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The Journal of Neuroscience, April 1, 2003, 23(7):2522
BRIEF COMMUNICATION
Noise Provides Some New Signals About the Spatial Vision of
Amblyopes
Dennis M.
Levi and
Stanley A.
Klein
University of California at Berkeley, School of Optometry and Helen
Wills Neuroscience Institute, Berkeley, California 94720-2020
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ABSTRACT |
Amblyopia results in a loss of contrast sensitivity and position
acuity. Here we report the results of experiments using noise to try to
better understand the nature of the neural losses in amblyopia. In the
first experiment, we used noise to derive the template or
classification image used to detect a target and to discriminate
its position. We found that some amblyopic observers show markedly
abnormal templates for the position task and moderately abnormal
classification images for the detection task; however, the abnormal
template could not fully account for the loss of performance
(efficiency). Reduced efficiency in the amblyopic visual system may
reflect a poorly matched template, a high fraction of internal to
external noise, or both. Comparison of the observers' performance with
that of their template suggests that the amblyopes have a high fraction
of internal (relative to external) noise. To analyze the internal noise
further, we used a "double-pass" technique, in which observers
performed the identical experiment twice. The amount of disagreement
between the two experiments provides another estimate of the fraction
of internal noise. Amblyopes show a much higher fraction of
stimulus-dependent internal noise than do normal observers. We conclude
that the loss of efficiency in amblyopia is attributable in part to a
poorly matched template, but to a greater degree, to a high fraction of
internal (relative to external) noise.
Key words:
amblyopia; noise; classification image; psychophysics; detection; position discrimination
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Introduction |
Abnormal early visual experience
results in dramatic deficits in the properties of neurons in cortical
area V1 (Wiesel, 1982 ; Smith et al., 1997 ; Kiorpes et al., 1998 ) and in
visual perception (Kiorpes and McKee, 1999 ). For example, if one eye is
turned (strabismus) during early childhood, the resulting amblyopia may
lead to a loss in the proportion of cortical neurons influenced by the
amblyopic eye and a loss of visual acuity, contrast sensitivity, and
position acuity (Hess, 1982 ; Levi, 1991 ). However, the known neural
abnormalities do not fully explain the range of visual deficits
(Kiorpes et al., 1998 ), and the precise nature of the losses is not yet
fully understood.
Although the tuning properties of visual neurons in the amblyopic
cortex are considered to be normal (Smith et al., 1997 ; Kiorpes et al.,
1998 ), for many visual tasks, performance may be limited by the
information that the observer uses to solve the task. Perceptual task
performance is often modeled as the overlap of a "template" with
the stimulus plus sources of internal noise (Dosher and Lu, 1999 ).
Thus, one might hypothesize that the perceptual losses in amblyopia are
a consequence of a poorly matched template or are attributable to high
levels of internal noise.
Measuring human visual performance in noise can provide important
insights into the neural mechanisms and computations used to solve a
visual task (Dosher and Lu, 1999 ; Pelli and Farell, 1999 ; Gold et al.,
2000 ). By keeping track of both the pattern of noise and the
observer's responses on each trial, it is possible to compute the
correlation between the noise and the observer's response. The result
is a classification image, a "map" or spatial profile that shows
which image locations influence the observer's performance. The
classification image may be thought of as a behavioral receptive field
(Gold et al., 2000 ); it is the psychophysical analog to reverse
correlation methods used in the physiological mapping of receptive
fields (Ringach et al., 1997 ; DeAngelis et al., 1999 ). Classification
images provide a sufficiently important new tool that a special issue
of the Journal of Vision has been devoted to the topic
(Eckstein and Ahumada, 2002 ).
Classification images, first derived in audition (Ahumada and Lovell,
1971 ), have been derived in normal vision for detection (Ahumada and
Beard, 1999 ), Vernier acuity (Beard and Ahumada, 2000 ; Levi and Klein,
2002 ), and illusory contours (Gold et al., 2000 ). Classification images
have, to our knowledge, never been measured in humans with amblyopia.
In the present paper, we used noise to derive the classification images
used to detect a target and to discern its position in normal and
amblyopic observers.
