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The Journal of Neuroscience, September 15, 2001, 21(18):7416-7427
Importance of Temporal Cues for Tactile Spatial- Frequency
Discrimination
Efrat
Gamzu and
Ehud
Ahissar
Department of Neurobiology, The Weizmann Institute of Science,
Rehovot 76100, Israel
 |
ABSTRACT |
While scanning a textured surface with fingers, tactile information
is encoded both spatially, by differential activation of adjacent
receptors, and temporally, by changes in receptor activation during
movements of the fingers across the surface. We used a tactile
discrimination task to examine the dependence of human tactile
perception on the availability of spatial and temporal cues. Subjects
discriminated between spatial frequencies of metal gratings presented
simultaneously to both hands. Tactile temporal cues were eliminated by
preventing lateral hand movements; tactile spatial cues were eliminated
by using gloves with an attached rubber pin. Analysis revealed
separation of the subjects into two groups: "spatiotemporal" (ST)
and "latent-temporal" (LT). Under normal conditions, the
performance of ST subjects was significantly better than that of the LT
subjects. Prevention of lateral movements impaired performance of both
ST and LT subjects. However, when only temporal cues were available,
the performance of ST subjects was significantly impaired, whereas that
of the LT subjects either improved or did not change. Under the latter
condition, LT subjects changed strategy to scanning with alternating
hands, at velocities similar to the velocities normally used by ST
subjects. These velocities generated temporal frequencies between 15 and 30 Hz. The LT subjects were unaware of their improved performance.
Nine of ten LT subjects significantly improved their performance under normal conditions when trained to scan gratings using alternating hands
and velocities similar to those used by ST subjects. We conclude that
(1) temporal cues are essential for spatial-frequency discrimination,
(2) human subjects vary in the tactile strategies they use for texture
exploration, and (3) poor tactile performers can significantly improve
by using strategies that emphasize temporal cues.
Key words:
humans; learning; neural code; psychophysics; spatial
coding; tactile discrimination; temporal coding
 |
INTRODUCTION |
Finger movement is essential for
tactile perception
without it, object identification becomes
difficult, even impossible (Katz, 1989
; Morley et al., 1983
; Phillips
et al., 1983
; Srinivasan et al., 1990
; Hollins and Risner, 2000
).
Initially, this was thought to reflect the brain's need to use
temporal cues generated by the movements (Katz, 1989
; Gibson, 1962
).
During finger movement, spatial intervals were assumed to be encoded by
temporal intervals of receptor activation, with a spatial interval
dx being encoded by a temporal interval dt, where
dt = dx/v, and v is
the finger velocity (Darian-Smith and Oke, 1980
; Morley and Goodwin,
1987
). This interpretation was challenged by Lederman (1974)
,
who observed that the scanning velocity is not important for the
estimation of roughness and concluded that roughness estimation can be
obtained without temporal cues. Consistent with this, roughness
estimation was found to be best correlated with the spatial variations
across the fingertip (Connor et al., 1990
; Connor and Johnson, 1992
; Johnson and Hsiao, 1994
). According to this view, finger movement is
required only for the prevention of receptor adaptation (Taylor and
Lederman, 1975
) or the enhancement of spatial variations (Johnson and
Lamb, 1981
; Phillips et al., 1983
) but provides no sensory information
by itself.
However, not all results are consistent with this view. Lamb (1983)
observed that tactile discrimination of dot spacing is better along the
track of finger movement than perpendicular to it. Ahissar and Gamzu
(1995)
observed that discrimination of spatial frequencies by naive
subjects does depend on finger velocity. These observations suggested
that temporal cues, determined by the finger velocity along the
scanning direction, might be used for texture analysis. Indeed, it has
recently been shown that roughness can be perceived when spatial
tactile cues are eliminated (Klatzky and Lederman, 1999
). Furthermore,
the availability of temporal cues seems to be crucial for roughness
perception within certain ranges of spatial frequencies (Hollins and
Risner, 2000
) or stimulus parameters (Cascio and Sathian, 2001
). These
studies indicate that temporal cues carry significant tactile
information. However, what is the relative contribution of spatial and
temporal cues, what are the scanning strategies involved, and what are the differences between individual subjects, is still not known.
In this paper we examined to what extent spatial and temporal cues are
used by individual subjects during tactile discrimination of gratings
and how scanning strategy depends on cue availability. We addressed
these questions by eliminating either spatial or temporal tactile cues
in a spatial-frequency discrimination task and by monitoring finger
movement. We define tactile spatial cues as those conveyed by the
differential activation of adjacent receptors at a given time. We
define temporal cues as those conveyed by the temporal profile of the
activity of single receptors. The spatial information, encoded during
finger movement by both spatial and temporal cues, can be decoded by a
variety of neuronal mechanisms, using tactile, proprioceptive and motor
signals. Here, we do not ask how this information is decoded, but
rather which tactile signals are essential for decoding. We show that
temporal cues are essential for tactile discrimination, and that, in
approximately half of the subjects, their utilization is impaired by
the availability of spatial cues. This can be overcome by guided
training, which entails change of scanning strategy.
Preliminary reports of our findings have been presented (Gamzu and
Ahissar, 1998
; Gamzu et al., 2000
).
 |
MATERIALS AND METHODS |
Subjects. Thirty right-handed subjects (13 male and
17 female students, aged 21-35 years) were recruited and financially
compensated for their participation. None of the subjects had a
developmental or neurological disorder or a history of trauma affecting
the hands. None of the subjects had any previous experience with the stimuli or tasks used in this study.
Tactile stimulation. Gratings were prepared as printed
circuits, in which gold-plated copper bars were fixed on a firm plastic plate. The spatial frequencies (SF) of the gratings were from 219 to
800 bars/m, with the spaces between the bars of each grating constant.
