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The Journal of Neuroscience, September 1, 1998, 18(17):6939-6951
Functional Magnetic Resonance Imaging of Early Visual
Pathways in Dyslexia
Jonathan B.
Demb,
Geoffrey M.
Boynton, and
David J.
Heeger
Department of Psychology, Stanford University, Stanford, California
94305-2130
 |
ABSTRACT |
We measured brain activity, perceptual thresholds, and reading
performance in a group of dyslexic and normal readers to test the
hypothesis that dyslexia is associated with an abnormality in the
magnocellular (M) pathway of the early visual system. Functional magnetic resonance imaging (fMRI) was used to measure brain activity in
conditions designed to preferentially stimulate the M pathway. Speed
discrimination thresholds, which measure the minimal increase in
stimulus speed that is just noticeable, were acquired in a paradigm
modeled after a previous study of M pathway-lesioned monkeys. Dyslexics
showed reduced brain activity compared with controls both in primary
visual cortex (V1) and in several extrastriate areas, including area MT
and adjacent motion-sensitive areas (MT+) that are believed to receive
a predominant M pathway input. There was a strong three-way correlation
between brain activity, speed discrimination thresholds, and reading
speed. Subjects with higher V1 and MT+ responses had lower perceptual
thresholds (better performance) and were faster readers. These results
support the hypothesis for an M pathway abnormality in dyslexia and
imply strong relationships between the integrity of the M pathway,
visual motion perception, and reading ability.
Key words:
MT; V1; neuroimaging; fMRI; speed discrimination; psychophysics; reading
 |
INTRODUCTION |
Developmental dyslexia can be
defined as an unexpectedly low reading ability relative to IQ. The
reduced reading performance cannot be explained by a lack of
motivation, inadequate learning opportunity, abnormal sensory acuity,
or an acquired brain lesion. Estimates of its prevalence range from 3 to 9% (Rutter and Yule, 1975
; Shaywitz et al., 1990
).
Several cognitive, sensory, and motor deficits have been correlated
with dyslexia (Tallal et al., 1993
; Shaywitz et al., 1995
, 1998
;
Heilman et al., 1996
; Stein and Walsh, 1997
). The goal of the present
study was to test whether dyslexia is correlated specifically with a
deficit in one of the major visual pathways between the retina and
cortex: the magnocellular (M) pathway (Livingstone et al., 1991
).
To test this hypothesis, we have relied on several of the main
anatomical and functional features of the M pathway. Anatomically, the
M pathway includes the retinal ganglion cells that project to the M
layers of the lateral geniculate nucleus (LGN) of the thalamus, the
M-layer LGN cells that project to primary visual cortex (V1), and the
V1 cells that project to the extrastriate area MT and adjacent
motion-sensitive areas (MT+) (Merigan and Maunsell, 1993
). Hence, M
pathway deficits should be evident in several sites within the visual
pathways. In support of this hypothesis, Livingstone et al. (1991)
conducted an anatomical postmortem study of LGN cell size in five
dyslexic brains and found that cell bodies in the M layers of the LGN,
but not other layers, were 27% smaller than matched controls.
Functionally, lesions to the M layers of monkey LGN reduce behavioral
sensitivity to lower spatial and higher temporal frequencies. The same
lesions also impair performance on motion discrimination tasks (Merigan
and Maunsell, 1990
; Schiller et al., 1990
; Merigan et al., 1991
).
Correspondingly, psychophysical studies with dyslexics have
demonstrated reduced sensitivity to lower spatial and higher temporal
frequencies at low mean luminance (Lovegrove et al., 1982
; Martin and
Lovegrove, 1984
, 1987
; Evans et al., 1994
; Felmingham and Jakobson,
1995
; Borsting et al., 1996
) and impaired perceptual performance in
various motion discrimination tasks (Cornelissen et al., 1995
; Eden et
al., 1996
; Demb et al., 1998
).
Physiological studies have also provided evidence for visual deficits
in dyslexia. First, visual evoked potentials (VEP) in dyslexics were
reduced or delayed for stimuli with low spatial and high temporal
frequencies (Livingstone et al., 1991
; May et al., 1991
; Lehmkuhle et
al., 1993
; Kubova et al., 1996
). Second, in a functional magnetic
resonance imaging (fMRI) study, Eden et al. (1996)
failed to find
significant activity in MT+ during the perception of moving dots in
dyslexic subjects, suggesting a possible developmental lesion in
MT+.
Some of these physiological and psychophysical findings have not been
replicated (Victor et al., 1993
; Walther-Muller, 1995
; Hayduk et al.,
1996
; Johannes et al., 1996
; Vanni et al., 1997
). Consequently, the
hypothesis for an M pathway deficit in dyslexia remains
controversial.
To further test the hypothesis for an M pathway deficit in dyslexia, we
have performed several new experimental tests. First, we compared fMRI
responses from dyslexic and control groups using novel visual stimuli
and viewing conditions that were designed to evoke relatively strong
responses from the M pathway. Second, we compared individual
differences in brain activity with reading ability and motion
discrimination performance. Third, we have made measurements in
previously untested cortical areas. Both our group and individual
differences analyses supported the M deficit hypothesis.
Short descriptions of some of these and related results have been
published previously (Demb et al., 1997a
, b
, c
, 1998
).
 |
MATERIALS AND METHODS |
Blood oxygenation level-dependent fMRI was used to measure brain
activity in response to visual stimuli (Ogawa et al., 1990
, 1992
; Kwong
et al., 1992
; for a review, see Moseley and Glover, 1995
). Each subject
participated in several scanning sessions: one to obtain a standard,
high-resolution, anatomical scan, one to functionally define the early
visual areas including V1, and several sessions to measure fMRI
response amplitude as a function of stimulus contrast for different
sinusoidal grating stimuli.
In addition to the fMRI procedures, subjects were administered several
reading tests, and a psychophysical speed discrimination threshold was
measured [Demb et al. (1998)
and see below]. All experimental
procedures were reviewed and approved by the Internal Review Board at
Stanford University.
Subjects. Five dyslexic subjects (two females) were
solicited from the Stanford Disabilities Resource Center. All were
Stanford students (mean age = 22.2 years; SD = 2.9) and were
assumed to be of above-average intelligence. All had a childhood
history of dyslexia and were diagnosed with dyslexia as adults. These students were in normal classes but were allowed extra time on course
testing. Five control subjects (two females) were solicited from the
Stanford population (mean age = 26.8 years; SD = 6.1). None
had a history of reading difficulty. All subjects were right-handed, except one control who was left-handed. Two of the dyslexic subjects (one female) were co-diagnosed with attention deficit disorder and were
taking Ritalin but did not take it before neuroimaging or behavioral
testing. None of the other subjects were taking medication or had a
neurological or psychiatric illness that would interfere with the
study. Subjects were paid or volunteered without pay, all gave informed
consent, and all had normal or corrected-to-normal visual acuity.
