 |
Previous Article | Next Article 
The Journal of Neuroscience, August 15, 1998, 18(16):6388-6394
The Functional Anatomy of Sound Intensity Discrimination
Pascal
Belin1,
Stephen
McAdams2, 3,
Bennet
Smith2,
Sophie
Savel2, 3,
Lionel
Thivard1,
Séverine
Samson4, and
Yves
Samson1, 5
1 Groupe de Neurologie, Service Hospitalier
Frédéric Joliot, DRM-CEA, F-91406 Orsay cedex, France,
2 Institut de Recherche et de Coordination
Acoustique/Musique, F-75004 Paris, France, 3 Laboratoire de
Psychologie Expérimentale (Centre National de la Recherche
Scientifique), Université René Descartes, Équipe de
Neuropsychologie et Langage, F-75006 Paris, France,
4 Université Charles de Gaulle Lille III, BP 149, F-59653 Villeneuve d'Asq cedex, France, and 5 Service des
Urgences Cérébro-Vasculaires, Hôpital de la
Salpêtrière, F-75651 Paris cedex 13, France
 |
ABSTRACT |
The human neuroanatomical substrate of sound intensity
discrimination was investigated by combining psychoacoustics and
functional neuroimaging. Seven normal subjects were trained to detect
deviant sounds presented with a slightly higher intensity than a
standard harmonic sound, using a Go/No Go paradigm. Individual
psychometric curves were carefully assessed using a three-step
psychoacoustic procedure. Subjects were scanned while passively
listening to the standard sound and while discriminating changes in
sound intensity at four different performance levels (d' = 1.5, 2.5, 3.5, and 4.5). Analysis of regional cerebral blood flow data
outlined activation, during the discrimination conditions, of a right
hemispheric frontoparietal network already reported in other studies of
selective or sustained attention to sensory input, and in which
activity appeared inversely proportional to intensity discriminability.
Conversely, a right posterior temporal region included in secondary
auditory cortex was activated during discrimination of sound intensity
independently of performance level. These findings suggest that
discrimination of sound intensity involves two different cortical
networks: a supramodal right frontoparietal network responsible for
allocation of sensory attentional resources, and a region of secondary
auditory cortex specifically involved in sensory computation of sound
intensity differences.
Key words:
audition; attention; intensity discrimination; functional
neuroimaging; psychoacoustics; human; performance level
 |
INTRODUCTION |
Most functional neuroimaging studies
of the auditory system so far have focused on complex aspects of
auditory function [e.g., functional lateralization and phonological
processing (Knopman et al., 1982 ; Démonet et al., 1992 , 1994 ;
Zatorre et al., 1992 , 1996 ; Binder et al., 1994 ; Fiez et al., 1995 ;
O'Leary et al., 1995 ; Johnsrude et al., 1997 ; Platel et al., 1997 ;
Wessinger et al., 1997 ; Belin et al., 1998 )]. Few authors have used
functional neuroimaging techniques to study the perception of what is
probably the most basic feature of auditory signals and considerably
affects their neural processing, i.e., sound intensity. At a cellular level, intensity of auditory stimulation has been shown to dramatically modulate the firing rate of most neurons in the auditory cortex within
a certain range (Brugge and Reale, 1985 ; Ehret and Merzenich, 1988 ).
Furthermore, recent electrophysiological studies in animals have
identified regions of secondary cortex in which the nonmonotonic neural
responses to intensity changes suggest a possible role for intensity
discrimination (Heil and Irvine, 1998 ). At a more general level, sound
intensity conveys crucial information about the vibratory phenomenon
that produces the sound, i.e., its strength and its distance from the
listener. Variations in sound intensity are important in many aspects
of auditory cognition, such as estimating the radial movement of a
source or perceiving subtle meanings in a verbal message conveyed by
speech prosody (Monrad-Krohn, 1963 ; Joanette et al., 1994 ). These
considerations, as well as electrophysiological data in humans
(Näätänen, 1990 ; Giard et al., 1995 ), strongly
suggest that the cerebral cortex plays a critical role in perceiving
small changes in sound intensity, yet little is known about the
localization of the cortical structures involved in such
processing.
In the present study, positron emission tomography (PET) and
psychoacoustics were combined to identify, in human subjects, the
cortical network involved in detection of changes in sound intensity.
Normal volunteers were trained to discriminate small intensity
differences in a Go/No Go paradigm. To ensure that such discrimination
would be performed at equivalent levels of performance for each
subject, individual psychometric curves were carefully assessed using a
three-step psychoacoustic strategy. Measures of regional cerebral blood
flow (rCBF) were then performed while subjects passively listened to
standard sounds (baseline condition) and while they detected deviant
sounds of slightly higher intensity among these standard sounds
(discrimination conditions). Four different discrimination levels were
used, corresponding to equivalent levels of performance across subjects
as assessed by the d' index (d' = 4.5, 3.5, 2.5, and 1.5, with higher d' indicating greater sensitivity and
thus greater ease of discrimination). Functional images were analyzed
with statistical parametric mapping, using categorical (intensity
discrimination vs baseline), parametric (rCBF-d' index
correlation), and multivariate (principal-component analysis)
designs. We predicted that certain cortical regions would be
specifically activated by discrimination of auditory intensity
differences, and we were especially interested in the relation between
rCBF (indirect index of neuronal activity) and discrimination
performance in these areas.
 |
MATERIALS AND METHODS |
Subjects
Seven normal male volunteers (age 19-28 years) gave written
informed consent. They had no history of neurological or psychiatric disorders and self-reported their audition as normal. The study was
approved by the ethics committee of the La Salpétrière
Hospital.
Auditory stimuli
Auditory stimuli were synthesized at a sampling rate of 44.1 kHz
using the Institut de Recherche et de Coordination Acoustique/Musique Musical Workstation (ISPW digital signal processing card and a NeXT computer). The stimuli were harmonic complexes with 20 harmonics and a fundamental frequency of 200 Hz. The relative amplitudes of the
harmonics were determined by a 1/n spectral envelope, where n is the harmonic rank ( 3 dB/octave slope in the power
spectrum). Each stimulus had a duration of 300 msec, including 80 msec
linear rise and decay ramps in the amplitude envelope. All standard
sounds were presented binaurally over earphones at a level of 75 dB
sound pressure level (SPL) as measured with a Bruel and Kjaer 2209 sound level meter.
Psychoacoustic measures
The main task used in the imaging studies was Go/No Go. In a
series of events of which the majority (75%) have the reference level
and the minority (25%) have a level that is greater by some chosen
amount, the subject must decide whether each one is the reference value
(in which case no action is taken, No Go) or a deviant value, which is
always superior to the reference value (in which case the change is
noted mentally in the imaging task and a button is pushed in the
psychoacoustic task, Go). Ideally it should be possible to establish
performance levels for this kind of task with varying level
differences. However, this task has not been studied much in human
psychoacoustics, and the data therefore cannot be compared with the
literature. The psychoacoustic measures were thus made using both a
classic same/different task [same/different (Phase 2)] with constant
stimuli as well as the Go/No Go task (Phase 3).
Phase 1: Preliminary measure of high and low thresholds by an
adaptive method. To reduce experimentation time, a first rough measure of each subject's sensitivity to level change was made using
an N-down, 1-up adaptive procedure (Levitt, 1971 ), which converges on a performance level that depends on N.
N consecutive correct responses result in a decrease in
level difference, and one incorrect response results in an increase. In