To test the effect of the range of the available SFs on performance and
scanning strategies, the gratings were divided into two sets, each
consisting of eight gratings (Table 1).
In the first set, termed "24", the frequencies of the bars ranged from 219 to 400 bars/m. In the second, termed "48", the frequencies of the bars ranged from 438 to 800 bars/m. Within each set, the ratio
between two successive SFs was 1.09. The heights of the bars were
either 30 µm ("low-amplitude") or 100 µm
("high-amplitude"), and the widths ("ridge width") were 300 µm. The distance between two adjacent bars ("groove width")
varied from grating to grating, according to the SF (Table 1). Each
printed circuit ("gratings surface") contained eight gratings of
the same height of either the 24 or the 48 set.
Testing apparatus. For performance of the perceptual task,
each subject sat in front of a wooden frame that was constructed such
that the two grating surfaces could be introduced to the subjects while
hidden from their sight (Fig.
1A). The grating surfaces were inserted underneath a Plexiglas board (45 × 32 × 0.5 cm) with two rectangular windows (10 × 2.5 cm each) that
permitted exposure of the gratings to the fingertips of the subjects.
The distance between the centers of the windows was 22 cm. Before each
trial, one grating of each surface was manually positioned by the
experimenter underneath each window. The order of grating presentations
was determined by a computer, according to a random selection
procedure, with a different seed for each session. During each trial,
the location of the scanning fingers of each hand was sampled (temporal
resolution of 40 msec and spatial resolution of 0.1 mm) by an infrared,
ultrasonic, location detector (V-Scope LVS-11-pro; Litek, Tel-Aviv,
Israel).

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Figure 1.
Experimental apparatus. A, General
scheme. 1, Grating surfaces; 2,
electronic scales; 3, component of the location detector
containing infrared transmitter and ultrasonic receiver;
4, screen; 5, interface box of the
location detector; and 6, monitors and computer
interface of electronic scales. B, Scanning with gloves.
1, Latex glove; 2, Velcro band holding
the sensor of the location detector; 3, sensor of the
location detector; 4, rubber pin; 5,
grating; 6, Plexiglas board; and 7,
grating surface (inserted underneath the Plexiglas board).
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Testing procedure. The testing phase consisted of several
sessions, each of which included 128 trials. In each trial, the subject
performed a two-alternative forced-choice discrimination task, in which
he or she had to scan two gratings, one with each hand, and to
determine "which hand was presented with the denser grating." The
subjects also had to state the confidence level of their answer on a
scale of 0 (guessing) to 10 (absolutely confident). The difference
between the SFs of the gratings presented to the two hands in each
trial was expressed in log units [dSF = log1.09 (SFright/SFleft)] and was limited to
2
abs(dSF)
5. Within a session, each grating was
presented an equal number of times. Subjects were instructed to scan
the gratings with both their index and middle fingers, which were held
together by the sensor of the location detector (Fig.
1B).
Trial time was limited to 4 sec, and no feedback was provided. The
subjects were instructed not to use extensive finger force during
scanning, but no restraints were put on the amount used, i.e., they
were free to choose the force they desired. The finger force used by
the subjects was monitored by two electronic digital scales (MD-901;
Bolet, Rosh-Ha'ayin, Israel) and was < 200 gm wt for all
subjects and sessions. Normal, vertical, and glove scanning methods
were used. For normal scanning, subjects were instructed to scan
laterally, across the grating bars, and not to remove their fingers
from the surface during a trial; the subjects could choose the scanning
velocity and profile. For vertical scanning, the subjects were
instructed not to move their fingers laterally across the grating bars;
the subjects could use vertical scanning in both planes (along the
grating bars, or up and down). During "glove sessions," subjects
wore disposable latex gloves of appropriate sizes on both hands (Fig.
1B). Rubber tips (obtained from the ends of
toothbrushes; model number 407; Butler USA) were trimmed at the base
and glued (with super glue) to the index fingers of the gloves while on
the subject, and then the rubber tip was cut diagonally ~2 mm from
the end, to remove the flexible edge. The diameter of the tip at the
base of the diagonal cut was between 1 and 1.2 mm. The subjects were
allowed to scan laterally, only using that tip, but could choose the
scanning velocity and profile. Earphones were used to prevent possible
auditory cues produced by friction.
Because one goal of this study was to determine whether subjects adjust
their finger velocity according to the context of the stimulus and
scanning type, a block design (consisting of 12 sessions) was used in
which, during all 128 trials of a single session, the same experimental
conditions were used. The order of the sessions was 24 high normal, 48 high normal, 24 low normal, 48 low normal, 24 high vertical, 48 high
vertical, 24 low vertical, 48 low vertical, 24 high glove, 48 high
glove, 24 low glove, and 48 low glove; where 24 and 48 are the sets of
SFs; high and low refer to the amplitude (height) of the bars; and
normal, vertical and glove refer to the scanning type. During the
testing phase, 10 subjects performed all 12 sessions. Three of these
subjects performed additional four normal sessions (24 high, 48 high,
24 low, 48 low) at the end of the block. The other 20 subjects
performed only the four sessions in which the low-amplitude gratings of the 48 set were used (i.e., normal, vertical, glove, normal).
Training. Ten subjects, which were defined as
latent-temporal following the above testing procedure (see Results),
were trained on low-amplitude gratings of the 48 set using normal
scanning. Five of these ten were trained with guidance, and the other
five were trained first without and then with guidance. Guidance
consisted of instructions regarding scanning velocity and profile. To
ease the training process on the subjects and to try to assess the contribution of each of the scanning factors, we guided the subjects to
change only one factor at a time. In addition, the order of guiding was
changed between the two groups. Because changing velocity was more
difficult for the subjects, two sessions were dedicated for it: the
first was with 8-sec-long trials, and the second was with the usual
trial duration of 4 sec. The first five subjects were first instructed
to scan freely (control, one session), then to use alternating hands at
any velocity (1 session), then both hands simultaneously at low
velocity (two sessions), then alternating hands at low velocity (one
session), and then free style (control, one session). The other five
subjects, after completing the nonguided training (five sessions), were
first instructed to use low scanning velocity (two sessions), then
alternating hands at any velocity (one session), then alternating hands
at low velocity (two sessions), and then free style (control, one session).