Reading measures. Subjects were administered five reading
measures: the Wide Range Achievement Test (WRAT 3) reading and spelling tests, which require subjects to read or spell words of increasing levels of difficulty (e.g., cat to synecdoche); the Word Attack subtest
of the Woodcock-Johnson educational battery, which requires subjects to
sound out nonsense-word letter strings (e.g., raff, monglustamer); and
the Nelson-Denny reading rate and comprehension measures, which require
subjects to answer questions about a series of paragraphs (similar to
the Scholastic Aptitude Test or Graduate Record Exam). After the first
minute of the Nelson-Denny test, subjects were asked to mark the line
they were reading to measure reading rate (words per minute). For all
tests, percentile scores were derived for each subject by looking up
raw scores in tables that accompanied the tests.
Psychophysical methods. Visual stimuli were displayed on a
Radius high-resolution, monochrome monitor. Although the psychophysical and fMRI experiments were performed in separate sessions using different stimulus displays, the psychophysical and fMRI stimuli were
similar in terms of mean luminance, spatial frequency, and speed. The
stimuli, like those used in the fMRI experiments, were moving sine-wave
gratings at a low mean luminance (0.4 c/°, 20.8°/sec, 5 cd/m2). Although the stimuli in the psychophysics
experiment were smaller than those in the fMRI experiments (10°
diameter circular aperture versus 14 × 14° square), previous
psychophysical studies have shown that speed discrimination thresholds
do not depend significantly on stimulus size (De Bruyn and Orban, 1988
;
Verghese and Stone, 1995
).
The psychophysical paradigm was modeled after that used by Merigan et
al. (1991)
in M pathway-lesioned monkeys. Speed discrimination thresholds were measured using a two-interval forced-choice design. On
each trial, subjects viewed two stimuli in succession, each preceded by
an auditory beep. One of the stimuli on each trial was a baseline
stimulus moving at 20.8°/sec. The other was a test stimulus with a
variable speed, always faster than 20.8°/sec. The subject's task was
to report which of the two stimuli appeared to move faster. Subjects
were instructed to indicate whether the first or second stimulus in
each trial moved faster (i.e., had a higher speed) and that they should
ignore other properties of the stimulus such as contrast or duration,
which would be randomly varied (see below). Subjects were given
feedback ("yes" or "no") after each trial.
The speed of the test stimulus was adjusted, from trial to trial, using
a double-random staircase procedure. After three correct responses in a
given staircase, the test speed was decreased (i.e., moved closer to
that of the baseline stimulus), making the task more difficult. After
one incorrect response, the test speed was increased, making the task
easier. The two staircases were randomly interleaved so that subjects
would not be able to remember whether a staircase had just moved up or
down, even though they were given feedback. The initial speed increment
was chosen to be very large (20% of the baseline speed) to allow naive
subjects to understand the task. Therefore, it was expected that all
subjects would perform perfectly on the initial three trials of each
staircase, and the task would become more difficult after the first
downward step. The initial downward step was large (12% of the
baseline speed); thereafter, the step size was 2% of the baseline
speed.
As in previous studies, stimulus contrast and duration were randomized
to force subjects to base their responses only on stimulus speed (McKee
et al., 1986
; Merigan et al., 1991
), and subjects were informed of
this. Specifically, stimulus contrast was varied randomly between 16 and 24% so that subjects could not use the alternate cue of apparent
contrast to perform the task, and stimulus duration was varied randomly
(average of 450 msec ± 20%) so that subjects could not count the
number of cycles as they moved past.
Figure 1 shows an example of a
psychometric function (percent correct versus test speed). Performance
was perfect when the test stimulus was moving much faster (20%) than
the baseline stimulus, and performance was near chance levels when the
test stimulus was moving only slightly faster (6%) than the baseline
stimulus. A threshold was reached (8.5% faster) at the point where the
subject's performance was 79% correct. After 50 trials of the
staircase procedure, the subject's responses were compiled in this way
and fit with a Weibull function using a maximum likelihood fitting procedure (Watson, 1979
). The speed discrimination threshold was defined as the test speed that yielded 79% correct performance (that
is, the performance level to which the three-down, one-up staircase
converges).

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Figure 1.
Psychometric function (percentage correct versus
test speed) in a two-interval forced-choice speed discrimination
experiment. Dashed line indicates the threshold speed
increment that yielded 79% correct performance. Speeds are expressed
as Weber fractions, i.e., as percentage increases over the baseline
speed. Symbol size is proportional to the number of trials at a given
test speed.
|
|
Typically, a subject's threshold would decrease with practice at the
task. Subjects completed between 4 and 10 repeats of the staircase
procedure, until their performance appeared to asymptote three times in
a row. We report the mean of those three measurements as a Weber
fraction, i.e., as the percent increase over the baseline speed. In the
five control subjects, thresholds (mean Weber fraction = 5.6%;
SD = 1.8) were similar to previous reports (DeBruyn and Orban,
1988
; McKee, 1981
; McKee et al., 1986
).
fMRI visual stimuli. fMRI response versus contrast functions
were measured using two sets of stimuli: (1) test stimuli designed to
elicit relatively large responses from the M pathway, and (2) control
stimuli designed to elicit strong responses from multiple pathways.
Lowering the mean luminance of a visual stimulus increases the
responsiveness of the M pathway relative to other visual pathways, especially at low mesopic and scotopic luminances (Purpura et al.,
1988
; Lee et al., 1997
). Test stimuli, therefore, had low mean
luminance (2 cd/m2), whereas control stimuli had
higher mean luminance (36 cd/m2).
Test stimuli were 0.4 cycle/° sinusoidal gratings that moved
(20.8°/sec) with low mean luminance (2 cd/m2). We
recorded brain activity in response to five stimulus contrasts (3, 6, 25, 50, and 100%). The orientation and direction of motion of the
moving gratings changed every 500 msec to minimize visual adaptation in
orientation- and direction-selective neurons. The gratings were oblique
(rightward and leftward diagonal), and the stimuli in the two halves of
the screen on either side of the diagonal simultaneously moved toward
or away from a fixation point to minimize eye movements (i.e.,
repeating the sequence: leftward diagonal, outward; rightward diagonal,
outward; leftward diagonal, inward; rightward diagonal, inward).
Control stimuli were 0.4 cycle/° flickering sinusoidal gratings
(contrast-reversing at 8.3 Hz) at higher mean luminance (36 cd/m2), and we recorded brain activity in response
to five stimulus contrasts (6, 12, 25, 50, and 100%). Orientation
remained constant throughout the scan.
We ran a separate experiment to measure activity during a moving dot
condition, similar to a previous fMRI study of dyslexia by Eden et al.