Visual performance at threshold (both psychophysical and neuronal) may
also be limited by noise or variability (Parker and Newsome, 1998 ). By
using a double-pass technique, in which the observer takes two passes
through the identical stimuli and noise (Burgess and Colborne, 1988 ;
Gold et al., 1999 ), we are able to determine the ratio of internal to
external noise in the amblyopic visual system. Our experiments and
modeling show that the reduced performance of amblyopic vision is
attributable in part to a poorly matched template, but surprisingly, it
is attributable to a much greater degree to a high fraction of internal
(relative to external) noise.
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Materials and Methods |
Three normal observers and six strabismic amblyopes participated
in this study. The data for the two amblyopes shown in Figures 1-4 are
typical of the strabismic amblyopes. Ages ranged from 22 to 55 years.
Viewing was monocular, with appropriate optical correction. All
experiments were performed in compliance with the relevant laws and
institutional guidelines.
Our stimuli and noise consisted of sums of sinusoids; they are
described in detail by Levi and Klein (2002) , along with details of the
ideal observer modeling. Briefly, the test pattern is a discrete
frequency pattern (DFP): a bar-like pattern (see Fig. 1a)
given by contrast cos( y)10
cos(2 6y) and composed of 11 harmonics (from 1 to 11 cycles/degree) all added in cosine phase with a spatial
frequency envelope, shown in Figure 1c. The noise is a
one-dimensional grating consisting of the same 11 harmonics with phases
and amplitudes randomized with each harmonic having equal variance. The
target and noise (see Fig. 1b) were presented for 0.75 sec,
in a 1.7° square field with a mean luminance of 42 cd/m2 with a dark surround. We used a
signal-detection method to measure the observers' performance
(d', which is a measure of the observers' signal-to-noise
ratio) and linear regression to compute the classification coefficients
(Levi and Klein, 2002 ). The observers' rating responses were regressed
on the 11 cosine noise components for the detection task (the sine
components were found not to contribute significantly) and on the 11 sine noise components for the position task. Rating-scale methods have
been shown to be able to improve the quality of the classification of
images (Murray et al., 2002 ).
To calculate the fraction (F) of internal
(stimulus-dependent) noise (relative to external noise) we conducted a
double-pass experiment (experiment 3). Burgess and Colborne (1988)
developed this technique using a two-alternative forced-choice
paradigm. We use a rating scale, single-interval variant of the
technique. Our stimuli and methods were identical to those described
above, except that we saved the random seed from the initial run and reused it so that the stimuli and external noise were identical in the
two runs. The proportions of internal
(Ni) and external (Ne) noise were obtained using Monte
Carlo simulations using the same performance (d') levels and
criteria that were found in the average of the two double-pass data
sets. The simulations searched for the amount of internal noise that
would give us the same ratio of correlated responses found in the
double-pass runs. For example, if the two runs had highly correlated
responses, the internal noise would be small.
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Results |
Experiment 1: detecting a fuzzy bar
We asked observers to detect a fuzzy bar (the DFP) (Fig.
1a) that was presented in
noise (Fig. 1b). The amplitudes of the 11 coefficients of
the bar stimulus are shown as the solid line in the
top row of Figure 1c. The classification
coefficients (Fig. 1c), obtained using linear regression,
show how each of the 11 spatial frequency components of the noise
influenced the observer's rating response for the normal controls
(top) and for two of the amblyopic eyes (middle
and bottom). The spatial frequency tuning for our localized
target is considerably broader than the tuning of spatial frequency
channels derived from adaptation or masking experiments. Note that the
amblyopes show a shift in the peak of their spatial frequency tuning
toward lower spatial frequencies (Levi et al., 1994b ), consistent with
the lower spatial resolution and optimal spatial frequency tuning found
in the cortex of some amblyopic monkeys (Kiorpes et al., 1998 ). The
classification images (Fig. 1d) are the Fourier transforms
of Figure 1c and represent the spatial maps or templates of
the normal controls and the amblyopic eyes.

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Figure 1.