Data analysis. For each trial, session, subject, and group
of subjects, the performance levels, confidence levels, and finger velocities were analyzed. For the basic velocity measure
(V), the root mean square of the velocity along each
trial was used. The average temporal frequency
(f) for each hand during each trial was
estimated to be V * SF.
Motion profiles were analyzed in a sample of 40 trials for each subject
and each session. In each sample, all SF combinations were represented.
The motion profiles for both hands along the entire trials were
plotted, and the types of profiles were classified (see Results and
Fig. 3). For each session, a sample was defined as homogeneous if
>95% (38 trials) of the motion profiles were of the same type.
All subjects, except for one, used the entire range (0-10) of
confidence levels, with the levels used for the one exception being
0-8. The confidence evaluations of this subject were normalized to
span the range 0-10.
One-, two- and three-way ANOVAs with repeated measures were
performed using SAS software, version 6.12 for windows. When the dependent variable was the success rate, ANOVA was performed on the
arcsine of the square root of the success rate, to correct for the
non-Gaussian distribution. Significant ANOVA results were followed by
multiple comparisons, using Fisher's Protected Least Significant
Difference (LSD) procedure with
= 0.05, to define homogeneous
subgroups. For comparison of distributions we used Kolmogorov-Smirnov
(KS) test. t test and Wilcoxon Rank Sum (WRS) test were used
for comparing averages of normal distributions and medians of
non-normal distributions, respectively. All correlation coefficients
(r) are Pearson's r.
 |
RESULTS |
Each of the first 10 subjects performed 12 types of discrimination
task sessions: using 24 and 48 sets of gratings, low- and high-amplitude sets of gratings, and "normal", "vertical" and "glove" types of scanning. Psychometric curves were determined for
each subject and each session. The average psychometric curves of all
10 subjects, resulting from all sessions of low-amplitude gratings, are
depicted in Figure 2, A and
B. The average performance of these subjects was better with
gratings whose SF was 219-400 bars/m (24) than those whose SF was
438-800 bars/m (48) (ANOVA; p < 0.001) and improved
with larger dSFs (p < 0.001). For both the 24 and 48 sets and high- and low-amplitude gratings, the performance of
the subjects was best with normal scanning, worse during glove scanning, and worst during vertical (no lateral movement) scanning (ANOVA; p < 0.001). In fact, the elimination of
lateral movements abrogated the ability to discriminate between
gratings with dSF < 4 (performance did not differ from chance
level with these dSFs in both 24 and 48 sets; ANOVA; p > 0.05), while allowing only marginal discrimination with dSFs of 4 and 5 (p < 0.01) (Fig. 2A,B).
The differences in performance level between scanning of the
high-amplitude (100 µm height) and low-amplitude (30 µm height) gratings were not significant (ANOVA followed by LSD;
= 0.05), except for normal scanning of the 24 set, in which low-amplitude gratings yielded slightly better performance (87 vs 83% on
average).

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Figure 2.
Effect of scanning type on average psychometric
curves. A, Average performance of the initial 10 subjects on the 24 low-amplitude sets of gratings. For each subject,
the success rate was the percentage of successful trials of the total
number of trials. dSF is the difference, in log units, between the SFs
presented to the two hands. Error bars indicate SEM.
Dashed line represents chance level. B,
Average performance of the initial 10 subjects on the 48 low-amplitude
sets of gratings. C, Pearson complete cluster analysis
of data in A and B (see Results).
Group 1 (ST), subjects jd, ov,
ys, sm, and rl; group 2 (LT), subjects rc, gt,
ms, ah, and sc. The lengths of the
branches represent the distances Dij between
the subjects: Dij = 1 Pij, where
Pij is the Pearson product moment
correlation between subjects i and j.
D-G, Psychometric curves of ST group
(n = 5) with 24 (D) and 48 (E) sets of gratings, and LT group
(n = 5) with 24 (F) and 48 (G) sets of gratings. Results were averaged for
each group.
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In addition to this common pattern, the performance of individual
subjects differed significantly (ANOVA; p < 0.0001).
Subjects also differed in their scanning patterns and velocities and
were affected differently by the elimination of spatial and temporal cues. For each subject and each condition (24, 48, high-amplitude, low-amplitude), correlation coefficients of the success rates in normal
sessions versus (1) vertical scanning sessions and (2) glove sessions,
were calculated. Pearson complete cluster analysis of these correlation
coefficients revealed two separate groups, each containing five
subjects (Fig. 2C). When the performance of these two groups
was compared by their averaged psychometric curves (Fig.
2D-G), it was found that one group (group 1)
performed best during normal scanning of both the 24 and the 48 sets
(ANOVA; p < 0.0001, followed by LSD;
= 0.05),
whereas the other (group 2) performed best with glove scanning of the
48 set (p < 0.0001) and equally good with glove
and normal scanning of the 24 set (p = 0.134 and
0.94 for low- and high-amplitude gratings, respectively). Under normal
conditions, the performance of group 1 was better than that of group 2 with both the 24 and 48 sets (ANOVA; p < 0.003).
However with glove scanning, the performance of group 2 was either
similar to (24 set; p = 0.58) or better than (48 set;
p < 0.0001) the performance of group 1. In fact, with
the 48 set, the performance of group 2 with gloves was similar to the
performance of group 1 under normal conditions (ANOVA;
p > 0.3). With glove scanning, the performance of both
groups with both 24 and 48 sets was better than chance (ANOVA;
p < 0.05). With vertical scanning, the performance was
also better than chance (p < 0.05), except for
group 2 with the 48 set (p = 0.67).