(1996)
. The dots were 1° in diameter, and their intensity was 34.2 cd/m2, a 5% decrement below the 36 cd/m2 gray background. The dots moved in and out
from the fixation point at a speed of 10°/sec, alternating direction
once every second. This stimulus was presented for 18 sec alternating
with 18 sec of a uniform gray field.
Visual stimuli were generated on a Macintosh computer that transmitted
a high-resolution RGB signal to a Sanyo PLC-300M LCD video projector
(66.7 Hz refresh). The stimuli were projected through a lens and
focused onto a screen, made of rear-projection material, positioned at
the opening of the bore of the magnet near the subject's knees.
The subjects lay on their backs and looked directly up into an angled
mirror to see the rear-projection screen. The display subtended 14 × 14° of visual angle. A small high-contrast square in the center of
the stimulus served as a fixation mark to minimize effects of eye
movements. Subjects were instructed to fixate this mark during the
duration of the functional scans and were alerted before the beginning
of each scan. A bite bar was used to stabilize the subject's head.
Several of the contrast conditions for some subjects were repeated and
replaced because we suspected head movements, either between anatomical
and functional scans (i.e., causing misalignment of structural and
functional images) or within a functional scan (i.e., causing large
artifacts in the time-course of the fMRI signal).
fMRI data acquisition. fMRI was performed on a standard
clinical GE 1.5 T Signa scanner with a custom-designed head coil (low mean luminance test conditions and moving dots conditions) or a
5-inch-diameter surface coil (high mean luminance control conditions and retinotopy measurements). We used a T2*
sensitive gradient recalled echo pulse sequence with a spiral readout
(Noll et al., 1995
, Glover and Lai, 1998
). Parameters for the surface
coil protocol were 750 msec repetition time (TR), 40 msec echo time
(TE), 70° flip angle (FA), four interleaves, in-plane resolution = 0.94 × 0.94 mm, slice thickness = 4 mm. Parameters for the
head coil protocol were 1500 msec TR, 40 msec TE, 90° FA, two
interleaves, in-plane resolution = 1.02 × 1.02 mm, slice
thickness = 4 mm. In all experiments, eight adjacent planes of
fMRI data were collected either perpendicular to the calcarine sulcus
and beginning at the occipital pole (surface coil experiments; see Fig.
4A) or parallel to the calcarine sulcus with the
lowest slice near the ventral surface of the occipital lobe (head coil
experiments; see Fig. 5A). Because of the slice orientation,
MT+ responses were not recorded in the surface coil experiments (i.e.,
in the control conditions).
During each scanning session, structural images were acquired using a
T1-weighted spin echo pulse sequence (500 msec TR, minimum TE, 90°
FA) in the same slices and at the same resolution as the functional
images. These in-plane anatomical images were registered to a standard
anatomical scan of each subject's brain so that all MR images (across
multiple scanning sessions) from a given subject were aligned to a
common three-dimensional coordinate grid.
fMRI data analysis. fMRI responses to each visual stimulus
were recorded in separate scans that each lasted 254 sec. The first 36 sec of data were discarded to minimize effects of magnetic saturation
and visual adaptation. During the remaining 216 sec of each scan, a
test stimulus alternated six times (once every 36 sec) with a uniform
gray field of equal mean luminance. A sequence of 72 functional images
(one every 3 sec) was recorded for each slice and for each stimulus
contrast.
For a given fMRI voxel, the image intensity changed over time,
comprising a time-series of data. This time series was periodic, with a
period equal to the 36-sec-stimulus temporal period (Fig. 2A). We quantified the
fMRI response by (1) removing any linear trend in the time series, (2)
dividing each voxel's time series by the voxel's mean intensity and
subtracting the mean, (3) averaging the time series over a set of
voxels corresponding to a particular brain region (e.g., V1 or MT+),
and then (4) calculating the amplitude and phase of the (36 sec period)
sinusoid that best fit the average time series.

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Figure 2.
fMRI response variability. A, Average
time series (averaged within MT+), from one subject for a 50% contrast
moving grating stimulus, superimposed with the best fitting sinusoid
(dashed line). B, Amplitude of Fourier transform
of A. The signal frequency (6 cycles/scan) and its harmonics
are represented by triangles. Filled circles correspond to
nonharmonic frequencies. Solid curve is an exponential
function fit that was used to estimate the noise amplitude at the
signal frequency (dashed line).
|
|
To improve signal-to-noise in the response versus contrast
measurements, the least responsive voxels (e.g., voxels that contained a high proportion of white matter) were removed from the region of
interest, based on responses to reference stimuli, run at the beginning
of each session. The reference stimulus for all areas, except MT+, was
a contrast-reversing 8.3 Hz 1 cycle/° checkerboard that alternated
with a mid-gray field of equal mean luminance (36 cd/m2). The reference stimulus for MT+ alternated in
time between moving and stationary dot patterns (see below). For all
regions, voxels with correlations above a liberal threshold
(r > 0.23 with 0-9 sec time lag) were included in
further analyses. This correlation threshold of r > 0.23 corresponds to a p < 0.025 (one-tailed) significance level with n = 72, given that the points
in the time series are independent. The independence assumption is
obviously violated in an fMRI time series (attributable to the
sluggishness of the hemodynamic response), and so the threshold would
have to be raised considerably to achieve the desired significance level. However, this threshold was chosen only to remove the least responsive voxels from the analysis, not to test whether the stimulus was evoking activity.
The reference scan was also used to determine the sign of the
responses. Responses within ±90° of the reference response phase were considered positive; otherwise they were considered negative. Note
that in this way the expected value for a scan with no visual stimulus
was zero.
Because the speed discrimination thresholds were measured at 20%
contrast (see above), we fit the fMRI response versus contrast data and
calculated the fitted response at 20% contrast (Fig. 3). Specifically, the response versus
contrast measurements were fit with a power function:
|
(1)
|
where
is the fitted fMRI response amplitude,
c is contrast, and A and p are free
parameters that characterize the amplitude and shape, respectively, of
the curves. A numerical search determined the A and
p that minimized the following weighted least-squares error
function:
|
(2)
|
where Ri is the measured response to the
ith stimulus contrast and
i(A, p) is the
fitted response using parameters (A, p). The
i2 in the denominator is an estimate for
the variance of the response. In this way, the fitted responses most
closely match data points with the smallest estimated variance. We used
a power function for several reasons. First, it is a simple function
with only two parameters. Second, we empirically determined that it
provided a good fit across subjects and across visual areas. Third, we recently related the shape of the power function to human perception (contrast increment thresholds) at the high-contrast range used in this
study (Boynton et al., 1998
). Finally, the average single-unit response
in monkey primary visual cortex is approximately shaped like a power
function at these high contrasts (Albrecht, 1995
).