Examples of our stimuli. a, DFP.
b, DFP in noise. Note that the noise was random, and
varied from trial to trial. The observers' task was either to detect
the DFP (experiment 1) or judge its position (high or low) relative to
the bright line on the right (experiment
2). c, Classification coefficients for detection
averaged across the dominant eyes of three normal observers
(top) and for two amblyopic eyes (middle
and bottom). The regression coefficients
(symbols) correspond to the template weighting used by
the observer and are plotted as a function of spatial frequency. The
solid line in the top row shows the
spatial frequency envelope of the stimulus; it corresponds to the
classification image of the ideal observer. The amblyopes'
coefficients have each been shifted vertically by 10 for clarity. The
smooth curves are an exponentiated difference of Gaussians given by
p1[exp( p2f2) exp( p3f2)]p4
that are the best fit to the 11 data points. p, Parameter;
f, spatial frequency. An additional datum at 30 c/degree
with a value of zero was added to account for the expected falloff at
very high spatial frequencies. d, Classification images
for detection. The dotted lines are the raw
classification images averaged across the dominant eyes of three normal
observers (top) and for two amblyopic eyes
(middle and bottom). The solid
curves are the Fourier transforms of the exponentiated
difference of Gaussian curves fit to the regression coefficients in
c. The ordinate has arbitrary units.
RH, Strabismic amblyope; DM, strabismic and
anisometropic amblyope.
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Experiment 2: discriminating the position of a fuzzy bar
Humans with naturally occurring amblyopia associated with
strabismus (a turned eye) are often compromised in their ability to
judge changes in relative position (Levi and Klein, 1982 , 1986 ; Hess
and Holliday, 1992 ; Wang et al., 1998 ). In this experiment, we asked
our observers to judge whether the DFP pattern (in noise) was higher or
lower than a small bright abutting line (Fig. 1a); we
measured the observer's classification images for the position task.
Figure 2 shows the classification
coefficients (a) and images (b) of the normal
control observers and of two amblyopic observers for a 90 arc sec
offset. The classification coefficients (Fig. 2a) for the
amblyopic observers show a marked decrease for spatial frequencies
above ~4-5 c/degree, in contrast to the normal controls, whose
coefficients increase more or less linearly up to 8 c/degree. Correspondingly, their classification images (Fig. 2b)
extend over longer spatial distances than those of the normal
observers. The amblyopic position template, like that of the normal
parafovea (Levi and Klein, 2002 ), is a low spatial frequency template,
reflecting a shift in the spatial scale of analysis (Levi et al.,
1994b ). Interestingly, a comparison of the regression coefficients for detection (Fig. 1c) and position (Fig. 2a) shows
a much more severe loss in the position task. For the two amblyopes,
the position coefficients are very small at >5 c/degree, whereas their
detection coefficients have significant amplitudes over the entire
range. This "extra" loss of position information is consistent with
previous studies of amblyopic and peripheral vision (Hess and Holliday, 1992 ; Wang et al., 1998 ; Levi and Klein, 2002 ).

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Figure 2.
a, Classification coefficients for
position (fixed offset = 90 arc sec). The 11 regression
coefficients are plotted as a function of spatial frequency. The
smooth curve is the two parameter derivative of a
Gaussian (a blurred dipole) given by p1
fexp( p2f)
that is best fit to the 11 data points. An additional datum at 30 c/degree with a value of zero was added to account for the expected
falloff at very high spatial frequencies. Other details are as in
Figure 1. b, Classification images for position (fixed
offset = 90 arc sec). The dotted lines are the raw
classification images averaged across normal and eyes and for the
amblyopic eyes of two observers. The solid lines are the
Fourier transforms of the blurred dipole curves fit to the regression
coefficients in a. RH, Strabismic amblyope;
DM, strabismic and anisometropic amblyope.
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Do the amblyopes' templates account for their
reduced performance?
We can compare our observers' performance (d') in
noise with that of an "ideal observer" (a machine that knows
precisely what the stimulus is, but not what the external noise is).