Thus, elimination of sensory cues affected different subjects
differently. For group 1, referred to as spatiotemporal (ST), both
spatial and temporal sensory cues appeared to be essential for the
tactile discrimination task. For group 2, referred to as
latent-temporal (LT), elimination of tactile spatial cues and utilization of only temporal cues either improved performance (with the
48 set) or did not affect performance (with the 24 set). With these
subjects, thus, the availability of spatial cues appeared to interfere
with tactile perception of SFs between 400 and 800 bars/m. For both the
ST and LT groups, no significant differences in performance were
observed between the scanning of high-amplitude and low-amplitude gratings.
Klatzky and Lederman (1999)
showed that with roughness discrimination
performance depends also on the absolute value of SF and not only on
the differential value. In our experiments, the dependency of success
rate on the absolute value of SF (defined as the averaged SF presented
to the two hands, aSF) is most clearly demonstrated by the reduction in
performance when moving from the 24 set to the 48 set (Fig. 2,
left vs right columns). However, within each set
and each group the effect of aSF on performance was much less
pronounced and usually did not reach significance level (Table
2). In general, the dependency of
performance on aSF was much less significant than the dependency on
dSF.
Profiles of scanning motion
Profiles of scanning motion describe the velocity of movement of
the hands as a function of time during single trials. Four types of
scanning profiles were observed (Fig. 3):
(1) simultaneous opposite: both hands scanning simultaneously in
opposite directions; (2) simultaneous same, both hands scanning
simultaneously in the same direction; (3) alternating, while one hand
scanning, the other was stationary; and (4) no order. For each subject
and session, the motion profile was usually consistent for at least
95% of the trials.

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Figure 3.
Motion profiles during single trials.
1. Simultaneous opposite, Simultaneous
scanning, opposite directions. 2. Simultaneous
same, Simultaneous scanning, same direction. 3.
Alternating, Scanning with alternating hands.
4. No order. lh, Left
hand; rh, right hand. Curves were smoothed by a
convolution with a triangular of area 1 and a base of ± two
samples.
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With few exceptions, all LT subjects switched from simultaneous
opposite scanning (type 1) during normal scanning sessions to
alternating scanning (type 3) during glove sessions (Table 3). ST subjects did not exhibit such a
stereotypical behavior. Yet, similarly to the LT subjects, ST subjects
usually exhibited alternating scanning during the glove sessions.
Tuning of scanning velocities
The average scanning velocities varied in different experimental
conditions. This "coarse tuning" of the scanning velocity is
demonstrated by the distributions of average trial velocities of the
two groups of subjects under the different conditions. LT subjects used
a wider range of velocities than ST subjects, with both normal and
glove scanning types (KS, p < 0.0001; WRS, p < 0.0001). The distributions of average scanning
velocities of the left-hand with low-amplitude 48 gratings are depicted
in Figure 4; the scanning velocity
distributions observed with the other conditions of the 48 set
(right-hand low-amplitude, right-hand high-amplitude, and left-hand
high-amplitude) were similar (data not shown). Similar differences
between ST and LT subjects were observed with the 24 set. When the ST
subjects switched from normal to glove scanning, their scanning
velocities did not change (Table 4) (WRS;
p > 0.1 for both hands). When the LT subjects switched from normal to glove scanning, their scanning velocities changed significantly (KS, p < 0.0001; WRS, p < 0.0001). The resulting distribution of LT velocities was closer to
the distributions of ST velocities (Fig. 4, compare C with
B and D; Table 4). The average temporal frequency
(f) generated for every trial is represented by f = V * SF, thus changes in
scanning velocities induced changes in the temporal frequencies. On
average, the temporal frequencies generated by LT subjects during
sessions with glove scanning were close to those generated by ST
subjects under both normal and glove conditions, and were usually
between 15 and 30 Hz (Table 4). Keeping f within this range
was accompanied by a reduction of the scanning velocities when moving
from the 24 to the 48 set (Table 4).

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Figure 4.
Distribution of the trial velocities
(V) of the left hand during the scanning of the
48 low-amplitude sets of gratings. Each gray level
represents a different subject. A, LT subjects and
normal scanning. B, ST subjects and normal scanning.
C, LT subjects and glove scanning. D, ST
subjects and glove scanning.
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Table 4.
Means (± SEM) and medians of velocities and temporal
frequencies during normal and glove scanning of "24" and "48"
low-amplitude gratings
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Fine adjustments in scanning velocities ("fine tuning"), i.e.,
subjects tuning their finger velocities during a trial according to the
SF of the gratings presented in that trial, was revealed by averaging
the scanning velocities of trials having the same SF for the five
subjects of each group (LT and ST) and each experimental condition. For
both the LT and ST subjects, the finger velocities during normal
scanning usually did not depend on the SF (Table 5), and therefore, the temporal frequency
increased in proportion with increasing SFs (Fig.
5, filled symbols). In
contrast, the finger velocities during glove scanning usually
correlated negatively with SF (Table 5), and thus, the temporal
frequencies were confined to a narrower range during glove than normal
scanning sessions, with both the LT and ST subjects (Fig. 5, open
symbols). This difference in the dependence of f on SF
between normal and glove sessions was statistically significant for all
conditions (ANOVA interactions; p < 0.05), except the
24 left-hand of LT subjects.

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Figure 5.
Dependency of the temporal frequency
(f) of scanning on the SF of the gratings during
normal (filled symbols) and glove (open
symbols) sessions. Temporal frequencies generated while
scanning the high- and low-amplitude sets of gratings with the left
hand were averaged for each SF (mean ± SEM across subjects are
depicted). A, ST subjects with 24 sets of gratings;
B, LT subjects with 24 set; C, ST
subjects with 48 set; and D, LT subjects with 48 set.
