fenton MB,
Racey P,
Rayner JMV,
eds), pp 43-56. Cambridge, UK: Cambridge UP.
-
Ohlemiller KK,
Kanwal JS,
Suga N
(1996)
Facilitative responses to species-specific calls in cortical FM-FM neurons of the mustached bat.
NeuroReport
7:1749-1755[Web of Science][Medline].
-
Olsen JF
(1992)
High-order auditory filters.
Curr Opin Neurobiol
2:489-497[Medline].
-
Olsen JF,
Suga N
(1991a)
Combination-sensitive neurons in the medial geniculate body of the mustached bat: encoding of relative velocity information.
J Neurophysiol
65:1254-1274[Abstract/Free Full Text].
-
Olsen JF,
Suga N
(1991b)
Combination-sensitive neurons in the medial geniculate body of the mustached bat: encoding of target range information.
J Neurophysiol
65:1275-1296[Abstract/Free Full Text].
-
O'Neill WE,
Suga N
(1979)
Target range-sensitive neurons in the auditory cortex of the mustache bat.
Science
203:69-73[Abstract/Free Full Text].
-
O'Neill WE,
Suga N
(1982)
Encoding of target range and its representation in the auditory cortex of the mustached bat.
J Neurosci
2:17-31[Abstract].
-
O'Neill WE,
Frisina RD,
Gooler DM
(1989)
Functional organization of mustached bat inferior colliculus. I. Representation of FM frequency bands important for target ranging revealed by 14C-2-deoxyglucose autoradiography and single unit mapping.
J Comp Neurol
284:60-84[Web of Science][Medline].
-
Portfors CV,
Wenstrup JJ
(1999a)
Delay-tuned neurons in the inferior colliculus of the mustached bat: implications for analyses of target distance.
J Neurophysiol
82:1326-1338[Abstract/Free Full Text].
-
Portfors CV,
Wenstrup JJ
(1999b)
Origin of combination-sensitive neurons in the mustached bat: evidence from the nuclei of the lateral lemniscus.
Soc Neurosci Abstr
25:396.
-
Ramachandran R,
Davis KA,
May BJ
(1999)
Single-unit responses in the inferior colliculus of decerebrate cats. I. Classification based on frequency response maps.
J Neurophysiol
82:152-163[Abstract/Free Full Text].
-
Rauschecker JP
(1998)
Cortical processing of complex sounds.
Curr Opin Neurobiol
8:516-521[Web of Science][Medline].
-
Rauschecker JP,
Tian B,
Hauser M
(1995)
Processing of complex sounds in the macaque nonprimary auditory cortex.
Science
268:111-114[Abstract/Free Full Text].
-
Rhode WS,
Greenberg S
(1992a)
Physiology of the cochlear nuclei.
In: The mammalian auditory pathway: neurophysiology (Popper AN,
Fay RR,
eds), pp 94-152. New York: Springer.
-
Rhode WS,
Greenberg S
(1992b)
Lateral suppression and inhibition in the cochlear nucleus of the cat.
J Neurophysiol
71:493-514[Abstract/Free Full Text].
-
Schnitzler H-U
(1970)
Echoortung bei der Fledermaus Chilonycteris rubiginosa.
Z Vergl Physiolog
68:25-38.
-
Schuller G,
Covey E,
Casseday JH
(1991a)
Auditory pontine gray: connections and response properties in the horseshoe bat.
Eur J Neurosci
3:648-662[Web of Science][Medline].
-
Schuller G,
O'Neill WE,
Radtke-Schuller S
(1991b)
Facilitation and delay sensitivity of auditory cortex neurons in CF-FM bats, Rhinolophus rouxi and Pteronotus p. parnellii.
Eur J Neurosci
3:1165-1181[Web of Science][Medline].
-
Schweizer H
(1981)
The connections of the inferior colliculus and the organization of the brainstem auditory system in the greater horseshoe bat (Rhinolophus ferrumequinum).
J Comp Neurol
201:25-49[Web of Science][Medline].
-
Suga N
(1996)
Basic acoustic patterns and neural mechanisms shared by humans and animals for auditory perception: a neuroethologists's view.
In: Auditory basis of speech perception (Ainsworth A,
Greenberg S,
eds), pp 31-38. Staffordshire, UK: Keele University.