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Figure 3.
fMRI response versus contrast. MT+ responses as a
function of stimulus contrast in a dyslexic subject. The
continuous curve is a fitted power function, and the error
bars represent estimates of the noise in the fMRI responses (see
Materials and Methods). Dashed line indicates the fitted
response at 20% contrast.
|
|
The SD of the noise in the fMRI responses (
i
in the above equation) was estimated separately for each scan (i.e., for each stimulus contrast). The noise in the fMR images was highly correlated in adjacent voxels. It would have been incorrect, therefore, to simply compute the SD of the responses across voxels and divide by
the square root of the number of voxels. Instead we noted that the
(Fourier) amplitude spectrum of the time series was a smooth function
of frequency, and we used the components that were not driven by the
stimulus to estimate the noise in the stimulus-driven responses. Figure
2A, for example, plots the average time series (averaged across MT+ in one subject) in response to a 50% contrast drifting grating stimulus. Figure 2B plots the
Fourier transform of this time series. Triangles correspond to the
signal frequency (six cycle/scan) along with its higher harmonics
(integer multiplies of six cycles/scan). A decreasing exponential
function was fit to the other (nonharmonic) frequency components
(filled circles), and as illustrated in Figure 2B,
the fitted value at the signal frequency (dashed line) was used as our
estimate of response variability (
i).
For the group analyses in Figures 6, 8, and 9, the fMRI response
amplitudes and phases were vector-averaged across subjects. The error
bars in these figures were computed as the SEM across subjects.
Defining visual brain areas. The fMRI data were analyzed
separately in each of several identifiable visual areas. fMRI methods for defining the retinotopically organized visual cortical areas (V1,
V2v, V2d, V3v, V3d, V3A, and V4v) are now well established (Engel et
al., 1994
, 1997
; Sereno et al., 1995
; Deyoe et al., 1996
; Wandell,
1998
). We used these methods as described in detail elsewhere (Engel et
al., 1997
) to measure both the angular (i.e., vertical to horizontal
meridian) and radial dimensions (i.e., fovea to periphery) of these
areas.
To determine area boundaries, we visualized these retinotopy
measurements on computationally flattened representations of each
subject's brain. First, the occipital lobe gray matter was semiautomatically identified in images from a standard volume anatomy
MRI scan, using a Bayesian classification algorithm (Teo et al., 1997
).
Second, a multidimensional scaling algorithm was used to flatten the
cortical sheet in each hemisphere (Engel et al., 1997
; Wandell, 1998
).
Third, the retinotopy measurements were projected into the flattened
representation. Fourth, the locations of visual area boundaries were
drawn by hand on the flattened representation as curved lines that ran
along the reversals in the angular component of the retinotopic map,
and that ran orthogonal to the radial component of the retinotopic map.
Area boundary definitions are agreed on for the areas under study by several laboratories (Sereno et al., 1995
; Deyoe et al., 1996
; Engel et
al., 1997
; Wandell, 1998
). We tried to be conservative in the process
of area definition by selecting areas slightly within the area
boundaries. Finally, the selected areas were projected back to
three-dimensional coordinates within the gray matter of the brain. The
locations of these areas in three representative dyslexic and control
subjects are shown in Figure 4. We did
not notice any systematic differences in the size or position of these areas between groups.

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Figure 4.
Top. Visual area locations. A,
Parasagittal anatomical image from one subject indicating the slice
selection (perpendicular to the calcarine sulcus) for the retinotopy
measurements and the control conditions. B-D, Visual areas
V1, V2, V3, V3A, and V4v depicted on in-plane anatomies from a similar
location (near the middle of the 8 in-planes) in three control
subjects. E-G, Visual areas depicted on in-plane anatomies
from a similar location in three dyslexic subjects. Figure
5. Bottom. Location of area MT+. A, Parasagittal
anatomical image from one subject indicating the slice selection
(parallel to the calcarine sulcus) for the moving dots and the test
conditions. The blue lines were slices that contained the
MT+ region of interest (ROI) in this subject. B-D, Brain
activity in one slice containing the MT+ ROI from three control
subjects. Reddish voxels show regions with greater response
to moving versus stationary dot patterns. Images were chosen to
optimally show MT+ in the right hemisphere (arrows),
although activity from left hemisphere MT+ and V1 are also present in
some cases. The image in B is from the same brain as the
sagittal image in A and corresponds to the most inferior of
the three blue slices. The MT+ ROI was defined by outlining
(dotted line in B) the strongest area of activity
that was approximately lateral to the junction between the calcarine
sulcus and the parieto-occipital sulcus, and beyond the retinotopically
organized visual areas (see Materials and Methods). E-G,
Slices with MT+ ROIs in three dyslexic subjects.
|
|
Several lines of evidence suggest that a lateral region of the
occipital lobe of the human brain, human MT+, may be homologous to
monkey MT+. Human and monkey MT+ appear to be similar anatomically (Tootell and Taylor, 1995
) and functionally (Zeki et al., 1991
, 1993
;
Watson et al., 1993
; McCarthy et al., 1995
; Tootell et al., 1995a
, b
;
Sereno et al., 1995
; Deyoe et al., 1996
; Heeger et al., 1998
). Area MT+
was defined, following previous fMRI studies (McCarthy et al., 1995
;
Tootell et al., 1995a
; Sereno et al., 1995
; Deyoe et al., 1996
), on the
basis of both anatomical and functional criteria. Anatomically, area
MT+ was selected in an inferior region in the lateral occipital lobe,
approximately lateral to the junction between the calcarine sulcus and
the parieto-occipital sulcus, and beyond the retinotopically organized
visual areas. Functionally, area MT+ was defined on the basis of fMRI
responses to stimuli that alternated in time (one cycle every 36 sec
for six cycles) between moving and stationary dot patterns. The dots
(small white dots on a black background) moved (10°/sec) radially
inward and outward for 18 sec, alternating direction once every second.
Then the dot pattern was stationary for the next 18 sec. We computed the cross-correlation between each fMRI voxel's time series and a
sinusoid with the same (36 sec) temporal period. We drew (liberally) MT+ regions of interest around contiguous areas of strong activation (r > 0.35) where the response was within a 0-9 sec
time lag with respect to the temporal alternation of the stimulus. Area
MT+ was localized in a similar position in each subject's brain and typically spread across two or three slices in each hemisphere. Figure
5 shows examples of three dyslexic and
control subject MT+ regions.
These procedures to define the various visual brain areas were
performed only once per subject. Because the fMRI data recorded during
successive scanning sessions in a given subject were all aligned to a
common three-dimensional coordinate grid (see above), we could localize
the previously labeled visual areas across scanning sessions.