Note the different scale for D.
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Average trial velocities and temporal frequencies were computed for
bins of eight trials in each session. ST subjects exhibited more-or-less constant scanning velocities within each testing session,
across sessions, and across experimental conditions (48 and 24, low-
and high-amplitude gratings). This is demonstrated by the temporal
frequencies computed for normal and glove sessions of all grating sets
(Fig. 6, left column). During
both types of scanning sessions, which were separated by a few days,
the average scanning velocity, and thus, the average
temporal frequency, was more-or-less constant. In contrast, LT subjects
exhibited larger variability in scanning velocity during normal than
glove scanning and a sharp transition in scanning velocity when
switching from normal to glove scanning sessions, in all experimental
conditions (Fig. 6, right column). With LT subjects, the
average scanning velocity was reduced during the first eight trials
(first bin) of the glove session and stabilized on values that produced
temporal frequencies of 15-30 Hz (Table 4). The average temporal
frequency generated by the LT subjects during glove scanning was
similar to that of the ST subjects during both normal and glove
sessions. Another change induced by the transition to glove scanning
was that the consistent and significant (two-tailed t test;
p < 0.0001) difference between the frequencies
generated by the right and left hands of LT subjects during normal
scanning was reduced and became insignificant.

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Figure 6.
Temporal frequencies as a function of trial number
during normal and glove sessions. Mean ± SEM (across subjects) of
ST subjects (left column) and LT subjects (right
column) are depicted for left (lh, filled
symbols) and right (rh, open symbols) hands.
Bin, Eight trials. For each subject, normal and glove sessions were
conducted on different days.
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For the ST subjects, the temporal frequency barely changed from session
to session, and thus, did not correlate with the success rate, which
changed considerably (r =
0.07, p = 0.67; temporal frequency averaged across the two hands); However, for
the LT subjects, the temporal frequency correlated negatively and
significantly with the level of performance (r =
0.43; p = 0.006).
Performance and self confidence
Figure 7 describes the correlation
between confidence and performance levels during normal and glove
scanning (data from 48 low-amplitude and 24 high-amplitude gratings are
presented; similar results had been obtained with the 48 high-amplitude
and 24 low-amplitude gratings). Interestingly, although the confidence
levels of the ST subjects were, in general, correlated with their
performance levels (r > 0.7, p < 0.0001 for all four conditions), those of the LT subjects were not
(r < 0.3 and p > 0.5 for all
conditions except for 24 low-amplitude in which r = 0.4, p < 0.03). In fact, LT subjects exhibited less
confidence during the glove scanning session, even though they actually
performed better (48 set) or equally well (24 set) with this mode of
scanning (Fig. 7A,B). This surprising behavior was evident
for all five LT subjects. The correlation between confidence and
performance across all 12 sessions was also computed for each subject.
Individual ST subjects displayed high correlations (r = 0.71 ± 0.07; mean ± SEM across all ST subjects), whereas
individual LT subjects displayed significantly weaker correlations
(r = 0.44 ± 0.1; one-sided WRS, p = 0.028).

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Figure 7.
Performance and confidence. A,
B, Success rate (filled symbols)
and confidence level (open symbols) as a function of
trial number during normal and glove 48 low-amplitude
(A) and 24 high-amplitude
(B) sessions. Bin, Eight trials; mean ± SEM
across subjects are depicted; within each session, curves were smoothed
by a convolution with a triangular of area 1 and a base of ± 2 bins.
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Guided training
Results obtained with the initial 10 subjects (described above)
indicated that the level of performance of LT subjects improved during
scanning with the gloves, when tactile spatial cues were eliminated and
tactile information was carried only by temporal cues. This improvement
might suggest that under normal conditions the temporally encoded
information is masked by the spatially encoded information.
Alternatively, the improvement might be the result of the change in
scanning strategy observed during those trials: the LT subjects usually
reduced their scanning velocities and switched to alternating-hand
scanning. To test whether the change of strategy can lead to improved
performance also during normal scanning, i.e., when spatial cues are
available, we guided LT subjects to use low velocity and
alternating-hand scanning during normal sessions. This guidance was
performed during several training sessions (see Materials and Methods)
and, as before, without feedback.
Additional 20 subjects were tested with the low-amplitude 48 gratings.
Eleven subjects of the 20 were identified as LT, i.e., subjects whose
level of performance when scanning with gloves was better than under
normal conditions. With 10 of these 11 subjects, performance with
gloves was >15% better than normal performance; the performance with
gloves of all other nine subjects was worse than normal performance by
>10%. Of the 16 LT subjects identified (the latter 11 + the initial
5), 10 were trained with normal scanning as follows. Half
(n = 5) were guided to scan with low velocities (between 20 and 40 mm/sec) and alternating scanning. The interval between testing and training phases was 2 years for four subjects and 1 week for one subject. After one nonguided (control) session, the
subjects were guided to use alternating hand scanning at their default
velocities, (one session), then they were guided to scan with low
velocities (two sessions), then they were guided to use alternating
hand scanning at low velocity (one session), and finally they were
asked to restore their default scanning patterns and velocities (one
session, control). The average performance of these subjects increased
during the first guided session (ANOVA; p < 0.0001;
followed by LSD;
= 0.05; n = 5) as well as
during the following sessions, until stabilization at ~80% correct
(Fig. 8, solid curve and
small open diamonds). This improvement was preserved during
the final nonguided (control) session. Of these five subjects, one did
not improve during the training. However, the performance of this
subject improved significantly between the last control session in the
testing phase and the first control session in the training phase
(sessions that with this subject were separated by 2 years).

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|
Figure 8.