our case, N was 3 [79.4%, low threshold (TL)] and 8 (91.7%, high threshold (TH)]. The levels at which the adaptive
trajectory changes direction were recorded, and the last 8 of 12 were
averaged to estimate TL, and the last four of six were averaged for TH.
Six estimates were obtained for each threshold. From the mean level
differences obtained at each threshold for each subject, the values
used in Phase 2 were determined. If half the level difference between TL and TH is denoted d, the tested levels included TL d, TL, TL + d, TH, TH+ d.
Phase 2: Psychometric functions determined with the method of
constant stimuli. For each of the five level differences obtained in Phase 1, a block of 200 trials was constructed. Each trial was
composed of two sounds presented sequentially. Four combinations are
possible: two reference stimuli (same), two test stimuli (same), and
one of each in the two orders (different). There were 50 repetitions of
each trial type in the block, presented in random order. After hearing
the two sounds, the subject indicated whether the stimuli were the same
or different. The hit rate was computed on "different" trials from
the percentage of correct responses. The false alarm rate was computed
on "same" trials from the percentage of incorrect responses.
According to signal detection theory (Green and Swets, 1974 ), the
discrimination rate expressed as percentage of correct detection of
intensity change is influenced both by the subject's perceptual
sensitivity and by his or her judgment strategy. Because the interest
of this study was to determine neural correlates of sensitivity to
intensity change, the sensitivity (d') was estimated from
hit and false alarm rates (Macmillan and Creelman, 1990 ). This
d' value is considered to estimate true sensitivity to
intensity difference with biases attributable to response strategy
having been factored out. This procedure was repeated for each level difference in a random order for each subject. From the d'
values estimated for each level difference, a psychometric function
was determined from a linear regression of those d' values
onto level differences. The highest d' value was at times
removed from the fitting procedure if the curve clearly asymptoted at
maximum performance level.
Phase 3: Psychometric functions determined with the Go/No Go
method. On the basis of the previously determined psychometric function, five new level differences were chosen for the Go/No Go
procedure corresponding to performances in Phase 2 equivalent to
d' values of 1, 2, 3, 4, and 5. Each difference was
presented in a separate block of trials. A block lasted ~2 min, as in
the imaging experiment. During this time 200 events were presented, of
which 75% had the reference level and 25% the (higher) test level.
The subject listened continuously and pressed a button as soon as a
test event occurred. The events were presented at a rate of one per
second (300 msec stimulus, 700 msec silence). If the subject pressed
the button during the 1 sec temporal window corresponding to the test
signal, it was scored as a hit. If the button press occurred outside of
this window, it was scored as a false alarm. The d' values
were estimated from hits and false alarm rates (Macmillan and Creelman,
1990 ). The procedure was repeated for each of the five level
differences in a different random order for each subject. From the
d' values for each of the five level differences, a linear
psychometric curve was determined as in Phase 2, and level differences
corresponding to d' values of 1.5, 2.5, 3.5, and 4.5 were
chosen for the imaging studies for each subject.
Functional neuroimaging
Imaging. Relative rCBF was determined from the
distribution of radioactivity after bolus intravenous injections of
H215O (Fox et al., 1984 ), measured with
an ECAT-HR+ PET camera (Siemens AG, Erlangen, Germany). Subjects
received 12 H215O injections (9 mCi per
injection) corresponding to 12 rCBF measurements, performed at 10 min
intervals. Attenuation-corrected data were reconstructed into 63 2.25-mm-thick axial slices, with a resulting resolution of 4.5 mm
full-width at half-maximum after reconstruction (Bendriem et al.,
1996 ).
Tasks. Four scans were acquired during a baseline condition,
and eight scans were acquired during detection of intensity changes performed at four different levels of discriminability (two scans per
level), in a counterbalanced order. The baseline condition consisted of
passively listening to standard sounds, presented binaurally through
Sony MDR-V600 headphones at a 75 dB SPL, with a 1 sec inter-onset
interval. Subjects were informed that all sounds were identical and
were instructed to listen carefully to the sounds. During the intensity
discrimination conditions, subjects were instructed to mentally detect
sounds of higher intensity (deviants), which were intermingled with the
standard sounds of the baseline condition with a 25% probability of
occurrence. The deviant sounds were identical to the standard sounds in
all respects but intensity, which was slightly greater in the deviants.
During a given intensity discrimination condition, all deviants were identical, with an intensity corresponding to a given performance level
(d' = 1.5, 2.5, 3.5, or 4.5) for the scanned subject. To avoid possible contamination of the activation pattern by
motor-specific activity, no overt response was required from the
subjects. However, subjective intensity discriminability, as indicated
by subjects after each scan, corresponded to the individual's
objective d' value, thus confirming that they were
performing the discrimination task as during the psychophysical
sessions.
Data analysis. Statistical parametric mapping (SPM96)
software was used for image realignment, transformation into standard stereotactic anatomical space (Talairach and Tournoux, 1988 ), smoothing, and statistical analysis (Friston et al., 1995a ,b ). State-dependent differences in global flow were covaried out using proportional scaling. Comparisons across conditions were made using the
t statistic subsequently transformed into the normally distributed Z statistic [SPM(Z)]. A
categorical approach was first used to determine cerebral regions in
which rCBF changed significantly in the seven subjects between baseline
and the pooled discrimination conditions. A parametric approach was
then used to determine regions in which rCBF covaried significantly in
a linear way with level of performance (d') during the
intensity discrimination conditions. A principal components analysis
was also performed on the dataset to determine a priori the composition
of the activation/deactivation pattern (eigenimage) that best described
the experimental dataset.
 |
RESULTS |
Intensity discrimination
The mean thresholds from all three phases of the psychoacoustic
testing and psychometric functions for a typical subject (subject 2)
are shown in Figure 1. Performance was
highly variable across subjects, resulting in varying physical
differences (in decibels) for each d' value (Table
1). The d' values increase
systematically and nearly linearly with increase in the level
difference. The mean level difference discriminated by subjects varies
from 1.1 dB at d' = 1.5 to 2.7 dB at d' = 4.5. The inter-subject variability of the data is also greater for the
higher levels of d', i.e., for more easily discriminated
intensity differences (SDs of 0.63, 0.79, 0.96, and 1.08 dB for
d' values of 1.5, 2.5, 3.5, and 4.5, respectively),
indicating a divergence of the subjects' performance as a function of
level difference. The relation between level and d' for each
subject is linear, and the regression coefficients vary from 0.8 to
nearly 1.0 (mean = 0.91). The pattern shown in Figure 1 is also
similar for all subjects, i.e., the slope of the psychometric function
for the constant-stimuli procedure is less than that for the Go/No Go
procedure, most likely indicating improvement in sensitivity over the
course of the experiment. Despite the variability across subjects in
terms of the physical difference at each sensitivity level, the use of
such psychoacoustic methods ensures that the PET scan measures
activation for four fixed levels of sensitivity in auditory
discrimination that are similar across subjects.