Correlations between brain activity and behavioral performance were
tested for statistical significance. We used one-tailed statistical
tests to test hypotheses that higher levels of brain activity in the
fMRI test conditions (low mean luminance, moving) would be associated
with (1) lower speed thresholds (i.e., better performance) and (2)
higher reading scores. Critical values for the significance of the
correlation coefficient (n = 10, df = 8) are
|r| > 0.549, p < 0.05 and
|r| > 0.716, p < 0.01.
 |
RESULTS |
Behavioral group differences
The control group scored higher on all reading tests and had
better psychophysical thresholds than the dyslexic group (Demb et al.,
1998
). The reading percentile scores were significantly higher
(one-tailed t tests, df = 8) for four of the five
tests: spelling (control mean = 83.4, SE = 5.9; dyslexic
mean = 50.0, SE = 14.7; p < 0.05); nonword
reading (control mean = 77.4, SE = 5.9; dyslexic mean = 40.6, SE = 10.0; p < 0.01); reading rate (control
mean = 63.4, SE = 6.2; dyslexic mean = 17.2, SE = 6.8; p < 0.005); and comprehension (control mean = 64.8, SE = 3.7; dyslexic mean = 26.0, SE = 7.7;
p < 0.005). Single-word reading was only slightly
better in controls than dyslexics (control mean = 82.8, SE = 3.2; dyslexic mean = 57.4, SE = 14.6; p < 0.10). Speed discrimination thresholds in controls were similar to
previous reports (DeBruyn and Orban, 1988
; Mckee et al., 1986
), but
speed thresholds were significantly elevated (worse) in the dyslexic group (control mean = 5.6, SE = 0.8; dyslexic mean = 8.4, SE = 0.6; p < 0.02).
fMRI group differences
Area MT+ was defined in each subject's brain by measuring
responses to moving versus stationary dot patterns. As mentioned above,
a recent fMRI study reported almost no significant MT+ activity in
dyslexics (Eden et al., 1996
). We, however, found that it was possible
to localize area MT+ in each hemisphere of each subject, consistent
with a recent study of neuromagnetic recordings in dyslexia (Vanni et
al., 1997
). Examples are shown for individual control and dyslexic
subjects in Figure 5. The discrepancy with the Eden et al. (1996)
study
might be attributable to differences in the stimuli (e.g., higher
contrast) or in the subject populations.
To test for differences in brain activity between the two groups, we
computed the average responses, averaged across subjects within a
group, as a function of stimulus contrast. These group contrast
response functions are plotted in Figures
6, 8, and 9. In almost every case, these
group contrast response functions increased monotonically with
increasing stimulus contrast, as would be expected from previous
single-unit physiology and neuroimaging studies of visual cortex (Sclar
et al., 1990
; Boynton et al., 1996
).

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Figure 6.
Differences in brain activity between dyslexic and
control groups. Group average fMRI responses in MT+ and V1 to test
stimuli (low mean luminance, moving gratings) as a function of stimulus
contrast. Group differences were significant (p < 0.02) in both V1 and MT+ in these test conditions designed to
preferentially stimulate the M pathway. Error bars represent ±1 SEM.
Continuous curves are fitted power functions.
|
|
Group contrast responses in the low mean luminance test conditions are
shown for MT+ and V1 in Figure 6. The responses were higher in the
control group across the full range of contrasts in both visual areas.
Larger group differences are evident at higher contrasts, especially in
V1.
We used a bootstrapping statistical analysis to test the hypothesis
that group contrast responses were significantly lower in the dyslexic
group (Efron and Tibshirani, 1993
). Although there is conceptual
similarity between this procedure and an ANOVA, we chose to use
bootstrapping for two reasons. First, the data are continuous, not
categorical. Second, the bootstrapping procedure takes into account the
way we used vector averaging to compute the group mean responses (see
Materials and Methods).
The bootstrapping procedure consisted of two steps: (1) randomly sample
a value from the Gaussian distribution defined by the group mean and SE
corresponding to each contrast level; and (2) fit the resampled data
with a power function,
= Acp, where
is fMRI
response amplitude, c is contrast, and A and p are free parameters that characterize the amplitude and
shape, respectively, of the curves. These two steps were repeated 1000 times to form a bivariate distribution of the 1000 pairs of parameter values for each group. This is plotted in Figure
7A for the MT+ group data. The
1000 amplitude (A) and exponent (p)
parameters are plotted against each other for each group, forming two
clouds of data (x = dyslexics; o = controls). We found the
best linear discriminator between the two bivariate distributions (Fig.
7A, dashed angled line) and projected the points onto an
axis orthogonal to this angle (Fig. 7B, tilted axis). A
p value was obtained by testing the null hypothesis that the
means of the two resulting univariate distributions did not differ.
This was accomplished by randomly pairing and subtracting the values in
the two univariate distributions twice and then finding the percentage
of values in the difference distribution that fell below zero (Fig.
7C). A final correction on this p value was
performed given the relatively small sample size, on the basis of
simulations of this procedure under the null hypothesis (Demb, 1997
).
For both MT+ and V1, the control group responses were significantly
higher than the dyslexic group responses (Fig. 6)
(p < 0.02 for both), consistent with the M
pathway deficit hypothesis.

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Figure 7.
Bootstrapping statistical analysis. A,
Bivariate distributions of bootstrapped power function parameters. The
amplitude and exponent parameters for the 1000 bootstrapped contrast
response functions are plotted for the dyslexic (x) and
control (o) groups. Outliers from the dyslexic distribution
(extreme exponent values) are omitted from the plot. B, The
two bivariate distributions were projected onto an axis orthogonal to
the best linear discriminator (dashed line) between the
bivariate distributions. The resulting univariate distributions show a
count of the points for dyslexic (gray) and control
(white) groups. C, The difference distribution
was created by randomly pairing the points from the projected
univariate distributions twice and subtracting the dyslexic group
values from the control group values. A final p value
was derived by counting the number of values below zero
(dashed line), after correcting for the sample
size (Demb, 1997 ).
|
|
A possible alternative explanation is that the observed group
differences might have been caused by general attentional or motivational factors. To test whether the effect is specific to the M
pathway, we measured responses in control conditions with high mean
luminance contrast-reversing gratings. As mentioned earlier, lowering
the mean luminance of a visual stimulus increases the responsiveness of
the M pathway relative to other visual pathways, especially at low
mesopic and scotopic luminances (Purpura et al., 1988
; Lee et al.,
1997
). In the high mean luminance control conditions, the responses in
the two groups were well matched in V1 (Fig.
8) (p > 0.10),
again consistent with the M pathway deficit hypothesis.

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Figure 8.
Similar brain activity in dyslexic and control
groups. Group average fMRI responses in V1 to control stimuli (high
mean luminance, contrast-reversing gratings) as a function of stimulus
contrast. Group contrast responses were well matched
(p > 0.10) in these control conditions designed
to stimulate other pathways in addition to the M pathway. Error bars
represent ±1 SEM. Continuous curves are fitted power
functions. (MT+ activity was not recorded in this condition.)
|
|
Group fMRI response amplitudes are plotted as a function of contrast
for areas V2, V3, V3A, and V4v in Figure
9. The dyslexic group responses were
lower than the control group responses in all four extrastriate areas
for the low mean luminance test conditions (Fig. 9, top
row). These group differences were statistically significant at
the p < 0.02 level for all visual areas except V3A;
for V3A the effect was significant at the p < 0.05 level. The control group responses were consistently greater at the
three highest contrasts (between 25 and 100% contrast) in all six
visual areas.