Effect of training and guidance on success
rates and confidence levels during the scanning of the low-amplitude 48 sets of gratings. Mean ± SEM of success rates (solid
lines) and confidence levels (dashed lines) are
depicted. Trials were 4 sec long, unless mentioned otherwise.
Filled diamonds, LT subjects, testing phase
(n = 10 for sessions 1-3; n = 7 for session 4). Open triangles, ST subjects, testing
phase (n = 14 for sessions 1-3;
n = 10 for session 4). Open
diamonds, LT subjects (n = 5), training
phase; these subjects performed a normal control session (session 5)
and then were trained with guidance in the following sequence of
sessions: 6, alternating scanning (alt); 7, low velocity
(8 sec trials; lv8); 8, low velocity
(lv); 9, alternating scanning with low velocity
(alv); and 10, a normal control
(ctrl). Filled diamonds, LT
subjects (n = 5), training phase; these subjects
performed five normal sessions without guidance after completing the
testing phase (sessions 5-9; ctrl) and then were
trained with guidance for additional five sessions: 10, low velocity (8 sec trials; lv8); 11, low velocity (lv);
12, alternating scanning (alt); 13, alternating scanning
with low velocity (8 sec trials; alv8); 14, alternating
scanning with low velocity (alv); and 15, a normal
control (ctrl). One of the subjects in the latter
group (ga) had success rates of <30% in the
first guided session, which indicated a possible systematic reversal of
his reports during that session. This session was excluded from the
data. Exclusion of the entire data of that subject did not
significantly change the average curve depicted in the figure.
|
|
During guidance, as during previous testing, these LT subjects were not
aware of an improvement in their performance: no correlation was
observed between the success rate and the confidence level of these
subjects (r = 0.21; p = 0.28). However,
during the training period, a negative correlation was observed between
the finger scanning velocity (averaged for both hands) and the success
rate (r =
0.425; p = 0.02) of the LT
subjects, and, as a result, between the temporal frequency (averaged
for both hands) and the success rate (r =
0.428;
p = 0.02). During the final scanning session, LT
subjects (four of five subjects were tested) were asked to scan the
gratings using simultaneous scanning and high velocities (>50 mm/sec).
For three of the four subjects this scanning was similar to their
pretraining scanning while for the other one the velocity was
significantly higher than his pretraining velocity. Interestingly, all
subjects found it difficult to implement the instructions and used a
mixture of the pretraining and guided scanning strategies.
The other group of five LT subjects began the training phase 2 d
after completing the testing phase. They were first allowed to practice
on normal scanning, with no guidance, for five sessions, which did not
improve their performance, and then guided training commenced (Fig. 8,
solid curve and small filled diamonds). These subjects were first guided to use low scanning velocity with their default scanning pattern (two sessions), then they were guided to use
alternating hand scanning at their default velocities (one session),
then they were guided to employ alternating hand scanning at low
velocity (two sessions), and finally they were instructed to restore
their default scanning pattern and velocity. With this group also,
improvement in performance was expressed immediately after starting
guidance (ANOVA; p < 0.0001; followed by LSD;
= 0.05), and was usually (three of five subjects) preserved during the
final control session. Furthermore, similar to the other LT group, no
correlation was observed between the success rate and the confidence
level of these subjects (r = 0.13; p = 0.33), whereas a negative correlation was observed between the success
rate and the finger scanning velocity (r =
0.29;
p = 0.03) and the temporal frequency (r =
0.29; p = 0.02).
 |
DISCUSSION |
Utilization of spatial and temporal cues by humans and the role of
lateral finger movements
Tactile processing has to deal with diverse stimuli and different
kinds of perceptual tasks. Does the brain use a single strategy to
process all types of textural stimuli and to solve all sorts of tactile
tasks or does the brain change its strategy depending on stimulus
parameters (e.g., spatial and temporal frequencies) and the
task in hand (e.g., roughness estimation versus
spatial-frequency discrimination)?
Until now, this issue had been addressed almost exclusively with
roughness estimation. The psychophysical results of Lederman (1974)
,
(1981)
, and (1982)
and Lederman and Taylor (1972)
suggested that
a single strategy based on spatial cues is used to estimate roughness
of textures, where only the groove-width changes while the ridge-width
is constant. Johnson and colleagues had identified the neuronal
mechanism underlying roughness estimation of spatial frequencies (SFs)
between 250 and 666 dots/m, as a one computing the spatial variations
across adjacent slowly adapting type I (SAI) mechanoreceptors (Connor
et al., 1990
; Connor and Johnson, 1992
; Johnson and Hsiao, 1994
).
Meftah et al. (2000)
suggested that such a computation might be based
on a "simple intensive code," perhaps used to assess the average
densities and heights of texture elements. However, it has been
recently shown that roughness can be perceived without spatial tactile
cues, albeit with a lower precision (Klatzky and Lederman, 1999
),
suggesting that alternative coding schemes can be used when spatial
cues are not available. Furthermore, with different (higher) ranges of
spatial frequencies (Hollins and Risner, 2000
) or when roughness is
changed by changing the ridge-width instead of the groove-width (Cascio
and Sathian, 2001
), subjects probably adopt strategies that use the
temporal cues generated by the finger movements even when spatial cues
are available.
In our study, we asked what is the importance of temporal and spatial
cues not for roughness estimation, but for spatial-frequency discrimination. Our results suggest that temporal cues are essential for the latter, at least in the range of 200-800 bars/m. When temporal
cues were eliminated, during vertical scanning, performance in the
spatial-frequency discrimination task was significantly impaired; in
fact it dropped near the chance level. In contrast, elimination of
tactile spatial cues, during glove sessions, did not yield homogeneous
results; whereas the performance of approximately half the subjects
(the ST subjects) was significantly impaired, the performance of the
other half (the LT subjects) was either better than (with higher SFs),
or similar to (with lower SFs), normal performance.