View larger version (16K):
[in this window]
[in a new window]
|
Figure 1.
Psychophysical data for Subject 2. The two
estimated thresholds from the three down/one up and eight down/one up
adaptive procedures (Phase 1: Adaptive tracking, top
panel) are shown with downward arrows.
From these two values, the five stimulus levels for the constant
stimuli procedure (Phase 2: Constant stimuli, top
panel) were derived. A linear psychometric function
(solid line) was fitted to the first four of the five
data points obtained from this procedure ( ). From this function, the
five stimulus levels for the Go/No Go procedure (Phase 3: Go/No
Go) were determined. A linear psychometric function
(solid line) was then fitted to the five data points
represented as open circles in the lower panel. Finally,
the four stimulus levels used in the imaging study were derived from
this latter function as indicated by the downward arrows
in the bottom panel.
|
|
View this table:
[in this window]
[in a new window]
|
Table 1.
Stimulus levels (dB SPL) corresponding to the deviant
sounds for detection of intensity changes at each performance level for
each subject
|
|
rCBF variations with detection of intensity changes
When compared with the baseline, averaged detection conditions
with similar weight for all four levels of performance yielded significant rCBF increases (p < 0.05 corrected
for multiple nonindependent comparisons) located exclusively in the
right cerebral hemisphere and in the contralateral left cerebellar
hemisphere (Table 2, Fig.
2). Regions of maximal rCBF change were
centered in the posterior part of the right superior temporal gyrus,
caudally to Heschl's gyri [Brodmann Area (BA) 22/42], and in the
right inferior frontal gyrus (BA 45). The latter region of significant
rCBF increase extended posteriorly and superiorly along the precentral
sulcus (BA 6), including two other maxima situated close to the
anatomical location of the frontal eye field (Paus, 1996 ). A region in
the right superior parietal cortex (dorsal part of the inferior
parietal lobule, BA 40) was also significantly activated by the
intensity-change detection task, as well as a region of the left
dorsolateral cerebellar hemisphere. Figure 2 shows the anatomical
location of these maxima on a right hemisphere surface rendering and
the mean relative rCBF values corresponding to the baseline condition
and to the four levels of intensity-change detection for each one of
the four right hemisphere maxima. Note that for the parietal and
frontal foci, a clear progression in mean rCBF value can be observed as d' decreases. On the contrary, rCBF in the posterior
temporal focus appears largely independent of d'.