Figure 3a shows the
performance of each observer for detection (the leftmost points) and
for the position task at different offset levels. Figure 3a
shows that the performance levels for detection are quite similar
across observers, whereas for the position task, the amblyopic eyes are
considerably worse, especially at small offsets. This reduced
performance in the position task is not simply a consequence of low
visibility of the pattern, because we boosted the target contrast for
the amblyopic eyes for the Vernier task, to compensate for any loss of
contrast sensitivity (Wang et al., 1998 ). The solid gray
line shows the performance of the ideal observer (at the same
contrast level as the normal observers).

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Figure 3.
a, Performance (d')
for position as a function of offset size. Open circles
are the means of three normal control observers; open
squares are the means of the nonamblyopic eyes of the
amblyopes. Solid symbols are the amblyopic eyes of RH
and DM. The solid gray line shows the ideal observer's
performance (calculated based on the same contrast used to test the
normal observers). For the amblyopic eyes, which were tested at a
higher physical contrast (but at the same multiple of the detection
threshold), the ideal observer would be simply shifted upward. The
dotted gray line shows the template, derived directly
from the classification coefficients, for the normal observers. The
vertical dashed line at 90 arc sec marks the offset used
for Figure 2b. The leftmost points (at an
abscissa value of 1) show the detection performance
(d'). b, Ratio of human/template
performance (d') as a function of offset size. The
leftmost points (at an abscissa value of 1) show the
ratio of human/template performance for detection. Details are as in
a. NAE, Nonamblyopic eyes; RH,
strabismic amblyope; DM, strabismic and anisometropic
amblyope.
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The squared ratio of the human to ideal performance (d') is
known as efficiency. For detection, amblyopic observers generally had
similar efficiency in their two eyes, which was a slightly lower
efficiency than the normal controls. For the position task, the
amblyopic eyes show a large decrease in efficiency, particularly at
small offsets. The loss of efficiency is not surprising, given the
amblyopes' abnormal templates. The question we address next is whether
the reduced detection efficiency of the amblyopes can be explained by a
poorly matched template. To address this question, we compared the
amblyopic observers' performance (d') with that of an ideal
observer using the real observers' templates (Fig. 3b). For
detection (leftmost points), the ratio of human
(dh) to template performance
(dt) for the amblyopic eyes was
comparable with that of the normal observers. For the position task,
normal observers and the preferred eyes of amblyopes had a ratio of
human to template performance of ~70%, independent of offset. For
the amblyopic eyes, the ratio decreases markedly at smaller offsets. Thus, the amblyopes' performance is worse than predicted by their mismatched template. Matching performance (d') at an offset
of 90 sec (Fig. 3, dashed vertical lines) in the amblyopic
eye to an offset of 20 sec in the normals (which give equivalent
d' values) does not alter the conclusion.
Reduced efficiency in the amblyopic visual system may have several
possible causes. For example, reduced efficiency could reflect a high
level of noise in the visual system or a poorly matched template. Noise
provides a very useful tool to ask about the cause of the reduced
efficiency. A poorly matched template results in systematic noise,
allowing us to calculate the fraction, F, of internal noise
(NI, which is variable from
trial to trial) to external noise (Ne,
which is consistent from trial to trial). Fd' = Ni/Ne = (Efftemplate/Effhuman
1)1/2 (Ahumada, 2002 ).
Fd' is shown by the abscissa values in Figure 4. For normal observers
(gray symbols), for both tasks Fd' 0.7-1.0. For the nonamblyopic
eyes (open black symbols), it is higher, and for the
amblyopic eyes (solid black symbols), it is
higher still (the range of Fd' was
from ~2 to 12 for all of the amblyopic eyes of the six amblyopic
observers). Experiment 3 provides independent evidence for the
increased fraction, F, of internal noise in amblyopic
eyes.

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Figure 4.
F, the fraction of internal
(relative to external) noise. We use two methods to estimate
F. The ordinate shows F2pass
obtained from the double-pass experiment (experiment 3) for normal
observers viewing foveally (open thin gray circles and
triangles for detection and position, respectively) and
for each eye of two amblyopic observers (nonamblyopic, open
black symbols; amblyopic, filled black symbols:
circle and square for detection;
triangles and inverted triangles for
position). The ordinate shows the corresponding values of
Fd' obtained by comparing the observers'
efficiency with that of their templates (experiments 1 and 2).
