INTRODUCTION: Previous studies have shown that the slow, or fusion sustaining, component of disparity vergence contains oscillatory behavior as would be expected if fusion is sustained by visual feedback. This study extends the examination of this behavior to a wider range of frequencies and a larger number of subjects. METHODS: Disparity vergence responses to symmetrical 4.0 deg step changes in target position were recorded in 20 subjects. Approximately three seconds of the late component of each response were isolated using interactive graphics and the frequency spectrum calculated. Peaks in these spectra associated with oscillatory behavior were identified and examined. RESULTS: All subjects exhibited oscillatory behavior with fundamental frequencies ranging between 0.37 and 0.55 Hz; much lower than those identified in the earlier study. All responses showed significant higher frequency components. The relationship between higher frequency components and the fundamental frequency suggest may be harmonics. A correlation was found across subjects between the amplitude of the fundamental frequency and the maximum velocity of the fusion initiating component probably due to the gain of shared neural pathways. CONCLUSION: Low frequency oscillatory behavior was found in all subjects adding support that the slow, or fusion sustaining, component is mediated by a feedback control.
INTRODUCTION: Previous studies have shown that the slow, or fusion sustaining, component of disparity vergence contains oscillatory behavior as would be expected if fusion is sustained by visual feedback. This study extends the examination of this behavior to a wider range of frequencies and a larger number of subjects. METHODS: Disparity vergence responses to symmetrical 4.0 deg step changes in target position were recorded in 20 subjects. Approximately three seconds of the late component of each response were isolated using interactive graphics and the frequency spectrum calculated. Peaks in these spectra associated with oscillatory behavior were identified and examined. RESULTS: All subjects exhibited oscillatory behavior with fundamental frequencies ranging between 0.37 and 0.55 Hz; much lower than those identified in the earlier study. All responses showed significant higher frequency components. The relationship between higher frequency components and the fundamental frequency suggest may be harmonics. A correlation was found across subjects between the amplitude of the fundamental frequency and the maximum velocity of the fusion initiating component probably due to the gain of shared neural pathways. CONCLUSION: Low frequency oscillatory behavior was found in all subjects adding support that the slow, or fusion sustaining, component is mediated by a feedback control.
To attain high velocity responses, motor movements often rely on
open-loop, or preprogrammed control strategies. However, such
movements have limited accuracy. Feedback control can produce
extremely accurate responses, but if delays are present within the
feedback loop, then response velocity must be reduced to keep the
system stable. Both version and vergence control systems achieve speed
and accuracy by combining the two strategies. In version, the two
control strategies manifest as separate movements: preprogrammed
saccades and feedback-controlled pursuit movements. In vergence, the
two control components are less obvious as they merge into a single
coordinated response. Nonetheless, considerable evidence supports a
“dual mode” control strategy (
25; 26; 27; 23; 24;
22; 13; 11; 2; 4;
). This approach consists of an open-loop, fusion
initiating component that enhances initial dynamics followed by a
fusion sustaining component driven by visual and internal feedback to
slowly bring the response to the final position (Alvarez et al. 2000).
We favor the term “dual-mode” to describe this strategy as opposed to
“pulse-step” as it emphasizes the difference in control strategies:
open-loop versus feedback control. Evidence of a dual-mode strategy
for the control of disparity eye movement has been provided from both
behavioral studies (
15; 25; 26; 27;
11; 2; 16
) and
neurophysiological studies (17; 18). A
schematic representation of vergence control is summarized in Figure
1.The fusion sustaining component has not been as well-studied as the
fusion initiating component. The assumption that it is feedback
controlled is based on the fact that sustained vergence has high
positional accuracy (a few minutes of arc Ogle, 19) which would
require feedback. It would be impossible to achieve such accuracy from
a noisy and variable neurological control system without the use of
visual feedback. There may also be an internal feedback pathway(s)
that bypasses some of the visual delays to improve stability. In the
fusion initiating component of vergence, efference copy signals have
been reported to improve stability (Alvarez et al. 2000).A schematic model of the dual-mode control strategy
showing pathways for fusion initiating and fusion sustaining
components (from Semmlow et al., 21).We know that feedback control systems will exhibit instabilities in
the form of oscillatory behavior if the loop gain or loop delay exceed
certain limits. Given that the time delay of a typical vergence
response ranges between approximately 0.18 to 0.24 sec. (6) and that the loop gain must be high to achieve small fixation
errors, feedback system analysis predicts oscillations will occur
during the fusion sustaining response. The nature of these
oscillations, particularly their frequencies and amplitudes have
direct implications on the neural control components that sustain
vergence fixation. Oscillatory behavior is best identified by
determining the frequency spectrum of the data usually implemented by
applying the Fourier Transform to a data segment as previously done by
our group (21). In a study involving 8 subjects,
they found oscillatory behavior in all subjects with a fundamental
frequency (i.e., lowest frequency) ranging between 1.2 and 1.9 Hz and
a number of higher frequency peaks. Spectra from different subjects
varied somewhat in fundamental frequencies, component magnitude and
the number of spectral peaks. Higher frequency components (those above
the fundamental frequency) had frequencies that were related to the
fundamental frequency. This indicates that the higher frequency
components were harmonics of the fundamental oscillation.In their original study of fusion sustaining oscillations, Semmlow
and colleagues (21) were limited to vergence step responses recorded
over a 2 sec time frame. After eliminating the fusion initiating
response, defined as the transient portion of the response, the length
of fusion sustaining late component available for analysis was only
1.2 sec, at most. This limits the lowest frequency component that can
be identified thought spectral analysis to approximately 0.8 Hz. In
this study, we extend the data collection period to 4 sec providing
approximately 3.2 sec of fusion sustaining component and allowing us
to search for lower frequency components. A data acquisition time of 3
or more seconds can identify frequencies as low as 0.33 Hz.