View larger version (95K):
[in this window]
[in a new window]
|
Figure 2.
Surface rendering, on a T1 image of a right
hemisphere, of the four cortical regions significantly activated during
intensity discrimination (all performance levels pooled) as compared
with the passive baseline. Yellow diagrams represent,
for each of these regions, the mean (bar) and individual
(red dots) rCBF values corresponding to the baseline
(B) and each of the four intensity
discriminations (d' = 1.5, 2.5, 3.5, 4.5), in arbitrary
units. Decreasing discriminability leads to increased activation in the
frontoparietal network, but not in the posterior temporal region.
|
|
Comparison of the averaged intensity discrimination conditions to the
baseline also yielded regions of significant rCBF decreases (p < 0.05 corrected), all situated in the left
cerebral hemisphere. These were located in the left inferior posterior
parietal lobe (BA 39), in the left superior frontal gyrus (BA 8), and
in the left inferior temporal pole (BA 20/38).
rCBF: performance correlation
A parametric approach was used to determine cerebral regions in
which normalized activity was linearly related with equivalent performance level as measured by d' value during detection
of intensity changes. A single region, located in right parietal cortex
(BA 39,40), showed significant (p < 0.01 uncorrected) negative correlation between rCBF and d' value:
decreasing discriminability (decreasing d' value)
corresponded to linearly increasing mean rCBF value (Table
3). This region contained two maxima,
situated ~2 cm ventrally and 1 cm caudally to the parietal activation
peak obtained in the factorial analysis. No region showed significant rCBF increase with increasing discriminability (positive correlation with d' value). Importantly, no significant correlation
subsisted, either positive or negative, when individual decibel values
corresponding to each performance level were used instead of the common
d' index.
Eigenimage
Additional insight was obtained by decomposing the dataset into
principal components (eigenimages, or eigenvectors of the variance-covariance matrix). The first eigenimage alone explained 56.4% of the variance (Fig. 3). This
eigenimage corresponded approximately to an activation/deactivation
pattern obtained by contrasting the intensity discrimination conditions
with the baseline conditions (Fig. 3, right). This result is
very much similar to the one obtained with the regular factorial
analysis, when identical weights were arbitrarily given for the
different detection conditions. Maxima of rCBF increase were located in
the right parietal and frontal lobe, as well as in the left cerebellar
hemisphere. However, in striking contrast to the categorical
activation/deactivation pattern, the previously maximally activated
posterior temporal region completely disappears here. Concerning the
composition of this eigenimage in terms of experimental conditions, a
clear increase in the weights of the discrimination conditions along
with decreasing discriminability (decreasing d' values) can
be observed (Fig. 3).