-
Suga N,
O'Neill WE,
Manabe T
(1978)
Cortical neurons sensitive to combinations of information-bearing elements of biosonar signals in the mustache bat.
Science
200:778-781[Abstract/Free Full Text].
-
Suga N,
O'Neill WE,
Kujirai K,
Manabe T
(1983)
Specificity of combination-sensitive neurons for processing of complex biosonar signals in auditory cortex of the mustached bat.
J Neurophysiol
49:1573-1626[Free Full Text].
-
Suga N,
Niwa H,
Taniguchi I,
Margoliash D
(1987)
The personalized auditory cortex of the mustached bat: adaptation for echolocation.
J Neurophysiol
58:643-654[Abstract/Free Full Text].
-
Sussman HM,
Frutcher D,
Hilbert J,
Sirosh J
(1998)
Linear correlates in the speech signal: the orderly output constraint.
Behav Brain Sci
21:241-299[Web of Science][Medline].
-
Sutter ML,
Schreiner CE
(1991)
Physiology and topography of neurons with multipeaked tuning curves in cat primary auditory cortex.
J Neurophysiol
65:1207-1226[Abstract/Free Full Text].
-
Sutter ML,
Schreiner CE,
McLean M,
O'Connor KN,
Loftus WC
(1999)
Organization of inhibitory frequency receptive fields in cat primary auditory cortex.
J Neurophysiol
82:2358-2371[Abstract/Free Full Text].
-
Vater M,
Habbicht H,
Kossl M,
Grothe B
(1992)
The functional role of GABA and glycine in monaural and binaural processing in the inferior colliculus of horseshoe bats.
J Comp Physiol [A]
171:541-553[Medline].
-
Wenstrup JJ
(1999)
Frequency organization and responses to complex sounds in the medial geniculate body of the mustached bat.
J Neurophysiol
82:2528-2544[Abstract/Free Full Text].
-
Wenstrup JJ,
Grose CD
(1995)
Inputs to combination-sensitive neurons in the medial geniculate body of the mustached bat: the missing fundamental.
J Neurosci
15:4693-4711[Abstract].
-
Wenstrup JJ,
Larue DT,
Winer JA
(1994)
Projections of physiologically defined subdivisions of the inferior colliculus in the mustached bat: targets in the medial geniculate body and extrathalamic nuclei.
J Comp Neurol
346:207-236[Web of Science][Medline].
-
Wenstrup JJ,
Mittmann DH,
Grose CD
(1999)
Inputs to combination-sensitive neurons in the inferior colliculus.
J Comp Neurol
409:509-528[Web of Science][Medline].
-
Wenstrup JJ,
Leroy SA,
Portfors C,
Grose CD
(2000)
Neural mechanisms underlying the analysis of target distance.
In: Echolocation in bats and dolphins (Thomas J,
Moss C,
Vater M,
eds). Chicago: University of Chicago, in press.
-
Winer JA,
Larue DT,
Pollak GD
(1995)
GABA and glycine in the central auditory system of the mustache bat: structural substrates for inhibitory neuronal organization.
J Comp Neurol
355:317-353[Web of Science][Medline].
-
Yan J,
Suga N
(1996)
The midbrain creates and the thalamus sharpens echo-delay tuning for the cortical representation of target-distance information in the mustached bat.
Hear Res
93:102-110[Web of Science][Medline].
-
Yang L,
Pollak GD,
Resler C
(1992)
GABAergic circuits sharpen tuning curves and modify response properties in the mustache bat inferior colliculus.
J Neurophysiol
68:1760-1774[Abstract/Free Full Text].
-
Young ED,
Spirou GA,
Rice JJ,
Voigt HF
(1992)
Neural organization and responses to complex stimuli in the dorsal cochlear nucleus.
Philos Trans R Soc Lond [Biol]
336:407-413[Web of Science][Medline].
-
Zook JM,
Winer JA,
Pollak GD,
Bodenhamer RD
(1985)
Topology of the central nucleus of the mustache bat's inferior colliculus: correlation of single unit response properties and neuronal architecture.
J Comp Neurol
231:530-546[Web of Science][Medline].
Copyright © 2000 Society for Neuroscience 0270-6474/00/20228533-09$05.00/0
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