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Figure 9.
Brain activity in four extrastriate areas.
Top row, Group average fMRI responses in V2, V3, V3A, and
V4v to test stimuli (low mean luminance, moving gratings) as a function
of stimulus contrast. Control group responses were significantly
greater than dyslexic group responses in all areas
(p < 0.05). Bottom row, Group
average fMRI responses to control stimuli (high mean luminance,
contrast-reversing gratings) as a function of stimulus contrast.
Dyslexic group responses were well matched or slightly higher in all
areas. Error bars represent ±1 SEM. Continuous curves are
fitted power functions.
|
|
The dyslexic group responses in the high mean luminance control
condition (Fig. 9, bottom row) were virtually identical to, or actually higher than, the control group responses in V2, V3, V3A,
and V4v. Responses were not measured in MT+ to the high mean luminance
control conditions, because of the different slice orientations (Figs.
4, 5). As described above, a one-tailed statistic was used to test for
a stronger response in the control group. Under this hypothesis there
were no significant group differences in the high mean luminance
control conditions. In fact, in all cases except V1, the dyslexic group
had a significantly stronger response under the opposite alternative
hypothesis, although in many cases (V3, V3A, V4v) this difference was
largely attributable to stronger responses at low contrasts rather than
higher maximum amplitudes. The similarity between the group contrast
responses in the control conditions suggests that subjects in the
dyslexic group were capable of achieving responses as high or higher
than those of the control group. Hence, the reduced responses in
dyslexics' brains at low mean luminance are consistent with a specific
deficit in the M pathway.
We included a moving dot stimulus similar to the one used by Eden et
al. (1996)
in a previous fMRI study in dyslexia so that we could
compare more directly the two studies. The stimuli were 1° moving
dots alternating (every 36 sec) in time with a gray field, although we
probably used a higher mean luminance than they did (T. Zeffiro,
personal communication). We computed the cross-correlation between each
fMRI voxel's time series and a sinusoid with the same (36 sec)
temporal period, which was equivalent to their statistical analysis.
Figure 10 plots the maximum of the cross-correlation values from each MT+ region of interest in each subject. A correlation threshold of r = 0.75 (Fig. 10,
horizontal line) is sufficient to allow 8 of 10 control
hemispheres but only 3 of 10 dyslexic hemispheres to be above
threshold. Their study more completely separated the groups, possibly
because of differences in the makeup of the dyslexic group or subtle
differences in stimulus characteristics (e.g., mean luminance).

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Figure 10.
Responses were measured to a moving dot stimulus
that alternated with a gray field; stimulus parameters were similar to
a previous fMRI study of dyslexia (Eden et al., 1996 ). After their
analysis, the maximum correlation of all voxels in the MT+ ROI of each
hemisphere is plotted for each subject. A line is drawn at
r = 0.75 to demonstrate that under a given correlation
threshold, the groups can be somewhat separated (8 of 10 control but
only 3 of 10 dyslexic hemispheres above threshold), similar to the
results reported by Eden et al. (1996) .
|
|
Brain activity and psychophysical performance
The hypothesis for an M pathway deficit in dyslexia predicts that
dyslexic subjects, on average, should perform below normal on motion
discrimination tasks that depend on M pathway signals. Assuming that
this M pathway deficit occurs on a continuum, this hypothesis predicts
that individual differences in speed discrimination performance should
be correlated with individual differences in brain activity under
conditions that emphasize M pathway inputs to cortex (i.e., low mean
luminance moving gratings).
In each subject, we measured a speed discrimination threshold, or the
minimal increase in stimulus speed that is just noticeable (Fig. 1).
The psychophysical stimulus was a moving grating, similar to that used
in the fMRI experiments, presented (on average) at 20% contrast.
We compared individual differences in speed discrimination thresholds
with the fitted fMRI responses at 20% contrast (Fig. 3). The results
are plotted in Fig. 11 (dyslexics = black triangles; controls = white circles) with regression lines
through the data when there was a significant correlation. There was a
very strong negative correlation between MT+ activity and speed
discrimination thresholds (r =
0.79;
p < 0.005). Subjects with higher MT+ responses had
lower psychophysical thresholds (better performance). The correlation
was weaker but still significant in V1 (r =
0.65; p < 0.025).

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Figure 11.
Individual differences in both MT+ and V1
activity predict psychophysical speed discrimination thresholds. fMRI
responses are the fitted values at 20% contrast. Psychophysical
thresholds are averaged across three repeated measurements for each
subject. Solid lines are regression lines through the data.
Correlation between speed discrimination thresholds and MT+ activity
was very strong (r = 0.79; p < 0.005). Correlation between speed thresholds and V1 activity was
weaker, but still significant (r = 0.65;
p < 0.025). Brain activity in V2, V3, V3A, and
V4v was not correlated with speed discrimination performance.
|
|
Brain activity in the other visual areas (V2, V3, V3A, and V4v) was not
significantly correlated with speed discrimination thresholds. The data
shown were averaged over the dorsal and ventral representations of V2
and V3, but the results were similar when dorsal and ventral subregions
were analyzed separately (r values between
0.20 and 0.01 for all).
We considered the possibility that a single datum from one subject
might be an outlier, thereby dominating the effect to make an otherwise
weak correlation appear strong or to make an otherwise strong
correlation appear weak. To test for this possibility, we removed one
subject at a time and recalculated the correlations with the remaining
nine subjects. For all 10 combinations of 9 subjects, MT+ activity and
performance were always significantly correlated at the
p < 0.025 level. For 9 of the 10 combinations, V1
activity and performance were significantly correlated at the p < 0.05 level. For 1 of the 10 combinations, the
correlation between the V3A activity and behavior was just barely
significant (r =
0.59; p < 0.05). In
no other visual area was activity significantly correlated with motion
discrimination performance, under any of the circumstances tested.
Brain activity and reading performance
The M deficit hypothesis predicts that reading ability is strongly
related to measures of M pathway integrity. Thus, individual differences in reading skills should be correlated with individual differences in brain activity under our low mean luminance moving grating conditions that emphasize M pathway inputs to cortex.
We measured the correlation between fMRI activity in the test (low mean
luminance, moving grating) condition in each visual area and reading
performance on the five reading tests. Scatter plots showing fitted
fMRI activity versus reading rate performance are presented in Figure
12 (dyslexics = black triangles;
controls = white circles) with regression lines through the data.