The primary indication for the importance of temporal cues comes from
the impaired performance during vertical scanning, an impairment that
was observed previously with other tasks (Morley et al., 1983
; Phillips
et al., 1983
; Katz, 1989
; Srinivasan et al., 1990
; Hollins and Risner,
2000
). However, this impairment could also be caused by the elimination
of the enhancement of spatial cues, an enhancement that is obtained by
lateral movements (Johnson and Lamb, 1981
; Phillips et al., 1983
).
Although it was not possible to directly discriminate between these two
factors in our experiments, our data suggest that in the case of LT
subjects the elimination of temporal cues was more crucial. This is
because the elimination of tactile spatial cues (during lateral
movements with gloves) improved their performance. This is not
necessarily true for ST subjects, for whom elimination of spatial cues
was detrimental. However, even ST subjects could obtain significant amount of textural information in the absence of spatial cues, especially with low spatial frequencies (Fig. 2D,
glove session). These results are consistent with those of Lamb (1983)
,
who observed that tactile discrimination of dot spacing is better when
it varies along rather than across scanning direction; this difference
should be attributable to differences in the availability of temporal cues because spatial-cue enhancement should be similar for both axes.
Elimination of spatial cues has been much less studied. Katz reported
that subjects can discriminate between various papers by writing on
them with a rigid pen (Krueger, 1970
) and LaMotte (2000)
showed that
subjects can discriminate softness as well by means of a stylus as by
contacting the objects directly with the fingerpad. As mentioned above,
Klatzky and Lederman (1999)
have recently found that, on the average,
even roughness perception is only slightly impaired when spatial
tactile cues are eliminated. However, we showed here that the effect of
such elimination is not homogeneous across subjects. Although ST
subjects were significantly impaired, LT subjects significantly
improved when spatial cues were eliminated. This observation, together
with the stereotypic scanning patterns in each group, and with the
effect of guided training, strongly suggests that the effect of
elimination depends crucially on the strategy of sensory acquisition,
which varies across subjects.
Elimination of tactile spatial cues necessarily makes the sensory input
more similar to that obtained with vibrotactile stimuli, because in
both cases only the temporal cues are available. To achieve good
performance with the gloves, and later on during training in normal
conditions, our LT subjects reduced their scanning velocity such that
the temporal frequency was between 15 and 30 Hz (Fig. 6). This range,
in which the sensitivity of RA fibers is the highest (Talbot et al.,
1968
; Johansson et al., 1982
), and vibrotactile frequencies can be
discriminated with fairly high resolution (LaMotte and Mountcastle,
1975
), is probably a "proper" range for solving the task based on
vibrotactile cues. Yet, while having the temporal frequencies within
the proper range seems to be a necessary condition, it is not
sufficient: ST subjects performed poorly with the gloves even though
their temporal frequencies were in the proper range (Fig. 6).
Taken together with the aforementioned previous results [mainly those
of Klatzky and Lederman (1999)
, Hollins and Risner (2000)
, and Cascio
and Sathian (2001)
], our results suggest that individual subjects use
different strategies depending on the stimulus and task. Moreover, our
training results indicate that these strategies can be modified by
proper guidance, suggesting that intersubject strategy differences
might emerge from differences in idiosyncratic history of tactile experience.
Spatiotemporal interference: masking or choice of strategy?
The poor performance of LT subjects in normal scanning tasks can
be explained in two ways, which are not mutually exclusive. Either the
processing of the spatially encoded information may mask the processing
of the temporally encoded information (a "bottom-up" explanation),
or the availability of spatial cues may lead LT subjects to choose a
nonefficient scanning strategy (a "top-down" explanation). If the
former holds, LT subjects should perform better, when eliminating the
spatial cues, without changing strategies. In the latter case, LT
subjects should change their strategy once they are left only with the
temporal cues, cues that could not be properly used with their previous strategy.
Because the LT subjects changed their scanning strategy immediately
after starting the glove sessions, the "strategy hypothesis" seems
more likely. This hypothesis is further supported by the finding that
the LT subjects modified their scanning velocities to values similar to
those normally used by ST subjects (Fig. 6), velocities with which ST
subjects achieved good performance (Fig. 2). According to this
interpretation, normal utilization of temporal cues by LT subjects is
not efficient, probably because of the nonoptimal velocities they use.
Only when LT subjects are forced to use temporal cues alone, do they
use a scanning strategy that allows efficient processing of these cues.
To see whether choosing a particular scanning strategy can indeed
improve performance, we trained LT subjects to use both optimal
scanning velocities and alternating hand scanning during normal
scanning sessions. After training, the LT subjects performed virtually
as good as the ST subjects (Fig. 8). Only short training periods were
necessary to improve performance of the LT subjects. Improvement was
observed already after the first session of guided training and was
clearly the result of guidance, because mere practice did not result in
improved performance (Fig. 8). The fact that the same behavior was
observed with intervals of a few days and of two years between testing
and training is consistent with the notion that tactile strategies in
the adult are, to a large degree, fixed.
During this study, no feedback was provided; the LT subjects were not
aware of improvement in their performance, neither during the scanning
sessions with gloves nor during guided training. This training
procedure is different from classical procedural learning, which is
based on persistent practice with feedback. Our procedure appears to
evoke a "eureka" effect, in which subjects are guided to use an
effective learning track (Ahissar and Hochstein, 1997
). Our findings
indicating that the LT subjects did not learn how to efficiently scan
surfaces during their life-span, and their self-estimation of
performance was not a reliable indicator of their actual performance,
support the possibility that natural learning led these subjects into a
wrong learning track, from which they could recover by guidance
(Ahissar and Hochstein, 1997
).