Methods
Subjects
The inclusion criteria for this study were young adults between the
ages of 18 to 35 with normal binocular vision and accommodation.
Twenty binocularly normal young adult subjects (3 females) between 18
and 26 years of age (21.1 ±2.5 years) participated in this study. All
subjects signed written informed consent approved by the New Jersey
Institute of Technology Institution Review Board. An oculomotor
examination was conducted by an optometrist who is one of the authors
(MS). Exclusion criteria included those with traumatic brain injury,
any disease known to impact the accommodative or vergence systems,
anyone with presbyopia or subjects who had myopia of more than –5D or
those with hyperopia more than +2D.
Clinical Examination
The oculomotor assessment included the following measurements:
best-corrected visual acuity at distance, near point of convergence
(NPC), positive and negative fusional vergence, eye alignment at 4m
and 40 cm using the unilateral cover test and prism and alternate
cover test, stereopsis, vergence facility, and amplitude of
accommodation. These measures were performed using previously
published protocols and can be assessed at
http://optometry.osu.edu/research/CITT
/4363.cfm.Briefly, NPC was measured from the bridge of the nose using the
near point rule where a high acuity target 20/30 size column letters
(Gulden Fixation Stick no. 15302) was moved towards the person. The
distance from the bridge of the nose to the visual target position
when the subject reported diplopia was recorded as NPC. Positive and
negative fusional vergence was measured with a horizontal prism bar
(Gulden B-15 horizontal prism bar—1∆ to 45∆). The subject viewed a
20/30 size column of letters held stationary at 40 cm along the
subject’s midsagittal plane. The base-out prism at which the person
saw blur or diplopia which ever occurred first was the positive
fusional vergence (PFV). Negative fusional vergence (NFV) was similar
measured but using base-in prism. Vergence facility was recorded using
a 12∆ base-out with 3∆ base-in prism set on a rod. The subject would
view the 20/30 column of letters also held stationary at 40 cm away
along the subject’s midline. The participant would report when they
saw the visual target single and clear and then the examiner would
change the other prism. The number of cycles (viewing the base-out and
then the base-in) of the prism were recorded within 1 minute.Amplitude of accommodation was measured monocularly for the right
eye where the left eye was occluded, and the subjects viewed the 20/30
single column of letters. Stereopsis was assessed using the Randot
Stereo Test. All subjects had stereopsis of better than 70 arcseconds.
Acuity was assessed and all subjects were properly refracted to 20/20
vision for all eye movement experiments. Near (measured at 40cm) and
far (measured at 6m) heterophoria was assessed using the alternate
cover test.The full optometric exam parameters for all subjects are found in
Table 1 below indicating that all participants had normal binocular
vision assessed by an Optometrist.Optometric Exam Parameters
Eye Movement Instrumentation/ Calibration
Left and right-eye movements were recorded using an infrared
video-based ISCAN RK-826PCI (Burlington, MA) binocular eye tracker
with a reported accuracy of 0.3º over a ±20º
horizontal and vertical range. Subjects were centered in front of two
partially reflective mirrors and viewed visual stimuli on two computer
screens. These computer screens were placed 40 cm from the subject and
arranged as a haploscope for a constant accommodative demand of 2.5D.