View larger version (60K):
[in this window]
[in a new window]
|
Figure 3.
First eigenimage of the dataset (84 scans),
explaining 56.4% of the variance. The corresponding
activation/deactivation pattern is indicated by the left
(negative changes) and middle (positive changes)
panels. Composition of the eigenimage in terms of the scans
corresponding to each experimental condition (four baseline scans;
eight intensity discrimination tasks, two per d' value) is
indicated in the right panel.
|
|
 |
DISCUSSION |
Right hemispheric frontoparietal network
The right hemispheric frontoparietal activation pattern obtained
during intensity discrimination is very consistent with those observed
in previous neuroimaging studies involving sustained or selective
attention to sensory input (Pardo et al., 1991 ; Gitelman et al., 1996 ;
Paus et al., 1997 ). In the Pardo et al. (1991) study, subjects were
instructed to attend to slight changes in visual or somatosensory
stimulations. When compared with a reference resting state, the
conditions of sustained attention to sensory stimuli either visual or
somatosensory yielded consistent activation in the right parietal lobe
[mean location: x = 39, y = 43,
z = 45 in the Talairach atlas (Talairach and Tournoux,
1988 )] and in the right frontal region extending from a superior
precentral region (mean: x = 30, y = 15, z = 40) to the inferior frontal gyrus
(x = 39, y = 9, z = 9)
(Pardo et al., 1991 ). In the Gitelman et al. (1996) study, spatial
attention was examined in normal subjects by comparing active
exploratory to passive hand movements. In addition to an anterior
cingulate activation focus, the authors observed the characteristic
right hemispheric frontoparietal network, with activation in BA 40 (mean: x = 35, y = 43,
z = 47) and in the right prefrontal region (BA 6) close
to the frontal eye field (mean: x = 46, y = 9, z = 32) (Gitelman et al., 1996 ).
In the Paus et al. (1997) study, subjects were scanned every 10 min
during a 60-min-long vigilance task that consisted of detecting
decreases in intensity in auditory stimuli. Regions that showed the
most significant rCBF decrease with time interpreted as being part of
the attentional network involved in sustained attention to the auditory
stimuli were located in the right inferior frontal gyrus (BA 45; maxi:
x = 46, y = 20, z = 2) and in the right inferior parietal lobule (BA 40; maxi:
x = 63, y = 35, z = 36) (Paus et al., 1997 ). These neuroimaging results, obtained for
different sensory modalities, thus outline activation of a right
hemispheric frontoparietal network that is very similar to the one
observed in the present study for auditory stimuli presented in
binaural conditions. This right frontoparietal network appears crucial to sustained attention to sensory input, as already suggested by animal
and lesion data (Mesulam, 1981 ; Woods and Knight, 1986 ; Wilkins et al.,
1987 ).
An important feature of our results is to show that activity of this
right hemispheric frontoparietal network is modulated by the required
attentional resource. It is very clear in our data that relative rCBF
in this network increases with decreasing intensity discriminability
(decreasing d'). Figure 2 shows that in the parietal,
superior prefrontal, and inferior prefrontal regions recruited by the
intensity discrimination task, mean rCBF is in inverse relation to
performance level (d'). The first eigenimage confirms this
point (Fig. 3) by showing that the detection task contributes more and
more to the activation of the frontoparietal network in the right
hemisphere as discriminability decreases (increasing weights with
decreasing d'). Such a relation could be interpreted as
underlying the increased attentional resources required to perform the
discrimination task as discriminability decreases. Alternatively, it
could also be related to the change in response criteria resulting in
an increase in false alarm rate.
Right posterior temporal region
In contrast to activation of this general frontoparietal network
is the activation of a region of secondary auditory cortex in the right
posterior temporal gyrus (BA 42/22) that was observed during the
detection tasks. This region, which corresponded to the greatest
activation in the baseline/detection comparison, is probably
selectively involved in detection of intensity changes for the
following reasons. First, this posterior region was not found to be
activated in neuroimaging studies that focused on other sensory
modalities (Pardo et al., 1991 ; Gitelman et al., 1996 ), whereas a
similar region of the right posterior superior temporal gyrus (maxi:
x = 59, y = 21, z = 9) was also found in the Paus et al. (1997) study for detection of
intensity changes. Second, such activation is consistent with previous
data from patients having undergone unilateral excision of the temporal lobe. When Milner et al. (1962) administered the Seashore Musical Aptitude battery to patients before and after surgical removal of the
temporal lobe for relief of intractable epilepsy, performance in
intensity discrimination was significantly poorer after removal only in
the group of patients with excision within the right temporal lobe.
Although the excisions did not remove temporal cortex located as
posteriorly as the region activated in the present study, these results
confirm the role of the right temporal auditory regions in intensity
discrimination. Third, in opposition to the modulation of the
frontoparietal activity by intensity discriminability, no such relation
was observed in the posterior temporal focus of activation. Figure 2
shows that mean activity in this region is mainly modulated by the
presence or absence of the detection task and is roughly independent of
the performance level in the detection tasks. This result suggests that
this region is more specifically involved in sensory aspects of the
detection, and in particular with operation of intensity change
computation per se, which in principle should remain the same
regardless of the actual physical differences detected, and therefore
of the d' value for a given stimulus.