Implications for neuronal mechanisms involved in tactile
texture discrimination
An important issue regarding tactile neuronal processing relates
to the question of which type of the peripheral mechanoreceptive fibers
carry the relevant information (Sathian, 1989
). As indicated by
previous studies, the answer to this question probably depends on the
type of task and the parameters of the stimuli. For example, with
roughness estimation, and spatial frequencies between 250 and 666 dots/m, the most relevant mechanoreceptive fibers are probably the SAI
fibers (Connor and Johnson, 1992
). In contrast, for purely temporal
tasks, such as classification or discrimination of the frequency of
vibrotactile stimuli using light touch, rapidly adapting (RA) and
Pacinian fibers probably carry most of the relevant information
(Hyvarinen et al., 1968
; Talbot et al., 1968
; Darian-Smith and Oke,
1980
). Because both spatial and temporal cues were involved in the
discrimination task given to our subjects, it was possible that both
SAI and RA fibers were involved in the neuronal processing (because of
the relatively high spatial frequencies and low temporal frequencies,
Pacinian fibers probably contribute little to this particular
discrimination task). However, in our experiments, the information
provided by the RA fibers appeared to be more important. When subjects
(both ST and LT) performed well, they used scanning velocities that
induced temporal frequencies between 15 and 30 Hz, frequencies that are
best conveyed by the RA fibers (Talbot et al., 1968
; Freeman and
Johnson, 1982
; Johansson et al., 1982
; Goodwin et al., 1989
).
Furthermore, subjects did not exhibit significant differences in
discriminating low-amplitude (30 µm) and high-amplitude (100 µm)
gratings. With frequencies between 15 and 30 Hz, RA fibers convey a
significant amount of information already with indentations of 30 µm,
whereas SAI fibers are hardly activated by such indentations (Talbot et
al., 1968
; Johansson et al., 1982
). The similar levels of task
performance observed when our subjects scanned gratings with low and
high amplitudes suggest that SAI activation is not crucial for
performing these tasks.
Johnson and Phillips (1984)
have suggested that both "spatial"
(involving the SAI system) and "nonspatial" (involving the RA
system) mechanisms underlie texture perception; the RA system probably
encodes the microscopic, and the SAI the macroscopic, dimensions of a
texture. The distinction between spatial and nonspatial information
raises the possibility that, like in other systems (Carr, 1993
), these
two kinds of information are processed separately in the brain, at
least up to a certain level. Recent evidence from our laboratory
indicates that this is indeed the case in rodents. Our recordings along
the afferent tactile pathways of anesthetized rats revealed two
different schemes of sensory representations. The input temporal
frequency is represented primarily by time in the paralemniscal system
and by amplitude in the lemniscal system (Ahissar et al., 2000
, 2001
;
Sosnik et al., 2001
). These observations, taken together with the
spatial resolution of these systems, are consistent with temporal and
spatial cues being processed by the paralemniscal and lemniscal
systems, respectively (Ahissar and Zacksenhouse, 2001
). If a similar
separation exists in primates, spatial and temporal cues would be
expected to be processed separately, and in parallel, along different
anatomical pathways that lead to the cortex. According to this scheme,
the temporal encoding-decoding scheme consists of first encoding
spatial intervals by temporal intervals (Darian-Smith and Oke, 1980
)
and then recoding them with spike counts (rate coding) (Ahissar and
Vaadia, 1990
; Ahissar, 1998
; Ahissar and Zacksenhouse, 2001
). The
temporally encoded information is valid up to and including the
thalamic and primary cortical levels, but not at higher levels
(Ahissar, 1998
). Consistent with this temporal-to-rate transformation
scheme are the results of Salinas et al. (2000)
, whereas both
temporally encoded information and its related rate-coded information
are valid in SI of monkeys performing a temporal-frequency
discrimination task, only the rate-code is valid in SII. This scheme
for separate, parallel processing of spatial and temporal cues suggests
that the main reason of the recoding from temporal to rate code is to
allow the two streams of information to integrate their outputs using a
common code. Such a common rate code could be, for example, the code
used by SI and SII "graded neurons" to grade different spatial
frequencies (Sinclair and Burton, 1991
; Jiang et al., 1997
; Pruett et
al., 2000
).
 |
FOOTNOTES |
Received Jan. 3, 2001; revised July 6, 2001; accepted July 11, 2001.
This work was supported by the United States-Israel Binational Science
Foundation (Israel) and the Abramson Family Foundation (United States).We thank Sebastian Haidarliu for the
preparation of Figure 1 and for his help during this study, Merav
Ahissar and Marcin Szwed for helpful comments on this manuscript, Edna Schechtman for statistical assistance, and Barbara Schick for reviewing
this manuscript.
Correspondence should be addressed to Dr. Ehud Ahissar, Department of
Neurobiology, The Weizmann Institute of Science, Rehovot 76100, Israel.
E-mail: Ehud.Ahissar{at}weizmann.ac.il.
 |
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99(3):
1422 - 1434.
[Abstract]
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E. Arabzadeh, S. Panzeri, and M. E. Diamond
Deciphering the Spike Train of a Sensory Neuron: Counts and Temporal Patterns in the Rat Whisker Pathway
J. Neurosci.,
September 6, 2006;
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P. M. Knutsen, M. Pietr, and E. Ahissar
Haptic Object Localization in the Vibrissal System: Behavior and Performance.
J. Neurosci.,
August 15, 2006;
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H. Hentschke, F. Haiss, and C. Schwarz
Central Signals Rapidly Switch Tactile Processing in Rat Barrel Cortex during Whisker Movements
Cereb Cortex,
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[Abstract]
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E. Arabzadeh, S. Panzeri, and M. E. Diamond
Whisker Vibration Information Carried by Rat Barrel Cortex Neurons
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June 30, 2004;
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M. Ahissar
Perceptual training: A tool for both modifying the brain and exploring it
PNAS,
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