Visual stimuli were controlled using a custom software package (9). A strength of our proprietary system is that the raw eye
movements were digitized using a 12-bit digital acquisition (DAQ)
hardware card (National Instruments 6024 E series, Austin, TX, USA) at
500 Hz. This is important because our visual stimuli presentation and
eye movement recording were controlled by our custom LabVIEW program
that would allow temporal analyses.Eye movement responses were calibrated using 6 monocular targets at
1, 3, and 5 deg. in each eye separately. Monocular calibration reduces
the influence of fixation disparity (14)
which is important for the accuracy of the amplitude of the vergence
movement but has minimal impact the frequency analysis. Using the
calibration data, the eye position traces were converted to degree of
rotation for each eye trace. Vergence responses were computed as the
difference between left and right eye movement responses. Convergence
was plotted as positive.
Visual Stimuli
A range of both symmetrical convergence and divergence stimuli were
presented randomly to reduce anticipatory cues (1),
but only responses to 4.0 deg. step stimuli (from 4.0 deg to 8.0 deg
binocular vergence angular demand) were used in this analysis. This
stimulus range was selected because it
was comfortable for most subjects and produces more responses free of
saccades or other artifacts. From 4 to 15 artifact-free recordings
were obtained from each of the 20 subjects.
Analysis
A typical ensemble of vergence eye movements is shown in Figure 2,
left graph. The fusion sustaining components of these responses were
isolated from the late segment of each response using a velocity-based
criterion as described in Semmlow et al. (21). The frequency spectra
obtained from these isolated spectra using the Fourier Transform as
also detailed in Semmlow et al. (21). Peak frequencies and
amplitudes were obtained by identifying peaks in the spectra curves.
The identification of the fusion sustaining component need only be
approximate as slight variations in timing will not affect the results
(magnitude spectra are insensitive to time-shifts). While the time
responses shown in Figure 2 were lowpass filtered to improve clarity,
the spectra were obtained from unfiltered data as any high frequency
noise would not affect the lower frequencies of interest in this
study. A Pearson’s correlation coefficient (r-value)
was used to assess correlations.Left graph: An ensemble of 4 vergence eye movements in response to a step stimulus from 4.0 to 8.0 deg convergent.
Right graph: Fusion sustaining components isolated from 2 of the responses on the left showing the last 3 seconds of the recorded
responses.
Results
The plots in Figure 3 show two isolated fusion sustaining
components and their associated magnitude frequency spectra. While
individual spectra varied considerably, they have some common features
including a large fundamental frequency below 0.5 Hz and a number of
higher frequency peaks. The fundamental frequencies for the 20
subjects are summarized in the bar graph of Figure 4 (next page) and
subjects have been arranged in order of increasing frequency.The plots on the left show two examples of fusion
sustaining components isolated from vergence responses. The
plots on the right show the magnitude frequency spectra
associated with these components. The ‘*’ marks indicate
frequency peaks.As shown in Figure 4 (below), the fundamental frequencies found in
all responses averaged between 0.37 and 0.55 Hz and indicate the
presence of a low frequency oscillatory process. These oscillations
are likely due to the slow component feedback system.Bar graph showing the fundamental frequencies, in Hz,
found for the 20 subjects. The filled section of each bar indicates
the frequency (units of Hz) averaged over all responses with error
bars indicating one standard deviation Top numbers indicate number of
responses.The amplitudes of the fundamental frequency peaks varied widely
across subjects as shown in Figure 5. The average spectral peaks
amplitude ranged from 0.05 to 0.16 deg rms. The variation in amplitude
is much larger than that of frequency.The amplitude of the fundamental frequency spectral peaks
presented in the same order and format as in Figure 4. Averaged peak
amplitudes varied widely between 0.04 and 0.18 deg rms.Figure 6 shows the amplitudes of the first 5 spectral peaks
averaged across all responses and all subjects. The large standard
deviations reflect the large variability of oscillatory amplitude,
both between and within subjects. Note that the average amplitudes
decrease exponentially as oscillatory frequency increases.Mean amplitudes (squares) of the first 5 spectral peaks
averaged across all subjects. The large standard deviations reflect
the large variability in the amplitude of the oscillation. A least
squares algorithm was used to fit an exponential to the data.The frequencies of the additional peaks are also related to the
fundamental frequency. Figure 7 shows peak frequencies averaged across
all responses and all subjects for the first five peaks as was done
for peak amplitude in Figure 6. These additional peaks line along a
straight line. The standard deviations for frequency are much less
that those for amplitude (Figure 6) reflecting the reduced variability
for this spectral feature.Average frequency in Hz of the fundamental frequency (n =
1) and the first 4 harmonics averaged across all subjects. The small
standard deviations reflect the relative constancy of the fundamental
(i.e., first) frequency across the subjects. Note that the middle
three peaks fall very close to a straight line (dotted blue line).Figure 7 shows a strong relationship between peak frequencies
suggesting the various spectral peaks are harmonics of the
fundamental frequencies. Such harmonics would be generated by
nonlinearities in the motor pathway as indicted by the model in
Semmlow and colleagues (21). Harmonic frequencies are multiples
of the fundamental frequency:where f1 is the fundamental