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Experiment 3: two trips through the noise
To assess the contributions of internal noise, we conducted a
double-pass experiment, in which observers performed the identical experiment twice [a variant of the experiments described by Burgess and Colborne (1988) and Gold et al. (1999) ]. In this experiment, the
stimuli and the noise samples in the second test were identical to
those in the first. The amount of response disagreement between the two
tests (at a given performance level) provides another method to
determine F. Because the noise was 15-20 times threshold, it resulted in substantial (~10-fold) threshold elevation in both normal and amblyopic eyes. Therefore, the internal noise that we
measure with this method is greater than the noise for zero stimulus,
so the internal noise must be stimulus dependent. The ordinate values
in Figure 4 show F estimated from Monte Carlo simulations of
the double-pass data. For normal observers, for both tasks, the noise
energy is predominantly external (on average 70%, compared with
internal noise energy of ~30%). The fraction, F2pass = (Ni/Ne) (0.3/0.7) 0.65. The results for the amblyopic observers are quite surprising. The amblyopic observers show a higher
fraction of internal noise with their preferred eyes (F 1) and a much higher fraction of internal noise when viewing with
their amblyopic eyes (on average, internal noise energy was 75%
compared with external noise energy of ~25%, making
F2pass 1.8). It is important to
note that these observers were highly practiced psychophysical
observers, each having performed hundreds of thousands of trials across
a variety of experiments. Moreover, they were highly familiar with
these specific stimuli and tasks, because the double-pass experiment
was performed after the completion of experiments 1 and 2. Thus, we
conclude that the loss of efficiency in the amblyopic visual system is
attributable in part to a poorly matched template, but to a much
greater degree, to a high fraction of internal (relative to external) noise.
Both methods point to a high fraction of internal noise; however, the
two estimates of F shown on the two axes of Figure 4 differ
by a factor of ~1.4. For F2,
such as used by Ahumada (2002) , this would be a factor of two. Ahumada
(2002) also reported a difference (of a factor of ~2) in
the two estimates in the same normal observers in a detection-in-noise experiment. The precise reasons for the quantitative differences are
beyond the scope of this report, but in the Discussion we speculate on
why the two estimates might differ.
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Discussion |
Our results show reduced performance for both detection and
position discrimination in observers with amblyopia, consistent with
several previous studies using noise to try to understand the
mechanisms of amblyopia (Kersten et al., 1988 ; Wang et al., 1998 ;
Kiorpes et al., 1999 ). Our novel finding is that this loss is
attributable in part to a poorly matched template, but to a much
greater extent to a high fraction of stimulus-dependent internal noise.
Our measurements reveal that amblyopes have a coarse template
(classification image) for position, with severe high-frequency attenuation. The poorly matched template exhibited by several amblyopes
produces systematic noise that reduces efficiency. However, amblyopes
show a much larger fraction of internal (relative to external) noise,
and this provides some new insights into the mechanisms of amblyopia.
Three explanations have been widely used to account for the losses seen
in humans with amblyopia; none of these can simply account for the
pattern of our results. The first, which has found broad agreement, is
that there is a scale shift (i.e., a loss of contrast sensitivity at
high spatial frequencies), consistent with the loss of contrast
sensitivity of small (high spatial frequency) receptive fields in area
V1 in monkeys with experimental amblyopia (Kiorpes et al., 1998 ). Our
finding of a coarser (low spatial frequency) template is a consequence
of this explanation. However, the loss of contrast sensitivity at high
spatial frequencies cannot fully account for the present data. For
example, the shift of contrast sensitivity toward lower spatial
frequencies actually makes the detection template more rather than less
efficient, because the ideal observer is optimally tuned to the test
pattern with a peak at 6 c/degree (Fig. 1c, solid
line), whereas the normal human has an inefficient peak at higher
spatial frequencies (Levi and Klein, 2002 ). Our results show little
loss of performance or efficiency for detection. The loss of neural
contrast sensitivity is also too small to account fully for the
behavioral losses of contrast sensitivity in monkeys with amblyopia,
and the spatial scale shift hypothesis also cannot fully explain the
loss of position acuity in humans with strabismic amblyopia. To account
for this "additional" loss, two other explanations have been
suggested: a reduced complement of cortical neurons
("undersampling") (Levi and Klein, 1986 ) and miswiring of cortical
neurons ("topographical jitter") (Hess, 1982 ; Hess and Holliday,
1992 ). Neither hard-wired miswiring nor fixed undersampling can, by
itself, fully account for the present pattern of results (Levi et al.,
1994a ). For example, a hard-wired miswiring or fixed undersampling
would damage the template, but would have little effect on the internal
noise. Although we cannot rule out the possibility that some form of undersampling or miswiring exists, our results point to a different explanation.