Interestingly, no modulation of activity could be observed in either
left or right primary auditory cortices when the subjects switched from
passive listening conditions to active detection of intensity
differences. This observation is in agreement with recent data from a
neuroimaging study of auditory attention by Zatorre et al. (1996) . In
this study, they scanned normal volunteers attending to spectral or
spatial features of similar auditory stimulations, and observed
activation of a right hemispheric frontoparietal network very similar
to the one observed in the present study. Importantly however, activity
in primary or secondary regions of the auditory cortex was not
significantly different between the passive baseline condition and the
different attending conditions. Another neuroimaging study confirms the
absence of auditory cortex modulation by selective auditory attention
(Platel et al., 1997 ). In this study, the authors scanned normal
subjects who were selectively attending to rhythm, timbre, or pitch in
the same sequences of notes. Although different cortical regions were
found to be activated for the different attended features, no
significant changes were observed in primary or secondary auditory
cortices between the different selective attention tasks. These
observations are consistent with a model of auditory perception
according to which neural processing of acoustic features in primary
auditory cortex would be to a large extent automatic and pre-attentive
(Mondor et al., 1998 ).
These results, taken as a whole, suggest that the intensity
discrimination activated two different sets of regions in the right
cerebral hemisphere: (1) a general, nonspecific frontoparietal network
involved in selective or sustained attention to sensory stimuli, which
is consistently activated regardless of the particular sensory
modality, and the activity of which is intimately related to the
attentional resources required, and thus to intensity discriminability; and (2) a region of secondary auditory cortex in the right superior temporal gyrus, posterior to Heschl's gyrus, specifically involved in
sensory aspects of detection and in particular in the computation of
intensity differences, and the activity of which is largely independent
of the physical differences to be computed and thus of the actual
performance level.
Parametric analysis versus eigenimages
The parametric analysis we conducted on the dataset sought brain
regions in which activity would be significantly correlated to
performance level as measured by the d' value. Only one
region in the right parietal lobe showed such a significant
quasi-linear relation between rCBF and d' value. However,
this analysis was very restraining in that it excluded a priori any
region that would have a nonlinear rCBF-d' relation. In
contrast, the decomposition of the dataset into principal components,
or "eigenimages," which introduces no a priori assumptions
concerning the shape of the rCBF-d' curve, showed that the
activity in the whole frontoparietal network was indeed modulated by
the performance level, although in a somewhat less linear way. This
shows the power of the eigenimage approach, which simply consists of a
mathematical simplification of the dataset.
The correlational analysis showed, nevertheless, the importance of
using individually selected physical values corresponding to equivalent
sensitivity levels for the activation tasks, rather than similar
decibel values for all of the subjects. The significant correlation
peak we obtained disappeared when physical levels (decibel values; see
Table 1) were used instead of equivalent performance levels, suggesting
that inter-individual variability is a confounding factor in this type
of analysis. Indeed, if the same physical levels had been used in all
the subjects for a given discriminability level, some subjects would
have had a good performance and thus low activity in the
attention-related frontoparietal network, whereas others would have had
poorer performance and, accordingly, higher activity in the
frontoparietal network. This would have disturbed the above
results, obtained by either the correlational or the eigenimage
approach. Careful assessment of individual levels of performance, by
appropriate psychophysical techniques, is thus a crucial step in the
realization of such studies.
The combination of psychoacoustics and functional neuroimaging thus
appears successful in determining the cortical regions involved in
perception and sustained attention to parameters of auditory
stimulation such as intensity. In the considerable dataset acquired, we
were able to tease apart activation of a nonspecific right
frontoparietal attentional network from activation of a right posterior
temporal region presumably specifically implicated in computation of
intensity differences. In this analysis, the use of individual
psychometric measures to take into account the considerable
inter-individual variability in intensity discrimination and the use of
powerful analysis techniques such as eigenimage analysis were of
crucial importance.
 |
FOOTNOTES |
Received Feb. 17, 1998; revised May 29, 1998; accepted June 1, 1998.
This work was supported by Fondation France-Télécom and
Groupement d' Intérêt Scientifique-Sciences de la
Cognition. We thank the staff members of the Institut de Recherche et
de Coordination Acoustique/Musique and the Orsay Brain Imaging Center
for technical assistance. We are grateful to R. J. Zatorre for his
useful comments on this manuscript.
Correspondence should be addressed to Y. Samson, Service des Urgences
Cérébro-Vasculaires, Hôpital de la
Salpêtrière, 47 boulevard de l'Hôpital, F-75651
Paris cedex 13, France.
 |
REFERENCES |
-
Belin P,
Zilbovicius M,
Crozier S,
Thivard L,
Fontaine A,
Masure M-C,
Samson Y
(1998)
Lateralization of speech and auditory temporal processing.
J Cognit Neurosci
10:536-540[Web of Science][Medline].
-
Bendriem B,
Casey M,
Dahlbom M,
Trebossen R,
Blohm K,
Nutt R,
Syrota A
(1996)
Evaluation of the ECAT EXACT HR+: a new positron camera with 2D/3D acquisition capabilities and nearly isotropic spatial resolution.