frequency, f are the harmonic
frequencies, and n is the harmonic number (the
order in which the peak occurs in the spectrum).Eq. 1 indicates that if the higher frequency peaks are
harmonics of the fundamental frequency, f1, then
fn should be proportional to n with a constant of
proportionality of f1. That is, a plot of fn
as a function against n, should result in a straight line with a
slope of f1 and intercept of 0.0 (fn = 0
when n = 0). In Figure 8 we show a plot similar to that in Figure
7, but the frequencies are normalized to the value of
f1; i.e., f1 is subtracted from the
frequency values. This is to account for the inter-subject
differences in f1. The slope of the curve in Figure 8
is 0.65, higher than the average value of f1 which is
0.47. Note that the first higher frequency peaks (n = 2 to 4) fall
very close to a straight line. The slope of this line somewhat
closer to f1 at 0.62. Possible causes of the
discrepancy in fundamental frequency are described in the
Discussion.Average frequency in Hz of the fundamental frequency (n =
1) and the first 4 harmonics plotted as in Figure 7 except the
frequencies are normalized to f1, the fundamental
frequency. The slope of the first 3 harmonics is 0.62 Hz averaged
across all subjects.A correlation analysis was conducted between peak amplitudes and
frequencies of the fusion sustaining component and dynamic features of
the fusion initiating portion of the response. No statistically
significant correlations were observed between either peak amplitudes
or frequencies and the transient movement onset time, or the time at
which maximum velocity occurred (p > 0.1). The spectral peaks are
not related to time characteristics of the fusion initiating movement.
However, a significant correlation assessed using the Pearson’s
correlation coefficient (r = 0.61, p < 0.0001) was observed between
the amplitude of the fundamental peak and the maximum velocity of the
fusion initiating component for all responses from all subjects as
shown in Figure 9.Relationship between the amplitude of the fundamental
frequency peak in the fusion sustaining component and the maximum
velocity of the fusion initiating component for all responses from all
subjects.
Discussion
Studies of eye movement dynamics provide insight into the
neural mechanisms that drive these movements. For example, the
high velocities seen in saccadic eye movements dictate that these
movements must be driven by a large neural pulse in addition to a
step signal. The oscillatory dynamics described here also provides
insight into the control of sustained fusion. The frequency of
these oscillations defines ranges of latency or delay in the
feedback system and the amplitude relates to the gain, or
amplification, of neural elements. The size of the harmonic peaks
defines nonlinearities in the neural control system. Model
simulations are required to fully exploit these measurements, but
the values measured have direct implication on neural mechanisms
of sustained fusion. Hence, the finding that the frequencies of
fusion sustaining oscillations are much lower than initially
reported and that the amplitudes are somewhat larger is of
considerable importance as it places new constraints on elements
in the feedback control system. These new constrains will be
explored in a subsequent research involving new models and
simulations.If only the time domain representation of fusion sustaining
vergence is analyzed, (for example, Figure 2, right-hand plots or
Figure 3, left-hand plots), the small fluctuations observed could
easily be dismissed as random drifts or other noise. However, in
the frequency domain representation, the spectral plots show
considerable structure with predominate fundamental frequency
peaks followed by a series of harmonically related higher
frequency peaks (summarized in Figures 6 and 7).A similar general structure was found by Semmlow et al. (21)
except that the frequency ranges and amplitudes were different due
to differences in the amount of time recorded for eye movement
response. They found fundamental frequencies ranging between 1.2
and 1.9 Hz and amplitudes ranging between 0.04 to 0.1 deg. Their
average values for the amplitude and frequency of the fundamental
frequencies correspond to the amplitude and frequency of the
second or third harmonic peaks as shown here in Figure 6 and 7,
respectively. This is likely due to the shorter time segments used
in their study (1.2 sec or less). It is difficult to reliably
identify oscillations that have oscillatory periods that are
longer than the data segment available for analysis. The
variability they found in fundamental frequencies was larger than
in this study, possibly due to the fact that their fundamental
frequency was actually a second harmonic in some subjects and a
third harmonic in others. In light of their experience, it is not
possible to unequivocally state that the fundamental frequencies
found here are the lowest oscillatory frequencies in the fusion
sustaining component. Eye movement recordings with longer fusion
sustaining time periods would be required to definitively
establish the fundamental frequencies and this is an area for
future research.Frequency peaks about the fundamental frequency,
f1, may be harmonics of the
fundamental oscillation as their values for increasing peak
number, n, fall close to a straight line. This is
particularly true of the middle three data points Figure 7 for all
three convergence levels, Figure 5. However, the slopes of these
lines should be equal to the fundamental frequency (Eq.1), but was
found to be somewhat higher: 0.62 Hz as opposed to measured value
of 0.47 Hz. Since the higher frequencies appear to be harmonically
related (they fall very close to a straight line), we speculate
that they are harmonics and that the fundamental frequencies
measured are systematically lower than the actual fundamental
frequencies. This may due to the difficulty of accurately
measuring frequencies with periods close to the data length.