There was a very strong correlation (r = 0.80;
p < 0.005) between individual differences in MT+
activity and reading rate. This plot shows the correlation between
reading rate and MT+ activity at 30% contrast, where the correlation
was strongest. However, the correlation was significant
(p < 0.01) for contrasts ranging from 4 to
90%.

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Figure 12.
Individual differences in brain activity are
strongly correlated with individual differences in reading rate.
Solid lines are regression lines through the data. The
responses corresponding to contrasts that produced the highest
correlations are shown (MT+, ct = 30%, r = 0.80;
V1, ct = 85%, r = 0.68; V2, ct = 100%,
r = 0.80; V3, ct = 100%, r = 0.77; V3A, ct = 53%, r = 0.60; V4v, ct = 100%, r = 0.80), although the correlations were
significant across a wide range of contrasts in all areas (see
Results). Reading rates are reported as percentile scores. The dyslexic
subject with a high reading rate scored quite poorly on other reading
measures, including the reading comprehension score of the Nelson-Denny
reading test.
|
|
The correlation between individual differences in brain activity and
reading rate was weaker in V1 than in MT+. Even so, there was a range
of contrasts (from 31 to 100%) for which the correlation was
significant at the p < 0.05 level, consistent with the
hypothesis that the M deficit is precortical (Livingstone et al.,
1991
). Correlations were significant for the four other visual areas as
well. For all areas, there was a range of contrasts for which the
correlations were significant at p < 0.05 (MT+
range, 3 to 100%; V1 range, 31 to 100%; V2 range, 54 to 100%; V3
range, 52 to 100%; V3A range, 14 to 92%; V4v range, 70 to 100%).
MT+ response amplitudes at the lowest contrasts were higher than the
other areas. This may explain why the correlation with reading rate could be observed at lower contrast levels in MT+.
Correlations between brain activity and reading comprehension were
significant in V2 (r = 0.65), V3 (r = 0.78), V3A (r = 0.58), and V4v (r = 0.72) (data not shown). The correlations in V1 and MT+ increased to
become significant with one of the subjects removed. This subject was a
dyslexic with strong V1 and MT+ activity who read quickly but did not
do well on the comprehension questions. The only other significant
correlation between reading ability and brain activity was between V3
activity and non-word reading (r = 0.58; data not
shown). Scores on the single-word reading and spelling tests were not
correlated with activity in any of the brain areas. The correlation
with spelling might have been expected based on reports of impaired
spelling, in addition to impaired reading speed, in compensated
dyslexics (Lefly and Pennington, 1991
).
Additional findings
We ran an additional set of conditions in all subjects in which we
presented a contrast-reversing grating instead of a moving grating.
This stimulus had the same spatial frequency (0.4 cycle/°) and low
mean luminance (2 cd/m2) as the moving grating, and
we measured responses at several contrasts (6, 12, 25, 50, and 100%).
However, the signal from these conditions was quite low across both
groups of subjects (data not shown). There was a trend toward a
significant group difference in V1 (p < 0.10),
but there was no group difference in V2, V3, V3A, or V4v (MT+ responses
were not measured in these conditions). The overall amplitudes of the
moving test stimuli and the high mean luminance control stimuli were
much stronger and more similar in magnitude to one another, and so we
focused on those two conditions. We did not observe a group difference in the low mean luminance, contrast-reversing conditions for two possible reasons. First, the weak signals evoked by this condition may
have been too noisy to see a reliable group difference statistically. Second, moving stimuli may be better than contrast-reversing stimuli for assaying M pathway integrity. Indeed, Merigan and Maunsell (1990)
reported that M pathway-lesioned monkeys were more impaired at contrast
sensitivity measured with moving gratings than with contrast-reversing
gratings.
We checked to see whether activity related to the control stimulus
(high mean luminance, contrast reversing) was correlated with the speed
thresholds or any of the reading tests in any of the brain areas. There
were no significant correlations in any of these comparisons (although
MT+ responses were not measured in these conditions), consistent with
the M deficit hypothesis.
 |
DISCUSSION |
Group differences
The first main finding of this study was that fMRI responses in a
group of dyslexic subjects were significantly lower than control group
responses in V1 and several extrastriate areas (MT+, V2, V3, V3A, V4v)
in response to low mean luminance, moving grating stimuli of various
contrasts (test conditions). However, dyslexic group responses were
similar or actually higher than controls in response to higher mean
luminance, contrast-reversing grating stimuli (control conditions).
This implies that the dyslexic group was capable of achieving the same
response amplitudes as the control group in certain conditions, and
that general attentional or motivational factors cannot explain the
group differences in the low mean luminance test conditions. Using a
low mean luminance emphasizes M pathway inputs to cortex (Purpura et
al., 1988
; Lee et al., 1997
). Therefore, our results are consistent
with a specific M pathway deficit in dyslexia.
A previous fMRI study in dyslexia reported a difference in MT+ during
perception of moving dots, but they did not report responses in V1
during this condition (Eden et al., 1996
). Previous VEP studies have
suggested that differences between dyslexic and control groups arise
from differences in signals at V1 (e.g., Livingstone et al., 1991
), but
exact localization of these VEP signals is not possible. Our study is
the first to show conclusively that there is a physiological group
difference as early as V1. This is consistent with the hypothesis,
based on anatomical data from LGN, that the M deficit is precortical
(Livingstone et al., 1991
).
Brain activity and psychophysical performance
The second main finding of this study was that brain activity in
visual areas V1 and MT+ was correlated with individual differences in
motion discrimination performance. Subjects with stronger fMRI responses in these brain areas had lower speed discrimination thresholds, suggesting that neuronal signals in these brain areas support visual motion perception. These results are consistent with
studies of the monkey brain, which have shown that monkey V1 and MT+
play prominent roles in the "motion pathway" (Merigan and Maunsell,
1993
). Our study is the first to show a link between individual
differences in brain activity and human motion perception. Indeed, it
is one of relatively few studies showing a correlation between
individual differences in brain and behavior of any kind (Britten et
al., 1992
; Recanzone et al., 1992
; Logan and Grafton, 1995
; Cahill et
al., 1996
; Kosslyn et al., 1996
; Nyberg et al., 1996
; Pugh et al.,
1997
).
The role of human MT+ in motion perception has been addressed by
previous studies using complementary techniques. Patients with lesions
that include this brain area show deficits in motion perception (Zihl
and Cramon, 1983
; Zihl et al., 1991
), and transcranial magnetic
stimulation near MT+ in healthy volunteers interferes with motion
perception (Beckers and Homberg, 1992
; Hotson et al., 1994
; Beckers and
Zeki, 1995
). Functional neuroimaging studies have shown that MT+ is
active when subjects perceive illusory motion in stationary displays
(Zeki et al., 1993
; Tootell et al., 1995b
), that activity in MT+ can be
modulated by instructing subjects to selectively attend to moving
stimuli (Corbetta et al., 1991
; Beauchamp et al., 1997
; O'Craven et
al., 1997
), and that MT+ activity exhibits motion opponency that is
believed to reflect mutual suppression between populations of
neurons sensitive to motions in opposite directions (Heeger et al.,
1998
).