J Nucl Med
37:170[Web of Science].
-
Binder JR,
Rao SM,
Hammeke TA,
Yetkin FZ,
Jesmanowicz A,
Bandettini PA,
Wong EC,
Estkowski LD,
Goldstein MD,
Haughton VM,
Hyde JS
(1994)
Functional magnetic resonance imaging of human auditory cortex.
Ann Neurol
35:662-672[Web of Science][Medline].
-
Brugge JF,
Reale RA
(1985)
Auditory cortex.
In: Cerebral cortex, Vol 4 (Peters A,
Jones EG,
eds), pp 229-271. New York: Plenum.
-
Démonet JF,
Chollet R,
Ramsay S,
Cardebat D,
Nespoulos J,
Wise R,
Rascol A,
Frackowiak RSJ
(1992)
The anatomy of phonological and semantic processing in normal subjects.
Brain
115:1753-1768[Abstract/Free Full Text].
-
Démonet JF,
Price C,
Wise R,
Frackowiak RSJ
(1994)
A PET study of cognitive strategies in normal subjects during language tasks: influence of phonetic ambiguity and sequence processing on phoneme monitoring.
Brain
117:671-682[Abstract/Free Full Text].
-
Ehret G,
Merzenich MM
(1988)
Complex sounds analysis (frequency resolution, filtering and spectral integration) by single units of the inferior colliculus of the cat.
Brain Res Rev
13:139-163.
-
Fiez JA,
Raichle ME,
Miezin FM,
Petersen SE,
Tallal P,
Katz WF
(1995)
PET studies of auditory and phonological processing: effects of stimulus characteristics and task demands.
J Cognit Neurosci
7:357-375.
-
Fox PT,
Mintun MA,
Raichle ME,
Herscovitch P
(1984)
A non-invasive approach to quantitative functional brain mapping with H215O and positron emission tomography.
J Cereb Blood Flow Metab
4:329-333[Web of Science][Medline].
-
Friston K,
Ashburner J,
Frith CD,
Poline J-B,
Heather JD,
Frackowiak RSJ
(1995a)
Spatial registration and normalization of images.
Hum Brain Mapp
2:165-189.
-
Friston K,
Holmes AP,
Worsley KJ,
Poline J-B,
Frith CD,
Frackowiak RSJ
(1995b)
Statistical parametric mapping in functional imaging: a general linear approach.
Hum Brain Mapp
2:189-210.
-
Giard MH,
Lavikainen J,
Reinikainen K,
Perrin F,
Bertrand O,
Pernier J,
Näätänen R
(1995)
Separate representations of stimulus frequency, intensity and duration in auditory sensory memory: an event-related potential and dipole model analysis.
J Cognit Neurosci
7:113-143.
-
Gitelman DR,
Alpert NM,
Kosslyn S,
Daffner K,
Scinto L,
Thompson W,
Mesulam M-M
(1996)
Functional imaging of human right hemispheric activation for exploratory movements.
Ann Neurol
39:174-179[Web of Science][Medline].
-
Green DM,
Swets JA
(1974)
In: Signal detection theory and psychophysics. New York: Krieger.
-
Heil P,
Irvine DRF
(1998)
The posterior field P of cat auditory cortex: coding of envelope transients.
Cereb Cortex
8:125-141[Abstract/Free Full Text].
-
Joanette Y,
Goulet P,
Hannequin D
(1994)
Troubles de la communication verbale chez les droitiers cérébro-lésés droits.
In: Neuropsychologie humaine (Seron X,
Jeannerod M,
eds), pp 342-344. Liège: Mardaga.
-
Johnsrude IS,
Zatorre RJ,
Milner BA,
Evans AC
(1997)
Left-hemisphere specialization for the processing of acoustic transients.
NeuroReport
8:1761-1765[Web of Science][Medline].
-
Knopman DS,
Rubens AB,
Klassen AC,
Meyer MW
(1982)
Regional cerebral blood flow correlates of auditory processing.
Arch Neurol
39:487-493[Abstract/Free Full Text].
-
Levitt H
(1971)
Transformed up-down methods in psychoacoustics.
J Acoust Soc Am
49:467-477.
-
Macmillan N,
Creelman D
(1990)
In: Detection theory: a user's guide. Cambridge, UK: Cambridge UP.
-
Mesulam M-M
(1981)
A cortical network for directed attention and unilateral neglect.
Ann Neurol
10:309-325[Web of Science][Medline].
-
Milner B
(1962)
Laterality effects in audition.
In: Interhemispheric relations and cerebral dominance (Mountcastle VB,
ed), pp 177-195. Baltimore: John Hopkins Press.
-
Mondor TA, Zatorre RJ, Terrio NA (1998) Constraints on the
selection of auditory information. J Exp Psychol Hum Percept Perform,
in press.
-
Monrad-Krohn GH
(1963)
The third element of speech: prosody and its disorders.
In: Problems of dynamic neurology (Halpern L,
ed), pp 101-117. Jerusalem: Hebrew UP.
-
Näätänen R
(1990)
The role of attention in auditory information processing as revealed by event-related potentials and other brain measures of cognitive function.
Behav Brain Res
13:201-288.
-
O'Leary DS,
Andreasen NC,
Hurtig R,
Flashman L,
Torres I,
Hichwa R
(1995)
A PET study of auditory and visual attention.
Soc Neurosci Abstr
21:1988.
-
Pardo JV,
Fox PT,
Raichle ME
(1991)
Localization of a human system for sustained attention by positron emission tomography.
Nature
349:61-64[Medline].
-
Paus T
(1996)
Location and function of the human frontal eye-field: a selective review.
Neuropsychologia
34:475-483[Web of Science][Medline].
-
Paus T,
Zatorre RJ,
Hofle N,
Caramanos Z,
Gotman J,
Petrides M,
Evans AC
(1997)
Time-related changes in neural systems underlying attention and arousal during the performance of an auditory vigilance task.
J Cognit Neurosci
9:392-408[Web of Science].
-
Platel H,
Price C,
Baron JC,
Wise R,
Lambert J,
Frackowiak RSJ,
Lechevalier B,
Eustache F
(1997)
The structural components of music perception. A functional anatomical study.
Brain
120:229-243[Abstract/Free Full Text].
-
Talairach J,
Tournoux P
(1988)
In: Co-Planar stereotaxic atlas of the human brain. New York: Thieme.
-
Wessinger C,
Tian B,
VanMeter JW,
Platenberg RC,
Pekar J,
Rauscheker JP
(1997)
Hierarchical processing within human auditory cortex examined with fMRI.
Soc Neurosci Abstr
23:2073.
-
Wilkins AJ,
Shallice T,
McCarthy R
(1987)
Frontal lesions and sustained attention.
Neuropsychologia
25:359-365[Web of Science][Medline].
-
Woods DL,
Knight RT
(1986)
Electrophysiologic evidence of increased distractibility after dorsolateral prefrontal lesions.
Neurology
36:212-216[Abstract/Free Full Text].
-
Zatorre RJ,
Evans AC,
Meyer E,
Gjedde A
(1992)
Lateralisation of phonetic and pitch discrimination in speech processing.
Science
256:846-849[Abstract/Free Full Text].
-
Zatorre RJ,
Meyer E,
Gjedde A,
Evans AC
(1996)
PET studies of phonetic processing of speech: review, replication and reanalysis.
Cereb Cortex
6:21-30[Abstract/Free Full Text].
Copyright © 1998 Society for Neuroscience 0270-6474/98/18166388-07$05.00/0
This article has been cited by other articles:

|
 |

|
 |
 
K. Banai and M. Ahissar
Auditory Processing Deficits in Dyslexia: Task or Stimulus Related?
Cereb Cortex,
December 1, 2006;
16(12):
1718 - 1728.
[Abstract]
[Full Text]
[PDF]
|
 |
|

|
 |

|
 |
 
N. Sadato, T. Okada, M. Honda, K.-I. Matsuki, M. Yoshida, K.-I. Kashikura, W. Takei, T. Sato, T. Kochiyama, and Y. Yonekura
Cross-modal integration and plastic changes revealed by lip movement, random-dot motion and sign languages in the hearing and deaf
Cereb Cortex,
August 1, 2005;
15(8):
1113 - 1122.
[Abstract]
[Full Text]
[PDF]
|
 |
|

|
 |

|
 |
 
M. D. Hunter, T. D. Griffiths, T. F. D. Farrow, Y. Zheng, I. D. Wilkinson, N. Hegde, W. Woods, S. A. Spence, and P. W. R. Woodruff
A neural basis for the perception of voices in external auditory space
Brain,
January 1, 2002;
126(1):
161 - 169.
[Abstract]
[Full Text]
[PDF]
|
 |
|

|
 |

|
 |
 
R. A. W. Galuske, W. Schlote, H. Bratzke, and W. Singer
Interhemispheric Asymmetries of the Modular Structure in Human Temporal Cortex
Science,
September 15, 2000;
289(5486):
1946 - 1949.
[Abstract]
[Full Text]
|
 |
|
|