Alternatively, we note that the standard deviations of frequency
measurements were much larger as harmonic number increased, Figure
5. Hence, it is possible that the discrepancy in fundamental
frequency is simply the product of measurement error. Finally, it
is also possible that nonlinear features of the feedback control
system may account for the discrepancy. Simulations of a model of
the fusion sustaining vergence control system similar to the one
described in Semmlow et al. (21) may explain the
discrepancy.Our findings are limited to sustained fusion at a vergence demand
of 8.0 deg convergence that results from 4.0 deg. symmetrical
convergence steps between 4.0 to 8.0 deg. Just as different levels of
sustained convergence elicit different values of fixation disparity,
it is likely that other levels of sustained convergence will show
different oscillatory amplitudes and perhaps even a shift in
frequencies. Variation in oscillatory features with the level of
convergence is another topic of ongoing research.Of particular interest is whether the preceding fusion initiating
component has any influence on fusion sustaining oscillations. In
other words, would the oscillatory behavior be the same if a specific
convergence level were attained by a smaller convergence step, a
divergent step, even a ramp stimulus, or no preceding step at all?
Figure 9 shows a correlation between the average amplitude of the
fusion sustaining fundamental frequency and the average maximum
velocity of the fusion initiating component. This relationship is
potentially the result of both the fusion initiating and fusion
sustaining components sharing some common neural pathways; for
example, the final common pathway and the oculomotor plant.
Inter-subject variations in the gain of these common pathways would be
reflected in the speed of the fusion initiating component as well as
the amplitude of the oscillations in the fusion sustaining component.
However, this correlation does not suggest a causal relationship
between the two components. Again, a study of oscillatory behavior
found at different levels of vergence and following a variety of step
sizes would resolve this question.The previous study of fusion sustaining oscillations included
simulation of a model of this component’s probable feedback control
elements. Data presented here show that this model is no longer valid
at least with regard to the values of model elements. A major revision
of this model is required in light of the new values of peak amplitude
and frequency.
Conclusion
The fusion sustaining component of vergence eye movements contains
oscillations that have fundamental frequencies falling within a narrow
range around 0.45 Hz. All subjects who exhibited higher frequency
peaks that were probably harmonics of the fundamental frequency, but
if so, they predict a higher fundamental frequency of approximately
0.62 Hz. The amplitudes of the fundamental frequency had a broader
range than frequency varying between 0.04 and 0.18 deg rms. A
correlation was found between fundamental frequency peak amplitude and
the maximum velocity of the fusion initiating movement, probably the
result of shared neural pathways. Additional studies are required to
determine if the fusion initiating component has any influence on
fusion sustaining oscillations. Further studies are also needed to
determine the influence of convergence level on the oscillations.
Nonetheless, the finding of consistent, well-defined fusion sustaining
oscillations across a number of subjects provides very strong support
for visual feedback control of sustained vergence.The methods developed here can also be applied to clinical
populations with vergence anomalies such as convergence and divergence
insufficiency and excess. Prior research has shown that patients with
convergence insufficiency have greater fixation disparity compared to
binocularly normal controls (Saladin, 1986) which is the ability to
reduce error within a feedback-controlled system. Yet, a study of the
fusion sustaining component using frequency spectrum analyses has not
yet been conducted on patients with vergency dysfunctions and is an
area for future research as is the effectiveness of vision therapy on
the behavior of the fusion sustaining component.
Authors: Carlos A Castillo; Bassem Gayed; Claude Pedrono; Kenneth J Ciuffreda; John L Semmlow; Tara L Alvarez Journal: Conf Proc IEEE Eng Med Biol Soc Date: 2006