In the monkey, MT+ is also widely viewed as the cornerstone of a
"motion pathway" because a strong empirical link has been established between neural activity in MT+ and the perception of motion
(Siegel and Andersen, 1986
; Newsome and Pare, 1988
; Logothetis and
Schall, 1989
; Newsome et al., 1989
; Salzman et al., 1990
, 1992
; Britten
et al., 1992
; Celebrini and Newsome, 1994
, 1995
; Pasternak and Merigan,
1994
; Orban et al., 1995
).
We found that speed discrimination thresholds were not correlated with
brain activity in several other cortical areas. In the monkey, some of
these cortical areas (e.g., V2 and V3) are known to contain
direction-selective neurons (Levitt et al., 1994
; Gegenfurtner et al.,
1997
), and they are known to be anatomically connected in the motion
pathway (Maunsell and VanEssen, 1983
; Deyoe and VanEssen, 1985
; Shipp
and Zeki, 1985
; Livingstone and Hubel, 1987
; Felleman et al., 1997
).
There are four obvious possible explanations for why activity in these
areas was not correlated with behavior in our experiments. First,
correlations might have been higher if we had been able to resolve and
measure signals within the subdivisions of these areas (e.g., thick
stripe subdivision of V2) that are known in the monkey to receive M
pathway input and project to MT+. Second, the physiology and anatomical
connections of V2 and V3 could be different in humans and monkeys.
Third, these cortical areas may not be involved in speed perception
judgments, even though they are involved in some other aspects of
motion perception, e.g., detecting motion boundaries (Reppas et al., 1997
). Fourth, these areas may be more involved in speed discrimination under different stimulus conditions, e.g., slowly moving isoluminant gratings (Gegenfurtner et al., 1997
).
The observed negative correlation between (V1 and MT+) brain activity
and speed discrimination thresholds has implications for theories about
the neural computations underlying motion perception. Subjects with
higher levels of brain activity would presumably have better
signal-to-noise and hence better discrimination performance; however, a
specific model of speed discrimination performance has yet to be
developed.
Brain activity and reading performance
The third main finding of this study was that brain activity in V1
and all of the identified extrastriate areas was correlated with
individual differences on a measure of reading speed. In fact, brain
activity elicited by our simple visual paradigm could explain up to
64% of the variance on this particular measure of reading ability.
Many bright, motivated dyslexic university students compensate for
reading difficulties by bringing other cognitive abilities to the task,
but they appear to do so at the cost of reading slowly (Shaywitz et
al., 1995
). Dyslexic subjects in the present study took regular classes
but required extra time on course testing because of their slow
reading. A study of compensated dyslexics found that reading speed was
still affected, even when all or most other reading skills were normal
(Lefly and Pennington, 1991
). Thus, reading rate may be the most
sensitive marker of dyslexia in adults with a childhood history of
dyslexia and some level of compensation in adulthood.
In addition, reading rate was strongly correlated with motion
discrimination performance, a psychophysical measure of M pathway integrity. The correlation between individual differences on reading speed and the speed discrimination threshold in these subjects was
r = 0.84 (Demb et al., 1998
). Thus, there was a strong
three-way correlation between V1 and MT+ brain activity, speed
discrimination thresholds, and reading speed.
The M pathway deficit in dyslexia
Although it is possible that an M deficit is only a
correlate of dyslexia, it is difficult to imagine that an
abnormality in such a significant visual pathway would fail to have
consequences for a complex visual behavior like reading. One hypothesis
is that a transient visual pathway (i.e., the M pathway) normally inhibits activity in a sustained visual pathway (i.e., the
parvocellular pathway) during a saccade. A disruption of this
transient-on-sustained inhibition in dyslexia would result in a
blurring of the visual input across successive fixations, resulting in
a confusion about the order of letters on a page (Williams and
Lovegrove, 1992
; Breitmeyer, 1993
). However, more recent evidence
suggests that the M pathway, rather than the parvocellular pathway, is
normally inhibited during saccades (Ross et al., 1996
). Thus, this
theory will require modification to adequately explain how a deficient M pathway could result in reading difficulty. Another theory, posed by
Stein and colleagues (Stein et al., 1987
; Stein and Walsh, 1997
),
suggests that a deficient M pathway could cause destabilized binocular
fixation that would result in reading difficulty.
An alternative possibility is that the M pathway deficit is only a
marker for a more general deficit in fast temporal processing with no
direct causal relationship (Tallal et al., 1993
; Farmer and Klein,
1995
). Even if there were no causal relationship, psychophysical or
neural measures of M pathway integrity could be clinically useful. For
example, a measure of M pathway integrity might be used as an objective
clinical marker for the disorder, perhaps even in young children before
reading age. This would obviously require that our results be
replicated on a wider range of subjects (e.g., non-university students,
different age groups). Also, measures of M pathway integrity might be
used to distinguish subtypes of dyslexia (Borsting et al., 1996
; Ridder
et al., 1997
; Spinelli et al., 1997
). Finally, the examination of M
pathway integrity in dyslexia could advance our understanding of the
disorder at molecular and genetic levels. Prasad et al. (1997)
, for
example, recently reported magnocellular layer-specific genes within a region of human chromosome 6 (6P21.3) that had previously been linked
to dyslexia (Smith et al., 1998
). Thus even if the visual deficit is
not causally related with dyslexia, valuable lessons may be learned
from the visual system analyses that could be used to test alternative
hypotheses in other neural systems.
 |
FOOTNOTES |
Received March 16, 1998; revised June 10, 1998; accepted June 15, 1998.
This work was supported by a Stanford Graduate Research Opportunities
grant to J.B.D.; by a National Institute of Mental Health (NIMH)
postdoctoral research fellowship (F32-MH10897) to G.M.B.; by a National
Institutes of Health National Center for Research Resources grant
(P41-RR09784) to G.H.G.; and by an NIMH grant (R29-MH50228), a Stanford
University Research Incentive Fund grant, a grant from the Orton
Dyslexia Society, and an Alfred P. Sloan Research Fellowship to D.J.H.
Special thanks to B. A. Wandell for generous support and advice
and for critically reading an earlier version of this manuscript,
G. H. Glover (and the Richard M. Lucas Center for Magnetic
Resonance Spectroscopy and Imaging) for technical support, and M. Best
for assistance with the reading tests.
Correspondence should be addressed to David Heeger, Department of
Psychology, Stanford University, Stanford, CA 94305-2130.
Dr. Demb's present address: Department of Neuroscience, University of
Pennsylvania Medical School, Philadelphia, PA
19104-6058.
 |
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