The present study adds new pieces to the puzzle: first, it quantifies
the amblyopic template, showing a relatively small loss compared with
the ideal observer. Second, it shows that the amblyopic visual system
has a high fraction of internal (relative to external) noise, which is
stimulus dependent.
We do not yet understand the origin of the high fraction of internal
noise. Physiological recordings in monkeys with experimental amblyopia
(Kiorpes et al., 1998 ) show a modest (less than twofold) reduction in
the proportion of neurons in V1 driven by the amblyopic eye, resulting
in a reduced signal-to-noise ratio in the amblyopic cortex. Our finding
that strabismic amblyopes show a high proportion of internal noise when
viewing with both the amblyopic and preferred eyes suggests that this
internal noise is central and is likely related to the absence of
correlated binocular visual experience early in life (Kind et al.,
2002 ). As noted above, variability in neural signals has important
consequences for perception (Parker and Newsome, 1998 ). To our
knowledge, there are no quantitative physiological studies of
F in animals with experimental amblyopia (or for that
matter, with normal vision). The fraction F is directly related to the correlation of the responses in the two passes, and in
principle, this fraction could be determined by performing a
physiological double-pass experiment (i.e., recording neural responses
to the identical noise sequence twice).
It seems likely that there are multiple sources of stimulus-dependent
internal noise. For example, it is well known that the variance of the
spike count is proportional to the mean spike count (Tolhurst et al.,
1983 ; Shadlen and Newsome, 1998 ), indicating that there is
stimulus-dependent noise. One possibility for the high proportion of
internal noise in amblyopia is an increase in this variance. Another
source of noise that likely plays a role in the stimulus-dependent
internal noise seen in humans using the double-pass method (Burgess and
Colborne, 1988 ) is variability in the observer's template. It seems
plausible that the increased fraction of internal noise in the
amblyopic cortex might be a consequence of a variable or noisy template
(McIlhagga and Paakkonen, 1999 ). Noisy templates can be achieved in a
variety of ways [e.g., by including randomly selected but irrelevant
neurons (Shadlen et al., 1996 ) or by uncertainty (Pelli, 1990 ) in which
a multiplicity of mechanisms (e.g., shifted templates) are monitored].
This sort of multichannel model with uncertainty would result in a
decrease in performance (d') but would not degrade the
double-pass correspondence, thus leading to a larger estimate of
F with the template method than with the double-pass method
(as seen in Fig. 4). A multiplicity of shifted templates would lead to
a broader template, would degrade the position task more than the
detection task, and, importantly, would lead to an increased proportion
of internal noise. Discriminating between increased early (e.g., V1)
noise variance and a later-stage noisy template will require
physiological recordings in animals with experimental amblyopia.
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FOOTNOTES |
Received Oct. 16, 2002; revised Jan. 8, 2003; accepted Jan. 8, 2003.
This work was supported by Research Grants R01EY01728 and
R01EY04776 and Core Center Grant P30EY07551 from the National Eye Institute, National Institutes of Health. We thank Hope Queener for
developing the processing tools.
Correspondence should be addressed to Dr. Dennis M. Levi, University of
California at Berkeley, School of Optometry, Berkeley, CA 94720-2020. E-mail: dlevi{at}spectacle.berkeley.edu.
 |
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